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/* -*- mode: C++; indent-tabs-mode: nil; -*-
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 *
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 * This file is a part of LEMON, a generic C++ optimization library.
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 *
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 * Copyright (C) 2003-2009
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 * Egervary Jeno Kombinatorikus Optimalizalasi Kutatocsoport
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 * (Egervary Research Group on Combinatorial Optimization, EGRES).
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 *
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 * Permission to use, modify and distribute this software is granted
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 * provided that this copyright notice appears in all copies. For
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 * precise terms see the accompanying LICENSE file.
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 *
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 * This software is provided "AS IS" with no warranty of any kind,
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 * express or implied, and with no claim as to its suitability for any
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 * purpose.
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 *
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 */
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/*!
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\page coding_style LEMON Coding Style
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\section naming_conv Naming Conventions
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In order to make development easier we have made some conventions
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according to coding style. These include names of types, classes,
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functions, variables, constants and exceptions. If these conventions
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are met in one's code then it is easier to read and maintain
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it. Please comply with these conventions if you want to contribute
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developing LEMON library.
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\note When the coding style requires the capitalization of an abbreviation,
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only the first letter should be upper case.
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\code
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XmlReader
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\endcode
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\warning In some cases we diverge from these rules.
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This is primary done because STL uses different naming convention and
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in certain cases
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it is beneficial to provide STL compatible interface.
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\subsection cs-files File Names
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47 47
The header file names should look like the following.
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49 49
\code
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header_file.h
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\endcode
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Note that all standard LEMON headers are located in the \c lemon subdirectory,
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so you should include them from C++ source like this:
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56 56
\code
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#include <lemon/header_file.h>
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\endcode
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The source code files use the same style and they have '.cc' extension.
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62 62
\code
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source_code.cc
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\endcode
65 65

	
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\subsection cs-class Classes and other types
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68 68
The name of a class or any type should look like the following.
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\code
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AllWordsCapitalizedWithoutUnderscores
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\endcode
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\subsection cs-func Methods and other functions
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The name of a function should look like the following.
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\code
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firstWordLowerCaseRestCapitalizedWithoutUnderscores
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\endcode
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\subsection cs-funcs Constants, Macros
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84 84
The names of constants and macros should look like the following.
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\code
87 87
ALL_UPPER_CASE_WITH_UNDERSCORES
88 88
\endcode
89 89

	
90 90
\subsection cs-loc-var Class and instance member variables, auto variables
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92 92
The names of class and instance member variables and auto variables
93 93
(=variables used locally in methods) should look like the following.
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95 95
\code
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all_lower_case_with_underscores
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\endcode
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\subsection pri-loc-var Private member variables
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Private member variables should start with underscore
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Private member variables should start with underscore.
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\code
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_start_with_underscores
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_start_with_underscore
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\endcode
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\subsection cs-excep Exceptions
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109 109
When writing exceptions please comply the following naming conventions.
110 110

	
111 111
\code
112 112
ClassNameEndsWithException
113 113
\endcode
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115 115
or
116 116

	
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\code
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ClassNameEndsWithError
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\endcode
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\section header-template Template Header File
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Each LEMON header file should look like this:
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\include template.h
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*/
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/* -*- mode: C++; indent-tabs-mode: nil; -*-
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 *
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 * This file is a part of LEMON, a generic C++ optimization library.
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 *
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 * Copyright (C) 2003-2010
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 * Egervary Jeno Kombinatorikus Optimalizalasi Kutatocsoport
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 * (Egervary Research Group on Combinatorial Optimization, EGRES).
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 *
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 * Permission to use, modify and distribute this software is granted
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 * provided that this copyright notice appears in all copies. For
11 11
 * precise terms see the accompanying LICENSE file.
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 *
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 * This software is provided "AS IS" with no warranty of any kind,
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 * express or implied, and with no claim as to its suitability for any
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 * purpose.
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 *
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 */
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namespace lemon {
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/**
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@defgroup datas Data Structures
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This group contains the several data structures implemented in LEMON.
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*/
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/**
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@defgroup graphs Graph Structures
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@ingroup datas
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\brief Graph structures implemented in LEMON.
30 30

	
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The implementation of combinatorial algorithms heavily relies on
32 32
efficient graph implementations. LEMON offers data structures which are
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planned to be easily used in an experimental phase of implementation studies,
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and thereafter the program code can be made efficient by small modifications.
35 35

	
36 36
The most efficient implementation of diverse applications require the
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usage of different physical graph implementations. These differences
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appear in the size of graph we require to handle, memory or time usage
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limitations or in the set of operations through which the graph can be
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accessed.  LEMON provides several physical graph structures to meet
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the diverging requirements of the possible users.  In order to save on
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running time or on memory usage, some structures may fail to provide
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some graph features like arc/edge or node deletion.
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Alteration of standard containers need a very limited number of
46 46
operations, these together satisfy the everyday requirements.
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In the case of graph structures, different operations are needed which do
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not alter the physical graph, but gives another view. If some nodes or
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arcs have to be hidden or the reverse oriented graph have to be used, then
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this is the case. It also may happen that in a flow implementation
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the residual graph can be accessed by another algorithm, or a node-set
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is to be shrunk for another algorithm.
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LEMON also provides a variety of graphs for these requirements called
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\ref graph_adaptors "graph adaptors". Adaptors cannot be used alone but only
55 55
in conjunction with other graph representations.
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57 57
You are free to use the graph structure that fit your requirements
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the best, most graph algorithms and auxiliary data structures can be used
59 59
with any graph structure.
60 60

	
61 61
<b>See also:</b> \ref graph_concepts "Graph Structure Concepts".
62 62
*/
63 63

	
64 64
/**
65 65
@defgroup graph_adaptors Adaptor Classes for Graphs
66 66
@ingroup graphs
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\brief Adaptor classes for digraphs and graphs
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69 69
This group contains several useful adaptor classes for digraphs and graphs.
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71 71
The main parts of LEMON are the different graph structures, generic
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graph algorithms, graph concepts, which couple them, and graph
73 73
adaptors. While the previous notions are more or less clear, the
74 74
latter one needs further explanation. Graph adaptors are graph classes
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which serve for considering graph structures in different ways.
76 76

	
77 77
A short example makes this much clearer.  Suppose that we have an
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instance \c g of a directed graph type, say ListDigraph and an algorithm
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\code
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template <typename Digraph>
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int algorithm(const Digraph&);
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\endcode
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is needed to run on the reverse oriented graph.  It may be expensive
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(in time or in memory usage) to copy \c g with the reversed
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arcs.  In this case, an adaptor class is used, which (according
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to LEMON \ref concepts::Digraph "digraph concepts") works as a digraph.
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The adaptor uses the original digraph structure and digraph operations when
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methods of the reversed oriented graph are called.  This means that the adaptor
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have minor memory usage, and do not perform sophisticated algorithmic
90 90
actions.  The purpose of it is to give a tool for the cases when a
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graph have to be used in a specific alteration.  If this alteration is
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obtained by a usual construction like filtering the node or the arc set or
93 93
considering a new orientation, then an adaptor is worthwhile to use.
94 94
To come back to the reverse oriented graph, in this situation
95 95
\code
96 96
template<typename Digraph> class ReverseDigraph;
97 97
\endcode
98 98
template class can be used. The code looks as follows
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\code
100 100
ListDigraph g;
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ReverseDigraph<ListDigraph> rg(g);
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int result = algorithm(rg);
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\endcode
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During running the algorithm, the original digraph \c g is untouched.
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This techniques give rise to an elegant code, and based on stable
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graph adaptors, complex algorithms can be implemented easily.
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In flow, circulation and matching problems, the residual
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graph is of particular importance. Combining an adaptor implementing
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this with shortest path algorithms or minimum mean cycle algorithms,
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a range of weighted and cardinality optimization algorithms can be
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obtained. For other examples, the interested user is referred to the
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detailed documentation of particular adaptors.
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The behavior of graph adaptors can be very different. Some of them keep
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capabilities of the original graph while in other cases this would be
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meaningless. This means that the concepts that they meet depend
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on the graph adaptor, and the wrapped graph.
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For example, if an arc of a reversed digraph is deleted, this is carried
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out by deleting the corresponding arc of the original digraph, thus the
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adaptor modifies the original digraph.
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However in case of a residual digraph, this operation has no sense.
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124 124
Let us stand one more example here to simplify your work.
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ReverseDigraph has constructor
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\code
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ReverseDigraph(Digraph& digraph);
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\endcode
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This means that in a situation, when a <tt>const %ListDigraph&</tt>
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reference to a graph is given, then it have to be instantiated with
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<tt>Digraph=const %ListDigraph</tt>.
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\code
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int algorithm1(const ListDigraph& g) {
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  ReverseDigraph<const ListDigraph> rg(g);
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  return algorithm2(rg);
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}
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\endcode
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*/
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140 140
/**
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@defgroup maps Maps
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@ingroup datas
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\brief Map structures implemented in LEMON.
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145 145
This group contains the map structures implemented in LEMON.
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147 147
LEMON provides several special purpose maps and map adaptors that e.g. combine
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new maps from existing ones.
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150 150
<b>See also:</b> \ref map_concepts "Map Concepts".
151 151
*/
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153 153
/**
154 154
@defgroup graph_maps Graph Maps
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@ingroup maps
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\brief Special graph-related maps.
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158 158
This group contains maps that are specifically designed to assign
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values to the nodes and arcs/edges of graphs.
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161 161
If you are looking for the standard graph maps (\c NodeMap, \c ArcMap,
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\c EdgeMap), see the \ref graph_concepts "Graph Structure Concepts".
163 163
*/
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165 165
/**
166 166
\defgroup map_adaptors Map Adaptors
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\ingroup maps
168 168
\brief Tools to create new maps from existing ones
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170 170
This group contains map adaptors that are used to create "implicit"
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maps from other maps.
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173 173
Most of them are \ref concepts::ReadMap "read-only maps".
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They can make arithmetic and logical operations between one or two maps
175 175
(negation, shifting, addition, multiplication, logical 'and', 'or',
176 176
'not' etc.) or e.g. convert a map to another one of different Value type.
177 177

	
178 178
The typical usage of this classes is passing implicit maps to
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algorithms.  If a function type algorithm is called then the function
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type map adaptors can be used comfortable. For example let's see the
181 181
usage of map adaptors with the \c graphToEps() function.
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\code
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  Color nodeColor(int deg) {
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    if (deg >= 2) {
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      return Color(0.5, 0.0, 0.5);
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    } else if (deg == 1) {
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      return Color(1.0, 0.5, 1.0);
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    } else {
189 189
      return Color(0.0, 0.0, 0.0);
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    }
191 191
  }
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193 193
  Digraph::NodeMap<int> degree_map(graph);
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195 195
  graphToEps(graph, "graph.eps")
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    .coords(coords).scaleToA4().undirected()
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    .nodeColors(composeMap(functorToMap(nodeColor), degree_map))
198 198
    .run();
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\endcode
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The \c functorToMap() function makes an \c int to \c Color map from the
201 201
\c nodeColor() function. The \c composeMap() compose the \c degree_map
202 202
and the previously created map. The composed map is a proper function to
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get the color of each node.
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205 205
The usage with class type algorithms is little bit harder. In this
206 206
case the function type map adaptors can not be used, because the
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function map adaptors give back temporary objects.
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\code
209 209
  Digraph graph;
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211 211
  typedef Digraph::ArcMap<double> DoubleArcMap;
212 212
  DoubleArcMap length(graph);
213 213
  DoubleArcMap speed(graph);
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215 215
  typedef DivMap<DoubleArcMap, DoubleArcMap> TimeMap;
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  TimeMap time(length, speed);
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218 218
  Dijkstra<Digraph, TimeMap> dijkstra(graph, time);
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  dijkstra.run(source, target);
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\endcode
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We have a length map and a maximum speed map on the arcs of a digraph.
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The minimum time to pass the arc can be calculated as the division of
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the two maps which can be done implicitly with the \c DivMap template
224 224
class. We use the implicit minimum time map as the length map of the
225 225
\c Dijkstra algorithm.
226 226
*/
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228 228
/**
229 229
@defgroup paths Path Structures
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@ingroup datas
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\brief %Path structures implemented in LEMON.
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233 233
This group contains the path structures implemented in LEMON.
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235 235
LEMON provides flexible data structures to work with paths.
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All of them have similar interfaces and they can be copied easily with
237 237
assignment operators and copy constructors. This makes it easy and
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efficient to have e.g. the Dijkstra algorithm to store its result in
239 239
any kind of path structure.
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241 241
\sa \ref concepts::Path "Path concept"
242 242
*/
243 243

	
244 244
/**
245 245
@defgroup heaps Heap Structures
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@ingroup datas
247 247
\brief %Heap structures implemented in LEMON.
248 248

	
249 249
This group contains the heap structures implemented in LEMON.
250 250

	
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LEMON provides several heap classes. They are efficient implementations
252 252
of the abstract data type \e priority \e queue. They store items with
253 253
specified values called \e priorities in such a way that finding and
254 254
removing the item with minimum priority are efficient.
255 255
The basic operations are adding and erasing items, changing the priority
256 256
of an item, etc.
257 257

	
258 258
Heaps are crucial in several algorithms, such as Dijkstra and Prim.
259 259
The heap implementations have the same interface, thus any of them can be
260 260
used easily in such algorithms.
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262 262
\sa \ref concepts::Heap "Heap concept"
263 263
*/
264 264

	
265 265
/**
266 266
@defgroup auxdat Auxiliary Data Structures
267 267
@ingroup datas
268 268
\brief Auxiliary data structures implemented in LEMON.
269 269

	
270 270
This group contains some data structures implemented in LEMON in
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order to make it easier to implement combinatorial algorithms.
272 272
*/
273 273

	
274 274
/**
275 275
@defgroup geomdat Geometric Data Structures
276 276
@ingroup auxdat
277 277
\brief Geometric data structures implemented in LEMON.
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279 279
This group contains geometric data structures implemented in LEMON.
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281 281
 - \ref lemon::dim2::Point "dim2::Point" implements a two dimensional
282 282
   vector with the usual operations.
283 283
 - \ref lemon::dim2::Box "dim2::Box" can be used to determine the
284 284
   rectangular bounding box of a set of \ref lemon::dim2::Point
285 285
   "dim2::Point"'s.
286 286
*/
287 287

	
288 288
/**
289 289
@defgroup matrices Matrices
290 290
@ingroup auxdat
291 291
\brief Two dimensional data storages implemented in LEMON.
292 292

	
293 293
This group contains two dimensional data storages implemented in LEMON.
294 294
*/
295 295

	
296 296
/**
297 297
@defgroup algs Algorithms
298 298
\brief This group contains the several algorithms
299 299
implemented in LEMON.
300 300

	
301 301
This group contains the several algorithms
302 302
implemented in LEMON.
303 303
*/
304 304

	
305 305
/**
306 306
@defgroup search Graph Search
307 307
@ingroup algs
308 308
\brief Common graph search algorithms.
309 309

	
310 310
This group contains the common graph search algorithms, namely
311 311
\e breadth-first \e search (BFS) and \e depth-first \e search (DFS)
312 312
\ref clrs01algorithms.
313 313
*/
314 314

	
315 315
/**
316 316
@defgroup shortest_path Shortest Path Algorithms
317 317
@ingroup algs
318 318
\brief Algorithms for finding shortest paths.
319 319

	
320 320
This group contains the algorithms for finding shortest paths in digraphs
321 321
\ref clrs01algorithms.
322 322

	
323 323
 - \ref Dijkstra algorithm for finding shortest paths from a source node
324 324
   when all arc lengths are non-negative.
325 325
 - \ref BellmanFord "Bellman-Ford" algorithm for finding shortest paths
326 326
   from a source node when arc lenghts can be either positive or negative,
327 327
   but the digraph should not contain directed cycles with negative total
328 328
   length.
329 329
 - \ref FloydWarshall "Floyd-Warshall" and \ref Johnson "Johnson" algorithms
330 330
   for solving the \e all-pairs \e shortest \e paths \e problem when arc
331 331
   lenghts can be either positive or negative, but the digraph should
332 332
   not contain directed cycles with negative total length.
333 333
 - \ref Suurballe A successive shortest path algorithm for finding
334 334
   arc-disjoint paths between two nodes having minimum total length.
335 335
*/
336 336

	
337 337
/**
338 338
@defgroup spantree Minimum Spanning Tree Algorithms
339 339
@ingroup algs
340 340
\brief Algorithms for finding minimum cost spanning trees and arborescences.
341 341

	
342 342
This group contains the algorithms for finding minimum cost spanning
343 343
trees and arborescences \ref clrs01algorithms.
344 344
*/
345 345

	
346 346
/**
347 347
@defgroup max_flow Maximum Flow Algorithms
348 348
@ingroup algs
349 349
\brief Algorithms for finding maximum flows.
350 350

	
351 351
This group contains the algorithms for finding maximum flows and
352 352
feasible circulations \ref clrs01algorithms, \ref amo93networkflows.
353 353

	
354 354
The \e maximum \e flow \e problem is to find a flow of maximum value between
355 355
a single source and a single target. Formally, there is a \f$G=(V,A)\f$
356 356
digraph, a \f$cap: A\rightarrow\mathbf{R}^+_0\f$ capacity function and
357 357
\f$s, t \in V\f$ source and target nodes.
358 358
A maximum flow is an \f$f: A\rightarrow\mathbf{R}^+_0\f$ solution of the
359 359
following optimization problem.
360 360

	
361 361
\f[ \max\sum_{sv\in A} f(sv) - \sum_{vs\in A} f(vs) \f]
362 362
\f[ \sum_{uv\in A} f(uv) = \sum_{vu\in A} f(vu)
363 363
    \quad \forall u\in V\setminus\{s,t\} \f]
364 364
\f[ 0 \leq f(uv) \leq cap(uv) \quad \forall uv\in A \f]
365 365

	
366 366
LEMON contains several algorithms for solving maximum flow problems:
367 367
- \ref EdmondsKarp Edmonds-Karp algorithm
368 368
  \ref edmondskarp72theoretical.
369 369
- \ref Preflow Goldberg-Tarjan's preflow push-relabel algorithm
370 370
  \ref goldberg88newapproach.
371 371
- \ref DinitzSleatorTarjan Dinitz's blocking flow algorithm with dynamic trees
372 372
  \ref dinic70algorithm, \ref sleator83dynamic.
373 373
- \ref GoldbergTarjan !Preflow push-relabel algorithm with dynamic trees
374 374
  \ref goldberg88newapproach, \ref sleator83dynamic.
375 375

	
376 376
In most cases the \ref Preflow algorithm provides the
377 377
fastest method for computing a maximum flow. All implementations
378 378
also provide functions to query the minimum cut, which is the dual
379 379
problem of maximum flow.
380 380

	
381 381
\ref Circulation is a preflow push-relabel algorithm implemented directly
382 382
for finding feasible circulations, which is a somewhat different problem,
383 383
but it is strongly related to maximum flow.
384 384
For more information, see \ref Circulation.
385 385
*/
386 386

	
387 387
/**
388 388
@defgroup min_cost_flow_algs Minimum Cost Flow Algorithms
389 389
@ingroup algs
390 390

	
391 391
\brief Algorithms for finding minimum cost flows and circulations.
392 392

	
393 393
This group contains the algorithms for finding minimum cost flows and
394 394
circulations \ref amo93networkflows. For more information about this
395 395
problem and its dual solution, see \ref min_cost_flow
396 396
"Minimum Cost Flow Problem".
397 397

	
398 398
LEMON contains several algorithms for this problem.
399 399
 - \ref NetworkSimplex Primal Network Simplex algorithm with various
400 400
   pivot strategies \ref dantzig63linearprog, \ref kellyoneill91netsimplex.
401 401
 - \ref CostScaling Cost Scaling algorithm based on push/augment and
402 402
   relabel operations \ref goldberg90approximation, \ref goldberg97efficient,
403 403
   \ref bunnagel98efficient.
404 404
 - \ref CapacityScaling Capacity Scaling algorithm based on the successive
405 405
   shortest path method \ref edmondskarp72theoretical.
406 406
 - \ref CycleCanceling Cycle-Canceling algorithms, two of which are
407 407
   strongly polynomial \ref klein67primal, \ref goldberg89cyclecanceling.
408 408

	
409
In general NetworkSimplex is the most efficient implementation,
410
but in special cases other algorithms could be faster.
409
In general, \ref NetworkSimplex and \ref CostScaling are the most efficient
410
implementations, but the other two algorithms could be faster in special cases.
411 411
For example, if the total supply and/or capacities are rather small,
412
CapacityScaling is usually the fastest algorithm (without effective scaling).
412
\ref CapacityScaling is usually the fastest algorithm (without effective scaling).
413 413
*/
414 414

	
415 415
/**
416 416
@defgroup min_cut Minimum Cut Algorithms
417 417
@ingroup algs
418 418

	
419 419
\brief Algorithms for finding minimum cut in graphs.
420 420

	
421 421
This group contains the algorithms for finding minimum cut in graphs.
422 422

	
423 423
The \e minimum \e cut \e problem is to find a non-empty and non-complete
424 424
\f$X\f$ subset of the nodes with minimum overall capacity on
425 425
outgoing arcs. Formally, there is a \f$G=(V,A)\f$ digraph, a
426 426
\f$cap: A\rightarrow\mathbf{R}^+_0\f$ capacity function. The minimum
427 427
cut is the \f$X\f$ solution of the next optimization problem:
428 428

	
429 429
\f[ \min_{X \subset V, X\not\in \{\emptyset, V\}}
430 430
    \sum_{uv\in A: u\in X, v\not\in X}cap(uv) \f]
431 431

	
432 432
LEMON contains several algorithms related to minimum cut problems:
433 433

	
434 434
- \ref HaoOrlin "Hao-Orlin algorithm" for calculating minimum cut
435 435
  in directed graphs.
436 436
- \ref NagamochiIbaraki "Nagamochi-Ibaraki algorithm" for
437 437
  calculating minimum cut in undirected graphs.
438 438
- \ref GomoryHu "Gomory-Hu tree computation" for calculating
439 439
  all-pairs minimum cut in undirected graphs.
440 440

	
441 441
If you want to find minimum cut just between two distinict nodes,
442 442
see the \ref max_flow "maximum flow problem".
443 443
*/
444 444

	
445 445
/**
446 446
@defgroup min_mean_cycle Minimum Mean Cycle Algorithms
447 447
@ingroup algs
448 448
\brief Algorithms for finding minimum mean cycles.
449 449

	
450 450
This group contains the algorithms for finding minimum mean cycles
451 451
\ref clrs01algorithms, \ref amo93networkflows.
452 452

	
453 453
The \e minimum \e mean \e cycle \e problem is to find a directed cycle
454 454
of minimum mean length (cost) in a digraph.
455 455
The mean length of a cycle is the average length of its arcs, i.e. the
456 456
ratio between the total length of the cycle and the number of arcs on it.
457 457

	
458 458
This problem has an important connection to \e conservative \e length
459 459
\e functions, too. A length function on the arcs of a digraph is called
460 460
conservative if and only if there is no directed cycle of negative total
461 461
length. For an arbitrary length function, the negative of the minimum
462 462
cycle mean is the smallest \f$\epsilon\f$ value so that increasing the
463 463
arc lengths uniformly by \f$\epsilon\f$ results in a conservative length
464 464
function.
465 465

	
466 466
LEMON contains three algorithms for solving the minimum mean cycle problem:
467 467
- \ref KarpMmc Karp's original algorithm \ref amo93networkflows,
468 468
  \ref dasdan98minmeancycle.
469 469
- \ref HartmannOrlinMmc Hartmann-Orlin's algorithm, which is an improved
470 470
  version of Karp's algorithm \ref dasdan98minmeancycle.
471 471
- \ref HowardMmc Howard's policy iteration algorithm
472 472
  \ref dasdan98minmeancycle.
473 473

	
474
In practice, the \ref HowardMmc "Howard" algorithm proved to be by far the
474
In practice, the \ref HowardMmc "Howard" algorithm turned out to be by far the
475 475
most efficient one, though the best known theoretical bound on its running
476 476
time is exponential.
477 477
Both \ref KarpMmc "Karp" and \ref HartmannOrlinMmc "Hartmann-Orlin" algorithms
478 478
run in time O(ne) and use space O(n<sup>2</sup>+e), but the latter one is
479 479
typically faster due to the applied early termination scheme.
480 480
*/
481 481

	
482 482
/**
483 483
@defgroup matching Matching Algorithms
484 484
@ingroup algs
485 485
\brief Algorithms for finding matchings in graphs and bipartite graphs.
486 486

	
487 487
This group contains the algorithms for calculating
488 488
matchings in graphs and bipartite graphs. The general matching problem is
489 489
finding a subset of the edges for which each node has at most one incident
490 490
edge.
491 491

	
492 492
There are several different algorithms for calculate matchings in
493 493
graphs.  The matching problems in bipartite graphs are generally
494 494
easier than in general graphs. The goal of the matching optimization
495 495
can be finding maximum cardinality, maximum weight or minimum cost
496 496
matching. The search can be constrained to find perfect or
497 497
maximum cardinality matching.
498 498

	
499 499
The matching algorithms implemented in LEMON:
500 500
- \ref MaxBipartiteMatching Hopcroft-Karp augmenting path algorithm
501 501
  for calculating maximum cardinality matching in bipartite graphs.
502 502
- \ref PrBipartiteMatching Push-relabel algorithm
503 503
  for calculating maximum cardinality matching in bipartite graphs.
504 504
- \ref MaxWeightedBipartiteMatching
505 505
  Successive shortest path algorithm for calculating maximum weighted
506 506
  matching and maximum weighted bipartite matching in bipartite graphs.
507 507
- \ref MinCostMaxBipartiteMatching
508 508
  Successive shortest path algorithm for calculating minimum cost maximum
509 509
  matching in bipartite graphs.
510 510
- \ref MaxMatching Edmond's blossom shrinking algorithm for calculating
511 511
  maximum cardinality matching in general graphs.
512 512
- \ref MaxWeightedMatching Edmond's blossom shrinking algorithm for calculating
513 513
  maximum weighted matching in general graphs.
514 514
- \ref MaxWeightedPerfectMatching
515 515
  Edmond's blossom shrinking algorithm for calculating maximum weighted
516 516
  perfect matching in general graphs.
517 517
- \ref MaxFractionalMatching Push-relabel algorithm for calculating
518 518
  maximum cardinality fractional matching in general graphs.
519 519
- \ref MaxWeightedFractionalMatching Augmenting path algorithm for calculating
520 520
  maximum weighted fractional matching in general graphs.
521 521
- \ref MaxWeightedPerfectFractionalMatching
522 522
  Augmenting path algorithm for calculating maximum weighted
523 523
  perfect fractional matching in general graphs.
524 524

	
525 525
\image html matching.png
526 526
\image latex matching.eps "Min Cost Perfect Matching" width=\textwidth
527 527
*/
528 528

	
529 529
/**
530 530
@defgroup graph_properties Connectivity and Other Graph Properties
531 531
@ingroup algs
532 532
\brief Algorithms for discovering the graph properties
533 533

	
534 534
This group contains the algorithms for discovering the graph properties
535 535
like connectivity, bipartiteness, euler property, simplicity etc.
536 536

	
537 537
\image html connected_components.png
538 538
\image latex connected_components.eps "Connected components" width=\textwidth
539 539
*/
540 540

	
541 541
/**
542
@defgroup planar Planarity Embedding and Drawing
542
@defgroup planar Planar Embedding and Drawing
543 543
@ingroup algs
544 544
\brief Algorithms for planarity checking, embedding and drawing
545 545

	
546 546
This group contains the algorithms for planarity checking,
547 547
embedding and drawing.
548 548

	
549 549
\image html planar.png
550 550
\image latex planar.eps "Plane graph" width=\textwidth
551 551
*/
552 552

	
553 553
/**
554 554
@defgroup approx_algs Approximation Algorithms
555 555
@ingroup algs
556 556
\brief Approximation algorithms.
557 557

	
558 558
This group contains the approximation and heuristic algorithms
559 559
implemented in LEMON.
560 560

	
561 561
<b>Maximum Clique Problem</b>
562 562
  - \ref GrossoLocatelliPullanMc An efficient heuristic algorithm of
563 563
    Grosso, Locatelli, and Pullan.
564 564
*/
565 565

	
566 566
/**
567 567
@defgroup auxalg Auxiliary Algorithms
568 568
@ingroup algs
569 569
\brief Auxiliary algorithms implemented in LEMON.
570 570

	
571 571
This group contains some algorithms implemented in LEMON
572 572
in order to make it easier to implement complex algorithms.
573 573
*/
574 574

	
575 575
/**
576 576
@defgroup gen_opt_group General Optimization Tools
577 577
\brief This group contains some general optimization frameworks
578 578
implemented in LEMON.
579 579

	
580 580
This group contains some general optimization frameworks
581 581
implemented in LEMON.
582 582
*/
583 583

	
584 584
/**
585 585
@defgroup lp_group LP and MIP Solvers
586 586
@ingroup gen_opt_group
587 587
\brief LP and MIP solver interfaces for LEMON.
588 588

	
589 589
This group contains LP and MIP solver interfaces for LEMON.
590 590
Various LP solvers could be used in the same manner with this
591 591
high-level interface.
592 592

	
593 593
The currently supported solvers are \ref glpk, \ref clp, \ref cbc,
594 594
\ref cplex, \ref soplex.
595 595
*/
596 596

	
597 597
/**
598 598
@defgroup lp_utils Tools for Lp and Mip Solvers
599 599
@ingroup lp_group
600 600
\brief Helper tools to the Lp and Mip solvers.
601 601

	
602 602
This group adds some helper tools to general optimization framework
603 603
implemented in LEMON.
604 604
*/
605 605

	
606 606
/**
607 607
@defgroup metah Metaheuristics
608 608
@ingroup gen_opt_group
609 609
\brief Metaheuristics for LEMON library.
610 610

	
611 611
This group contains some metaheuristic optimization tools.
612 612
*/
613 613

	
614 614
/**
615 615
@defgroup utils Tools and Utilities
616 616
\brief Tools and utilities for programming in LEMON
617 617

	
618 618
Tools and utilities for programming in LEMON.
619 619
*/
620 620

	
621 621
/**
622 622
@defgroup gutils Basic Graph Utilities
623 623
@ingroup utils
624 624
\brief Simple basic graph utilities.
625 625

	
626 626
This group contains some simple basic graph utilities.
627 627
*/
628 628

	
629 629
/**
630 630
@defgroup misc Miscellaneous Tools
631 631
@ingroup utils
632 632
\brief Tools for development, debugging and testing.
633 633

	
634 634
This group contains several useful tools for development,
635 635
debugging and testing.
636 636
*/
637 637

	
638 638
/**
639 639
@defgroup timecount Time Measuring and Counting
640 640
@ingroup misc
641 641
\brief Simple tools for measuring the performance of algorithms.
642 642

	
643 643
This group contains simple tools for measuring the performance
644 644
of algorithms.
645 645
*/
646 646

	
647 647
/**
648 648
@defgroup exceptions Exceptions
649 649
@ingroup utils
650 650
\brief Exceptions defined in LEMON.
651 651

	
652 652
This group contains the exceptions defined in LEMON.
653 653
*/
654 654

	
655 655
/**
656 656
@defgroup io_group Input-Output
657 657
\brief Graph Input-Output methods
658 658

	
659 659
This group contains the tools for importing and exporting graphs
660 660
and graph related data. Now it supports the \ref lgf-format
661 661
"LEMON Graph Format", the \c DIMACS format and the encapsulated
662 662
postscript (EPS) format.
663 663
*/
664 664

	
665 665
/**
666 666
@defgroup lemon_io LEMON Graph Format
667 667
@ingroup io_group
668 668
\brief Reading and writing LEMON Graph Format.
669 669

	
670 670
This group contains methods for reading and writing
671 671
\ref lgf-format "LEMON Graph Format".
672 672
*/
673 673

	
674 674
/**
675 675
@defgroup eps_io Postscript Exporting
676 676
@ingroup io_group
677 677
\brief General \c EPS drawer and graph exporter
678 678

	
679 679
This group contains general \c EPS drawing methods and special
680 680
graph exporting tools.
681 681
*/
682 682

	
683 683
/**
684 684
@defgroup dimacs_group DIMACS Format
685 685
@ingroup io_group
686 686
\brief Read and write files in DIMACS format
687 687

	
688 688
Tools to read a digraph from or write it to a file in DIMACS format data.
689 689
*/
690 690

	
691 691
/**
692 692
@defgroup nauty_group NAUTY Format
693 693
@ingroup io_group
694 694
\brief Read \e Nauty format
695 695

	
696 696
Tool to read graphs from \e Nauty format data.
697 697
*/
698 698

	
699 699
/**
700 700
@defgroup concept Concepts
701 701
\brief Skeleton classes and concept checking classes
702 702

	
703 703
This group contains the data/algorithm skeletons and concept checking
704 704
classes implemented in LEMON.
705 705

	
706 706
The purpose of the classes in this group is fourfold.
707 707

	
708 708
- These classes contain the documentations of the %concepts. In order
709 709
  to avoid document multiplications, an implementation of a concept
710 710
  simply refers to the corresponding concept class.
711 711

	
712 712
- These classes declare every functions, <tt>typedef</tt>s etc. an
713 713
  implementation of the %concepts should provide, however completely
714 714
  without implementations and real data structures behind the
715 715
  interface. On the other hand they should provide nothing else. All
716 716
  the algorithms working on a data structure meeting a certain concept
717 717
  should compile with these classes. (Though it will not run properly,
718 718
  of course.) In this way it is easily to check if an algorithm
719 719
  doesn't use any extra feature of a certain implementation.
720 720

	
721 721
- The concept descriptor classes also provide a <em>checker class</em>
722 722
  that makes it possible to check whether a certain implementation of a
723 723
  concept indeed provides all the required features.
724 724

	
725 725
- Finally, They can serve as a skeleton of a new implementation of a concept.
726 726
*/
727 727

	
728 728
/**
729 729
@defgroup graph_concepts Graph Structure Concepts
730 730
@ingroup concept
731 731
\brief Skeleton and concept checking classes for graph structures
732 732

	
733 733
This group contains the skeletons and concept checking classes of
734 734
graph structures.
735 735
*/
736 736

	
737 737
/**
738 738
@defgroup map_concepts Map Concepts
739 739
@ingroup concept
740 740
\brief Skeleton and concept checking classes for maps
741 741

	
742 742
This group contains the skeletons and concept checking classes of maps.
743 743
*/
744 744

	
745 745
/**
746 746
@defgroup tools Standalone Utility Applications
747 747

	
748 748
Some utility applications are listed here.
749 749

	
750 750
The standard compilation procedure (<tt>./configure;make</tt>) will compile
751 751
them, as well.
752 752
*/
753 753

	
754 754
/**
755 755
\anchor demoprograms
756 756

	
757 757
@defgroup demos Demo Programs
758 758

	
759 759
Some demo programs are listed here. Their full source codes can be found in
760 760
the \c demo subdirectory of the source tree.
761 761

	
762 762
In order to compile them, use the <tt>make demo</tt> or the
763 763
<tt>make check</tt> commands.
764 764
*/
765 765

	
766 766
}
Ignore white space 6 line context
1 1
/* -*- mode: C++; indent-tabs-mode: nil; -*-
2 2
 *
3 3
 * This file is a part of LEMON, a generic C++ optimization library.
4 4
 *
5 5
 * Copyright (C) 2003-2010
6 6
 * Egervary Jeno Kombinatorikus Optimalizalasi Kutatocsoport
7 7
 * (Egervary Research Group on Combinatorial Optimization, EGRES).
8 8
 *
9 9
 * Permission to use, modify and distribute this software is granted
10 10
 * provided that this copyright notice appears in all copies. For
11 11
 * precise terms see the accompanying LICENSE file.
12 12
 *
13 13
 * This software is provided "AS IS" with no warranty of any kind,
14 14
 * express or implied, and with no claim as to its suitability for any
15 15
 * purpose.
16 16
 *
17 17
 */
18 18

	
19 19
#ifndef LEMON_CAPACITY_SCALING_H
20 20
#define LEMON_CAPACITY_SCALING_H
21 21

	
22 22
/// \ingroup min_cost_flow_algs
23 23
///
24 24
/// \file
25 25
/// \brief Capacity Scaling algorithm for finding a minimum cost flow.
26 26

	
27 27
#include <vector>
28 28
#include <limits>
29 29
#include <lemon/core.h>
30 30
#include <lemon/bin_heap.h>
31 31

	
32 32
namespace lemon {
33 33

	
34 34
  /// \brief Default traits class of CapacityScaling algorithm.
35 35
  ///
36 36
  /// Default traits class of CapacityScaling algorithm.
37 37
  /// \tparam GR Digraph type.
38 38
  /// \tparam V The number type used for flow amounts, capacity bounds
39 39
  /// and supply values. By default it is \c int.
40 40
  /// \tparam C The number type used for costs and potentials.
41 41
  /// By default it is the same as \c V.
42 42
  template <typename GR, typename V = int, typename C = V>
43 43
  struct CapacityScalingDefaultTraits
44 44
  {
45 45
    /// The type of the digraph
46 46
    typedef GR Digraph;
47 47
    /// The type of the flow amounts, capacity bounds and supply values
48 48
    typedef V Value;
49 49
    /// The type of the arc costs
50 50
    typedef C Cost;
51 51

	
52 52
    /// \brief The type of the heap used for internal Dijkstra computations.
53 53
    ///
54 54
    /// The type of the heap used for internal Dijkstra computations.
55 55
    /// It must conform to the \ref lemon::concepts::Heap "Heap" concept,
56 56
    /// its priority type must be \c Cost and its cross reference type
57 57
    /// must be \ref RangeMap "RangeMap<int>".
58 58
    typedef BinHeap<Cost, RangeMap<int> > Heap;
59 59
  };
60 60

	
61 61
  /// \addtogroup min_cost_flow_algs
62 62
  /// @{
63 63

	
64 64
  /// \brief Implementation of the Capacity Scaling algorithm for
65 65
  /// finding a \ref min_cost_flow "minimum cost flow".
66 66
  ///
67 67
  /// \ref CapacityScaling implements the capacity scaling version
68 68
  /// of the successive shortest path algorithm for finding a
69 69
  /// \ref min_cost_flow "minimum cost flow" \ref amo93networkflows,
70 70
  /// \ref edmondskarp72theoretical. It is an efficient dual
71 71
  /// solution method.
72 72
  ///
73 73
  /// Most of the parameters of the problem (except for the digraph)
74 74
  /// can be given using separate functions, and the algorithm can be
75 75
  /// executed using the \ref run() function. If some parameters are not
76 76
  /// specified, then default values will be used.
77 77
  ///
78 78
  /// \tparam GR The digraph type the algorithm runs on.
79 79
  /// \tparam V The number type used for flow amounts, capacity bounds
80 80
  /// and supply values in the algorithm. By default, it is \c int.
81 81
  /// \tparam C The number type used for costs and potentials in the
82 82
  /// algorithm. By default, it is the same as \c V.
83 83
  /// \tparam TR The traits class that defines various types used by the
84 84
  /// algorithm. By default, it is \ref CapacityScalingDefaultTraits
85 85
  /// "CapacityScalingDefaultTraits<GR, V, C>".
86 86
  /// In most cases, this parameter should not be set directly,
87 87
  /// consider to use the named template parameters instead.
88 88
  ///
89 89
  /// \warning Both \c V and \c C must be signed number types.
90 90
  /// \warning All input data (capacities, supply values, and costs) must
91 91
  /// be integer.
92
  /// \warning This algorithm does not support negative costs for such
93
  /// arcs that have infinite upper bound.
92
  /// \warning This algorithm does not support negative costs for
93
  /// arcs having infinite upper bound.
94 94
#ifdef DOXYGEN
95 95
  template <typename GR, typename V, typename C, typename TR>
96 96
#else
97 97
  template < typename GR, typename V = int, typename C = V,
98 98
             typename TR = CapacityScalingDefaultTraits<GR, V, C> >
99 99
#endif
100 100
  class CapacityScaling
101 101
  {
102 102
  public:
103 103

	
104 104
    /// The type of the digraph
105 105
    typedef typename TR::Digraph Digraph;
106 106
    /// The type of the flow amounts, capacity bounds and supply values
107 107
    typedef typename TR::Value Value;
108 108
    /// The type of the arc costs
109 109
    typedef typename TR::Cost Cost;
110 110

	
111 111
    /// The type of the heap used for internal Dijkstra computations
112 112
    typedef typename TR::Heap Heap;
113 113

	
114 114
    /// The \ref CapacityScalingDefaultTraits "traits class" of the algorithm
115 115
    typedef TR Traits;
116 116

	
117 117
  public:
118 118

	
119 119
    /// \brief Problem type constants for the \c run() function.
120 120
    ///
121 121
    /// Enum type containing the problem type constants that can be
122 122
    /// returned by the \ref run() function of the algorithm.
123 123
    enum ProblemType {
124 124
      /// The problem has no feasible solution (flow).
125 125
      INFEASIBLE,
126 126
      /// The problem has optimal solution (i.e. it is feasible and
127 127
      /// bounded), and the algorithm has found optimal flow and node
128 128
      /// potentials (primal and dual solutions).
129 129
      OPTIMAL,
130 130
      /// The digraph contains an arc of negative cost and infinite
131 131
      /// upper bound. It means that the objective function is unbounded
132 132
      /// on that arc, however, note that it could actually be bounded
133 133
      /// over the feasible flows, but this algroithm cannot handle
134 134
      /// these cases.
135 135
      UNBOUNDED
136 136
    };
137 137

	
138 138
  private:
139 139

	
140 140
    TEMPLATE_DIGRAPH_TYPEDEFS(GR);
141 141

	
142 142
    typedef std::vector<int> IntVector;
143 143
    typedef std::vector<Value> ValueVector;
144 144
    typedef std::vector<Cost> CostVector;
145 145
    typedef std::vector<char> BoolVector;
146 146
    // Note: vector<char> is used instead of vector<bool> for efficiency reasons
147 147

	
148 148
  private:
149 149

	
150 150
    // Data related to the underlying digraph
151 151
    const GR &_graph;
152 152
    int _node_num;
153 153
    int _arc_num;
154 154
    int _res_arc_num;
155 155
    int _root;
156 156

	
157 157
    // Parameters of the problem
158 158
    bool _have_lower;
159 159
    Value _sum_supply;
160 160

	
161 161
    // Data structures for storing the digraph
162 162
    IntNodeMap _node_id;
163 163
    IntArcMap _arc_idf;
164 164
    IntArcMap _arc_idb;
165 165
    IntVector _first_out;
166 166
    BoolVector _forward;
167 167
    IntVector _source;
168 168
    IntVector _target;
169 169
    IntVector _reverse;
170 170

	
171 171
    // Node and arc data
172 172
    ValueVector _lower;
173 173
    ValueVector _upper;
174 174
    CostVector _cost;
175 175
    ValueVector _supply;
176 176

	
177 177
    ValueVector _res_cap;
178 178
    CostVector _pi;
179 179
    ValueVector _excess;
180 180
    IntVector _excess_nodes;
181 181
    IntVector _deficit_nodes;
182 182

	
183 183
    Value _delta;
184 184
    int _factor;
185 185
    IntVector _pred;
186 186

	
187 187
  public:
188 188

	
189 189
    /// \brief Constant for infinite upper bounds (capacities).
190 190
    ///
191 191
    /// Constant for infinite upper bounds (capacities).
192 192
    /// It is \c std::numeric_limits<Value>::infinity() if available,
193 193
    /// \c std::numeric_limits<Value>::max() otherwise.
194 194
    const Value INF;
195 195

	
196 196
  private:
197 197

	
198 198
    // Special implementation of the Dijkstra algorithm for finding
199 199
    // shortest paths in the residual network of the digraph with
200 200
    // respect to the reduced arc costs and modifying the node
201 201
    // potentials according to the found distance labels.
202 202
    class ResidualDijkstra
203 203
    {
204 204
    private:
205 205

	
206 206
      int _node_num;
207 207
      bool _geq;
208 208
      const IntVector &_first_out;
209 209
      const IntVector &_target;
210 210
      const CostVector &_cost;
211 211
      const ValueVector &_res_cap;
212 212
      const ValueVector &_excess;
213 213
      CostVector &_pi;
214 214
      IntVector &_pred;
215 215

	
216 216
      IntVector _proc_nodes;
217 217
      CostVector _dist;
218 218

	
219 219
    public:
220 220

	
221 221
      ResidualDijkstra(CapacityScaling& cs) :
222 222
        _node_num(cs._node_num), _geq(cs._sum_supply < 0),
223 223
        _first_out(cs._first_out), _target(cs._target), _cost(cs._cost),
224 224
        _res_cap(cs._res_cap), _excess(cs._excess), _pi(cs._pi),
225 225
        _pred(cs._pred), _dist(cs._node_num)
226 226
      {}
227 227

	
228 228
      int run(int s, Value delta = 1) {
229 229
        RangeMap<int> heap_cross_ref(_node_num, Heap::PRE_HEAP);
230 230
        Heap heap(heap_cross_ref);
231 231
        heap.push(s, 0);
232 232
        _pred[s] = -1;
233 233
        _proc_nodes.clear();
234 234

	
235 235
        // Process nodes
236 236
        while (!heap.empty() && _excess[heap.top()] > -delta) {
237 237
          int u = heap.top(), v;
238 238
          Cost d = heap.prio() + _pi[u], dn;
239 239
          _dist[u] = heap.prio();
240 240
          _proc_nodes.push_back(u);
241 241
          heap.pop();
242 242

	
243 243
          // Traverse outgoing residual arcs
244 244
          int last_out = _geq ? _first_out[u+1] : _first_out[u+1] - 1;
245 245
          for (int a = _first_out[u]; a != last_out; ++a) {
246 246
            if (_res_cap[a] < delta) continue;
247 247
            v = _target[a];
248 248
            switch (heap.state(v)) {
249 249
              case Heap::PRE_HEAP:
250 250
                heap.push(v, d + _cost[a] - _pi[v]);
251 251
                _pred[v] = a;
252 252
                break;
253 253
              case Heap::IN_HEAP:
254 254
                dn = d + _cost[a] - _pi[v];
255 255
                if (dn < heap[v]) {
256 256
                  heap.decrease(v, dn);
257 257
                  _pred[v] = a;
258 258
                }
259 259
                break;
260 260
              case Heap::POST_HEAP:
261 261
                break;
262 262
            }
263 263
          }
264 264
        }
265 265
        if (heap.empty()) return -1;
266 266

	
267 267
        // Update potentials of processed nodes
268 268
        int t = heap.top();
269 269
        Cost dt = heap.prio();
270 270
        for (int i = 0; i < int(_proc_nodes.size()); ++i) {
271 271
          _pi[_proc_nodes[i]] += _dist[_proc_nodes[i]] - dt;
272 272
        }
273 273

	
274 274
        return t;
275 275
      }
276 276

	
277 277
    }; //class ResidualDijkstra
278 278

	
279 279
  public:
280 280

	
281 281
    /// \name Named Template Parameters
282 282
    /// @{
283 283

	
284 284
    template <typename T>
285 285
    struct SetHeapTraits : public Traits {
286 286
      typedef T Heap;
287 287
    };
288 288

	
289 289
    /// \brief \ref named-templ-param "Named parameter" for setting
290 290
    /// \c Heap type.
291 291
    ///
292 292
    /// \ref named-templ-param "Named parameter" for setting \c Heap
293 293
    /// type, which is used for internal Dijkstra computations.
294 294
    /// It must conform to the \ref lemon::concepts::Heap "Heap" concept,
295 295
    /// its priority type must be \c Cost and its cross reference type
296 296
    /// must be \ref RangeMap "RangeMap<int>".
297 297
    template <typename T>
298 298
    struct SetHeap
299 299
      : public CapacityScaling<GR, V, C, SetHeapTraits<T> > {
300 300
      typedef  CapacityScaling<GR, V, C, SetHeapTraits<T> > Create;
301 301
    };
302 302

	
303 303
    /// @}
304 304

	
305 305
  protected:
306 306

	
307 307
    CapacityScaling() {}
308 308

	
309 309
  public:
310 310

	
311 311
    /// \brief Constructor.
312 312
    ///
313 313
    /// The constructor of the class.
314 314
    ///
315 315
    /// \param graph The digraph the algorithm runs on.
316 316
    CapacityScaling(const GR& graph) :
317 317
      _graph(graph), _node_id(graph), _arc_idf(graph), _arc_idb(graph),
318 318
      INF(std::numeric_limits<Value>::has_infinity ?
319 319
          std::numeric_limits<Value>::infinity() :
320 320
          std::numeric_limits<Value>::max())
321 321
    {
322 322
      // Check the number types
323 323
      LEMON_ASSERT(std::numeric_limits<Value>::is_signed,
324 324
        "The flow type of CapacityScaling must be signed");
325 325
      LEMON_ASSERT(std::numeric_limits<Cost>::is_signed,
326 326
        "The cost type of CapacityScaling must be signed");
327 327

	
328 328
      // Reset data structures
329 329
      reset();
330 330
    }
331 331

	
332 332
    /// \name Parameters
333 333
    /// The parameters of the algorithm can be specified using these
334 334
    /// functions.
335 335

	
336 336
    /// @{
337 337

	
338 338
    /// \brief Set the lower bounds on the arcs.
339 339
    ///
340 340
    /// This function sets the lower bounds on the arcs.
341 341
    /// If it is not used before calling \ref run(), the lower bounds
342 342
    /// will be set to zero on all arcs.
343 343
    ///
344 344
    /// \param map An arc map storing the lower bounds.
345 345
    /// Its \c Value type must be convertible to the \c Value type
346 346
    /// of the algorithm.
347 347
    ///
348 348
    /// \return <tt>(*this)</tt>
349 349
    template <typename LowerMap>
350 350
    CapacityScaling& lowerMap(const LowerMap& map) {
351 351
      _have_lower = true;
352 352
      for (ArcIt a(_graph); a != INVALID; ++a) {
353 353
        _lower[_arc_idf[a]] = map[a];
354 354
        _lower[_arc_idb[a]] = map[a];
355 355
      }
356 356
      return *this;
357 357
    }
358 358

	
359 359
    /// \brief Set the upper bounds (capacities) on the arcs.
360 360
    ///
361 361
    /// This function sets the upper bounds (capacities) on the arcs.
362 362
    /// If it is not used before calling \ref run(), the upper bounds
363 363
    /// will be set to \ref INF on all arcs (i.e. the flow value will be
364 364
    /// unbounded from above).
365 365
    ///
366 366
    /// \param map An arc map storing the upper bounds.
367 367
    /// Its \c Value type must be convertible to the \c Value type
368 368
    /// of the algorithm.
369 369
    ///
370 370
    /// \return <tt>(*this)</tt>
371 371
    template<typename UpperMap>
372 372
    CapacityScaling& upperMap(const UpperMap& map) {
373 373
      for (ArcIt a(_graph); a != INVALID; ++a) {
374 374
        _upper[_arc_idf[a]] = map[a];
375 375
      }
376 376
      return *this;
377 377
    }
378 378

	
379 379
    /// \brief Set the costs of the arcs.
380 380
    ///
381 381
    /// This function sets the costs of the arcs.
382 382
    /// If it is not used before calling \ref run(), the costs
383 383
    /// will be set to \c 1 on all arcs.
384 384
    ///
385 385
    /// \param map An arc map storing the costs.
386 386
    /// Its \c Value type must be convertible to the \c Cost type
387 387
    /// of the algorithm.
388 388
    ///
389 389
    /// \return <tt>(*this)</tt>
390 390
    template<typename CostMap>
391 391
    CapacityScaling& costMap(const CostMap& map) {
392 392
      for (ArcIt a(_graph); a != INVALID; ++a) {
393 393
        _cost[_arc_idf[a]] =  map[a];
394 394
        _cost[_arc_idb[a]] = -map[a];
395 395
      }
396 396
      return *this;
397 397
    }
398 398

	
399 399
    /// \brief Set the supply values of the nodes.
400 400
    ///
401 401
    /// This function sets the supply values of the nodes.
402 402
    /// If neither this function nor \ref stSupply() is used before
403 403
    /// calling \ref run(), the supply of each node will be set to zero.
404 404
    ///
405 405
    /// \param map A node map storing the supply values.
406 406
    /// Its \c Value type must be convertible to the \c Value type
407 407
    /// of the algorithm.
408 408
    ///
409 409
    /// \return <tt>(*this)</tt>
410 410
    template<typename SupplyMap>
411 411
    CapacityScaling& supplyMap(const SupplyMap& map) {
412 412
      for (NodeIt n(_graph); n != INVALID; ++n) {
413 413
        _supply[_node_id[n]] = map[n];
414 414
      }
415 415
      return *this;
416 416
    }
417 417

	
418 418
    /// \brief Set single source and target nodes and a supply value.
419 419
    ///
420 420
    /// This function sets a single source node and a single target node
421 421
    /// and the required flow value.
422 422
    /// If neither this function nor \ref supplyMap() is used before
423 423
    /// calling \ref run(), the supply of each node will be set to zero.
424 424
    ///
425 425
    /// Using this function has the same effect as using \ref supplyMap()
426
    /// with such a map in which \c k is assigned to \c s, \c -k is
426
    /// with a map in which \c k is assigned to \c s, \c -k is
427 427
    /// assigned to \c t and all other nodes have zero supply value.
428 428
    ///
429 429
    /// \param s The source node.
430 430
    /// \param t The target node.
431 431
    /// \param k The required amount of flow from node \c s to node \c t
432 432
    /// (i.e. the supply of \c s and the demand of \c t).
433 433
    ///
434 434
    /// \return <tt>(*this)</tt>
435 435
    CapacityScaling& stSupply(const Node& s, const Node& t, Value k) {
436 436
      for (int i = 0; i != _node_num; ++i) {
437 437
        _supply[i] = 0;
438 438
      }
439 439
      _supply[_node_id[s]] =  k;
440 440
      _supply[_node_id[t]] = -k;
441 441
      return *this;
442 442
    }
443 443

	
444 444
    /// @}
445 445

	
446 446
    /// \name Execution control
447 447
    /// The algorithm can be executed using \ref run().
448 448

	
449 449
    /// @{
450 450

	
451 451
    /// \brief Run the algorithm.
452 452
    ///
453 453
    /// This function runs the algorithm.
454 454
    /// The paramters can be specified using functions \ref lowerMap(),
455 455
    /// \ref upperMap(), \ref costMap(), \ref supplyMap(), \ref stSupply().
456 456
    /// For example,
457 457
    /// \code
458 458
    ///   CapacityScaling<ListDigraph> cs(graph);
459 459
    ///   cs.lowerMap(lower).upperMap(upper).costMap(cost)
460 460
    ///     .supplyMap(sup).run();
461 461
    /// \endcode
462 462
    ///
463 463
    /// This function can be called more than once. All the given parameters
464 464
    /// are kept for the next call, unless \ref resetParams() or \ref reset()
465 465
    /// is used, thus only the modified parameters have to be set again.
466 466
    /// If the underlying digraph was also modified after the construction
467 467
    /// of the class (or the last \ref reset() call), then the \ref reset()
468 468
    /// function must be called.
469 469
    ///
470 470
    /// \param factor The capacity scaling factor. It must be larger than
471 471
    /// one to use scaling. If it is less or equal to one, then scaling
472 472
    /// will be disabled.
473 473
    ///
474 474
    /// \return \c INFEASIBLE if no feasible flow exists,
475 475
    /// \n \c OPTIMAL if the problem has optimal solution
476 476
    /// (i.e. it is feasible and bounded), and the algorithm has found
477 477
    /// optimal flow and node potentials (primal and dual solutions),
478 478
    /// \n \c UNBOUNDED if the digraph contains an arc of negative cost
479 479
    /// and infinite upper bound. It means that the objective function
480 480
    /// is unbounded on that arc, however, note that it could actually be
481 481
    /// bounded over the feasible flows, but this algroithm cannot handle
482 482
    /// these cases.
483 483
    ///
484 484
    /// \see ProblemType
485 485
    /// \see resetParams(), reset()
486 486
    ProblemType run(int factor = 4) {
487 487
      _factor = factor;
488 488
      ProblemType pt = init();
489 489
      if (pt != OPTIMAL) return pt;
490 490
      return start();
491 491
    }
492 492

	
493 493
    /// \brief Reset all the parameters that have been given before.
494 494
    ///
495 495
    /// This function resets all the paramaters that have been given
496 496
    /// before using functions \ref lowerMap(), \ref upperMap(),
497 497
    /// \ref costMap(), \ref supplyMap(), \ref stSupply().
498 498
    ///
499 499
    /// It is useful for multiple \ref run() calls. Basically, all the given
500 500
    /// parameters are kept for the next \ref run() call, unless
501 501
    /// \ref resetParams() or \ref reset() is used.
502 502
    /// If the underlying digraph was also modified after the construction
503 503
    /// of the class or the last \ref reset() call, then the \ref reset()
504 504
    /// function must be used, otherwise \ref resetParams() is sufficient.
505 505
    ///
506 506
    /// For example,
507 507
    /// \code
508 508
    ///   CapacityScaling<ListDigraph> cs(graph);
509 509
    ///
510 510
    ///   // First run
511 511
    ///   cs.lowerMap(lower).upperMap(upper).costMap(cost)
512 512
    ///     .supplyMap(sup).run();
513 513
    ///
514 514
    ///   // Run again with modified cost map (resetParams() is not called,
515 515
    ///   // so only the cost map have to be set again)
516 516
    ///   cost[e] += 100;
517 517
    ///   cs.costMap(cost).run();
518 518
    ///
519 519
    ///   // Run again from scratch using resetParams()
520 520
    ///   // (the lower bounds will be set to zero on all arcs)
521 521
    ///   cs.resetParams();
522 522
    ///   cs.upperMap(capacity).costMap(cost)
523 523
    ///     .supplyMap(sup).run();
524 524
    /// \endcode
525 525
    ///
526 526
    /// \return <tt>(*this)</tt>
527 527
    ///
528 528
    /// \see reset(), run()
529 529
    CapacityScaling& resetParams() {
530 530
      for (int i = 0; i != _node_num; ++i) {
531 531
        _supply[i] = 0;
532 532
      }
533 533
      for (int j = 0; j != _res_arc_num; ++j) {
534 534
        _lower[j] = 0;
535 535
        _upper[j] = INF;
536 536
        _cost[j] = _forward[j] ? 1 : -1;
537 537
      }
538 538
      _have_lower = false;
539 539
      return *this;
540 540
    }
541 541

	
542 542
    /// \brief Reset the internal data structures and all the parameters
543 543
    /// that have been given before.
544 544
    ///
545 545
    /// This function resets the internal data structures and all the
546 546
    /// paramaters that have been given before using functions \ref lowerMap(),
547 547
    /// \ref upperMap(), \ref costMap(), \ref supplyMap(), \ref stSupply().
548 548
    ///
549 549
    /// It is useful for multiple \ref run() calls. Basically, all the given
550 550
    /// parameters are kept for the next \ref run() call, unless
551 551
    /// \ref resetParams() or \ref reset() is used.
552 552
    /// If the underlying digraph was also modified after the construction
553 553
    /// of the class or the last \ref reset() call, then the \ref reset()
554 554
    /// function must be used, otherwise \ref resetParams() is sufficient.
555 555
    ///
556 556
    /// See \ref resetParams() for examples.
557 557
    ///
558 558
    /// \return <tt>(*this)</tt>
559 559
    ///
560 560
    /// \see resetParams(), run()
561 561
    CapacityScaling& reset() {
562 562
      // Resize vectors
563 563
      _node_num = countNodes(_graph);
564 564
      _arc_num = countArcs(_graph);
565 565
      _res_arc_num = 2 * (_arc_num + _node_num);
566 566
      _root = _node_num;
567 567
      ++_node_num;
568 568

	
569 569
      _first_out.resize(_node_num + 1);
570 570
      _forward.resize(_res_arc_num);
571 571
      _source.resize(_res_arc_num);
572 572
      _target.resize(_res_arc_num);
573 573
      _reverse.resize(_res_arc_num);
574 574

	
575 575
      _lower.resize(_res_arc_num);
576 576
      _upper.resize(_res_arc_num);
577 577
      _cost.resize(_res_arc_num);
578 578
      _supply.resize(_node_num);
579 579

	
580 580
      _res_cap.resize(_res_arc_num);
581 581
      _pi.resize(_node_num);
582 582
      _excess.resize(_node_num);
583 583
      _pred.resize(_node_num);
584 584

	
585 585
      // Copy the graph
586 586
      int i = 0, j = 0, k = 2 * _arc_num + _node_num - 1;
587 587
      for (NodeIt n(_graph); n != INVALID; ++n, ++i) {
588 588
        _node_id[n] = i;
589 589
      }
590 590
      i = 0;
591 591
      for (NodeIt n(_graph); n != INVALID; ++n, ++i) {
592 592
        _first_out[i] = j;
593 593
        for (OutArcIt a(_graph, n); a != INVALID; ++a, ++j) {
594 594
          _arc_idf[a] = j;
595 595
          _forward[j] = true;
596 596
          _source[j] = i;
597 597
          _target[j] = _node_id[_graph.runningNode(a)];
598 598
        }
599 599
        for (InArcIt a(_graph, n); a != INVALID; ++a, ++j) {
600 600
          _arc_idb[a] = j;
601 601
          _forward[j] = false;
602 602
          _source[j] = i;
603 603
          _target[j] = _node_id[_graph.runningNode(a)];
604 604
        }
605 605
        _forward[j] = false;
606 606
        _source[j] = i;
607 607
        _target[j] = _root;
608 608
        _reverse[j] = k;
609 609
        _forward[k] = true;
610 610
        _source[k] = _root;
611 611
        _target[k] = i;
612 612
        _reverse[k] = j;
613 613
        ++j; ++k;
614 614
      }
615 615
      _first_out[i] = j;
616 616
      _first_out[_node_num] = k;
617 617
      for (ArcIt a(_graph); a != INVALID; ++a) {
618 618
        int fi = _arc_idf[a];
619 619
        int bi = _arc_idb[a];
620 620
        _reverse[fi] = bi;
621 621
        _reverse[bi] = fi;
622 622
      }
623 623

	
624 624
      // Reset parameters
625 625
      resetParams();
626 626
      return *this;
627 627
    }
628 628

	
629 629
    /// @}
630 630

	
631 631
    /// \name Query Functions
632 632
    /// The results of the algorithm can be obtained using these
633 633
    /// functions.\n
634 634
    /// The \ref run() function must be called before using them.
635 635

	
636 636
    /// @{
637 637

	
638 638
    /// \brief Return the total cost of the found flow.
639 639
    ///
640 640
    /// This function returns the total cost of the found flow.
641 641
    /// Its complexity is O(e).
642 642
    ///
643 643
    /// \note The return type of the function can be specified as a
644 644
    /// template parameter. For example,
645 645
    /// \code
646 646
    ///   cs.totalCost<double>();
647 647
    /// \endcode
648 648
    /// It is useful if the total cost cannot be stored in the \c Cost
649 649
    /// type of the algorithm, which is the default return type of the
650 650
    /// function.
651 651
    ///
652 652
    /// \pre \ref run() must be called before using this function.
653 653
    template <typename Number>
654 654
    Number totalCost() const {
655 655
      Number c = 0;
656 656
      for (ArcIt a(_graph); a != INVALID; ++a) {
657 657
        int i = _arc_idb[a];
658 658
        c += static_cast<Number>(_res_cap[i]) *
659 659
             (-static_cast<Number>(_cost[i]));
660 660
      }
661 661
      return c;
662 662
    }
663 663

	
664 664
#ifndef DOXYGEN
665 665
    Cost totalCost() const {
666 666
      return totalCost<Cost>();
667 667
    }
668 668
#endif
669 669

	
670 670
    /// \brief Return the flow on the given arc.
671 671
    ///
672 672
    /// This function returns the flow on the given arc.
673 673
    ///
674 674
    /// \pre \ref run() must be called before using this function.
675 675
    Value flow(const Arc& a) const {
676 676
      return _res_cap[_arc_idb[a]];
677 677
    }
678 678

	
679 679
    /// \brief Return the flow map (the primal solution).
680 680
    ///
681 681
    /// This function copies the flow value on each arc into the given
682 682
    /// map. The \c Value type of the algorithm must be convertible to
683 683
    /// the \c Value type of the map.
684 684
    ///
685 685
    /// \pre \ref run() must be called before using this function.
686 686
    template <typename FlowMap>
687 687
    void flowMap(FlowMap &map) const {
688 688
      for (ArcIt a(_graph); a != INVALID; ++a) {
689 689
        map.set(a, _res_cap[_arc_idb[a]]);
690 690
      }
691 691
    }
692 692

	
693 693
    /// \brief Return the potential (dual value) of the given node.
694 694
    ///
695 695
    /// This function returns the potential (dual value) of the
696 696
    /// given node.
697 697
    ///
698 698
    /// \pre \ref run() must be called before using this function.
699 699
    Cost potential(const Node& n) const {
700 700
      return _pi[_node_id[n]];
701 701
    }
702 702

	
703 703
    /// \brief Return the potential map (the dual solution).
704 704
    ///
705 705
    /// This function copies the potential (dual value) of each node
706 706
    /// into the given map.
707 707
    /// The \c Cost type of the algorithm must be convertible to the
708 708
    /// \c Value type of the map.
709 709
    ///
710 710
    /// \pre \ref run() must be called before using this function.
711 711
    template <typename PotentialMap>
712 712
    void potentialMap(PotentialMap &map) const {
713 713
      for (NodeIt n(_graph); n != INVALID; ++n) {
714 714
        map.set(n, _pi[_node_id[n]]);
715 715
      }
716 716
    }
717 717

	
718 718
    /// @}
719 719

	
720 720
  private:
721 721

	
722 722
    // Initialize the algorithm
723 723
    ProblemType init() {
724 724
      if (_node_num <= 1) return INFEASIBLE;
725 725

	
726 726
      // Check the sum of supply values
727 727
      _sum_supply = 0;
728 728
      for (int i = 0; i != _root; ++i) {
729 729
        _sum_supply += _supply[i];
730 730
      }
731 731
      if (_sum_supply > 0) return INFEASIBLE;
732 732

	
733 733
      // Initialize vectors
734 734
      for (int i = 0; i != _root; ++i) {
735 735
        _pi[i] = 0;
736 736
        _excess[i] = _supply[i];
737 737
      }
738 738

	
739 739
      // Remove non-zero lower bounds
740 740
      const Value MAX = std::numeric_limits<Value>::max();
741 741
      int last_out;
742 742
      if (_have_lower) {
743 743
        for (int i = 0; i != _root; ++i) {
744 744
          last_out = _first_out[i+1];
745 745
          for (int j = _first_out[i]; j != last_out; ++j) {
746 746
            if (_forward[j]) {
747 747
              Value c = _lower[j];
748 748
              if (c >= 0) {
749 749
                _res_cap[j] = _upper[j] < MAX ? _upper[j] - c : INF;
750 750
              } else {
751 751
                _res_cap[j] = _upper[j] < MAX + c ? _upper[j] - c : INF;
752 752
              }
753 753
              _excess[i] -= c;
754 754
              _excess[_target[j]] += c;
755 755
            } else {
756 756
              _res_cap[j] = 0;
757 757
            }
758 758
          }
759 759
        }
760 760
      } else {
761 761
        for (int j = 0; j != _res_arc_num; ++j) {
762 762
          _res_cap[j] = _forward[j] ? _upper[j] : 0;
763 763
        }
764 764
      }
765 765

	
766 766
      // Handle negative costs
767 767
      for (int i = 0; i != _root; ++i) {
768 768
        last_out = _first_out[i+1] - 1;
769 769
        for (int j = _first_out[i]; j != last_out; ++j) {
770 770
          Value rc = _res_cap[j];
771 771
          if (_cost[j] < 0 && rc > 0) {
772 772
            if (rc >= MAX) return UNBOUNDED;
773 773
            _excess[i] -= rc;
774 774
            _excess[_target[j]] += rc;
775 775
            _res_cap[j] = 0;
776 776
            _res_cap[_reverse[j]] += rc;
777 777
          }
778 778
        }
779 779
      }
780 780

	
781 781
      // Handle GEQ supply type
782 782
      if (_sum_supply < 0) {
783 783
        _pi[_root] = 0;
784 784
        _excess[_root] = -_sum_supply;
785 785
        for (int a = _first_out[_root]; a != _res_arc_num; ++a) {
786 786
          int ra = _reverse[a];
787 787
          _res_cap[a] = -_sum_supply + 1;
788 788
          _res_cap[ra] = 0;
789 789
          _cost[a] = 0;
790 790
          _cost[ra] = 0;
791 791
        }
792 792
      } else {
793 793
        _pi[_root] = 0;
794 794
        _excess[_root] = 0;
795 795
        for (int a = _first_out[_root]; a != _res_arc_num; ++a) {
796 796
          int ra = _reverse[a];
797 797
          _res_cap[a] = 1;
798 798
          _res_cap[ra] = 0;
799 799
          _cost[a] = 0;
800 800
          _cost[ra] = 0;
801 801
        }
802 802
      }
803 803

	
804 804
      // Initialize delta value
805 805
      if (_factor > 1) {
806 806
        // With scaling
807 807
        Value max_sup = 0, max_dem = 0, max_cap = 0;
808 808
        for (int i = 0; i != _root; ++i) {
809 809
          Value ex = _excess[i];
810 810
          if ( ex > max_sup) max_sup =  ex;
811 811
          if (-ex > max_dem) max_dem = -ex;
812 812
          int last_out = _first_out[i+1] - 1;
813 813
          for (int j = _first_out[i]; j != last_out; ++j) {
814 814
            if (_res_cap[j] > max_cap) max_cap = _res_cap[j];
815 815
          }
816 816
        }
817 817
        max_sup = std::min(std::min(max_sup, max_dem), max_cap);
818 818
        for (_delta = 1; 2 * _delta <= max_sup; _delta *= 2) ;
819 819
      } else {
820 820
        // Without scaling
821 821
        _delta = 1;
822 822
      }
823 823

	
824 824
      return OPTIMAL;
825 825
    }
826 826

	
827 827
    ProblemType start() {
828 828
      // Execute the algorithm
829 829
      ProblemType pt;
830 830
      if (_delta > 1)
831 831
        pt = startWithScaling();
832 832
      else
833 833
        pt = startWithoutScaling();
834 834

	
835 835
      // Handle non-zero lower bounds
836 836
      if (_have_lower) {
837 837
        int limit = _first_out[_root];
838 838
        for (int j = 0; j != limit; ++j) {
839 839
          if (!_forward[j]) _res_cap[j] += _lower[j];
840 840
        }
841 841
      }
842 842

	
843 843
      // Shift potentials if necessary
844 844
      Cost pr = _pi[_root];
845 845
      if (_sum_supply < 0 || pr > 0) {
846 846
        for (int i = 0; i != _node_num; ++i) {
847 847
          _pi[i] -= pr;
848 848
        }
849 849
      }
850 850

	
851 851
      return pt;
852 852
    }
853 853

	
854 854
    // Execute the capacity scaling algorithm
855 855
    ProblemType startWithScaling() {
856 856
      // Perform capacity scaling phases
857 857
      int s, t;
858 858
      ResidualDijkstra _dijkstra(*this);
859 859
      while (true) {
860 860
        // Saturate all arcs not satisfying the optimality condition
861 861
        int last_out;
862 862
        for (int u = 0; u != _node_num; ++u) {
863 863
          last_out = _sum_supply < 0 ?
864 864
            _first_out[u+1] : _first_out[u+1] - 1;
865 865
          for (int a = _first_out[u]; a != last_out; ++a) {
866 866
            int v = _target[a];
867 867
            Cost c = _cost[a] + _pi[u] - _pi[v];
868 868
            Value rc = _res_cap[a];
869 869
            if (c < 0 && rc >= _delta) {
870 870
              _excess[u] -= rc;
871 871
              _excess[v] += rc;
872 872
              _res_cap[a] = 0;
873 873
              _res_cap[_reverse[a]] += rc;
874 874
            }
875 875
          }
876 876
        }
877 877

	
878 878
        // Find excess nodes and deficit nodes
879 879
        _excess_nodes.clear();
880 880
        _deficit_nodes.clear();
881 881
        for (int u = 0; u != _node_num; ++u) {
882 882
          Value ex = _excess[u];
883 883
          if (ex >=  _delta) _excess_nodes.push_back(u);
884 884
          if (ex <= -_delta) _deficit_nodes.push_back(u);
885 885
        }
886 886
        int next_node = 0, next_def_node = 0;
887 887

	
888 888
        // Find augmenting shortest paths
889 889
        while (next_node < int(_excess_nodes.size())) {
890 890
          // Check deficit nodes
891 891
          if (_delta > 1) {
892 892
            bool delta_deficit = false;
893 893
            for ( ; next_def_node < int(_deficit_nodes.size());
894 894
                    ++next_def_node ) {
895 895
              if (_excess[_deficit_nodes[next_def_node]] <= -_delta) {
896 896
                delta_deficit = true;
897 897
                break;
898 898
              }
899 899
            }
900 900
            if (!delta_deficit) break;
901 901
          }
902 902

	
903 903
          // Run Dijkstra in the residual network
904 904
          s = _excess_nodes[next_node];
905 905
          if ((t = _dijkstra.run(s, _delta)) == -1) {
906 906
            if (_delta > 1) {
907 907
              ++next_node;
908 908
              continue;
909 909
            }
910 910
            return INFEASIBLE;
911 911
          }
912 912

	
913 913
          // Augment along a shortest path from s to t
914 914
          Value d = std::min(_excess[s], -_excess[t]);
915 915
          int u = t;
916 916
          int a;
917 917
          if (d > _delta) {
918 918
            while ((a = _pred[u]) != -1) {
919 919
              if (_res_cap[a] < d) d = _res_cap[a];
920 920
              u = _source[a];
921 921
            }
922 922
          }
923 923
          u = t;
924 924
          while ((a = _pred[u]) != -1) {
925 925
            _res_cap[a] -= d;
926 926
            _res_cap[_reverse[a]] += d;
927 927
            u = _source[a];
928 928
          }
929 929
          _excess[s] -= d;
930 930
          _excess[t] += d;
931 931

	
932 932
          if (_excess[s] < _delta) ++next_node;
933 933
        }
934 934

	
935 935
        if (_delta == 1) break;
936 936
        _delta = _delta <= _factor ? 1 : _delta / _factor;
937 937
      }
938 938

	
939 939
      return OPTIMAL;
940 940
    }
941 941

	
942 942
    // Execute the successive shortest path algorithm
943 943
    ProblemType startWithoutScaling() {
944 944
      // Find excess nodes
945 945
      _excess_nodes.clear();
946 946
      for (int i = 0; i != _node_num; ++i) {
947 947
        if (_excess[i] > 0) _excess_nodes.push_back(i);
948 948
      }
949 949
      if (_excess_nodes.size() == 0) return OPTIMAL;
950 950
      int next_node = 0;
951 951

	
952 952
      // Find shortest paths
953 953
      int s, t;
954 954
      ResidualDijkstra _dijkstra(*this);
955 955
      while ( _excess[_excess_nodes[next_node]] > 0 ||
956 956
              ++next_node < int(_excess_nodes.size()) )
957 957
      {
958 958
        // Run Dijkstra in the residual network
959 959
        s = _excess_nodes[next_node];
960 960
        if ((t = _dijkstra.run(s)) == -1) return INFEASIBLE;
961 961

	
962 962
        // Augment along a shortest path from s to t
963 963
        Value d = std::min(_excess[s], -_excess[t]);
964 964
        int u = t;
965 965
        int a;
966 966
        if (d > 1) {
967 967
          while ((a = _pred[u]) != -1) {
968 968
            if (_res_cap[a] < d) d = _res_cap[a];
969 969
            u = _source[a];
970 970
          }
971 971
        }
972 972
        u = t;
973 973
        while ((a = _pred[u]) != -1) {
974 974
          _res_cap[a] -= d;
975 975
          _res_cap[_reverse[a]] += d;
976 976
          u = _source[a];
977 977
        }
978 978
        _excess[s] -= d;
979 979
        _excess[t] += d;
980 980
      }
981 981

	
982 982
      return OPTIMAL;
983 983
    }
984 984

	
985 985
  }; //class CapacityScaling
986 986

	
987 987
  ///@}
988 988

	
989 989
} //namespace lemon
990 990

	
991 991
#endif //LEMON_CAPACITY_SCALING_H
Ignore white space 6 line context
1 1
/* -*- mode: C++; indent-tabs-mode: nil; -*-
2 2
 *
3 3
 * This file is a part of LEMON, a generic C++ optimization library.
4 4
 *
5 5
 * Copyright (C) 2003-2010
6 6
 * Egervary Jeno Kombinatorikus Optimalizalasi Kutatocsoport
7 7
 * (Egervary Research Group on Combinatorial Optimization, EGRES).
8 8
 *
9 9
 * Permission to use, modify and distribute this software is granted
10 10
 * provided that this copyright notice appears in all copies. For
11 11
 * precise terms see the accompanying LICENSE file.
12 12
 *
13 13
 * This software is provided "AS IS" with no warranty of any kind,
14 14
 * express or implied, and with no claim as to its suitability for any
15 15
 * purpose.
16 16
 *
17 17
 */
18 18

	
19 19
#ifndef LEMON_CORE_H
20 20
#define LEMON_CORE_H
21 21

	
22 22
#include <vector>
23 23
#include <algorithm>
24 24

	
25 25
#include <lemon/config.h>
26 26
#include <lemon/bits/enable_if.h>
27 27
#include <lemon/bits/traits.h>
28 28
#include <lemon/assert.h>
29 29

	
30 30
// Disable the following warnings when compiling with MSVC:
31 31
// C4250: 'class1' : inherits 'class2::member' via dominance
32 32
// C4355: 'this' : used in base member initializer list
33 33
// C4503: 'function' : decorated name length exceeded, name was truncated
34 34
// C4800: 'type' : forcing value to bool 'true' or 'false' (performance warning)
35 35
// C4996: 'function': was declared deprecated
36 36
#ifdef _MSC_VER
37 37
#pragma warning( disable : 4250 4355 4503 4800 4996 )
38 38
#endif
39 39

	
40 40
///\file
41 41
///\brief LEMON core utilities.
42 42
///
43 43
///This header file contains core utilities for LEMON.
44 44
///It is automatically included by all graph types, therefore it usually
45 45
///do not have to be included directly.
46 46

	
47 47
namespace lemon {
48 48

	
49 49
  /// \brief Dummy type to make it easier to create invalid iterators.
50 50
  ///
51 51
  /// Dummy type to make it easier to create invalid iterators.
52 52
  /// See \ref INVALID for the usage.
53 53
  struct Invalid {
54 54
  public:
55 55
    bool operator==(Invalid) { return true;  }
56 56
    bool operator!=(Invalid) { return false; }
57 57
    bool operator< (Invalid) { return false; }
58 58
  };
59 59

	
60 60
  /// \brief Invalid iterators.
61 61
  ///
62 62
  /// \ref Invalid is a global type that converts to each iterator
63 63
  /// in such a way that the value of the target iterator will be invalid.
64 64
#ifdef LEMON_ONLY_TEMPLATES
65 65
  const Invalid INVALID = Invalid();
66 66
#else
67 67
  extern const Invalid INVALID;
68 68
#endif
69 69

	
70 70
  /// \addtogroup gutils
71 71
  /// @{
72 72

	
73 73
  ///Create convenience typedefs for the digraph types and iterators
74 74

	
75 75
  ///This \c \#define creates convenient type definitions for the following
76 76
  ///types of \c Digraph: \c Node,  \c NodeIt, \c Arc, \c ArcIt, \c InArcIt,
77 77
  ///\c OutArcIt, \c BoolNodeMap, \c IntNodeMap, \c DoubleNodeMap,
78 78
  ///\c BoolArcMap, \c IntArcMap, \c DoubleArcMap.
79 79
  ///
80 80
  ///\note If the graph type is a dependent type, ie. the graph type depend
81 81
  ///on a template parameter, then use \c TEMPLATE_DIGRAPH_TYPEDEFS()
82 82
  ///macro.
83 83
#define DIGRAPH_TYPEDEFS(Digraph)                                       \
84 84
  typedef Digraph::Node Node;                                           \
85 85
  typedef Digraph::NodeIt NodeIt;                                       \
86 86
  typedef Digraph::Arc Arc;                                             \
87 87
  typedef Digraph::ArcIt ArcIt;                                         \
88 88
  typedef Digraph::InArcIt InArcIt;                                     \
89 89
  typedef Digraph::OutArcIt OutArcIt;                                   \
90 90
  typedef Digraph::NodeMap<bool> BoolNodeMap;                           \
91 91
  typedef Digraph::NodeMap<int> IntNodeMap;                             \
92 92
  typedef Digraph::NodeMap<double> DoubleNodeMap;                       \
93 93
  typedef Digraph::ArcMap<bool> BoolArcMap;                             \
94 94
  typedef Digraph::ArcMap<int> IntArcMap;                               \
95 95
  typedef Digraph::ArcMap<double> DoubleArcMap
96 96

	
97 97
  ///Create convenience typedefs for the digraph types and iterators
98 98

	
99 99
  ///\see DIGRAPH_TYPEDEFS
100 100
  ///
101 101
  ///\note Use this macro, if the graph type is a dependent type,
102 102
  ///ie. the graph type depend on a template parameter.
103 103
#define TEMPLATE_DIGRAPH_TYPEDEFS(Digraph)                              \
104 104
  typedef typename Digraph::Node Node;                                  \
105 105
  typedef typename Digraph::NodeIt NodeIt;                              \
106 106
  typedef typename Digraph::Arc Arc;                                    \
107 107
  typedef typename Digraph::ArcIt ArcIt;                                \
108 108
  typedef typename Digraph::InArcIt InArcIt;                            \
109 109
  typedef typename Digraph::OutArcIt OutArcIt;                          \
110 110
  typedef typename Digraph::template NodeMap<bool> BoolNodeMap;         \
111 111
  typedef typename Digraph::template NodeMap<int> IntNodeMap;           \
112 112
  typedef typename Digraph::template NodeMap<double> DoubleNodeMap;     \
113 113
  typedef typename Digraph::template ArcMap<bool> BoolArcMap;           \
114 114
  typedef typename Digraph::template ArcMap<int> IntArcMap;             \
115 115
  typedef typename Digraph::template ArcMap<double> DoubleArcMap
116 116

	
117 117
  ///Create convenience typedefs for the graph types and iterators
118 118

	
119 119
  ///This \c \#define creates the same convenient type definitions as defined
120 120
  ///by \ref DIGRAPH_TYPEDEFS(Graph) and six more, namely it creates
121 121
  ///\c Edge, \c EdgeIt, \c IncEdgeIt, \c BoolEdgeMap, \c IntEdgeMap,
122 122
  ///\c DoubleEdgeMap.
123 123
  ///
124 124
  ///\note If the graph type is a dependent type, ie. the graph type depend
125 125
  ///on a template parameter, then use \c TEMPLATE_GRAPH_TYPEDEFS()
126 126
  ///macro.
127 127
#define GRAPH_TYPEDEFS(Graph)                                           \
128 128
  DIGRAPH_TYPEDEFS(Graph);                                              \
129 129
  typedef Graph::Edge Edge;                                             \
130 130
  typedef Graph::EdgeIt EdgeIt;                                         \
131 131
  typedef Graph::IncEdgeIt IncEdgeIt;                                   \
132 132
  typedef Graph::EdgeMap<bool> BoolEdgeMap;                             \
133 133
  typedef Graph::EdgeMap<int> IntEdgeMap;                               \
134 134
  typedef Graph::EdgeMap<double> DoubleEdgeMap
135 135

	
136 136
  ///Create convenience typedefs for the graph types and iterators
137 137

	
138 138
  ///\see GRAPH_TYPEDEFS
139 139
  ///
140 140
  ///\note Use this macro, if the graph type is a dependent type,
141 141
  ///ie. the graph type depend on a template parameter.
142 142
#define TEMPLATE_GRAPH_TYPEDEFS(Graph)                                  \
143 143
  TEMPLATE_DIGRAPH_TYPEDEFS(Graph);                                     \
144 144
  typedef typename Graph::Edge Edge;                                    \
145 145
  typedef typename Graph::EdgeIt EdgeIt;                                \
146 146
  typedef typename Graph::IncEdgeIt IncEdgeIt;                          \
147 147
  typedef typename Graph::template EdgeMap<bool> BoolEdgeMap;           \
148 148
  typedef typename Graph::template EdgeMap<int> IntEdgeMap;             \
149 149
  typedef typename Graph::template EdgeMap<double> DoubleEdgeMap
150 150

	
151 151
  /// \brief Function to count the items in a graph.
152 152
  ///
153 153
  /// This function counts the items (nodes, arcs etc.) in a graph.
154 154
  /// The complexity of the function is linear because
155 155
  /// it iterates on all of the items.
156 156
  template <typename Graph, typename Item>
157 157
  inline int countItems(const Graph& g) {
158 158
    typedef typename ItemSetTraits<Graph, Item>::ItemIt ItemIt;
159 159
    int num = 0;
160 160
    for (ItemIt it(g); it != INVALID; ++it) {
161 161
      ++num;
162 162
    }
163 163
    return num;
164 164
  }
165 165

	
166 166
  // Node counting:
167 167

	
168 168
  namespace _core_bits {
169 169

	
170 170
    template <typename Graph, typename Enable = void>
171 171
    struct CountNodesSelector {
172 172
      static int count(const Graph &g) {
173 173
        return countItems<Graph, typename Graph::Node>(g);
174 174
      }
175 175
    };
176 176

	
177 177
    template <typename Graph>
178 178
    struct CountNodesSelector<
179 179
      Graph, typename
180 180
      enable_if<typename Graph::NodeNumTag, void>::type>
181 181
    {
182 182
      static int count(const Graph &g) {
183 183
        return g.nodeNum();
184 184
      }
185 185
    };
186 186
  }
187 187

	
188 188
  /// \brief Function to count the nodes in the graph.
189 189
  ///
190 190
  /// This function counts the nodes in the graph.
191 191
  /// The complexity of the function is <em>O</em>(<em>n</em>), but for some
192 192
  /// graph structures it is specialized to run in <em>O</em>(1).
193 193
  ///
194 194
  /// \note If the graph contains a \c nodeNum() member function and a
195 195
  /// \c NodeNumTag tag then this function calls directly the member
196 196
  /// function to query the cardinality of the node set.
197 197
  template <typename Graph>
198 198
  inline int countNodes(const Graph& g) {
199 199
    return _core_bits::CountNodesSelector<Graph>::count(g);
200 200
  }
201 201

	
202 202
  // Arc counting:
203 203

	
204 204
  namespace _core_bits {
205 205

	
206 206
    template <typename Graph, typename Enable = void>
207 207
    struct CountArcsSelector {
208 208
      static int count(const Graph &g) {
209 209
        return countItems<Graph, typename Graph::Arc>(g);
210 210
      }
211 211
    };
212 212

	
213 213
    template <typename Graph>
214 214
    struct CountArcsSelector<
215 215
      Graph,
216 216
      typename enable_if<typename Graph::ArcNumTag, void>::type>
217 217
    {
218 218
      static int count(const Graph &g) {
219 219
        return g.arcNum();
220 220
      }
221 221
    };
222 222
  }
223 223

	
224 224
  /// \brief Function to count the arcs in the graph.
225 225
  ///
226 226
  /// This function counts the arcs in the graph.
227 227
  /// The complexity of the function is <em>O</em>(<em>m</em>), but for some
228 228
  /// graph structures it is specialized to run in <em>O</em>(1).
229 229
  ///
230 230
  /// \note If the graph contains a \c arcNum() member function and a
231 231
  /// \c ArcNumTag tag then this function calls directly the member
232 232
  /// function to query the cardinality of the arc set.
233 233
  template <typename Graph>
234 234
  inline int countArcs(const Graph& g) {
235 235
    return _core_bits::CountArcsSelector<Graph>::count(g);
236 236
  }
237 237

	
238 238
  // Edge counting:
239 239

	
240 240
  namespace _core_bits {
241 241

	
242 242
    template <typename Graph, typename Enable = void>
243 243
    struct CountEdgesSelector {
244 244
      static int count(const Graph &g) {
245 245
        return countItems<Graph, typename Graph::Edge>(g);
246 246
      }
247 247
    };
248 248

	
249 249
    template <typename Graph>
250 250
    struct CountEdgesSelector<
251 251
      Graph,
252 252
      typename enable_if<typename Graph::EdgeNumTag, void>::type>
253 253
    {
254 254
      static int count(const Graph &g) {
255 255
        return g.edgeNum();
256 256
      }
257 257
    };
258 258
  }
259 259

	
260 260
  /// \brief Function to count the edges in the graph.
261 261
  ///
262 262
  /// This function counts the edges in the graph.
263 263
  /// The complexity of the function is <em>O</em>(<em>m</em>), but for some
264 264
  /// graph structures it is specialized to run in <em>O</em>(1).
265 265
  ///
266 266
  /// \note If the graph contains a \c edgeNum() member function and a
267 267
  /// \c EdgeNumTag tag then this function calls directly the member
268 268
  /// function to query the cardinality of the edge set.
269 269
  template <typename Graph>
270 270
  inline int countEdges(const Graph& g) {
271 271
    return _core_bits::CountEdgesSelector<Graph>::count(g);
272 272

	
273 273
  }
274 274

	
275 275

	
276 276
  template <typename Graph, typename DegIt>
277 277
  inline int countNodeDegree(const Graph& _g, const typename Graph::Node& _n) {
278 278
    int num = 0;
279 279
    for (DegIt it(_g, _n); it != INVALID; ++it) {
280 280
      ++num;
281 281
    }
282 282
    return num;
283 283
  }
284 284

	
285 285
  /// \brief Function to count the number of the out-arcs from node \c n.
286 286
  ///
287 287
  /// This function counts the number of the out-arcs from node \c n
288 288
  /// in the graph \c g.
289 289
  template <typename Graph>
290 290
  inline int countOutArcs(const Graph& g,  const typename Graph::Node& n) {
291 291
    return countNodeDegree<Graph, typename Graph::OutArcIt>(g, n);
292 292
  }
293 293

	
294 294
  /// \brief Function to count the number of the in-arcs to node \c n.
295 295
  ///
296 296
  /// This function counts the number of the in-arcs to node \c n
297 297
  /// in the graph \c g.
298 298
  template <typename Graph>
299 299
  inline int countInArcs(const Graph& g,  const typename Graph::Node& n) {
300 300
    return countNodeDegree<Graph, typename Graph::InArcIt>(g, n);
301 301
  }
302 302

	
303 303
  /// \brief Function to count the number of the inc-edges to node \c n.
304 304
  ///
305 305
  /// This function counts the number of the inc-edges to node \c n
306 306
  /// in the undirected graph \c g.
307 307
  template <typename Graph>
308 308
  inline int countIncEdges(const Graph& g,  const typename Graph::Node& n) {
309 309
    return countNodeDegree<Graph, typename Graph::IncEdgeIt>(g, n);
310 310
  }
311 311

	
312 312
  namespace _core_bits {
313 313

	
314 314
    template <typename Digraph, typename Item, typename RefMap>
315 315
    class MapCopyBase {
316 316
    public:
317 317
      virtual void copy(const Digraph& from, const RefMap& refMap) = 0;
318 318

	
319 319
      virtual ~MapCopyBase() {}
320 320
    };
321 321

	
322 322
    template <typename Digraph, typename Item, typename RefMap,
323 323
              typename FromMap, typename ToMap>
324 324
    class MapCopy : public MapCopyBase<Digraph, Item, RefMap> {
325 325
    public:
326 326

	
327 327
      MapCopy(const FromMap& map, ToMap& tmap)
328 328
        : _map(map), _tmap(tmap) {}
329 329

	
330 330
      virtual void copy(const Digraph& digraph, const RefMap& refMap) {
331 331
        typedef typename ItemSetTraits<Digraph, Item>::ItemIt ItemIt;
332 332
        for (ItemIt it(digraph); it != INVALID; ++it) {
333 333
          _tmap.set(refMap[it], _map[it]);
334 334
        }
335 335
      }
336 336

	
337 337
    private:
338 338
      const FromMap& _map;
339 339
      ToMap& _tmap;
340 340
    };
341 341

	
342 342
    template <typename Digraph, typename Item, typename RefMap, typename It>
343 343
    class ItemCopy : public MapCopyBase<Digraph, Item, RefMap> {
344 344
    public:
345 345

	
346 346
      ItemCopy(const Item& item, It& it) : _item(item), _it(it) {}
347 347

	
348 348
      virtual void copy(const Digraph&, const RefMap& refMap) {
349 349
        _it = refMap[_item];
350 350
      }
351 351

	
352 352
    private:
353 353
      Item _item;
354 354
      It& _it;
355 355
    };
356 356

	
357 357
    template <typename Digraph, typename Item, typename RefMap, typename Ref>
358 358
    class RefCopy : public MapCopyBase<Digraph, Item, RefMap> {
359 359
    public:
360 360

	
361 361
      RefCopy(Ref& map) : _map(map) {}
362 362

	
363 363
      virtual void copy(const Digraph& digraph, const RefMap& refMap) {
364 364
        typedef typename ItemSetTraits<Digraph, Item>::ItemIt ItemIt;
365 365
        for (ItemIt it(digraph); it != INVALID; ++it) {
366 366
          _map.set(it, refMap[it]);
367 367
        }
368 368
      }
369 369

	
370 370
    private:
371 371
      Ref& _map;
372 372
    };
373 373

	
374 374
    template <typename Digraph, typename Item, typename RefMap,
375 375
              typename CrossRef>
376 376
    class CrossRefCopy : public MapCopyBase<Digraph, Item, RefMap> {
377 377
    public:
378 378

	
379 379
      CrossRefCopy(CrossRef& cmap) : _cmap(cmap) {}
380 380

	
381 381
      virtual void copy(const Digraph& digraph, const RefMap& refMap) {
382 382
        typedef typename ItemSetTraits<Digraph, Item>::ItemIt ItemIt;
383 383
        for (ItemIt it(digraph); it != INVALID; ++it) {
384 384
          _cmap.set(refMap[it], it);
385 385
        }
386 386
      }
387 387

	
388 388
    private:
389 389
      CrossRef& _cmap;
390 390
    };
391 391

	
392 392
    template <typename Digraph, typename Enable = void>
393 393
    struct DigraphCopySelector {
394 394
      template <typename From, typename NodeRefMap, typename ArcRefMap>
395 395
      static void copy(const From& from, Digraph &to,
396 396
                       NodeRefMap& nodeRefMap, ArcRefMap& arcRefMap) {
397 397
        to.clear();
398 398
        for (typename From::NodeIt it(from); it != INVALID; ++it) {
399 399
          nodeRefMap[it] = to.addNode();
400 400
        }
401 401
        for (typename From::ArcIt it(from); it != INVALID; ++it) {
402 402
          arcRefMap[it] = to.addArc(nodeRefMap[from.source(it)],
403 403
                                    nodeRefMap[from.target(it)]);
404 404
        }
405 405
      }
406 406
    };
407 407

	
408 408
    template <typename Digraph>
409 409
    struct DigraphCopySelector<
410 410
      Digraph,
411 411
      typename enable_if<typename Digraph::BuildTag, void>::type>
412 412
    {
413 413
      template <typename From, typename NodeRefMap, typename ArcRefMap>
414 414
      static void copy(const From& from, Digraph &to,
415 415
                       NodeRefMap& nodeRefMap, ArcRefMap& arcRefMap) {
416 416
        to.build(from, nodeRefMap, arcRefMap);
417 417
      }
418 418
    };
419 419

	
420 420
    template <typename Graph, typename Enable = void>
421 421
    struct GraphCopySelector {
422 422
      template <typename From, typename NodeRefMap, typename EdgeRefMap>
423 423
      static void copy(const From& from, Graph &to,
424 424
                       NodeRefMap& nodeRefMap, EdgeRefMap& edgeRefMap) {
425 425
        to.clear();
426 426
        for (typename From::NodeIt it(from); it != INVALID; ++it) {
427 427
          nodeRefMap[it] = to.addNode();
428 428
        }
429 429
        for (typename From::EdgeIt it(from); it != INVALID; ++it) {
430 430
          edgeRefMap[it] = to.addEdge(nodeRefMap[from.u(it)],
431 431
                                      nodeRefMap[from.v(it)]);
432 432
        }
433 433
      }
434 434
    };
435 435

	
436 436
    template <typename Graph>
437 437
    struct GraphCopySelector<
438 438
      Graph,
439 439
      typename enable_if<typename Graph::BuildTag, void>::type>
440 440
    {
441 441
      template <typename From, typename NodeRefMap, typename EdgeRefMap>
442 442
      static void copy(const From& from, Graph &to,
443 443
                       NodeRefMap& nodeRefMap, EdgeRefMap& edgeRefMap) {
444 444
        to.build(from, nodeRefMap, edgeRefMap);
445 445
      }
446 446
    };
447 447

	
448 448
  }
449 449

	
450
  /// Check whether a graph is undirected.
450
  /// \brief Check whether a graph is undirected.
451 451
  ///
452 452
  /// This function returns \c true if the given graph is undirected.
453 453
#ifdef DOXYGEN
454 454
  template <typename GR>
455 455
  bool undirected(const GR& g) { return false; }
456 456
#else
457 457
  template <typename GR>
458 458
  typename enable_if<UndirectedTagIndicator<GR>, bool>::type
459 459
  undirected(const GR&) {
460 460
    return true;
461 461
  }
462 462
  template <typename GR>
463 463
  typename disable_if<UndirectedTagIndicator<GR>, bool>::type
464 464
  undirected(const GR&) {
465 465
    return false;
466 466
  }
467 467
#endif
468 468

	
469 469
  /// \brief Class to copy a digraph.
470 470
  ///
471 471
  /// Class to copy a digraph to another digraph (duplicate a digraph). The
472 472
  /// simplest way of using it is through the \c digraphCopy() function.
473 473
  ///
474 474
  /// This class not only make a copy of a digraph, but it can create
475 475
  /// references and cross references between the nodes and arcs of
476 476
  /// the two digraphs, and it can copy maps to use with the newly created
477 477
  /// digraph.
478 478
  ///
479 479
  /// To make a copy from a digraph, first an instance of DigraphCopy
480 480
  /// should be created, then the data belongs to the digraph should
481 481
  /// assigned to copy. In the end, the \c run() member should be
482 482
  /// called.
483 483
  ///
484 484
  /// The next code copies a digraph with several data:
485 485
  ///\code
486 486
  ///  DigraphCopy<OrigGraph, NewGraph> cg(orig_graph, new_graph);
487 487
  ///  // Create references for the nodes
488 488
  ///  OrigGraph::NodeMap<NewGraph::Node> nr(orig_graph);
489 489
  ///  cg.nodeRef(nr);
490 490
  ///  // Create cross references (inverse) for the arcs
491 491
  ///  NewGraph::ArcMap<OrigGraph::Arc> acr(new_graph);
492 492
  ///  cg.arcCrossRef(acr);
493 493
  ///  // Copy an arc map
494 494
  ///  OrigGraph::ArcMap<double> oamap(orig_graph);
495 495
  ///  NewGraph::ArcMap<double> namap(new_graph);
496 496
  ///  cg.arcMap(oamap, namap);
497 497
  ///  // Copy a node
498 498
  ///  OrigGraph::Node on;
499 499
  ///  NewGraph::Node nn;
500 500
  ///  cg.node(on, nn);
501 501
  ///  // Execute copying
502 502
  ///  cg.run();
503 503
  ///\endcode
504 504
  template <typename From, typename To>
505 505
  class DigraphCopy {
506 506
  private:
507 507

	
508 508
    typedef typename From::Node Node;
509 509
    typedef typename From::NodeIt NodeIt;
510 510
    typedef typename From::Arc Arc;
511 511
    typedef typename From::ArcIt ArcIt;
512 512

	
513 513
    typedef typename To::Node TNode;
514 514
    typedef typename To::Arc TArc;
515 515

	
516 516
    typedef typename From::template NodeMap<TNode> NodeRefMap;
517 517
    typedef typename From::template ArcMap<TArc> ArcRefMap;
518 518

	
519 519
  public:
520 520

	
521 521
    /// \brief Constructor of DigraphCopy.
522 522
    ///
523 523
    /// Constructor of DigraphCopy for copying the content of the
524 524
    /// \c from digraph into the \c to digraph.
525 525
    DigraphCopy(const From& from, To& to)
526 526
      : _from(from), _to(to) {}
527 527

	
528 528
    /// \brief Destructor of DigraphCopy
529 529
    ///
530 530
    /// Destructor of DigraphCopy.
531 531
    ~DigraphCopy() {
532 532
      for (int i = 0; i < int(_node_maps.size()); ++i) {
533 533
        delete _node_maps[i];
534 534
      }
535 535
      for (int i = 0; i < int(_arc_maps.size()); ++i) {
536 536
        delete _arc_maps[i];
537 537
      }
538 538

	
539 539
    }
540 540

	
541 541
    /// \brief Copy the node references into the given map.
542 542
    ///
543 543
    /// This function copies the node references into the given map.
544 544
    /// The parameter should be a map, whose key type is the Node type of
545 545
    /// the source digraph, while the value type is the Node type of the
546 546
    /// destination digraph.
547 547
    template <typename NodeRef>
548 548
    DigraphCopy& nodeRef(NodeRef& map) {
549 549
      _node_maps.push_back(new _core_bits::RefCopy<From, Node,
550 550
                           NodeRefMap, NodeRef>(map));
551 551
      return *this;
552 552
    }
553 553

	
554 554
    /// \brief Copy the node cross references into the given map.
555 555
    ///
556 556
    /// This function copies the node cross references (reverse references)
557 557
    /// into the given map. The parameter should be a map, whose key type
558 558
    /// is the Node type of the destination digraph, while the value type is
559 559
    /// the Node type of the source digraph.
560 560
    template <typename NodeCrossRef>
561 561
    DigraphCopy& nodeCrossRef(NodeCrossRef& map) {
562 562
      _node_maps.push_back(new _core_bits::CrossRefCopy<From, Node,
563 563
                           NodeRefMap, NodeCrossRef>(map));
564 564
      return *this;
565 565
    }
566 566

	
567 567
    /// \brief Make a copy of the given node map.
568 568
    ///
569 569
    /// This function makes a copy of the given node map for the newly
570 570
    /// created digraph.
571 571
    /// The key type of the new map \c tmap should be the Node type of the
572 572
    /// destination digraph, and the key type of the original map \c map
573 573
    /// should be the Node type of the source digraph.
574 574
    template <typename FromMap, typename ToMap>
575 575
    DigraphCopy& nodeMap(const FromMap& map, ToMap& tmap) {
576 576
      _node_maps.push_back(new _core_bits::MapCopy<From, Node,
577 577
                           NodeRefMap, FromMap, ToMap>(map, tmap));
578 578
      return *this;
579 579
    }
580 580

	
581 581
    /// \brief Make a copy of the given node.
582 582
    ///
583 583
    /// This function makes a copy of the given node.
584 584
    DigraphCopy& node(const Node& node, TNode& tnode) {
585 585
      _node_maps.push_back(new _core_bits::ItemCopy<From, Node,
586 586
                           NodeRefMap, TNode>(node, tnode));
587 587
      return *this;
588 588
    }
589 589

	
590 590
    /// \brief Copy the arc references into the given map.
591 591
    ///
592 592
    /// This function copies the arc references into the given map.
593 593
    /// The parameter should be a map, whose key type is the Arc type of
594 594
    /// the source digraph, while the value type is the Arc type of the
595 595
    /// destination digraph.
596 596
    template <typename ArcRef>
597 597
    DigraphCopy& arcRef(ArcRef& map) {
598 598
      _arc_maps.push_back(new _core_bits::RefCopy<From, Arc,
599 599
                          ArcRefMap, ArcRef>(map));
600 600
      return *this;
601 601
    }
602 602

	
603 603
    /// \brief Copy the arc cross references into the given map.
604 604
    ///
605 605
    /// This function copies the arc cross references (reverse references)
606 606
    /// into the given map. The parameter should be a map, whose key type
607 607
    /// is the Arc type of the destination digraph, while the value type is
608 608
    /// the Arc type of the source digraph.
609 609
    template <typename ArcCrossRef>
610 610
    DigraphCopy& arcCrossRef(ArcCrossRef& map) {
611 611
      _arc_maps.push_back(new _core_bits::CrossRefCopy<From, Arc,
612 612
                          ArcRefMap, ArcCrossRef>(map));
613 613
      return *this;
614 614
    }
615 615

	
616 616
    /// \brief Make a copy of the given arc map.
617 617
    ///
618 618
    /// This function makes a copy of the given arc map for the newly
619 619
    /// created digraph.
620 620
    /// The key type of the new map \c tmap should be the Arc type of the
621 621
    /// destination digraph, and the key type of the original map \c map
622 622
    /// should be the Arc type of the source digraph.
623 623
    template <typename FromMap, typename ToMap>
624 624
    DigraphCopy& arcMap(const FromMap& map, ToMap& tmap) {
625 625
      _arc_maps.push_back(new _core_bits::MapCopy<From, Arc,
626 626
                          ArcRefMap, FromMap, ToMap>(map, tmap));
627 627
      return *this;
628 628
    }
629 629

	
630 630
    /// \brief Make a copy of the given arc.
631 631
    ///
632 632
    /// This function makes a copy of the given arc.
633 633
    DigraphCopy& arc(const Arc& arc, TArc& tarc) {
634 634
      _arc_maps.push_back(new _core_bits::ItemCopy<From, Arc,
635 635
                          ArcRefMap, TArc>(arc, tarc));
636 636
      return *this;
637 637
    }
638 638

	
639 639
    /// \brief Execute copying.
640 640
    ///
641 641
    /// This function executes the copying of the digraph along with the
642 642
    /// copying of the assigned data.
643 643
    void run() {
644 644
      NodeRefMap nodeRefMap(_from);
645 645
      ArcRefMap arcRefMap(_from);
646 646
      _core_bits::DigraphCopySelector<To>::
647 647
        copy(_from, _to, nodeRefMap, arcRefMap);
648 648
      for (int i = 0; i < int(_node_maps.size()); ++i) {
649 649
        _node_maps[i]->copy(_from, nodeRefMap);
650 650
      }
651 651
      for (int i = 0; i < int(_arc_maps.size()); ++i) {
652 652
        _arc_maps[i]->copy(_from, arcRefMap);
653 653
      }
654 654
    }
655 655

	
656 656
  protected:
657 657

	
658 658
    const From& _from;
659 659
    To& _to;
660 660

	
661 661
    std::vector<_core_bits::MapCopyBase<From, Node, NodeRefMap>* >
662 662
      _node_maps;
663 663

	
664 664
    std::vector<_core_bits::MapCopyBase<From, Arc, ArcRefMap>* >
665 665
      _arc_maps;
666 666

	
667 667
  };
668 668

	
669 669
  /// \brief Copy a digraph to another digraph.
670 670
  ///
671 671
  /// This function copies a digraph to another digraph.
672 672
  /// The complete usage of it is detailed in the DigraphCopy class, but
673 673
  /// a short example shows a basic work:
674 674
  ///\code
675 675
  /// digraphCopy(src, trg).nodeRef(nr).arcCrossRef(acr).run();
676 676
  ///\endcode
677 677
  ///
678 678
  /// After the copy the \c nr map will contain the mapping from the
679 679
  /// nodes of the \c from digraph to the nodes of the \c to digraph and
680 680
  /// \c acr will contain the mapping from the arcs of the \c to digraph
681 681
  /// to the arcs of the \c from digraph.
682 682
  ///
683 683
  /// \see DigraphCopy
684 684
  template <typename From, typename To>
685 685
  DigraphCopy<From, To> digraphCopy(const From& from, To& to) {
686 686
    return DigraphCopy<From, To>(from, to);
687 687
  }
688 688

	
689 689
  /// \brief Class to copy a graph.
690 690
  ///
691 691
  /// Class to copy a graph to another graph (duplicate a graph). The
692 692
  /// simplest way of using it is through the \c graphCopy() function.
693 693
  ///
694 694
  /// This class not only make a copy of a graph, but it can create
695 695
  /// references and cross references between the nodes, edges and arcs of
696 696
  /// the two graphs, and it can copy maps for using with the newly created
697 697
  /// graph.
698 698
  ///
699 699
  /// To make a copy from a graph, first an instance of GraphCopy
700 700
  /// should be created, then the data belongs to the graph should
701 701
  /// assigned to copy. In the end, the \c run() member should be
702 702
  /// called.
703 703
  ///
704 704
  /// The next code copies a graph with several data:
705 705
  ///\code
706 706
  ///  GraphCopy<OrigGraph, NewGraph> cg(orig_graph, new_graph);
707 707
  ///  // Create references for the nodes
708 708
  ///  OrigGraph::NodeMap<NewGraph::Node> nr(orig_graph);
709 709
  ///  cg.nodeRef(nr);
710 710
  ///  // Create cross references (inverse) for the edges
711 711
  ///  NewGraph::EdgeMap<OrigGraph::Edge> ecr(new_graph);
712 712
  ///  cg.edgeCrossRef(ecr);
713 713
  ///  // Copy an edge map
714 714
  ///  OrigGraph::EdgeMap<double> oemap(orig_graph);
715 715
  ///  NewGraph::EdgeMap<double> nemap(new_graph);
716 716
  ///  cg.edgeMap(oemap, nemap);
717 717
  ///  // Copy a node
718 718
  ///  OrigGraph::Node on;
719 719
  ///  NewGraph::Node nn;
720 720
  ///  cg.node(on, nn);
721 721
  ///  // Execute copying
722 722
  ///  cg.run();
723 723
  ///\endcode
724 724
  template <typename From, typename To>
725 725
  class GraphCopy {
726 726
  private:
727 727

	
728 728
    typedef typename From::Node Node;
729 729
    typedef typename From::NodeIt NodeIt;
730 730
    typedef typename From::Arc Arc;
731 731
    typedef typename From::ArcIt ArcIt;
732 732
    typedef typename From::Edge Edge;
733 733
    typedef typename From::EdgeIt EdgeIt;
734 734

	
735 735
    typedef typename To::Node TNode;
736 736
    typedef typename To::Arc TArc;
737 737
    typedef typename To::Edge TEdge;
738 738

	
739 739
    typedef typename From::template NodeMap<TNode> NodeRefMap;
740 740
    typedef typename From::template EdgeMap<TEdge> EdgeRefMap;
741 741

	
742 742
    struct ArcRefMap {
743 743
      ArcRefMap(const From& from, const To& to,
744 744
                const EdgeRefMap& edge_ref, const NodeRefMap& node_ref)
745 745
        : _from(from), _to(to),
746 746
          _edge_ref(edge_ref), _node_ref(node_ref) {}
747 747

	
748 748
      typedef typename From::Arc Key;
749 749
      typedef typename To::Arc Value;
750 750

	
751 751
      Value operator[](const Key& key) const {
752 752
        bool forward = _from.u(key) != _from.v(key) ?
753 753
          _node_ref[_from.source(key)] ==
754 754
          _to.source(_to.direct(_edge_ref[key], true)) :
755 755
          _from.direction(key);
756 756
        return _to.direct(_edge_ref[key], forward);
757 757
      }
758 758

	
759 759
      const From& _from;
760 760
      const To& _to;
761 761
      const EdgeRefMap& _edge_ref;
762 762
      const NodeRefMap& _node_ref;
763 763
    };
764 764

	
765 765
  public:
766 766

	
767 767
    /// \brief Constructor of GraphCopy.
768 768
    ///
769 769
    /// Constructor of GraphCopy for copying the content of the
770 770
    /// \c from graph into the \c to graph.
771 771
    GraphCopy(const From& from, To& to)
772 772
      : _from(from), _to(to) {}
773 773

	
774 774
    /// \brief Destructor of GraphCopy
775 775
    ///
776 776
    /// Destructor of GraphCopy.
777 777
    ~GraphCopy() {
778 778
      for (int i = 0; i < int(_node_maps.size()); ++i) {
779 779
        delete _node_maps[i];
780 780
      }
781 781
      for (int i = 0; i < int(_arc_maps.size()); ++i) {
782 782
        delete _arc_maps[i];
783 783
      }
784 784
      for (int i = 0; i < int(_edge_maps.size()); ++i) {
785 785
        delete _edge_maps[i];
786 786
      }
787 787
    }
788 788

	
789 789
    /// \brief Copy the node references into the given map.
790 790
    ///
791 791
    /// This function copies the node references into the given map.
792 792
    /// The parameter should be a map, whose key type is the Node type of
793 793
    /// the source graph, while the value type is the Node type of the
794 794
    /// destination graph.
795 795
    template <typename NodeRef>
796 796
    GraphCopy& nodeRef(NodeRef& map) {
797 797
      _node_maps.push_back(new _core_bits::RefCopy<From, Node,
798 798
                           NodeRefMap, NodeRef>(map));
799 799
      return *this;
800 800
    }
801 801

	
802 802
    /// \brief Copy the node cross references into the given map.
803 803
    ///
804 804
    /// This function copies the node cross references (reverse references)
805 805
    /// into the given map. The parameter should be a map, whose key type
806 806
    /// is the Node type of the destination graph, while the value type is
807 807
    /// the Node type of the source graph.
808 808
    template <typename NodeCrossRef>
809 809
    GraphCopy& nodeCrossRef(NodeCrossRef& map) {
810 810
      _node_maps.push_back(new _core_bits::CrossRefCopy<From, Node,
811 811
                           NodeRefMap, NodeCrossRef>(map));
812 812
      return *this;
813 813
    }
814 814

	
815 815
    /// \brief Make a copy of the given node map.
816 816
    ///
817 817
    /// This function makes a copy of the given node map for the newly
818 818
    /// created graph.
819 819
    /// The key type of the new map \c tmap should be the Node type of the
820 820
    /// destination graph, and the key type of the original map \c map
821 821
    /// should be the Node type of the source graph.
822 822
    template <typename FromMap, typename ToMap>
823 823
    GraphCopy& nodeMap(const FromMap& map, ToMap& tmap) {
824 824
      _node_maps.push_back(new _core_bits::MapCopy<From, Node,
825 825
                           NodeRefMap, FromMap, ToMap>(map, tmap));
826 826
      return *this;
827 827
    }
828 828

	
829 829
    /// \brief Make a copy of the given node.
830 830
    ///
831 831
    /// This function makes a copy of the given node.
832 832
    GraphCopy& node(const Node& node, TNode& tnode) {
833 833
      _node_maps.push_back(new _core_bits::ItemCopy<From, Node,
834 834
                           NodeRefMap, TNode>(node, tnode));
835 835
      return *this;
836 836
    }
837 837

	
838 838
    /// \brief Copy the arc references into the given map.
839 839
    ///
840 840
    /// This function copies the arc references into the given map.
841 841
    /// The parameter should be a map, whose key type is the Arc type of
842 842
    /// the source graph, while the value type is the Arc type of the
843 843
    /// destination graph.
844 844
    template <typename ArcRef>
845 845
    GraphCopy& arcRef(ArcRef& map) {
846 846
      _arc_maps.push_back(new _core_bits::RefCopy<From, Arc,
847 847
                          ArcRefMap, ArcRef>(map));
848 848
      return *this;
849 849
    }
850 850

	
851 851
    /// \brief Copy the arc cross references into the given map.
852 852
    ///
853 853
    /// This function copies the arc cross references (reverse references)
854 854
    /// into the given map. The parameter should be a map, whose key type
855 855
    /// is the Arc type of the destination graph, while the value type is
856 856
    /// the Arc type of the source graph.
857 857
    template <typename ArcCrossRef>
858 858
    GraphCopy& arcCrossRef(ArcCrossRef& map) {
859 859
      _arc_maps.push_back(new _core_bits::CrossRefCopy<From, Arc,
860 860
                          ArcRefMap, ArcCrossRef>(map));
861 861
      return *this;
862 862
    }
863 863

	
864 864
    /// \brief Make a copy of the given arc map.
865 865
    ///
866 866
    /// This function makes a copy of the given arc map for the newly
867 867
    /// created graph.
868 868
    /// The key type of the new map \c tmap should be the Arc type of the
869 869
    /// destination graph, and the key type of the original map \c map
870 870
    /// should be the Arc type of the source graph.
871 871
    template <typename FromMap, typename ToMap>
872 872
    GraphCopy& arcMap(const FromMap& map, ToMap& tmap) {
873 873
      _arc_maps.push_back(new _core_bits::MapCopy<From, Arc,
874 874
                          ArcRefMap, FromMap, ToMap>(map, tmap));
875 875
      return *this;
876 876
    }
877 877

	
878 878
    /// \brief Make a copy of the given arc.
879 879
    ///
880 880
    /// This function makes a copy of the given arc.
881 881
    GraphCopy& arc(const Arc& arc, TArc& tarc) {
882 882
      _arc_maps.push_back(new _core_bits::ItemCopy<From, Arc,
883 883
                          ArcRefMap, TArc>(arc, tarc));
884 884
      return *this;
885 885
    }
886 886

	
887 887
    /// \brief Copy the edge references into the given map.
888 888
    ///
889 889
    /// This function copies the edge references into the given map.
890 890
    /// The parameter should be a map, whose key type is the Edge type of
891 891
    /// the source graph, while the value type is the Edge type of the
892 892
    /// destination graph.
893 893
    template <typename EdgeRef>
894 894
    GraphCopy& edgeRef(EdgeRef& map) {
895 895
      _edge_maps.push_back(new _core_bits::RefCopy<From, Edge,
896 896
                           EdgeRefMap, EdgeRef>(map));
897 897
      return *this;
898 898
    }
899 899

	
900 900
    /// \brief Copy the edge cross references into the given map.
901 901
    ///
902 902
    /// This function copies the edge cross references (reverse references)
903 903
    /// into the given map. The parameter should be a map, whose key type
904 904
    /// is the Edge type of the destination graph, while the value type is
905 905
    /// the Edge type of the source graph.
906 906
    template <typename EdgeCrossRef>
907 907
    GraphCopy& edgeCrossRef(EdgeCrossRef& map) {
908 908
      _edge_maps.push_back(new _core_bits::CrossRefCopy<From,
909 909
                           Edge, EdgeRefMap, EdgeCrossRef>(map));
910 910
      return *this;
911 911
    }
912 912

	
913 913
    /// \brief Make a copy of the given edge map.
914 914
    ///
915 915
    /// This function makes a copy of the given edge map for the newly
916 916
    /// created graph.
917 917
    /// The key type of the new map \c tmap should be the Edge type of the
918 918
    /// destination graph, and the key type of the original map \c map
919 919
    /// should be the Edge type of the source graph.
920 920
    template <typename FromMap, typename ToMap>
921 921
    GraphCopy& edgeMap(const FromMap& map, ToMap& tmap) {
922 922
      _edge_maps.push_back(new _core_bits::MapCopy<From, Edge,
923 923
                           EdgeRefMap, FromMap, ToMap>(map, tmap));
924 924
      return *this;
925 925
    }
926 926

	
927 927
    /// \brief Make a copy of the given edge.
928 928
    ///
929 929
    /// This function makes a copy of the given edge.
930 930
    GraphCopy& edge(const Edge& edge, TEdge& tedge) {
931 931
      _edge_maps.push_back(new _core_bits::ItemCopy<From, Edge,
932 932
                           EdgeRefMap, TEdge>(edge, tedge));
933 933
      return *this;
934 934
    }
935 935

	
936 936
    /// \brief Execute copying.
937 937
    ///
938 938
    /// This function executes the copying of the graph along with the
939 939
    /// copying of the assigned data.
940 940
    void run() {
941 941
      NodeRefMap nodeRefMap(_from);
942 942
      EdgeRefMap edgeRefMap(_from);
943 943
      ArcRefMap arcRefMap(_from, _to, edgeRefMap, nodeRefMap);
944 944
      _core_bits::GraphCopySelector<To>::
945 945
        copy(_from, _to, nodeRefMap, edgeRefMap);
946 946
      for (int i = 0; i < int(_node_maps.size()); ++i) {
947 947
        _node_maps[i]->copy(_from, nodeRefMap);
948 948
      }
949 949
      for (int i = 0; i < int(_edge_maps.size()); ++i) {
950 950
        _edge_maps[i]->copy(_from, edgeRefMap);
951 951
      }
952 952
      for (int i = 0; i < int(_arc_maps.size()); ++i) {
953 953
        _arc_maps[i]->copy(_from, arcRefMap);
954 954
      }
955 955
    }
956 956

	
957 957
  private:
958 958

	
959 959
    const From& _from;
960 960
    To& _to;
961 961

	
962 962
    std::vector<_core_bits::MapCopyBase<From, Node, NodeRefMap>* >
963 963
      _node_maps;
964 964

	
965 965
    std::vector<_core_bits::MapCopyBase<From, Arc, ArcRefMap>* >
966 966
      _arc_maps;
967 967

	
968 968
    std::vector<_core_bits::MapCopyBase<From, Edge, EdgeRefMap>* >
969 969
      _edge_maps;
970 970

	
971 971
  };
972 972

	
973 973
  /// \brief Copy a graph to another graph.
974 974
  ///
975 975
  /// This function copies a graph to another graph.
976 976
  /// The complete usage of it is detailed in the GraphCopy class,
977 977
  /// but a short example shows a basic work:
978 978
  ///\code
979 979
  /// graphCopy(src, trg).nodeRef(nr).edgeCrossRef(ecr).run();
980 980
  ///\endcode
981 981
  ///
982 982
  /// After the copy the \c nr map will contain the mapping from the
983 983
  /// nodes of the \c from graph to the nodes of the \c to graph and
984 984
  /// \c ecr will contain the mapping from the edges of the \c to graph
985 985
  /// to the edges of the \c from graph.
986 986
  ///
987 987
  /// \see GraphCopy
988 988
  template <typename From, typename To>
989 989
  GraphCopy<From, To>
990 990
  graphCopy(const From& from, To& to) {
991 991
    return GraphCopy<From, To>(from, to);
992 992
  }
993 993

	
994 994
  namespace _core_bits {
995 995

	
996 996
    template <typename Graph, typename Enable = void>
997 997
    struct FindArcSelector {
998 998
      typedef typename Graph::Node Node;
999 999
      typedef typename Graph::Arc Arc;
1000 1000
      static Arc find(const Graph &g, Node u, Node v, Arc e) {
1001 1001
        if (e == INVALID) {
1002 1002
          g.firstOut(e, u);
1003 1003
        } else {
1004 1004
          g.nextOut(e);
1005 1005
        }
1006 1006
        while (e != INVALID && g.target(e) != v) {
1007 1007
          g.nextOut(e);
1008 1008
        }
1009 1009
        return e;
1010 1010
      }
1011 1011
    };
1012 1012

	
1013 1013
    template <typename Graph>
1014 1014
    struct FindArcSelector<
1015 1015
      Graph,
1016 1016
      typename enable_if<typename Graph::FindArcTag, void>::type>
1017 1017
    {
1018 1018
      typedef typename Graph::Node Node;
1019 1019
      typedef typename Graph::Arc Arc;
1020 1020
      static Arc find(const Graph &g, Node u, Node v, Arc prev) {
1021 1021
        return g.findArc(u, v, prev);
1022 1022
      }
1023 1023
    };
1024 1024
  }
1025 1025

	
1026 1026
  /// \brief Find an arc between two nodes of a digraph.
1027 1027
  ///
1028 1028
  /// This function finds an arc from node \c u to node \c v in the
1029 1029
  /// digraph \c g.
1030 1030
  ///
1031 1031
  /// If \c prev is \ref INVALID (this is the default value), then
1032 1032
  /// it finds the first arc from \c u to \c v. Otherwise it looks for
1033 1033
  /// the next arc from \c u to \c v after \c prev.
1034 1034
  /// \return The found arc or \ref INVALID if there is no such an arc.
1035 1035
  ///
1036 1036
  /// Thus you can iterate through each arc from \c u to \c v as it follows.
1037 1037
  ///\code
1038 1038
  /// for(Arc e = findArc(g,u,v); e != INVALID; e = findArc(g,u,v,e)) {
1039 1039
  ///   ...
1040 1040
  /// }
1041 1041
  ///\endcode
1042 1042
  ///
1043 1043
  /// \note \ref ConArcIt provides iterator interface for the same
1044 1044
  /// functionality.
1045 1045
  ///
1046 1046
  ///\sa ConArcIt
1047 1047
  ///\sa ArcLookUp, AllArcLookUp, DynArcLookUp
1048 1048
  template <typename Graph>
1049 1049
  inline typename Graph::Arc
1050 1050
  findArc(const Graph &g, typename Graph::Node u, typename Graph::Node v,
1051 1051
          typename Graph::Arc prev = INVALID) {
1052 1052
    return _core_bits::FindArcSelector<Graph>::find(g, u, v, prev);
1053 1053
  }
1054 1054

	
1055 1055
  /// \brief Iterator for iterating on parallel arcs connecting the same nodes.
1056 1056
  ///
1057 1057
  /// Iterator for iterating on parallel arcs connecting the same nodes. It is
1058 1058
  /// a higher level interface for the \ref findArc() function. You can
1059 1059
  /// use it the following way:
1060 1060
  ///\code
1061 1061
  /// for (ConArcIt<Graph> it(g, src, trg); it != INVALID; ++it) {
1062 1062
  ///   ...
1063 1063
  /// }
1064 1064
  ///\endcode
1065 1065
  ///
1066 1066
  ///\sa findArc()
1067 1067
  ///\sa ArcLookUp, AllArcLookUp, DynArcLookUp
1068 1068
  template <typename GR>
1069 1069
  class ConArcIt : public GR::Arc {
1070 1070
    typedef typename GR::Arc Parent;
1071 1071

	
1072 1072
  public:
1073 1073

	
1074 1074
    typedef typename GR::Arc Arc;
1075 1075
    typedef typename GR::Node Node;
1076 1076

	
1077 1077
    /// \brief Constructor.
1078 1078
    ///
1079 1079
    /// Construct a new ConArcIt iterating on the arcs that
1080 1080
    /// connects nodes \c u and \c v.
1081 1081
    ConArcIt(const GR& g, Node u, Node v) : _graph(g) {
1082 1082
      Parent::operator=(findArc(_graph, u, v));
1083 1083
    }
1084 1084

	
1085 1085
    /// \brief Constructor.
1086 1086
    ///
1087 1087
    /// Construct a new ConArcIt that continues the iterating from arc \c a.
1088 1088
    ConArcIt(const GR& g, Arc a) : Parent(a), _graph(g) {}
1089 1089

	
1090 1090
    /// \brief Increment operator.
1091 1091
    ///
1092 1092
    /// It increments the iterator and gives back the next arc.
1093 1093
    ConArcIt& operator++() {
1094 1094
      Parent::operator=(findArc(_graph, _graph.source(*this),
1095 1095
                                _graph.target(*this), *this));
1096 1096
      return *this;
1097 1097
    }
1098 1098
  private:
1099 1099
    const GR& _graph;
1100 1100
  };
1101 1101

	
1102 1102
  namespace _core_bits {
1103 1103

	
1104 1104
    template <typename Graph, typename Enable = void>
1105 1105
    struct FindEdgeSelector {
1106 1106
      typedef typename Graph::Node Node;
1107 1107
      typedef typename Graph::Edge Edge;
1108 1108
      static Edge find(const Graph &g, Node u, Node v, Edge e) {
1109 1109
        bool b;
1110 1110
        if (u != v) {
1111 1111
          if (e == INVALID) {
1112 1112
            g.firstInc(e, b, u);
1113 1113
          } else {
1114 1114
            b = g.u(e) == u;
1115 1115
            g.nextInc(e, b);
1116 1116
          }
1117 1117
          while (e != INVALID && (b ? g.v(e) : g.u(e)) != v) {
1118 1118
            g.nextInc(e, b);
1119 1119
          }
1120 1120
        } else {
1121 1121
          if (e == INVALID) {
1122 1122
            g.firstInc(e, b, u);
1123 1123
          } else {
1124 1124
            b = true;
1125 1125
            g.nextInc(e, b);
1126 1126
          }
1127 1127
          while (e != INVALID && (!b || g.v(e) != v)) {
1128 1128
            g.nextInc(e, b);
1129 1129
          }
1130 1130
        }
1131 1131
        return e;
1132 1132
      }
1133 1133
    };
1134 1134

	
1135 1135
    template <typename Graph>
1136 1136
    struct FindEdgeSelector<
1137 1137
      Graph,
1138 1138
      typename enable_if<typename Graph::FindEdgeTag, void>::type>
1139 1139
    {
1140 1140
      typedef typename Graph::Node Node;
1141 1141
      typedef typename Graph::Edge Edge;
1142 1142
      static Edge find(const Graph &g, Node u, Node v, Edge prev) {
1143 1143
        return g.findEdge(u, v, prev);
1144 1144
      }
1145 1145
    };
1146 1146
  }
1147 1147

	
1148 1148
  /// \brief Find an edge between two nodes of a graph.
1149 1149
  ///
1150 1150
  /// This function finds an edge from node \c u to node \c v in graph \c g.
1151 1151
  /// If node \c u and node \c v is equal then each loop edge
1152 1152
  /// will be enumerated once.
1153 1153
  ///
1154 1154
  /// If \c prev is \ref INVALID (this is the default value), then
1155 1155
  /// it finds the first edge from \c u to \c v. Otherwise it looks for
1156 1156
  /// the next edge from \c u to \c v after \c prev.
1157 1157
  /// \return The found edge or \ref INVALID if there is no such an edge.
1158 1158
  ///
1159 1159
  /// Thus you can iterate through each edge between \c u and \c v
1160 1160
  /// as it follows.
1161 1161
  ///\code
1162 1162
  /// for(Edge e = findEdge(g,u,v); e != INVALID; e = findEdge(g,u,v,e)) {
1163 1163
  ///   ...
1164 1164
  /// }
1165 1165
  ///\endcode
1166 1166
  ///
1167 1167
  /// \note \ref ConEdgeIt provides iterator interface for the same
1168 1168
  /// functionality.
1169 1169
  ///
1170 1170
  ///\sa ConEdgeIt
1171 1171
  template <typename Graph>
1172 1172
  inline typename Graph::Edge
1173 1173
  findEdge(const Graph &g, typename Graph::Node u, typename Graph::Node v,
1174 1174
            typename Graph::Edge p = INVALID) {
1175 1175
    return _core_bits::FindEdgeSelector<Graph>::find(g, u, v, p);
1176 1176
  }
1177 1177

	
1178 1178
  /// \brief Iterator for iterating on parallel edges connecting the same nodes.
1179 1179
  ///
1180 1180
  /// Iterator for iterating on parallel edges connecting the same nodes.
1181 1181
  /// It is a higher level interface for the findEdge() function. You can
1182 1182
  /// use it the following way:
1183 1183
  ///\code
1184 1184
  /// for (ConEdgeIt<Graph> it(g, u, v); it != INVALID; ++it) {
1185 1185
  ///   ...
1186 1186
  /// }
1187 1187
  ///\endcode
1188 1188
  ///
1189 1189
  ///\sa findEdge()
1190 1190
  template <typename GR>
1191 1191
  class ConEdgeIt : public GR::Edge {
1192 1192
    typedef typename GR::Edge Parent;
1193 1193

	
1194 1194
  public:
1195 1195

	
1196 1196
    typedef typename GR::Edge Edge;
1197 1197
    typedef typename GR::Node Node;
1198 1198

	
1199 1199
    /// \brief Constructor.
1200 1200
    ///
1201 1201
    /// Construct a new ConEdgeIt iterating on the edges that
1202 1202
    /// connects nodes \c u and \c v.
1203 1203
    ConEdgeIt(const GR& g, Node u, Node v) : _graph(g), _u(u), _v(v) {
1204 1204
      Parent::operator=(findEdge(_graph, _u, _v));
1205 1205
    }
1206 1206

	
1207 1207
    /// \brief Constructor.
1208 1208
    ///
1209 1209
    /// Construct a new ConEdgeIt that continues iterating from edge \c e.
1210 1210
    ConEdgeIt(const GR& g, Edge e) : Parent(e), _graph(g) {}
1211 1211

	
1212 1212
    /// \brief Increment operator.
1213 1213
    ///
1214 1214
    /// It increments the iterator and gives back the next edge.
1215 1215
    ConEdgeIt& operator++() {
1216 1216
      Parent::operator=(findEdge(_graph, _u, _v, *this));
1217 1217
      return *this;
1218 1218
    }
Ignore white space 6 line context
1 1
/* -*- mode: C++; indent-tabs-mode: nil; -*-
2 2
 *
3 3
 * This file is a part of LEMON, a generic C++ optimization library.
4 4
 *
5 5
 * Copyright (C) 2003-2010
6 6
 * Egervary Jeno Kombinatorikus Optimalizalasi Kutatocsoport
7 7
 * (Egervary Research Group on Combinatorial Optimization, EGRES).
8 8
 *
9 9
 * Permission to use, modify and distribute this software is granted
10 10
 * provided that this copyright notice appears in all copies. For
11 11
 * precise terms see the accompanying LICENSE file.
12 12
 *
13 13
 * This software is provided "AS IS" with no warranty of any kind,
14 14
 * express or implied, and with no claim as to its suitability for any
15 15
 * purpose.
16 16
 *
17 17
 */
18 18

	
19 19
#ifndef LEMON_COST_SCALING_H
20 20
#define LEMON_COST_SCALING_H
21 21

	
22 22
/// \ingroup min_cost_flow_algs
23 23
/// \file
24 24
/// \brief Cost scaling algorithm for finding a minimum cost flow.
25 25

	
26 26
#include <vector>
27 27
#include <deque>
28 28
#include <limits>
29 29

	
30 30
#include <lemon/core.h>
31 31
#include <lemon/maps.h>
32 32
#include <lemon/math.h>
33 33
#include <lemon/static_graph.h>
34 34
#include <lemon/circulation.h>
35 35
#include <lemon/bellman_ford.h>
36 36

	
37 37
namespace lemon {
38 38

	
39 39
  /// \brief Default traits class of CostScaling algorithm.
40 40
  ///
41 41
  /// Default traits class of CostScaling algorithm.
42 42
  /// \tparam GR Digraph type.
43 43
  /// \tparam V The number type used for flow amounts, capacity bounds
44 44
  /// and supply values. By default it is \c int.
45 45
  /// \tparam C The number type used for costs and potentials.
46 46
  /// By default it is the same as \c V.
47 47
#ifdef DOXYGEN
48 48
  template <typename GR, typename V = int, typename C = V>
49 49
#else
50 50
  template < typename GR, typename V = int, typename C = V,
51 51
             bool integer = std::numeric_limits<C>::is_integer >
52 52
#endif
53 53
  struct CostScalingDefaultTraits
54 54
  {
55 55
    /// The type of the digraph
56 56
    typedef GR Digraph;
57 57
    /// The type of the flow amounts, capacity bounds and supply values
58 58
    typedef V Value;
59 59
    /// The type of the arc costs
60 60
    typedef C Cost;
61 61

	
62 62
    /// \brief The large cost type used for internal computations
63 63
    ///
64 64
    /// The large cost type used for internal computations.
65 65
    /// It is \c long \c long if the \c Cost type is integer,
66 66
    /// otherwise it is \c double.
67 67
    /// \c Cost must be convertible to \c LargeCost.
68 68
    typedef double LargeCost;
69 69
  };
70 70

	
71 71
  // Default traits class for integer cost types
72 72
  template <typename GR, typename V, typename C>
73 73
  struct CostScalingDefaultTraits<GR, V, C, true>
74 74
  {
75 75
    typedef GR Digraph;
76 76
    typedef V Value;
77 77
    typedef C Cost;
78 78
#ifdef LEMON_HAVE_LONG_LONG
79 79
    typedef long long LargeCost;
80 80
#else
81 81
    typedef long LargeCost;
82 82
#endif
83 83
  };
84 84

	
85 85

	
86 86
  /// \addtogroup min_cost_flow_algs
87 87
  /// @{
88 88

	
89 89
  /// \brief Implementation of the Cost Scaling algorithm for
90 90
  /// finding a \ref min_cost_flow "minimum cost flow".
91 91
  ///
92 92
  /// \ref CostScaling implements a cost scaling algorithm that performs
93 93
  /// push/augment and relabel operations for finding a \ref min_cost_flow
94 94
  /// "minimum cost flow" \ref amo93networkflows, \ref goldberg90approximation,
95 95
  /// \ref goldberg97efficient, \ref bunnagel98efficient.
96 96
  /// It is a highly efficient primal-dual solution method, which
97 97
  /// can be viewed as the generalization of the \ref Preflow
98 98
  /// "preflow push-relabel" algorithm for the maximum flow problem.
99 99
  ///
100
  /// In general, \ref NetworkSimplex and \ref CostScaling are the fastest
101
  /// implementations available in LEMON for this problem.
102
  ///
100 103
  /// Most of the parameters of the problem (except for the digraph)
101 104
  /// can be given using separate functions, and the algorithm can be
102 105
  /// executed using the \ref run() function. If some parameters are not
103 106
  /// specified, then default values will be used.
104 107
  ///
105 108
  /// \tparam GR The digraph type the algorithm runs on.
106 109
  /// \tparam V The number type used for flow amounts, capacity bounds
107 110
  /// and supply values in the algorithm. By default, it is \c int.
108 111
  /// \tparam C The number type used for costs and potentials in the
109 112
  /// algorithm. By default, it is the same as \c V.
110 113
  /// \tparam TR The traits class that defines various types used by the
111 114
  /// algorithm. By default, it is \ref CostScalingDefaultTraits
112 115
  /// "CostScalingDefaultTraits<GR, V, C>".
113 116
  /// In most cases, this parameter should not be set directly,
114 117
  /// consider to use the named template parameters instead.
115 118
  ///
116 119
  /// \warning Both \c V and \c C must be signed number types.
117 120
  /// \warning All input data (capacities, supply values, and costs) must
118 121
  /// be integer.
119
  /// \warning This algorithm does not support negative costs for such
120
  /// arcs that have infinite upper bound.
122
  /// \warning This algorithm does not support negative costs for
123
  /// arcs having infinite upper bound.
121 124
  ///
122 125
  /// \note %CostScaling provides three different internal methods,
123 126
  /// from which the most efficient one is used by default.
124 127
  /// For more information, see \ref Method.
125 128
#ifdef DOXYGEN
126 129
  template <typename GR, typename V, typename C, typename TR>
127 130
#else
128 131
  template < typename GR, typename V = int, typename C = V,
129 132
             typename TR = CostScalingDefaultTraits<GR, V, C> >
130 133
#endif
131 134
  class CostScaling
132 135
  {
133 136
  public:
134 137

	
135 138
    /// The type of the digraph
136 139
    typedef typename TR::Digraph Digraph;
137 140
    /// The type of the flow amounts, capacity bounds and supply values
138 141
    typedef typename TR::Value Value;
139 142
    /// The type of the arc costs
140 143
    typedef typename TR::Cost Cost;
141 144

	
142 145
    /// \brief The large cost type
143 146
    ///
144 147
    /// The large cost type used for internal computations.
145 148
    /// By default, it is \c long \c long if the \c Cost type is integer,
146 149
    /// otherwise it is \c double.
147 150
    typedef typename TR::LargeCost LargeCost;
148 151

	
149 152
    /// The \ref CostScalingDefaultTraits "traits class" of the algorithm
150 153
    typedef TR Traits;
151 154

	
152 155
  public:
153 156

	
154 157
    /// \brief Problem type constants for the \c run() function.
155 158
    ///
156 159
    /// Enum type containing the problem type constants that can be
157 160
    /// returned by the \ref run() function of the algorithm.
158 161
    enum ProblemType {
159 162
      /// The problem has no feasible solution (flow).
160 163
      INFEASIBLE,
161 164
      /// The problem has optimal solution (i.e. it is feasible and
162 165
      /// bounded), and the algorithm has found optimal flow and node
163 166
      /// potentials (primal and dual solutions).
164 167
      OPTIMAL,
165 168
      /// The digraph contains an arc of negative cost and infinite
166 169
      /// upper bound. It means that the objective function is unbounded
167 170
      /// on that arc, however, note that it could actually be bounded
168 171
      /// over the feasible flows, but this algroithm cannot handle
169 172
      /// these cases.
170 173
      UNBOUNDED
171 174
    };
172 175

	
173 176
    /// \brief Constants for selecting the internal method.
174 177
    ///
175 178
    /// Enum type containing constants for selecting the internal method
176 179
    /// for the \ref run() function.
177 180
    ///
178 181
    /// \ref CostScaling provides three internal methods that differ mainly
179 182
    /// in their base operations, which are used in conjunction with the
180 183
    /// relabel operation.
181 184
    /// By default, the so called \ref PARTIAL_AUGMENT
182
    /// "Partial Augment-Relabel" method is used, which proved to be
185
    /// "Partial Augment-Relabel" method is used, which turned out to be
183 186
    /// the most efficient and the most robust on various test inputs.
184 187
    /// However, the other methods can be selected using the \ref run()
185 188
    /// function with the proper parameter.
186 189
    enum Method {
187 190
      /// Local push operations are used, i.e. flow is moved only on one
188 191
      /// admissible arc at once.
189 192
      PUSH,
190 193
      /// Augment operations are used, i.e. flow is moved on admissible
191 194
      /// paths from a node with excess to a node with deficit.
192 195
      AUGMENT,
193 196
      /// Partial augment operations are used, i.e. flow is moved on
194 197
      /// admissible paths started from a node with excess, but the
195 198
      /// lengths of these paths are limited. This method can be viewed
196 199
      /// as a combined version of the previous two operations.
197 200
      PARTIAL_AUGMENT
198 201
    };
199 202

	
200 203
  private:
201 204

	
202 205
    TEMPLATE_DIGRAPH_TYPEDEFS(GR);
203 206

	
204 207
    typedef std::vector<int> IntVector;
205 208
    typedef std::vector<Value> ValueVector;
206 209
    typedef std::vector<Cost> CostVector;
207 210
    typedef std::vector<LargeCost> LargeCostVector;
208 211
    typedef std::vector<char> BoolVector;
209 212
    // Note: vector<char> is used instead of vector<bool> for efficiency reasons
210 213

	
211 214
  private:
212 215

	
213 216
    template <typename KT, typename VT>
214 217
    class StaticVectorMap {
215 218
    public:
216 219
      typedef KT Key;
217 220
      typedef VT Value;
218 221

	
219 222
      StaticVectorMap(std::vector<Value>& v) : _v(v) {}
220 223

	
221 224
      const Value& operator[](const Key& key) const {
222 225
        return _v[StaticDigraph::id(key)];
223 226
      }
224 227

	
225 228
      Value& operator[](const Key& key) {
226 229
        return _v[StaticDigraph::id(key)];
227 230
      }
228 231

	
229 232
      void set(const Key& key, const Value& val) {
230 233
        _v[StaticDigraph::id(key)] = val;
231 234
      }
232 235

	
233 236
    private:
234 237
      std::vector<Value>& _v;
235 238
    };
236 239

	
237 240
    typedef StaticVectorMap<StaticDigraph::Node, LargeCost> LargeCostNodeMap;
238 241
    typedef StaticVectorMap<StaticDigraph::Arc, LargeCost> LargeCostArcMap;
239 242

	
240 243
  private:
241 244

	
242 245
    // Data related to the underlying digraph
243 246
    const GR &_graph;
244 247
    int _node_num;
245 248
    int _arc_num;
246 249
    int _res_node_num;
247 250
    int _res_arc_num;
248 251
    int _root;
249 252

	
250 253
    // Parameters of the problem
251 254
    bool _have_lower;
252 255
    Value _sum_supply;
253 256
    int _sup_node_num;
254 257

	
255 258
    // Data structures for storing the digraph
256 259
    IntNodeMap _node_id;
257 260
    IntArcMap _arc_idf;
258 261
    IntArcMap _arc_idb;
259 262
    IntVector _first_out;
260 263
    BoolVector _forward;
261 264
    IntVector _source;
262 265
    IntVector _target;
263 266
    IntVector _reverse;
264 267

	
265 268
    // Node and arc data
266 269
    ValueVector _lower;
267 270
    ValueVector _upper;
268 271
    CostVector _scost;
269 272
    ValueVector _supply;
270 273

	
271 274
    ValueVector _res_cap;
272 275
    LargeCostVector _cost;
273 276
    LargeCostVector _pi;
274 277
    ValueVector _excess;
275 278
    IntVector _next_out;
276 279
    std::deque<int> _active_nodes;
277 280

	
278 281
    // Data for scaling
279 282
    LargeCost _epsilon;
280 283
    int _alpha;
281 284

	
282 285
    IntVector _buckets;
283 286
    IntVector _bucket_next;
284 287
    IntVector _bucket_prev;
285 288
    IntVector _rank;
286 289
    int _max_rank;
287 290

	
288 291
    // Data for a StaticDigraph structure
289 292
    typedef std::pair<int, int> IntPair;
290 293
    StaticDigraph _sgr;
291 294
    std::vector<IntPair> _arc_vec;
292 295
    std::vector<LargeCost> _cost_vec;
293 296
    LargeCostArcMap _cost_map;
294 297
    LargeCostNodeMap _pi_map;
295 298

	
296 299
  public:
297 300

	
298 301
    /// \brief Constant for infinite upper bounds (capacities).
299 302
    ///
300 303
    /// Constant for infinite upper bounds (capacities).
301 304
    /// It is \c std::numeric_limits<Value>::infinity() if available,
302 305
    /// \c std::numeric_limits<Value>::max() otherwise.
303 306
    const Value INF;
304 307

	
305 308
  public:
306 309

	
307 310
    /// \name Named Template Parameters
308 311
    /// @{
309 312

	
310 313
    template <typename T>
311 314
    struct SetLargeCostTraits : public Traits {
312 315
      typedef T LargeCost;
313 316
    };
314 317

	
315 318
    /// \brief \ref named-templ-param "Named parameter" for setting
316 319
    /// \c LargeCost type.
317 320
    ///
318 321
    /// \ref named-templ-param "Named parameter" for setting \c LargeCost
319 322
    /// type, which is used for internal computations in the algorithm.
320 323
    /// \c Cost must be convertible to \c LargeCost.
321 324
    template <typename T>
322 325
    struct SetLargeCost
323 326
      : public CostScaling<GR, V, C, SetLargeCostTraits<T> > {
324 327
      typedef  CostScaling<GR, V, C, SetLargeCostTraits<T> > Create;
325 328
    };
326 329

	
327 330
    /// @}
328 331

	
329 332
  protected:
330 333

	
331 334
    CostScaling() {}
332 335

	
333 336
  public:
334 337

	
335 338
    /// \brief Constructor.
336 339
    ///
337 340
    /// The constructor of the class.
338 341
    ///
339 342
    /// \param graph The digraph the algorithm runs on.
340 343
    CostScaling(const GR& graph) :
341 344
      _graph(graph), _node_id(graph), _arc_idf(graph), _arc_idb(graph),
342 345
      _cost_map(_cost_vec), _pi_map(_pi),
343 346
      INF(std::numeric_limits<Value>::has_infinity ?
344 347
          std::numeric_limits<Value>::infinity() :
345 348
          std::numeric_limits<Value>::max())
346 349
    {
347 350
      // Check the number types
348 351
      LEMON_ASSERT(std::numeric_limits<Value>::is_signed,
349 352
        "The flow type of CostScaling must be signed");
350 353
      LEMON_ASSERT(std::numeric_limits<Cost>::is_signed,
351 354
        "The cost type of CostScaling must be signed");
352 355

	
353 356
      // Reset data structures
354 357
      reset();
355 358
    }
356 359

	
357 360
    /// \name Parameters
358 361
    /// The parameters of the algorithm can be specified using these
359 362
    /// functions.
360 363

	
361 364
    /// @{
362 365

	
363 366
    /// \brief Set the lower bounds on the arcs.
364 367
    ///
365 368
    /// This function sets the lower bounds on the arcs.
366 369
    /// If it is not used before calling \ref run(), the lower bounds
367 370
    /// will be set to zero on all arcs.
368 371
    ///
369 372
    /// \param map An arc map storing the lower bounds.
370 373
    /// Its \c Value type must be convertible to the \c Value type
371 374
    /// of the algorithm.
372 375
    ///
373 376
    /// \return <tt>(*this)</tt>
374 377
    template <typename LowerMap>
375 378
    CostScaling& lowerMap(const LowerMap& map) {
376 379
      _have_lower = true;
377 380
      for (ArcIt a(_graph); a != INVALID; ++a) {
378 381
        _lower[_arc_idf[a]] = map[a];
379 382
        _lower[_arc_idb[a]] = map[a];
380 383
      }
381 384
      return *this;
382 385
    }
383 386

	
384 387
    /// \brief Set the upper bounds (capacities) on the arcs.
385 388
    ///
386 389
    /// This function sets the upper bounds (capacities) on the arcs.
387 390
    /// If it is not used before calling \ref run(), the upper bounds
388 391
    /// will be set to \ref INF on all arcs (i.e. the flow value will be
389 392
    /// unbounded from above).
390 393
    ///
391 394
    /// \param map An arc map storing the upper bounds.
392 395
    /// Its \c Value type must be convertible to the \c Value type
393 396
    /// of the algorithm.
394 397
    ///
395 398
    /// \return <tt>(*this)</tt>
396 399
    template<typename UpperMap>
397 400
    CostScaling& upperMap(const UpperMap& map) {
398 401
      for (ArcIt a(_graph); a != INVALID; ++a) {
399 402
        _upper[_arc_idf[a]] = map[a];
400 403
      }
401 404
      return *this;
402 405
    }
403 406

	
404 407
    /// \brief Set the costs of the arcs.
405 408
    ///
406 409
    /// This function sets the costs of the arcs.
407 410
    /// If it is not used before calling \ref run(), the costs
408 411
    /// will be set to \c 1 on all arcs.
409 412
    ///
410 413
    /// \param map An arc map storing the costs.
411 414
    /// Its \c Value type must be convertible to the \c Cost type
412 415
    /// of the algorithm.
413 416
    ///
414 417
    /// \return <tt>(*this)</tt>
415 418
    template<typename CostMap>
416 419
    CostScaling& costMap(const CostMap& map) {
417 420
      for (ArcIt a(_graph); a != INVALID; ++a) {
418 421
        _scost[_arc_idf[a]] =  map[a];
419 422
        _scost[_arc_idb[a]] = -map[a];
420 423
      }
421 424
      return *this;
422 425
    }
423 426

	
424 427
    /// \brief Set the supply values of the nodes.
425 428
    ///
426 429
    /// This function sets the supply values of the nodes.
427 430
    /// If neither this function nor \ref stSupply() is used before
428 431
    /// calling \ref run(), the supply of each node will be set to zero.
429 432
    ///
430 433
    /// \param map A node map storing the supply values.
431 434
    /// Its \c Value type must be convertible to the \c Value type
432 435
    /// of the algorithm.
433 436
    ///
434 437
    /// \return <tt>(*this)</tt>
435 438
    template<typename SupplyMap>
436 439
    CostScaling& supplyMap(const SupplyMap& map) {
437 440
      for (NodeIt n(_graph); n != INVALID; ++n) {
438 441
        _supply[_node_id[n]] = map[n];
439 442
      }
440 443
      return *this;
441 444
    }
442 445

	
443 446
    /// \brief Set single source and target nodes and a supply value.
444 447
    ///
445 448
    /// This function sets a single source node and a single target node
446 449
    /// and the required flow value.
447 450
    /// If neither this function nor \ref supplyMap() is used before
448 451
    /// calling \ref run(), the supply of each node will be set to zero.
449 452
    ///
450 453
    /// Using this function has the same effect as using \ref supplyMap()
451
    /// with such a map in which \c k is assigned to \c s, \c -k is
454
    /// with a map in which \c k is assigned to \c s, \c -k is
452 455
    /// assigned to \c t and all other nodes have zero supply value.
453 456
    ///
454 457
    /// \param s The source node.
455 458
    /// \param t The target node.
456 459
    /// \param k The required amount of flow from node \c s to node \c t
457 460
    /// (i.e. the supply of \c s and the demand of \c t).
458 461
    ///
459 462
    /// \return <tt>(*this)</tt>
460 463
    CostScaling& stSupply(const Node& s, const Node& t, Value k) {
461 464
      for (int i = 0; i != _res_node_num; ++i) {
462 465
        _supply[i] = 0;
463 466
      }
464 467
      _supply[_node_id[s]] =  k;
465 468
      _supply[_node_id[t]] = -k;
466 469
      return *this;
467 470
    }
468 471

	
469 472
    /// @}
470 473

	
471 474
    /// \name Execution control
472 475
    /// The algorithm can be executed using \ref run().
473 476

	
474 477
    /// @{
475 478

	
476 479
    /// \brief Run the algorithm.
477 480
    ///
478 481
    /// This function runs the algorithm.
479 482
    /// The paramters can be specified using functions \ref lowerMap(),
480 483
    /// \ref upperMap(), \ref costMap(), \ref supplyMap(), \ref stSupply().
481 484
    /// For example,
482 485
    /// \code
483 486
    ///   CostScaling<ListDigraph> cs(graph);
484 487
    ///   cs.lowerMap(lower).upperMap(upper).costMap(cost)
485 488
    ///     .supplyMap(sup).run();
486 489
    /// \endcode
487 490
    ///
488 491
    /// This function can be called more than once. All the given parameters
489 492
    /// are kept for the next call, unless \ref resetParams() or \ref reset()
490 493
    /// is used, thus only the modified parameters have to be set again.
491 494
    /// If the underlying digraph was also modified after the construction
492 495
    /// of the class (or the last \ref reset() call), then the \ref reset()
493 496
    /// function must be called.
494 497
    ///
495 498
    /// \param method The internal method that will be used in the
496 499
    /// algorithm. For more information, see \ref Method.
497 500
    /// \param factor The cost scaling factor. It must be larger than one.
498 501
    ///
499 502
    /// \return \c INFEASIBLE if no feasible flow exists,
500 503
    /// \n \c OPTIMAL if the problem has optimal solution
501 504
    /// (i.e. it is feasible and bounded), and the algorithm has found
502 505
    /// optimal flow and node potentials (primal and dual solutions),
503 506
    /// \n \c UNBOUNDED if the digraph contains an arc of negative cost
504 507
    /// and infinite upper bound. It means that the objective function
505 508
    /// is unbounded on that arc, however, note that it could actually be
506 509
    /// bounded over the feasible flows, but this algroithm cannot handle
507 510
    /// these cases.
508 511
    ///
509 512
    /// \see ProblemType, Method
510 513
    /// \see resetParams(), reset()
511 514
    ProblemType run(Method method = PARTIAL_AUGMENT, int factor = 8) {
512 515
      _alpha = factor;
513 516
      ProblemType pt = init();
514 517
      if (pt != OPTIMAL) return pt;
515 518
      start(method);
516 519
      return OPTIMAL;
517 520
    }
518 521

	
519 522
    /// \brief Reset all the parameters that have been given before.
520 523
    ///
521 524
    /// This function resets all the paramaters that have been given
522 525
    /// before using functions \ref lowerMap(), \ref upperMap(),
523 526
    /// \ref costMap(), \ref supplyMap(), \ref stSupply().
524 527
    ///
525 528
    /// It is useful for multiple \ref run() calls. Basically, all the given
526 529
    /// parameters are kept for the next \ref run() call, unless
527 530
    /// \ref resetParams() or \ref reset() is used.
528 531
    /// If the underlying digraph was also modified after the construction
529 532
    /// of the class or the last \ref reset() call, then the \ref reset()
530 533
    /// function must be used, otherwise \ref resetParams() is sufficient.
531 534
    ///
532 535
    /// For example,
533 536
    /// \code
534 537
    ///   CostScaling<ListDigraph> cs(graph);
535 538
    ///
536 539
    ///   // First run
537 540
    ///   cs.lowerMap(lower).upperMap(upper).costMap(cost)
538 541
    ///     .supplyMap(sup).run();
539 542
    ///
540 543
    ///   // Run again with modified cost map (resetParams() is not called,
541 544
    ///   // so only the cost map have to be set again)
542 545
    ///   cost[e] += 100;
543 546
    ///   cs.costMap(cost).run();
544 547
    ///
545 548
    ///   // Run again from scratch using resetParams()
546 549
    ///   // (the lower bounds will be set to zero on all arcs)
547 550
    ///   cs.resetParams();
548 551
    ///   cs.upperMap(capacity).costMap(cost)
549 552
    ///     .supplyMap(sup).run();
550 553
    /// \endcode
551 554
    ///
552 555
    /// \return <tt>(*this)</tt>
553 556
    ///
554 557
    /// \see reset(), run()
555 558
    CostScaling& resetParams() {
556 559
      for (int i = 0; i != _res_node_num; ++i) {
557 560
        _supply[i] = 0;
558 561
      }
559 562
      int limit = _first_out[_root];
560 563
      for (int j = 0; j != limit; ++j) {
561 564
        _lower[j] = 0;
562 565
        _upper[j] = INF;
563 566
        _scost[j] = _forward[j] ? 1 : -1;
564 567
      }
565 568
      for (int j = limit; j != _res_arc_num; ++j) {
566 569
        _lower[j] = 0;
567 570
        _upper[j] = INF;
568 571
        _scost[j] = 0;
569 572
        _scost[_reverse[j]] = 0;
570 573
      }
571 574
      _have_lower = false;
572 575
      return *this;
573 576
    }
574 577

	
575 578
    /// \brief Reset all the parameters that have been given before.
576 579
    ///
577 580
    /// This function resets all the paramaters that have been given
578 581
    /// before using functions \ref lowerMap(), \ref upperMap(),
579 582
    /// \ref costMap(), \ref supplyMap(), \ref stSupply().
580 583
    ///
581 584
    /// It is useful for multiple run() calls. If this function is not
582 585
    /// used, all the parameters given before are kept for the next
583 586
    /// \ref run() call.
584 587
    /// However, the underlying digraph must not be modified after this
585 588
    /// class have been constructed, since it copies and extends the graph.
586 589
    /// \return <tt>(*this)</tt>
587 590
    CostScaling& reset() {
588 591
      // Resize vectors
589 592
      _node_num = countNodes(_graph);
590 593
      _arc_num = countArcs(_graph);
591 594
      _res_node_num = _node_num + 1;
592 595
      _res_arc_num = 2 * (_arc_num + _node_num);
593 596
      _root = _node_num;
594 597

	
595 598
      _first_out.resize(_res_node_num + 1);
596 599
      _forward.resize(_res_arc_num);
597 600
      _source.resize(_res_arc_num);
598 601
      _target.resize(_res_arc_num);
599 602
      _reverse.resize(_res_arc_num);
600 603

	
601 604
      _lower.resize(_res_arc_num);
602 605
      _upper.resize(_res_arc_num);
603 606
      _scost.resize(_res_arc_num);
604 607
      _supply.resize(_res_node_num);
605 608

	
606 609
      _res_cap.resize(_res_arc_num);
607 610
      _cost.resize(_res_arc_num);
608 611
      _pi.resize(_res_node_num);
609 612
      _excess.resize(_res_node_num);
610 613
      _next_out.resize(_res_node_num);
611 614

	
612 615
      _arc_vec.reserve(_res_arc_num);
613 616
      _cost_vec.reserve(_res_arc_num);
614 617

	
615 618
      // Copy the graph
616 619
      int i = 0, j = 0, k = 2 * _arc_num + _node_num;
617 620
      for (NodeIt n(_graph); n != INVALID; ++n, ++i) {
618 621
        _node_id[n] = i;
619 622
      }
620 623
      i = 0;
621 624
      for (NodeIt n(_graph); n != INVALID; ++n, ++i) {
622 625
        _first_out[i] = j;
623 626
        for (OutArcIt a(_graph, n); a != INVALID; ++a, ++j) {
624 627
          _arc_idf[a] = j;
625 628
          _forward[j] = true;
626 629
          _source[j] = i;
627 630
          _target[j] = _node_id[_graph.runningNode(a)];
628 631
        }
629 632
        for (InArcIt a(_graph, n); a != INVALID; ++a, ++j) {
630 633
          _arc_idb[a] = j;
631 634
          _forward[j] = false;
632 635
          _source[j] = i;
633 636
          _target[j] = _node_id[_graph.runningNode(a)];
634 637
        }
635 638
        _forward[j] = false;
636 639
        _source[j] = i;
637 640
        _target[j] = _root;
638 641
        _reverse[j] = k;
639 642
        _forward[k] = true;
640 643
        _source[k] = _root;
641 644
        _target[k] = i;
642 645
        _reverse[k] = j;
643 646
        ++j; ++k;
644 647
      }
645 648
      _first_out[i] = j;
646 649
      _first_out[_res_node_num] = k;
647 650
      for (ArcIt a(_graph); a != INVALID; ++a) {
648 651
        int fi = _arc_idf[a];
649 652
        int bi = _arc_idb[a];
650 653
        _reverse[fi] = bi;
651 654
        _reverse[bi] = fi;
652 655
      }
653 656

	
654 657
      // Reset parameters
655 658
      resetParams();
656 659
      return *this;
657 660
    }
658 661

	
659 662
    /// @}
660 663

	
661 664
    /// \name Query Functions
662 665
    /// The results of the algorithm can be obtained using these
663 666
    /// functions.\n
664 667
    /// The \ref run() function must be called before using them.
665 668

	
666 669
    /// @{
667 670

	
668 671
    /// \brief Return the total cost of the found flow.
669 672
    ///
670 673
    /// This function returns the total cost of the found flow.
671 674
    /// Its complexity is O(e).
672 675
    ///
673 676
    /// \note The return type of the function can be specified as a
674 677
    /// template parameter. For example,
675 678
    /// \code
676 679
    ///   cs.totalCost<double>();
677 680
    /// \endcode
678 681
    /// It is useful if the total cost cannot be stored in the \c Cost
679 682
    /// type of the algorithm, which is the default return type of the
680 683
    /// function.
681 684
    ///
682 685
    /// \pre \ref run() must be called before using this function.
683 686
    template <typename Number>
684 687
    Number totalCost() const {
685 688
      Number c = 0;
686 689
      for (ArcIt a(_graph); a != INVALID; ++a) {
687 690
        int i = _arc_idb[a];
688 691
        c += static_cast<Number>(_res_cap[i]) *
689 692
             (-static_cast<Number>(_scost[i]));
690 693
      }
691 694
      return c;
692 695
    }
693 696

	
694 697
#ifndef DOXYGEN
695 698
    Cost totalCost() const {
696 699
      return totalCost<Cost>();
697 700
    }
698 701
#endif
699 702

	
700 703
    /// \brief Return the flow on the given arc.
701 704
    ///
702 705
    /// This function returns the flow on the given arc.
703 706
    ///
704 707
    /// \pre \ref run() must be called before using this function.
705 708
    Value flow(const Arc& a) const {
706 709
      return _res_cap[_arc_idb[a]];
707 710
    }
708 711

	
709 712
    /// \brief Return the flow map (the primal solution).
710 713
    ///
711 714
    /// This function copies the flow value on each arc into the given
712 715
    /// map. The \c Value type of the algorithm must be convertible to
713 716
    /// the \c Value type of the map.
714 717
    ///
715 718
    /// \pre \ref run() must be called before using this function.
716 719
    template <typename FlowMap>
717 720
    void flowMap(FlowMap &map) const {
718 721
      for (ArcIt a(_graph); a != INVALID; ++a) {
719 722
        map.set(a, _res_cap[_arc_idb[a]]);
720 723
      }
721 724
    }
722 725

	
723 726
    /// \brief Return the potential (dual value) of the given node.
724 727
    ///
725 728
    /// This function returns the potential (dual value) of the
726 729
    /// given node.
727 730
    ///
728 731
    /// \pre \ref run() must be called before using this function.
729 732
    Cost potential(const Node& n) const {
730 733
      return static_cast<Cost>(_pi[_node_id[n]]);
731 734
    }
732 735

	
733 736
    /// \brief Return the potential map (the dual solution).
734 737
    ///
735 738
    /// This function copies the potential (dual value) of each node
736 739
    /// into the given map.
737 740
    /// The \c Cost type of the algorithm must be convertible to the
738 741
    /// \c Value type of the map.
739 742
    ///
740 743
    /// \pre \ref run() must be called before using this function.
741 744
    template <typename PotentialMap>
742 745
    void potentialMap(PotentialMap &map) const {
743 746
      for (NodeIt n(_graph); n != INVALID; ++n) {
744 747
        map.set(n, static_cast<Cost>(_pi[_node_id[n]]));
745 748
      }
746 749
    }
747 750

	
748 751
    /// @}
749 752

	
750 753
  private:
751 754

	
752 755
    // Initialize the algorithm
753 756
    ProblemType init() {
754 757
      if (_res_node_num <= 1) return INFEASIBLE;
755 758

	
756 759
      // Check the sum of supply values
757 760
      _sum_supply = 0;
758 761
      for (int i = 0; i != _root; ++i) {
759 762
        _sum_supply += _supply[i];
760 763
      }
761 764
      if (_sum_supply > 0) return INFEASIBLE;
762 765

	
763 766

	
764 767
      // Initialize vectors
765 768
      for (int i = 0; i != _res_node_num; ++i) {
766 769
        _pi[i] = 0;
767 770
        _excess[i] = _supply[i];
768 771
      }
769 772

	
770 773
      // Remove infinite upper bounds and check negative arcs
771 774
      const Value MAX = std::numeric_limits<Value>::max();
772 775
      int last_out;
773 776
      if (_have_lower) {
774 777
        for (int i = 0; i != _root; ++i) {
775 778
          last_out = _first_out[i+1];
776 779
          for (int j = _first_out[i]; j != last_out; ++j) {
777 780
            if (_forward[j]) {
778 781
              Value c = _scost[j] < 0 ? _upper[j] : _lower[j];
779 782
              if (c >= MAX) return UNBOUNDED;
780 783
              _excess[i] -= c;
781 784
              _excess[_target[j]] += c;
782 785
            }
783 786
          }
784 787
        }
785 788
      } else {
786 789
        for (int i = 0; i != _root; ++i) {
787 790
          last_out = _first_out[i+1];
788 791
          for (int j = _first_out[i]; j != last_out; ++j) {
789 792
            if (_forward[j] && _scost[j] < 0) {
790 793
              Value c = _upper[j];
791 794
              if (c >= MAX) return UNBOUNDED;
792 795
              _excess[i] -= c;
793 796
              _excess[_target[j]] += c;
794 797
            }
795 798
          }
796 799
        }
797 800
      }
798 801
      Value ex, max_cap = 0;
799 802
      for (int i = 0; i != _res_node_num; ++i) {
800 803
        ex = _excess[i];
801 804
        _excess[i] = 0;
802 805
        if (ex < 0) max_cap -= ex;
803 806
      }
804 807
      for (int j = 0; j != _res_arc_num; ++j) {
805 808
        if (_upper[j] >= MAX) _upper[j] = max_cap;
806 809
      }
807 810

	
808 811
      // Initialize the large cost vector and the epsilon parameter
809 812
      _epsilon = 0;
810 813
      LargeCost lc;
811 814
      for (int i = 0; i != _root; ++i) {
812 815
        last_out = _first_out[i+1];
813 816
        for (int j = _first_out[i]; j != last_out; ++j) {
814 817
          lc = static_cast<LargeCost>(_scost[j]) * _res_node_num * _alpha;
815 818
          _cost[j] = lc;
816 819
          if (lc > _epsilon) _epsilon = lc;
817 820
        }
818 821
      }
819 822
      _epsilon /= _alpha;
820 823

	
821 824
      // Initialize maps for Circulation and remove non-zero lower bounds
822 825
      ConstMap<Arc, Value> low(0);
823 826
      typedef typename Digraph::template ArcMap<Value> ValueArcMap;
824 827
      typedef typename Digraph::template NodeMap<Value> ValueNodeMap;
825 828
      ValueArcMap cap(_graph), flow(_graph);
826 829
      ValueNodeMap sup(_graph);
827 830
      for (NodeIt n(_graph); n != INVALID; ++n) {
828 831
        sup[n] = _supply[_node_id[n]];
829 832
      }
830 833
      if (_have_lower) {
831 834
        for (ArcIt a(_graph); a != INVALID; ++a) {
832 835
          int j = _arc_idf[a];
833 836
          Value c = _lower[j];
834 837
          cap[a] = _upper[j] - c;
835 838
          sup[_graph.source(a)] -= c;
836 839
          sup[_graph.target(a)] += c;
837 840
        }
838 841
      } else {
839 842
        for (ArcIt a(_graph); a != INVALID; ++a) {
840 843
          cap[a] = _upper[_arc_idf[a]];
841 844
        }
842 845
      }
843 846

	
844 847
      _sup_node_num = 0;
845 848
      for (NodeIt n(_graph); n != INVALID; ++n) {
846 849
        if (sup[n] > 0) ++_sup_node_num;
847 850
      }
848 851

	
849 852
      // Find a feasible flow using Circulation
850 853
      Circulation<Digraph, ConstMap<Arc, Value>, ValueArcMap, ValueNodeMap>
851 854
        circ(_graph, low, cap, sup);
852 855
      if (!circ.flowMap(flow).run()) return INFEASIBLE;
853 856

	
854 857
      // Set residual capacities and handle GEQ supply type
855 858
      if (_sum_supply < 0) {
856 859
        for (ArcIt a(_graph); a != INVALID; ++a) {
857 860
          Value fa = flow[a];
858 861
          _res_cap[_arc_idf[a]] = cap[a] - fa;
859 862
          _res_cap[_arc_idb[a]] = fa;
860 863
          sup[_graph.source(a)] -= fa;
861 864
          sup[_graph.target(a)] += fa;
862 865
        }
863 866
        for (NodeIt n(_graph); n != INVALID; ++n) {
864 867
          _excess[_node_id[n]] = sup[n];
865 868
        }
866 869
        for (int a = _first_out[_root]; a != _res_arc_num; ++a) {
867 870
          int u = _target[a];
868 871
          int ra = _reverse[a];
869 872
          _res_cap[a] = -_sum_supply + 1;
870 873
          _res_cap[ra] = -_excess[u];
871 874
          _cost[a] = 0;
872 875
          _cost[ra] = 0;
873 876
          _excess[u] = 0;
874 877
        }
875 878
      } else {
876 879
        for (ArcIt a(_graph); a != INVALID; ++a) {
877 880
          Value fa = flow[a];
878 881
          _res_cap[_arc_idf[a]] = cap[a] - fa;
879 882
          _res_cap[_arc_idb[a]] = fa;
880 883
        }
881 884
        for (int a = _first_out[_root]; a != _res_arc_num; ++a) {
882 885
          int ra = _reverse[a];
883 886
          _res_cap[a] = 0;
884 887
          _res_cap[ra] = 0;
885 888
          _cost[a] = 0;
886 889
          _cost[ra] = 0;
887 890
        }
888 891
      }
889 892

	
890 893
      return OPTIMAL;
891 894
    }
892 895

	
893 896
    // Execute the algorithm and transform the results
894 897
    void start(Method method) {
895 898
      // Maximum path length for partial augment
896 899
      const int MAX_PATH_LENGTH = 4;
897 900

	
898 901
      // Initialize data structures for buckets
899 902
      _max_rank = _alpha * _res_node_num;
900 903
      _buckets.resize(_max_rank);
901 904
      _bucket_next.resize(_res_node_num + 1);
902 905
      _bucket_prev.resize(_res_node_num + 1);
903 906
      _rank.resize(_res_node_num + 1);
904 907

	
905 908
      // Execute the algorithm
906 909
      switch (method) {
907 910
        case PUSH:
908 911
          startPush();
909 912
          break;
910 913
        case AUGMENT:
911 914
          startAugment();
912 915
          break;
913 916
        case PARTIAL_AUGMENT:
914 917
          startAugment(MAX_PATH_LENGTH);
915 918
          break;
916 919
      }
917 920

	
918 921
      // Compute node potentials for the original costs
919 922
      _arc_vec.clear();
920 923
      _cost_vec.clear();
921 924
      for (int j = 0; j != _res_arc_num; ++j) {
922 925
        if (_res_cap[j] > 0) {
923 926
          _arc_vec.push_back(IntPair(_source[j], _target[j]));
924 927
          _cost_vec.push_back(_scost[j]);
925 928
        }
926 929
      }
927 930
      _sgr.build(_res_node_num, _arc_vec.begin(), _arc_vec.end());
928 931

	
929 932
      typename BellmanFord<StaticDigraph, LargeCostArcMap>
930 933
        ::template SetDistMap<LargeCostNodeMap>::Create bf(_sgr, _cost_map);
931 934
      bf.distMap(_pi_map);
932 935
      bf.init(0);
933 936
      bf.start();
934 937

	
935 938
      // Handle non-zero lower bounds
936 939
      if (_have_lower) {
937 940
        int limit = _first_out[_root];
938 941
        for (int j = 0; j != limit; ++j) {
939 942
          if (!_forward[j]) _res_cap[j] += _lower[j];
940 943
        }
941 944
      }
942 945
    }
943 946

	
944 947
    // Initialize a cost scaling phase
945 948
    void initPhase() {
946 949
      // Saturate arcs not satisfying the optimality condition
947 950
      for (int u = 0; u != _res_node_num; ++u) {
948 951
        int last_out = _first_out[u+1];
949 952
        LargeCost pi_u = _pi[u];
950 953
        for (int a = _first_out[u]; a != last_out; ++a) {
951 954
          int v = _target[a];
952 955
          if (_res_cap[a] > 0 && _cost[a] + pi_u - _pi[v] < 0) {
953 956
            Value delta = _res_cap[a];
954 957
            _excess[u] -= delta;
955 958
            _excess[v] += delta;
956 959
            _res_cap[a] = 0;
957 960
            _res_cap[_reverse[a]] += delta;
958 961
          }
959 962
        }
960 963
      }
961 964

	
962 965
      // Find active nodes (i.e. nodes with positive excess)
963 966
      for (int u = 0; u != _res_node_num; ++u) {
964 967
        if (_excess[u] > 0) _active_nodes.push_back(u);
965 968
      }
966 969

	
967 970
      // Initialize the next arcs
968 971
      for (int u = 0; u != _res_node_num; ++u) {
969 972
        _next_out[u] = _first_out[u];
970 973
      }
971 974
    }
972 975

	
973 976
    // Early termination heuristic
974 977
    bool earlyTermination() {
975 978
      const double EARLY_TERM_FACTOR = 3.0;
976 979

	
977 980
      // Build a static residual graph
978 981
      _arc_vec.clear();
979 982
      _cost_vec.clear();
980 983
      for (int j = 0; j != _res_arc_num; ++j) {
981 984
        if (_res_cap[j] > 0) {
982 985
          _arc_vec.push_back(IntPair(_source[j], _target[j]));
983 986
          _cost_vec.push_back(_cost[j] + 1);
984 987
        }
985 988
      }
986 989
      _sgr.build(_res_node_num, _arc_vec.begin(), _arc_vec.end());
987 990

	
988 991
      // Run Bellman-Ford algorithm to check if the current flow is optimal
989 992
      BellmanFord<StaticDigraph, LargeCostArcMap> bf(_sgr, _cost_map);
990 993
      bf.init(0);
991 994
      bool done = false;
992 995
      int K = int(EARLY_TERM_FACTOR * std::sqrt(double(_res_node_num)));
993 996
      for (int i = 0; i < K && !done; ++i) {
994 997
        done = bf.processNextWeakRound();
995 998
      }
996 999
      return done;
997 1000
    }
998 1001

	
999 1002
    // Global potential update heuristic
1000 1003
    void globalUpdate() {
1001 1004
      int bucket_end = _root + 1;
1002 1005

	
1003 1006
      // Initialize buckets
1004 1007
      for (int r = 0; r != _max_rank; ++r) {
1005 1008
        _buckets[r] = bucket_end;
1006 1009
      }
1007 1010
      Value total_excess = 0;
1008 1011
      for (int i = 0; i != _res_node_num; ++i) {
1009 1012
        if (_excess[i] < 0) {
1010 1013
          _rank[i] = 0;
1011 1014
          _bucket_next[i] = _buckets[0];
1012 1015
          _bucket_prev[_buckets[0]] = i;
1013 1016
          _buckets[0] = i;
1014 1017
        } else {
1015 1018
          total_excess += _excess[i];
1016 1019
          _rank[i] = _max_rank;
1017 1020
        }
1018 1021
      }
1019 1022
      if (total_excess == 0) return;
1020 1023

	
1021 1024
      // Search the buckets
1022 1025
      int r = 0;
1023 1026
      for ( ; r != _max_rank; ++r) {
1024 1027
        while (_buckets[r] != bucket_end) {
1025 1028
          // Remove the first node from the current bucket
1026 1029
          int u = _buckets[r];
1027 1030
          _buckets[r] = _bucket_next[u];
1028 1031

	
1029 1032
          // Search the incomming arcs of u
1030 1033
          LargeCost pi_u = _pi[u];
1031 1034
          int last_out = _first_out[u+1];
1032 1035
          for (int a = _first_out[u]; a != last_out; ++a) {
1033 1036
            int ra = _reverse[a];
1034 1037
            if (_res_cap[ra] > 0) {
1035 1038
              int v = _source[ra];
1036 1039
              int old_rank_v = _rank[v];
1037 1040
              if (r < old_rank_v) {
1038 1041
                // Compute the new rank of v
1039 1042
                LargeCost nrc = (_cost[ra] + _pi[v] - pi_u) / _epsilon;
1040 1043
                int new_rank_v = old_rank_v;
1041 1044
                if (nrc < LargeCost(_max_rank))
1042 1045
                  new_rank_v = r + 1 + int(nrc);
1043 1046

	
1044 1047
                // Change the rank of v
1045 1048
                if (new_rank_v < old_rank_v) {
1046 1049
                  _rank[v] = new_rank_v;
1047 1050
                  _next_out[v] = _first_out[v];
1048 1051

	
1049 1052
                  // Remove v from its old bucket
1050 1053
                  if (old_rank_v < _max_rank) {
1051 1054
                    if (_buckets[old_rank_v] == v) {
1052 1055
                      _buckets[old_rank_v] = _bucket_next[v];
1053 1056
                    } else {
1054 1057
                      _bucket_next[_bucket_prev[v]] = _bucket_next[v];
1055 1058
                      _bucket_prev[_bucket_next[v]] = _bucket_prev[v];
1056 1059
                    }
1057 1060
                  }
1058 1061

	
1059 1062
                  // Insert v to its new bucket
1060 1063
                  _bucket_next[v] = _buckets[new_rank_v];
1061 1064
                  _bucket_prev[_buckets[new_rank_v]] = v;
1062 1065
                  _buckets[new_rank_v] = v;
1063 1066
                }
1064 1067
              }
1065 1068
            }
1066 1069
          }
1067 1070

	
1068 1071
          // Finish search if there are no more active nodes
1069 1072
          if (_excess[u] > 0) {
1070 1073
            total_excess -= _excess[u];
1071 1074
            if (total_excess <= 0) break;
1072 1075
          }
1073 1076
        }
1074 1077
        if (total_excess <= 0) break;
1075 1078
      }
1076 1079

	
1077 1080
      // Relabel nodes
1078 1081
      for (int u = 0; u != _res_node_num; ++u) {
1079 1082
        int k = std::min(_rank[u], r);
1080 1083
        if (k > 0) {
1081 1084
          _pi[u] -= _epsilon * k;
1082 1085
          _next_out[u] = _first_out[u];
1083 1086
        }
1084 1087
      }
1085 1088
    }
1086 1089

	
1087 1090
    /// Execute the algorithm performing augment and relabel operations
1088 1091
    void startAugment(int max_length = std::numeric_limits<int>::max()) {
1089 1092
      // Paramters for heuristics
1090 1093
      const int EARLY_TERM_EPSILON_LIMIT = 1000;
1091 1094
      const double GLOBAL_UPDATE_FACTOR = 3.0;
1092 1095

	
1093 1096
      const int global_update_freq = int(GLOBAL_UPDATE_FACTOR *
1094 1097
        (_res_node_num + _sup_node_num * _sup_node_num));
1095 1098
      int next_update_limit = global_update_freq;
1096 1099

	
1097 1100
      int relabel_cnt = 0;
1098 1101

	
1099 1102
      // Perform cost scaling phases
1100 1103
      std::vector<int> path;
1101 1104
      for ( ; _epsilon >= 1; _epsilon = _epsilon < _alpha && _epsilon > 1 ?
1102 1105
                                        1 : _epsilon / _alpha )
1103 1106
      {
1104 1107
        // Early termination heuristic
1105 1108
        if (_epsilon <= EARLY_TERM_EPSILON_LIMIT) {
1106 1109
          if (earlyTermination()) break;
1107 1110
        }
1108 1111

	
1109 1112
        // Initialize current phase
1110 1113
        initPhase();
1111 1114

	
1112 1115
        // Perform partial augment and relabel operations
1113 1116
        while (true) {
1114 1117
          // Select an active node (FIFO selection)
1115 1118
          while (_active_nodes.size() > 0 &&
1116 1119
                 _excess[_active_nodes.front()] <= 0) {
1117 1120
            _active_nodes.pop_front();
1118 1121
          }
1119 1122
          if (_active_nodes.size() == 0) break;
1120 1123
          int start = _active_nodes.front();
1121 1124

	
1122 1125
          // Find an augmenting path from the start node
1123 1126
          path.clear();
1124 1127
          int tip = start;
1125 1128
          while (_excess[tip] >= 0 && int(path.size()) < max_length) {
1126 1129
            int u;
1127 1130
            LargeCost min_red_cost, rc, pi_tip = _pi[tip];
1128 1131
            int last_out = _first_out[tip+1];
1129 1132
            for (int a = _next_out[tip]; a != last_out; ++a) {
1130 1133
              u = _target[a];
1131 1134
              if (_res_cap[a] > 0 && _cost[a] + pi_tip - _pi[u] < 0) {
1132 1135
                path.push_back(a);
1133 1136
                _next_out[tip] = a;
1134 1137
                tip = u;
1135 1138
                goto next_step;
1136 1139
              }
1137 1140
            }
1138 1141

	
1139 1142
            // Relabel tip node
1140 1143
            min_red_cost = std::numeric_limits<LargeCost>::max();
1141 1144
            if (tip != start) {
1142 1145
              int ra = _reverse[path.back()];
1143 1146
              min_red_cost = _cost[ra] + pi_tip - _pi[_target[ra]];
1144 1147
            }
1145 1148
            for (int a = _first_out[tip]; a != last_out; ++a) {
1146 1149
              rc = _cost[a] + pi_tip - _pi[_target[a]];
1147 1150
              if (_res_cap[a] > 0 && rc < min_red_cost) {
1148 1151
                min_red_cost = rc;
1149 1152
              }
1150 1153
            }
1151 1154
            _pi[tip] -= min_red_cost + _epsilon;
1152 1155
            _next_out[tip] = _first_out[tip];
1153 1156
            ++relabel_cnt;
1154 1157

	
1155 1158
            // Step back
1156 1159
            if (tip != start) {
1157 1160
              tip = _source[path.back()];
1158 1161
              path.pop_back();
1159 1162
            }
1160 1163

	
1161 1164
          next_step: ;
1162 1165
          }
1163 1166

	
1164 1167
          // Augment along the found path (as much flow as possible)
1165 1168
          Value delta;
1166 1169
          int pa, u, v = start;
1167 1170
          for (int i = 0; i != int(path.size()); ++i) {
1168 1171
            pa = path[i];
1169 1172
            u = v;
1170 1173
            v = _target[pa];
1171 1174
            delta = std::min(_res_cap[pa], _excess[u]);
1172 1175
            _res_cap[pa] -= delta;
1173 1176
            _res_cap[_reverse[pa]] += delta;
1174 1177
            _excess[u] -= delta;
1175 1178
            _excess[v] += delta;
1176 1179
            if (_excess[v] > 0 && _excess[v] <= delta)
1177 1180
              _active_nodes.push_back(v);
1178 1181
          }
1179 1182

	
1180 1183
          // Global update heuristic
1181 1184
          if (relabel_cnt >= next_update_limit) {
1182 1185
            globalUpdate();
1183 1186
            next_update_limit += global_update_freq;
1184 1187
          }
1185 1188
        }
1186 1189
      }
1187 1190
    }
1188 1191

	
1189 1192
    /// Execute the algorithm performing push and relabel operations
1190 1193
    void startPush() {
1191 1194
      // Paramters for heuristics
1192 1195
      const int EARLY_TERM_EPSILON_LIMIT = 1000;
1193 1196
      const double GLOBAL_UPDATE_FACTOR = 2.0;
1194 1197

	
1195 1198
      const int global_update_freq = int(GLOBAL_UPDATE_FACTOR *
1196 1199
        (_res_node_num + _sup_node_num * _sup_node_num));
1197 1200
      int next_update_limit = global_update_freq;
1198 1201

	
1199 1202
      int relabel_cnt = 0;
1200 1203

	
1201 1204
      // Perform cost scaling phases
1202 1205
      BoolVector hyper(_res_node_num, false);
1203 1206
      LargeCostVector hyper_cost(_res_node_num);
1204 1207
      for ( ; _epsilon >= 1; _epsilon = _epsilon < _alpha && _epsilon > 1 ?
1205 1208
                                        1 : _epsilon / _alpha )
1206 1209
      {
1207 1210
        // Early termination heuristic
1208 1211
        if (_epsilon <= EARLY_TERM_EPSILON_LIMIT) {
1209 1212
          if (earlyTermination()) break;
1210 1213
        }
1211 1214

	
1212 1215
        // Initialize current phase
1213 1216
        initPhase();
1214 1217

	
1215 1218
        // Perform push and relabel operations
1216 1219
        while (_active_nodes.size() > 0) {
1217 1220
          LargeCost min_red_cost, rc, pi_n;
1218 1221
          Value delta;
1219 1222
          int n, t, a, last_out = _res_arc_num;
Ignore white space 6 line context
1 1
/* -*- mode: C++; indent-tabs-mode: nil; -*-
2 2
 *
3 3
 * This file is a part of LEMON, a generic C++ optimization library.
4 4
 *
5 5
 * Copyright (C) 2003-2010
6 6
 * Egervary Jeno Kombinatorikus Optimalizalasi Kutatocsoport
7 7
 * (Egervary Research Group on Combinatorial Optimization, EGRES).
8 8
 *
9 9
 * Permission to use, modify and distribute this software is granted
10 10
 * provided that this copyright notice appears in all copies. For
11 11
 * precise terms see the accompanying LICENSE file.
12 12
 *
13 13
 * This software is provided "AS IS" with no warranty of any kind,
14 14
 * express or implied, and with no claim as to its suitability for any
15 15
 * purpose.
16 16
 *
17 17
 */
18 18

	
19 19
#ifndef LEMON_CYCLE_CANCELING_H
20 20
#define LEMON_CYCLE_CANCELING_H
21 21

	
22 22
/// \ingroup min_cost_flow_algs
23 23
/// \file
24 24
/// \brief Cycle-canceling algorithms for finding a minimum cost flow.
25 25

	
26 26
#include <vector>
27 27
#include <limits>
28 28

	
29 29
#include <lemon/core.h>
30 30
#include <lemon/maps.h>
31 31
#include <lemon/path.h>
32 32
#include <lemon/math.h>
33 33
#include <lemon/static_graph.h>
34 34
#include <lemon/adaptors.h>
35 35
#include <lemon/circulation.h>
36 36
#include <lemon/bellman_ford.h>
37 37
#include <lemon/howard_mmc.h>
38 38

	
39 39
namespace lemon {
40 40

	
41 41
  /// \addtogroup min_cost_flow_algs
42 42
  /// @{
43 43

	
44 44
  /// \brief Implementation of cycle-canceling algorithms for
45 45
  /// finding a \ref min_cost_flow "minimum cost flow".
46 46
  ///
47 47
  /// \ref CycleCanceling implements three different cycle-canceling
48 48
  /// algorithms for finding a \ref min_cost_flow "minimum cost flow"
49 49
  /// \ref amo93networkflows, \ref klein67primal,
50 50
  /// \ref goldberg89cyclecanceling.
51 51
  /// The most efficent one (both theoretically and practically)
52 52
  /// is the \ref CANCEL_AND_TIGHTEN "Cancel and Tighten" algorithm,
53 53
  /// thus it is the default method.
54 54
  /// It is strongly polynomial, but in practice, it is typically much
55 55
  /// slower than the scaling algorithms and NetworkSimplex.
56 56
  ///
57 57
  /// Most of the parameters of the problem (except for the digraph)
58 58
  /// can be given using separate functions, and the algorithm can be
59 59
  /// executed using the \ref run() function. If some parameters are not
60 60
  /// specified, then default values will be used.
61 61
  ///
62 62
  /// \tparam GR The digraph type the algorithm runs on.
63 63
  /// \tparam V The number type used for flow amounts, capacity bounds
64 64
  /// and supply values in the algorithm. By default, it is \c int.
65 65
  /// \tparam C The number type used for costs and potentials in the
66 66
  /// algorithm. By default, it is the same as \c V.
67 67
  ///
68 68
  /// \warning Both \c V and \c C must be signed number types.
69 69
  /// \warning All input data (capacities, supply values, and costs) must
70 70
  /// be integer.
71
  /// \warning This algorithm does not support negative costs for such
72
  /// arcs that have infinite upper bound.
71
  /// \warning This algorithm does not support negative costs for
72
  /// arcs having infinite upper bound.
73 73
  ///
74 74
  /// \note For more information about the three available methods,
75 75
  /// see \ref Method.
76 76
#ifdef DOXYGEN
77 77
  template <typename GR, typename V, typename C>
78 78
#else
79 79
  template <typename GR, typename V = int, typename C = V>
80 80
#endif
81 81
  class CycleCanceling
82 82
  {
83 83
  public:
84 84

	
85 85
    /// The type of the digraph
86 86
    typedef GR Digraph;
87 87
    /// The type of the flow amounts, capacity bounds and supply values
88 88
    typedef V Value;
89 89
    /// The type of the arc costs
90 90
    typedef C Cost;
91 91

	
92 92
  public:
93 93

	
94 94
    /// \brief Problem type constants for the \c run() function.
95 95
    ///
96 96
    /// Enum type containing the problem type constants that can be
97 97
    /// returned by the \ref run() function of the algorithm.
98 98
    enum ProblemType {
99 99
      /// The problem has no feasible solution (flow).
100 100
      INFEASIBLE,
101 101
      /// The problem has optimal solution (i.e. it is feasible and
102 102
      /// bounded), and the algorithm has found optimal flow and node
103 103
      /// potentials (primal and dual solutions).
104 104
      OPTIMAL,
105 105
      /// The digraph contains an arc of negative cost and infinite
106 106
      /// upper bound. It means that the objective function is unbounded
107 107
      /// on that arc, however, note that it could actually be bounded
108 108
      /// over the feasible flows, but this algroithm cannot handle
109 109
      /// these cases.
110 110
      UNBOUNDED
111 111
    };
112 112

	
113 113
    /// \brief Constants for selecting the used method.
114 114
    ///
115 115
    /// Enum type containing constants for selecting the used method
116 116
    /// for the \ref run() function.
117 117
    ///
118 118
    /// \ref CycleCanceling provides three different cycle-canceling
119 119
    /// methods. By default, \ref CANCEL_AND_TIGHTEN "Cancel and Tighten"
120
    /// is used, which proved to be the most efficient and the most robust
121
    /// on various test inputs.
120
    /// is used, which is by far the most efficient and the most robust.
122 121
    /// However, the other methods can be selected using the \ref run()
123 122
    /// function with the proper parameter.
124 123
    enum Method {
125 124
      /// A simple cycle-canceling method, which uses the
126 125
      /// \ref BellmanFord "Bellman-Ford" algorithm with limited iteration
127 126
      /// number for detecting negative cycles in the residual network.
128 127
      SIMPLE_CYCLE_CANCELING,
129 128
      /// The "Minimum Mean Cycle-Canceling" algorithm, which is a
130 129
      /// well-known strongly polynomial method
131 130
      /// \ref goldberg89cyclecanceling. It improves along a
132 131
      /// \ref min_mean_cycle "minimum mean cycle" in each iteration.
133 132
      /// Its running time complexity is O(n<sup>2</sup>m<sup>3</sup>log(n)).
134 133
      MINIMUM_MEAN_CYCLE_CANCELING,
135 134
      /// The "Cancel And Tighten" algorithm, which can be viewed as an
136 135
      /// improved version of the previous method
137 136
      /// \ref goldberg89cyclecanceling.
138 137
      /// It is faster both in theory and in practice, its running time
139 138
      /// complexity is O(n<sup>2</sup>m<sup>2</sup>log(n)).
140 139
      CANCEL_AND_TIGHTEN
141 140
    };
142 141

	
143 142
  private:
144 143

	
145 144
    TEMPLATE_DIGRAPH_TYPEDEFS(GR);
146 145

	
147 146
    typedef std::vector<int> IntVector;
148 147
    typedef std::vector<double> DoubleVector;
149 148
    typedef std::vector<Value> ValueVector;
150 149
    typedef std::vector<Cost> CostVector;
151 150
    typedef std::vector<char> BoolVector;
152 151
    // Note: vector<char> is used instead of vector<bool> for efficiency reasons
153 152

	
154 153
  private:
155 154

	
156 155
    template <typename KT, typename VT>
157 156
    class StaticVectorMap {
158 157
    public:
159 158
      typedef KT Key;
160 159
      typedef VT Value;
161 160

	
162 161
      StaticVectorMap(std::vector<Value>& v) : _v(v) {}
163 162

	
164 163
      const Value& operator[](const Key& key) const {
165 164
        return _v[StaticDigraph::id(key)];
166 165
      }
167 166

	
168 167
      Value& operator[](const Key& key) {
169 168
        return _v[StaticDigraph::id(key)];
170 169
      }
171 170

	
172 171
      void set(const Key& key, const Value& val) {
173 172
        _v[StaticDigraph::id(key)] = val;
174 173
      }
175 174

	
176 175
    private:
177 176
      std::vector<Value>& _v;
178 177
    };
179 178

	
180 179
    typedef StaticVectorMap<StaticDigraph::Node, Cost> CostNodeMap;
181 180
    typedef StaticVectorMap<StaticDigraph::Arc, Cost> CostArcMap;
182 181

	
183 182
  private:
184 183

	
185 184

	
186 185
    // Data related to the underlying digraph
187 186
    const GR &_graph;
188 187
    int _node_num;
189 188
    int _arc_num;
190 189
    int _res_node_num;
191 190
    int _res_arc_num;
192 191
    int _root;
193 192

	
194 193
    // Parameters of the problem
195 194
    bool _have_lower;
196 195
    Value _sum_supply;
197 196

	
198 197
    // Data structures for storing the digraph
199 198
    IntNodeMap _node_id;
200 199
    IntArcMap _arc_idf;
201 200
    IntArcMap _arc_idb;
202 201
    IntVector _first_out;
203 202
    BoolVector _forward;
204 203
    IntVector _source;
205 204
    IntVector _target;
206 205
    IntVector _reverse;
207 206

	
208 207
    // Node and arc data
209 208
    ValueVector _lower;
210 209
    ValueVector _upper;
211 210
    CostVector _cost;
212 211
    ValueVector _supply;
213 212

	
214 213
    ValueVector _res_cap;
215 214
    CostVector _pi;
216 215

	
217 216
    // Data for a StaticDigraph structure
218 217
    typedef std::pair<int, int> IntPair;
219 218
    StaticDigraph _sgr;
220 219
    std::vector<IntPair> _arc_vec;
221 220
    std::vector<Cost> _cost_vec;
222 221
    IntVector _id_vec;
223 222
    CostArcMap _cost_map;
224 223
    CostNodeMap _pi_map;
225 224

	
226 225
  public:
227 226

	
228 227
    /// \brief Constant for infinite upper bounds (capacities).
229 228
    ///
230 229
    /// Constant for infinite upper bounds (capacities).
231 230
    /// It is \c std::numeric_limits<Value>::infinity() if available,
232 231
    /// \c std::numeric_limits<Value>::max() otherwise.
233 232
    const Value INF;
234 233

	
235 234
  public:
236 235

	
237 236
    /// \brief Constructor.
238 237
    ///
239 238
    /// The constructor of the class.
240 239
    ///
241 240
    /// \param graph The digraph the algorithm runs on.
242 241
    CycleCanceling(const GR& graph) :
243 242
      _graph(graph), _node_id(graph), _arc_idf(graph), _arc_idb(graph),
244 243
      _cost_map(_cost_vec), _pi_map(_pi),
245 244
      INF(std::numeric_limits<Value>::has_infinity ?
246 245
          std::numeric_limits<Value>::infinity() :
247 246
          std::numeric_limits<Value>::max())
248 247
    {
249 248
      // Check the number types
250 249
      LEMON_ASSERT(std::numeric_limits<Value>::is_signed,
251 250
        "The flow type of CycleCanceling must be signed");
252 251
      LEMON_ASSERT(std::numeric_limits<Cost>::is_signed,
253 252
        "The cost type of CycleCanceling must be signed");
254 253

	
255 254
      // Reset data structures
256 255
      reset();
257 256
    }
258 257

	
259 258
    /// \name Parameters
260 259
    /// The parameters of the algorithm can be specified using these
261 260
    /// functions.
262 261

	
263 262
    /// @{
264 263

	
265 264
    /// \brief Set the lower bounds on the arcs.
266 265
    ///
267 266
    /// This function sets the lower bounds on the arcs.
268 267
    /// If it is not used before calling \ref run(), the lower bounds
269 268
    /// will be set to zero on all arcs.
270 269
    ///
271 270
    /// \param map An arc map storing the lower bounds.
272 271
    /// Its \c Value type must be convertible to the \c Value type
273 272
    /// of the algorithm.
274 273
    ///
275 274
    /// \return <tt>(*this)</tt>
276 275
    template <typename LowerMap>
277 276
    CycleCanceling& lowerMap(const LowerMap& map) {
278 277
      _have_lower = true;
279 278
      for (ArcIt a(_graph); a != INVALID; ++a) {
280 279
        _lower[_arc_idf[a]] = map[a];
281 280
        _lower[_arc_idb[a]] = map[a];
282 281
      }
283 282
      return *this;
284 283
    }
285 284

	
286 285
    /// \brief Set the upper bounds (capacities) on the arcs.
287 286
    ///
288 287
    /// This function sets the upper bounds (capacities) on the arcs.
289 288
    /// If it is not used before calling \ref run(), the upper bounds
290 289
    /// will be set to \ref INF on all arcs (i.e. the flow value will be
291 290
    /// unbounded from above).
292 291
    ///
293 292
    /// \param map An arc map storing the upper bounds.
294 293
    /// Its \c Value type must be convertible to the \c Value type
295 294
    /// of the algorithm.
296 295
    ///
297 296
    /// \return <tt>(*this)</tt>
298 297
    template<typename UpperMap>
299 298
    CycleCanceling& upperMap(const UpperMap& map) {
300 299
      for (ArcIt a(_graph); a != INVALID; ++a) {
301 300
        _upper[_arc_idf[a]] = map[a];
302 301
      }
303 302
      return *this;
304 303
    }
305 304

	
306 305
    /// \brief Set the costs of the arcs.
307 306
    ///
308 307
    /// This function sets the costs of the arcs.
309 308
    /// If it is not used before calling \ref run(), the costs
310 309
    /// will be set to \c 1 on all arcs.
311 310
    ///
312 311
    /// \param map An arc map storing the costs.
313 312
    /// Its \c Value type must be convertible to the \c Cost type
314 313
    /// of the algorithm.
315 314
    ///
316 315
    /// \return <tt>(*this)</tt>
317 316
    template<typename CostMap>
318 317
    CycleCanceling& costMap(const CostMap& map) {
319 318
      for (ArcIt a(_graph); a != INVALID; ++a) {
320 319
        _cost[_arc_idf[a]] =  map[a];
321 320
        _cost[_arc_idb[a]] = -map[a];
322 321
      }
323 322
      return *this;
324 323
    }
325 324

	
326 325
    /// \brief Set the supply values of the nodes.
327 326
    ///
328 327
    /// This function sets the supply values of the nodes.
329 328
    /// If neither this function nor \ref stSupply() is used before
330 329
    /// calling \ref run(), the supply of each node will be set to zero.
331 330
    ///
332 331
    /// \param map A node map storing the supply values.
333 332
    /// Its \c Value type must be convertible to the \c Value type
334 333
    /// of the algorithm.
335 334
    ///
336 335
    /// \return <tt>(*this)</tt>
337 336
    template<typename SupplyMap>
338 337
    CycleCanceling& supplyMap(const SupplyMap& map) {
339 338
      for (NodeIt n(_graph); n != INVALID; ++n) {
340 339
        _supply[_node_id[n]] = map[n];
341 340
      }
342 341
      return *this;
343 342
    }
344 343

	
345 344
    /// \brief Set single source and target nodes and a supply value.
346 345
    ///
347 346
    /// This function sets a single source node and a single target node
348 347
    /// and the required flow value.
349 348
    /// If neither this function nor \ref supplyMap() is used before
350 349
    /// calling \ref run(), the supply of each node will be set to zero.
351 350
    ///
352 351
    /// Using this function has the same effect as using \ref supplyMap()
353
    /// with such a map in which \c k is assigned to \c s, \c -k is
352
    /// with a map in which \c k is assigned to \c s, \c -k is
354 353
    /// assigned to \c t and all other nodes have zero supply value.
355 354
    ///
356 355
    /// \param s The source node.
357 356
    /// \param t The target node.
358 357
    /// \param k The required amount of flow from node \c s to node \c t
359 358
    /// (i.e. the supply of \c s and the demand of \c t).
360 359
    ///
361 360
    /// \return <tt>(*this)</tt>
362 361
    CycleCanceling& stSupply(const Node& s, const Node& t, Value k) {
363 362
      for (int i = 0; i != _res_node_num; ++i) {
364 363
        _supply[i] = 0;
365 364
      }
366 365
      _supply[_node_id[s]] =  k;
367 366
      _supply[_node_id[t]] = -k;
368 367
      return *this;
369 368
    }
370 369

	
371 370
    /// @}
372 371

	
373 372
    /// \name Execution control
374 373
    /// The algorithm can be executed using \ref run().
375 374

	
376 375
    /// @{
377 376

	
378 377
    /// \brief Run the algorithm.
379 378
    ///
380 379
    /// This function runs the algorithm.
381 380
    /// The paramters can be specified using functions \ref lowerMap(),
382 381
    /// \ref upperMap(), \ref costMap(), \ref supplyMap(), \ref stSupply().
383 382
    /// For example,
384 383
    /// \code
385 384
    ///   CycleCanceling<ListDigraph> cc(graph);
386 385
    ///   cc.lowerMap(lower).upperMap(upper).costMap(cost)
387 386
    ///     .supplyMap(sup).run();
388 387
    /// \endcode
389 388
    ///
390 389
    /// This function can be called more than once. All the given parameters
391 390
    /// are kept for the next call, unless \ref resetParams() or \ref reset()
392 391
    /// is used, thus only the modified parameters have to be set again.
393 392
    /// If the underlying digraph was also modified after the construction
394 393
    /// of the class (or the last \ref reset() call), then the \ref reset()
395 394
    /// function must be called.
396 395
    ///
397 396
    /// \param method The cycle-canceling method that will be used.
398 397
    /// For more information, see \ref Method.
399 398
    ///
400 399
    /// \return \c INFEASIBLE if no feasible flow exists,
401 400
    /// \n \c OPTIMAL if the problem has optimal solution
402 401
    /// (i.e. it is feasible and bounded), and the algorithm has found
403 402
    /// optimal flow and node potentials (primal and dual solutions),
404 403
    /// \n \c UNBOUNDED if the digraph contains an arc of negative cost
405 404
    /// and infinite upper bound. It means that the objective function
406 405
    /// is unbounded on that arc, however, note that it could actually be
407 406
    /// bounded over the feasible flows, but this algroithm cannot handle
408 407
    /// these cases.
409 408
    ///
410 409
    /// \see ProblemType, Method
411 410
    /// \see resetParams(), reset()
412 411
    ProblemType run(Method method = CANCEL_AND_TIGHTEN) {
413 412
      ProblemType pt = init();
414 413
      if (pt != OPTIMAL) return pt;
415 414
      start(method);
416 415
      return OPTIMAL;
417 416
    }
418 417

	
419 418
    /// \brief Reset all the parameters that have been given before.
420 419
    ///
421 420
    /// This function resets all the paramaters that have been given
422 421
    /// before using functions \ref lowerMap(), \ref upperMap(),
423 422
    /// \ref costMap(), \ref supplyMap(), \ref stSupply().
424 423
    ///
425 424
    /// It is useful for multiple \ref run() calls. Basically, all the given
426 425
    /// parameters are kept for the next \ref run() call, unless
427 426
    /// \ref resetParams() or \ref reset() is used.
428 427
    /// If the underlying digraph was also modified after the construction
429 428
    /// of the class or the last \ref reset() call, then the \ref reset()
430 429
    /// function must be used, otherwise \ref resetParams() is sufficient.
431 430
    ///
432 431
    /// For example,
433 432
    /// \code
434 433
    ///   CycleCanceling<ListDigraph> cs(graph);
435 434
    ///
436 435
    ///   // First run
437 436
    ///   cc.lowerMap(lower).upperMap(upper).costMap(cost)
438 437
    ///     .supplyMap(sup).run();
439 438
    ///
440 439
    ///   // Run again with modified cost map (resetParams() is not called,
441 440
    ///   // so only the cost map have to be set again)
442 441
    ///   cost[e] += 100;
443 442
    ///   cc.costMap(cost).run();
444 443
    ///
445 444
    ///   // Run again from scratch using resetParams()
446 445
    ///   // (the lower bounds will be set to zero on all arcs)
447 446
    ///   cc.resetParams();
448 447
    ///   cc.upperMap(capacity).costMap(cost)
449 448
    ///     .supplyMap(sup).run();
450 449
    /// \endcode
451 450
    ///
452 451
    /// \return <tt>(*this)</tt>
453 452
    ///
454 453
    /// \see reset(), run()
455 454
    CycleCanceling& resetParams() {
456 455
      for (int i = 0; i != _res_node_num; ++i) {
457 456
        _supply[i] = 0;
458 457
      }
459 458
      int limit = _first_out[_root];
460 459
      for (int j = 0; j != limit; ++j) {
461 460
        _lower[j] = 0;
462 461
        _upper[j] = INF;
463 462
        _cost[j] = _forward[j] ? 1 : -1;
464 463
      }
465 464
      for (int j = limit; j != _res_arc_num; ++j) {
466 465
        _lower[j] = 0;
467 466
        _upper[j] = INF;
468 467
        _cost[j] = 0;
469 468
        _cost[_reverse[j]] = 0;
470 469
      }
471 470
      _have_lower = false;
472 471
      return *this;
473 472
    }
474 473

	
475 474
    /// \brief Reset the internal data structures and all the parameters
476 475
    /// that have been given before.
477 476
    ///
478 477
    /// This function resets the internal data structures and all the
479 478
    /// paramaters that have been given before using functions \ref lowerMap(),
480 479
    /// \ref upperMap(), \ref costMap(), \ref supplyMap(), \ref stSupply().
481 480
    ///
482 481
    /// It is useful for multiple \ref run() calls. Basically, all the given
483 482
    /// parameters are kept for the next \ref run() call, unless
484 483
    /// \ref resetParams() or \ref reset() is used.
485 484
    /// If the underlying digraph was also modified after the construction
486 485
    /// of the class or the last \ref reset() call, then the \ref reset()
487 486
    /// function must be used, otherwise \ref resetParams() is sufficient.
488 487
    ///
489 488
    /// See \ref resetParams() for examples.
490 489
    ///
491 490
    /// \return <tt>(*this)</tt>
492 491
    ///
493 492
    /// \see resetParams(), run()
494 493
    CycleCanceling& reset() {
495 494
      // Resize vectors
496 495
      _node_num = countNodes(_graph);
497 496
      _arc_num = countArcs(_graph);
498 497
      _res_node_num = _node_num + 1;
499 498
      _res_arc_num = 2 * (_arc_num + _node_num);
500 499
      _root = _node_num;
501 500

	
502 501
      _first_out.resize(_res_node_num + 1);
503 502
      _forward.resize(_res_arc_num);
504 503
      _source.resize(_res_arc_num);
505 504
      _target.resize(_res_arc_num);
506 505
      _reverse.resize(_res_arc_num);
507 506

	
508 507
      _lower.resize(_res_arc_num);
509 508
      _upper.resize(_res_arc_num);
510 509
      _cost.resize(_res_arc_num);
511 510
      _supply.resize(_res_node_num);
512 511

	
513 512
      _res_cap.resize(_res_arc_num);
514 513
      _pi.resize(_res_node_num);
515 514

	
516 515
      _arc_vec.reserve(_res_arc_num);
517 516
      _cost_vec.reserve(_res_arc_num);
518 517
      _id_vec.reserve(_res_arc_num);
519 518

	
520 519
      // Copy the graph
521 520
      int i = 0, j = 0, k = 2 * _arc_num + _node_num;
522 521
      for (NodeIt n(_graph); n != INVALID; ++n, ++i) {
523 522
        _node_id[n] = i;
524 523
      }
525 524
      i = 0;
526 525
      for (NodeIt n(_graph); n != INVALID; ++n, ++i) {
527 526
        _first_out[i] = j;
528 527
        for (OutArcIt a(_graph, n); a != INVALID; ++a, ++j) {
529 528
          _arc_idf[a] = j;
530 529
          _forward[j] = true;
531 530
          _source[j] = i;
532 531
          _target[j] = _node_id[_graph.runningNode(a)];
533 532
        }
534 533
        for (InArcIt a(_graph, n); a != INVALID; ++a, ++j) {
535 534
          _arc_idb[a] = j;
536 535
          _forward[j] = false;
537 536
          _source[j] = i;
538 537
          _target[j] = _node_id[_graph.runningNode(a)];
539 538
        }
540 539
        _forward[j] = false;
541 540
        _source[j] = i;
542 541
        _target[j] = _root;
543 542
        _reverse[j] = k;
544 543
        _forward[k] = true;
545 544
        _source[k] = _root;
546 545
        _target[k] = i;
547 546
        _reverse[k] = j;
548 547
        ++j; ++k;
549 548
      }
550 549
      _first_out[i] = j;
551 550
      _first_out[_res_node_num] = k;
552 551
      for (ArcIt a(_graph); a != INVALID; ++a) {
553 552
        int fi = _arc_idf[a];
554 553
        int bi = _arc_idb[a];
555 554
        _reverse[fi] = bi;
556 555
        _reverse[bi] = fi;
557 556
      }
558 557

	
559 558
      // Reset parameters
560 559
      resetParams();
561 560
      return *this;
562 561
    }
563 562

	
564 563
    /// @}
565 564

	
566 565
    /// \name Query Functions
567 566
    /// The results of the algorithm can be obtained using these
568 567
    /// functions.\n
569 568
    /// The \ref run() function must be called before using them.
570 569

	
571 570
    /// @{
572 571

	
573 572
    /// \brief Return the total cost of the found flow.
574 573
    ///
575 574
    /// This function returns the total cost of the found flow.
576 575
    /// Its complexity is O(e).
577 576
    ///
578 577
    /// \note The return type of the function can be specified as a
579 578
    /// template parameter. For example,
580 579
    /// \code
581 580
    ///   cc.totalCost<double>();
582 581
    /// \endcode
583 582
    /// It is useful if the total cost cannot be stored in the \c Cost
584 583
    /// type of the algorithm, which is the default return type of the
585 584
    /// function.
586 585
    ///
587 586
    /// \pre \ref run() must be called before using this function.
588 587
    template <typename Number>
589 588
    Number totalCost() const {
590 589
      Number c = 0;
591 590
      for (ArcIt a(_graph); a != INVALID; ++a) {
592 591
        int i = _arc_idb[a];
593 592
        c += static_cast<Number>(_res_cap[i]) *
594 593
             (-static_cast<Number>(_cost[i]));
595 594
      }
596 595
      return c;
597 596
    }
598 597

	
599 598
#ifndef DOXYGEN
600 599
    Cost totalCost() const {
601 600
      return totalCost<Cost>();
602 601
    }
603 602
#endif
604 603

	
605 604
    /// \brief Return the flow on the given arc.
606 605
    ///
607 606
    /// This function returns the flow on the given arc.
608 607
    ///
609 608
    /// \pre \ref run() must be called before using this function.
610 609
    Value flow(const Arc& a) const {
611 610
      return _res_cap[_arc_idb[a]];
612 611
    }
613 612

	
614 613
    /// \brief Return the flow map (the primal solution).
615 614
    ///
616 615
    /// This function copies the flow value on each arc into the given
617 616
    /// map. The \c Value type of the algorithm must be convertible to
618 617
    /// the \c Value type of the map.
619 618
    ///
620 619
    /// \pre \ref run() must be called before using this function.
621 620
    template <typename FlowMap>
622 621
    void flowMap(FlowMap &map) const {
623 622
      for (ArcIt a(_graph); a != INVALID; ++a) {
624 623
        map.set(a, _res_cap[_arc_idb[a]]);
625 624
      }
626 625
    }
627 626

	
628 627
    /// \brief Return the potential (dual value) of the given node.
629 628
    ///
630 629
    /// This function returns the potential (dual value) of the
631 630
    /// given node.
632 631
    ///
633 632
    /// \pre \ref run() must be called before using this function.
634 633
    Cost potential(const Node& n) const {
635 634
      return static_cast<Cost>(_pi[_node_id[n]]);
636 635
    }
637 636

	
638 637
    /// \brief Return the potential map (the dual solution).
639 638
    ///
640 639
    /// This function copies the potential (dual value) of each node
641 640
    /// into the given map.
642 641
    /// The \c Cost type of the algorithm must be convertible to the
643 642
    /// \c Value type of the map.
644 643
    ///
645 644
    /// \pre \ref run() must be called before using this function.
646 645
    template <typename PotentialMap>
647 646
    void potentialMap(PotentialMap &map) const {
648 647
      for (NodeIt n(_graph); n != INVALID; ++n) {
649 648
        map.set(n, static_cast<Cost>(_pi[_node_id[n]]));
650 649
      }
651 650
    }
652 651

	
653 652
    /// @}
654 653

	
655 654
  private:
656 655

	
657 656
    // Initialize the algorithm
658 657
    ProblemType init() {
659 658
      if (_res_node_num <= 1) return INFEASIBLE;
660 659

	
661 660
      // Check the sum of supply values
662 661
      _sum_supply = 0;
663 662
      for (int i = 0; i != _root; ++i) {
664 663
        _sum_supply += _supply[i];
665 664
      }
666 665
      if (_sum_supply > 0) return INFEASIBLE;
667 666

	
668 667

	
669 668
      // Initialize vectors
670 669
      for (int i = 0; i != _res_node_num; ++i) {
671 670
        _pi[i] = 0;
672 671
      }
673 672
      ValueVector excess(_supply);
674 673

	
675 674
      // Remove infinite upper bounds and check negative arcs
676 675
      const Value MAX = std::numeric_limits<Value>::max();
677 676
      int last_out;
678 677
      if (_have_lower) {
679 678
        for (int i = 0; i != _root; ++i) {
680 679
          last_out = _first_out[i+1];
681 680
          for (int j = _first_out[i]; j != last_out; ++j) {
682 681
            if (_forward[j]) {
683 682
              Value c = _cost[j] < 0 ? _upper[j] : _lower[j];
684 683
              if (c >= MAX) return UNBOUNDED;
685 684
              excess[i] -= c;
686 685
              excess[_target[j]] += c;
687 686
            }
688 687
          }
689 688
        }
690 689
      } else {
691 690
        for (int i = 0; i != _root; ++i) {
692 691
          last_out = _first_out[i+1];
693 692
          for (int j = _first_out[i]; j != last_out; ++j) {
694 693
            if (_forward[j] && _cost[j] < 0) {
695 694
              Value c = _upper[j];
696 695
              if (c >= MAX) return UNBOUNDED;
697 696
              excess[i] -= c;
698 697
              excess[_target[j]] += c;
699 698
            }
700 699
          }
701 700
        }
702 701
      }
703 702
      Value ex, max_cap = 0;
704 703
      for (int i = 0; i != _res_node_num; ++i) {
705 704
        ex = excess[i];
706 705
        if (ex < 0) max_cap -= ex;
707 706
      }
708 707
      for (int j = 0; j != _res_arc_num; ++j) {
709 708
        if (_upper[j] >= MAX) _upper[j] = max_cap;
710 709
      }
711 710

	
712 711
      // Initialize maps for Circulation and remove non-zero lower bounds
713 712
      ConstMap<Arc, Value> low(0);
714 713
      typedef typename Digraph::template ArcMap<Value> ValueArcMap;
715 714
      typedef typename Digraph::template NodeMap<Value> ValueNodeMap;
716 715
      ValueArcMap cap(_graph), flow(_graph);
717 716
      ValueNodeMap sup(_graph);
718 717
      for (NodeIt n(_graph); n != INVALID; ++n) {
719 718
        sup[n] = _supply[_node_id[n]];
720 719
      }
721 720
      if (_have_lower) {
722 721
        for (ArcIt a(_graph); a != INVALID; ++a) {
723 722
          int j = _arc_idf[a];
724 723
          Value c = _lower[j];
725 724
          cap[a] = _upper[j] - c;
726 725
          sup[_graph.source(a)] -= c;
727 726
          sup[_graph.target(a)] += c;
728 727
        }
729 728
      } else {
730 729
        for (ArcIt a(_graph); a != INVALID; ++a) {
731 730
          cap[a] = _upper[_arc_idf[a]];
732 731
        }
733 732
      }
734 733

	
735 734
      // Find a feasible flow using Circulation
736 735
      Circulation<Digraph, ConstMap<Arc, Value>, ValueArcMap, ValueNodeMap>
737 736
        circ(_graph, low, cap, sup);
738 737
      if (!circ.flowMap(flow).run()) return INFEASIBLE;
739 738

	
740 739
      // Set residual capacities and handle GEQ supply type
741 740
      if (_sum_supply < 0) {
742 741
        for (ArcIt a(_graph); a != INVALID; ++a) {
743 742
          Value fa = flow[a];
744 743
          _res_cap[_arc_idf[a]] = cap[a] - fa;
745 744
          _res_cap[_arc_idb[a]] = fa;
746 745
          sup[_graph.source(a)] -= fa;
747 746
          sup[_graph.target(a)] += fa;
748 747
        }
749 748
        for (NodeIt n(_graph); n != INVALID; ++n) {
750 749
          excess[_node_id[n]] = sup[n];
751 750
        }
752 751
        for (int a = _first_out[_root]; a != _res_arc_num; ++a) {
753 752
          int u = _target[a];
754 753
          int ra = _reverse[a];
755 754
          _res_cap[a] = -_sum_supply + 1;
756 755
          _res_cap[ra] = -excess[u];
757 756
          _cost[a] = 0;
758 757
          _cost[ra] = 0;
759 758
        }
760 759
      } else {
761 760
        for (ArcIt a(_graph); a != INVALID; ++a) {
762 761
          Value fa = flow[a];
763 762
          _res_cap[_arc_idf[a]] = cap[a] - fa;
764 763
          _res_cap[_arc_idb[a]] = fa;
765 764
        }
766 765
        for (int a = _first_out[_root]; a != _res_arc_num; ++a) {
767 766
          int ra = _reverse[a];
768 767
          _res_cap[a] = 1;
769 768
          _res_cap[ra] = 0;
770 769
          _cost[a] = 0;
771 770
          _cost[ra] = 0;
772 771
        }
773 772
      }
774 773

	
775 774
      return OPTIMAL;
776 775
    }
777 776

	
778 777
    // Build a StaticDigraph structure containing the current
779 778
    // residual network
780 779
    void buildResidualNetwork() {
781 780
      _arc_vec.clear();
782 781
      _cost_vec.clear();
783 782
      _id_vec.clear();
784 783
      for (int j = 0; j != _res_arc_num; ++j) {
785 784
        if (_res_cap[j] > 0) {
786 785
          _arc_vec.push_back(IntPair(_source[j], _target[j]));
787 786
          _cost_vec.push_back(_cost[j]);
788 787
          _id_vec.push_back(j);
789 788
        }
790 789
      }
791 790
      _sgr.build(_res_node_num, _arc_vec.begin(), _arc_vec.end());
792 791
    }
793 792

	
794 793
    // Execute the algorithm and transform the results
795 794
    void start(Method method) {
796 795
      // Execute the algorithm
797 796
      switch (method) {
798 797
        case SIMPLE_CYCLE_CANCELING:
799 798
          startSimpleCycleCanceling();
800 799
          break;
801 800
        case MINIMUM_MEAN_CYCLE_CANCELING:
802 801
          startMinMeanCycleCanceling();
803 802
          break;
804 803
        case CANCEL_AND_TIGHTEN:
805 804
          startCancelAndTighten();
806 805
          break;
807 806
      }
808 807

	
809 808
      // Compute node potentials
810 809
      if (method != SIMPLE_CYCLE_CANCELING) {
811 810
        buildResidualNetwork();
812 811
        typename BellmanFord<StaticDigraph, CostArcMap>
813 812
          ::template SetDistMap<CostNodeMap>::Create bf(_sgr, _cost_map);
814 813
        bf.distMap(_pi_map);
815 814
        bf.init(0);
816 815
        bf.start();
817 816
      }
818 817

	
819 818
      // Handle non-zero lower bounds
820 819
      if (_have_lower) {
821 820
        int limit = _first_out[_root];
822 821
        for (int j = 0; j != limit; ++j) {
823 822
          if (!_forward[j]) _res_cap[j] += _lower[j];
824 823
        }
825 824
      }
826 825
    }
827 826

	
828 827
    // Execute the "Simple Cycle Canceling" method
829 828
    void startSimpleCycleCanceling() {
830 829
      // Constants for computing the iteration limits
831 830
      const int BF_FIRST_LIMIT  = 2;
832 831
      const double BF_LIMIT_FACTOR = 1.5;
833 832

	
834 833
      typedef StaticVectorMap<StaticDigraph::Arc, Value> FilterMap;
835 834
      typedef FilterArcs<StaticDigraph, FilterMap> ResDigraph;
836 835
      typedef StaticVectorMap<StaticDigraph::Node, StaticDigraph::Arc> PredMap;
837 836
      typedef typename BellmanFord<ResDigraph, CostArcMap>
838 837
        ::template SetDistMap<CostNodeMap>
839 838
        ::template SetPredMap<PredMap>::Create BF;
840 839

	
841 840
      // Build the residual network
842 841
      _arc_vec.clear();
843 842
      _cost_vec.clear();
844 843
      for (int j = 0; j != _res_arc_num; ++j) {
845 844
        _arc_vec.push_back(IntPair(_source[j], _target[j]));
846 845
        _cost_vec.push_back(_cost[j]);
847 846
      }
848 847
      _sgr.build(_res_node_num, _arc_vec.begin(), _arc_vec.end());
849 848

	
850 849
      FilterMap filter_map(_res_cap);
851 850
      ResDigraph rgr(_sgr, filter_map);
852 851
      std::vector<int> cycle;
853 852
      std::vector<StaticDigraph::Arc> pred(_res_arc_num);
854 853
      PredMap pred_map(pred);
855 854
      BF bf(rgr, _cost_map);
856 855
      bf.distMap(_pi_map).predMap(pred_map);
857 856

	
858 857
      int length_bound = BF_FIRST_LIMIT;
859 858
      bool optimal = false;
860 859
      while (!optimal) {
861 860
        bf.init(0);
862 861
        int iter_num = 0;
863 862
        bool cycle_found = false;
864 863
        while (!cycle_found) {
865 864
          // Perform some iterations of the Bellman-Ford algorithm
866 865
          int curr_iter_num = iter_num + length_bound <= _node_num ?
867 866
            length_bound : _node_num - iter_num;
868 867
          iter_num += curr_iter_num;
869 868
          int real_iter_num = curr_iter_num;
870 869
          for (int i = 0; i < curr_iter_num; ++i) {
871 870
            if (bf.processNextWeakRound()) {
872 871
              real_iter_num = i;
873 872
              break;
874 873
            }
875 874
          }
876 875
          if (real_iter_num < curr_iter_num) {
877 876
            // Optimal flow is found
878 877
            optimal = true;
879 878
            break;
880 879
          } else {
881 880
            // Search for node disjoint negative cycles
882 881
            std::vector<int> state(_res_node_num, 0);
883 882
            int id = 0;
884 883
            for (int u = 0; u != _res_node_num; ++u) {
885 884
              if (state[u] != 0) continue;
886 885
              ++id;
887 886
              int v = u;
888 887
              for (; v != -1 && state[v] == 0; v = pred[v] == INVALID ?
889 888
                   -1 : rgr.id(rgr.source(pred[v]))) {
890 889
                state[v] = id;
891 890
              }
892 891
              if (v != -1 && state[v] == id) {
893 892
                // A negative cycle is found
894 893
                cycle_found = true;
895 894
                cycle.clear();
896 895
                StaticDigraph::Arc a = pred[v];
897 896
                Value d, delta = _res_cap[rgr.id(a)];
898 897
                cycle.push_back(rgr.id(a));
899 898
                while (rgr.id(rgr.source(a)) != v) {
900 899
                  a = pred_map[rgr.source(a)];
901 900
                  d = _res_cap[rgr.id(a)];
902 901
                  if (d < delta) delta = d;
903 902
                  cycle.push_back(rgr.id(a));
904 903
                }
905 904

	
906 905
                // Augment along the cycle
907 906
                for (int i = 0; i < int(cycle.size()); ++i) {
908 907
                  int j = cycle[i];
909 908
                  _res_cap[j] -= delta;
910 909
                  _res_cap[_reverse[j]] += delta;
911 910
                }
912 911
              }
913 912
            }
914 913
          }
915 914

	
916 915
          // Increase iteration limit if no cycle is found
917 916
          if (!cycle_found) {
918 917
            length_bound = static_cast<int>(length_bound * BF_LIMIT_FACTOR);
919 918
          }
920 919
        }
921 920
      }
922 921
    }
923 922

	
924 923
    // Execute the "Minimum Mean Cycle Canceling" method
925 924
    void startMinMeanCycleCanceling() {
926 925
      typedef SimplePath<StaticDigraph> SPath;
927 926
      typedef typename SPath::ArcIt SPathArcIt;
928 927
      typedef typename HowardMmc<StaticDigraph, CostArcMap>
929 928
        ::template SetPath<SPath>::Create MMC;
930 929

	
931 930
      SPath cycle;
932 931
      MMC mmc(_sgr, _cost_map);
933 932
      mmc.cycle(cycle);
934 933
      buildResidualNetwork();
935 934
      while (mmc.findCycleMean() && mmc.cycleCost() < 0) {
936 935
        // Find the cycle
937 936
        mmc.findCycle();
938 937

	
939 938
        // Compute delta value
940 939
        Value delta = INF;
941 940
        for (SPathArcIt a(cycle); a != INVALID; ++a) {
942 941
          Value d = _res_cap[_id_vec[_sgr.id(a)]];
943 942
          if (d < delta) delta = d;
944 943
        }
945 944

	
946 945
        // Augment along the cycle
947 946
        for (SPathArcIt a(cycle); a != INVALID; ++a) {
948 947
          int j = _id_vec[_sgr.id(a)];
949 948
          _res_cap[j] -= delta;
950 949
          _res_cap[_reverse[j]] += delta;
951 950
        }
952 951

	
953 952
        // Rebuild the residual network
954 953
        buildResidualNetwork();
955 954
      }
956 955
    }
957 956

	
958 957
    // Execute the "Cancel And Tighten" method
959 958
    void startCancelAndTighten() {
960 959
      // Constants for the min mean cycle computations
961 960
      const double LIMIT_FACTOR = 1.0;
962 961
      const int MIN_LIMIT = 5;
963 962

	
964 963
      // Contruct auxiliary data vectors
965 964
      DoubleVector pi(_res_node_num, 0.0);
966 965
      IntVector level(_res_node_num);
967 966
      BoolVector reached(_res_node_num);
968 967
      BoolVector processed(_res_node_num);
969 968
      IntVector pred_node(_res_node_num);
970 969
      IntVector pred_arc(_res_node_num);
971 970
      std::vector<int> stack(_res_node_num);
972 971
      std::vector<int> proc_vector(_res_node_num);
973 972

	
974 973
      // Initialize epsilon
975 974
      double epsilon = 0;
976 975
      for (int a = 0; a != _res_arc_num; ++a) {
977 976
        if (_res_cap[a] > 0 && -_cost[a] > epsilon)
978 977
          epsilon = -_cost[a];
979 978
      }
980 979

	
981 980
      // Start phases
982 981
      Tolerance<double> tol;
983 982
      tol.epsilon(1e-6);
984 983
      int limit = int(LIMIT_FACTOR * std::sqrt(double(_res_node_num)));
985 984
      if (limit < MIN_LIMIT) limit = MIN_LIMIT;
986 985
      int iter = limit;
987 986
      while (epsilon * _res_node_num >= 1) {
988 987
        // Find and cancel cycles in the admissible network using DFS
989 988
        for (int u = 0; u != _res_node_num; ++u) {
990 989
          reached[u] = false;
991 990
          processed[u] = false;
992 991
        }
993 992
        int stack_head = -1;
994 993
        int proc_head = -1;
995 994
        for (int start = 0; start != _res_node_num; ++start) {
996 995
          if (reached[start]) continue;
997 996

	
998 997
          // New start node
999 998
          reached[start] = true;
1000 999
          pred_arc[start] = -1;
1001 1000
          pred_node[start] = -1;
1002 1001

	
1003 1002
          // Find the first admissible outgoing arc
1004 1003
          double p = pi[start];
1005 1004
          int a = _first_out[start];
1006 1005
          int last_out = _first_out[start+1];
1007 1006
          for (; a != last_out && (_res_cap[a] == 0 ||
1008 1007
               !tol.negative(_cost[a] + p - pi[_target[a]])); ++a) ;
1009 1008
          if (a == last_out) {
1010 1009
            processed[start] = true;
1011 1010
            proc_vector[++proc_head] = start;
1012 1011
            continue;
1013 1012
          }
1014 1013
          stack[++stack_head] = a;
1015 1014

	
1016 1015
          while (stack_head >= 0) {
1017 1016
            int sa = stack[stack_head];
1018 1017
            int u = _source[sa];
1019 1018
            int v = _target[sa];
1020 1019

	
1021 1020
            if (!reached[v]) {
1022 1021
              // A new node is reached
1023 1022
              reached[v] = true;
1024 1023
              pred_node[v] = u;
1025 1024
              pred_arc[v] = sa;
1026 1025
              p = pi[v];
1027 1026
              a = _first_out[v];
1028 1027
              last_out = _first_out[v+1];
1029 1028
              for (; a != last_out && (_res_cap[a] == 0 ||
1030 1029
                   !tol.negative(_cost[a] + p - pi[_target[a]])); ++a) ;
1031 1030
              stack[++stack_head] = a == last_out ? -1 : a;
1032 1031
            } else {
1033 1032
              if (!processed[v]) {
1034 1033
                // A cycle is found
1035 1034
                int n, w = u;
1036 1035
                Value d, delta = _res_cap[sa];
1037 1036
                for (n = u; n != v; n = pred_node[n]) {
1038 1037
                  d = _res_cap[pred_arc[n]];
1039 1038
                  if (d <= delta) {
1040 1039
                    delta = d;
1041 1040
                    w = pred_node[n];
1042 1041
                  }
1043 1042
                }
1044 1043

	
1045 1044
                // Augment along the cycle
1046 1045
                _res_cap[sa] -= delta;
1047 1046
                _res_cap[_reverse[sa]] += delta;
1048 1047
                for (n = u; n != v; n = pred_node[n]) {
1049 1048
                  int pa = pred_arc[n];
1050 1049
                  _res_cap[pa] -= delta;
1051 1050
                  _res_cap[_reverse[pa]] += delta;
1052 1051
                }
1053 1052
                for (n = u; stack_head > 0 && n != w; n = pred_node[n]) {
1054 1053
                  --stack_head;
1055 1054
                  reached[n] = false;
1056 1055
                }
1057 1056
                u = w;
1058 1057
              }
1059 1058
              v = u;
1060 1059

	
1061 1060
              // Find the next admissible outgoing arc
1062 1061
              p = pi[v];
1063 1062
              a = stack[stack_head] + 1;
1064 1063
              last_out = _first_out[v+1];
1065 1064
              for (; a != last_out && (_res_cap[a] == 0 ||
1066 1065
                   !tol.negative(_cost[a] + p - pi[_target[a]])); ++a) ;
1067 1066
              stack[stack_head] = a == last_out ? -1 : a;
1068 1067
            }
1069 1068

	
1070 1069
            while (stack_head >= 0 && stack[stack_head] == -1) {
1071 1070
              processed[v] = true;
1072 1071
              proc_vector[++proc_head] = v;
1073 1072
              if (--stack_head >= 0) {
1074 1073
                // Find the next admissible outgoing arc
1075 1074
                v = _source[stack[stack_head]];
1076 1075
                p = pi[v];
1077 1076
                a = stack[stack_head] + 1;
1078 1077
                last_out = _first_out[v+1];
1079 1078
                for (; a != last_out && (_res_cap[a] == 0 ||
1080 1079
                     !tol.negative(_cost[a] + p - pi[_target[a]])); ++a) ;
1081 1080
                stack[stack_head] = a == last_out ? -1 : a;
1082 1081
              }
1083 1082
            }
1084 1083
          }
1085 1084
        }
1086 1085

	
1087 1086
        // Tighten potentials and epsilon
1088 1087
        if (--iter > 0) {
1089 1088
          for (int u = 0; u != _res_node_num; ++u) {
1090 1089
            level[u] = 0;
1091 1090
          }
1092 1091
          for (int i = proc_head; i > 0; --i) {
1093 1092
            int u = proc_vector[i];
1094 1093
            double p = pi[u];
1095 1094
            int l = level[u] + 1;
1096 1095
            int last_out = _first_out[u+1];
1097 1096
            for (int a = _first_out[u]; a != last_out; ++a) {
1098 1097
              int v = _target[a];
1099 1098
              if (_res_cap[a] > 0 && tol.negative(_cost[a] + p - pi[v]) &&
1100 1099
                  l > level[v]) level[v] = l;
1101 1100
            }
1102 1101
          }
1103 1102

	
1104 1103
          // Modify potentials
1105 1104
          double q = std::numeric_limits<double>::max();
1106 1105
          for (int u = 0; u != _res_node_num; ++u) {
1107 1106
            int lu = level[u];
1108 1107
            double p, pu = pi[u];
1109 1108
            int last_out = _first_out[u+1];
1110 1109
            for (int a = _first_out[u]; a != last_out; ++a) {
1111 1110
              if (_res_cap[a] == 0) continue;
1112 1111
              int v = _target[a];
1113 1112
              int ld = lu - level[v];
1114 1113
              if (ld > 0) {
1115 1114
                p = (_cost[a] + pu - pi[v] + epsilon) / (ld + 1);
1116 1115
                if (p < q) q = p;
1117 1116
              }
1118 1117
            }
1119 1118
          }
1120 1119
          for (int u = 0; u != _res_node_num; ++u) {
1121 1120
            pi[u] -= q * level[u];
Ignore white space 6 line context
1 1
/* -*- mode: C++; indent-tabs-mode: nil; -*-
2 2
 *
3 3
 * This file is a part of LEMON, a generic C++ optimization library.
4 4
 *
5 5
 * Copyright (C) 2003-2010
6 6
 * Egervary Jeno Kombinatorikus Optimalizalasi Kutatocsoport
7 7
 * (Egervary Research Group on Combinatorial Optimization, EGRES).
8 8
 *
9 9
 * Permission to use, modify and distribute this software is granted
10 10
 * provided that this copyright notice appears in all copies. For
11 11
 * precise terms see the accompanying LICENSE file.
12 12
 *
13 13
 * This software is provided "AS IS" with no warranty of any kind,
14 14
 * express or implied, and with no claim as to its suitability for any
15 15
 * purpose.
16 16
 *
17 17
 */
18 18

	
19 19
#ifndef LEMON_EULER_H
20 20
#define LEMON_EULER_H
21 21

	
22 22
#include<lemon/core.h>
23 23
#include<lemon/adaptors.h>
24 24
#include<lemon/connectivity.h>
25 25
#include <list>
26 26

	
27 27
/// \ingroup graph_properties
28 28
/// \file
29 29
/// \brief Euler tour iterators and a function for checking the \e Eulerian
30 30
/// property.
31 31
///
32 32
///This file provides Euler tour iterators and a function to check
33 33
///if a (di)graph is \e Eulerian.
34 34

	
35 35
namespace lemon {
36 36

	
37 37
  ///Euler tour iterator for digraphs.
38 38

	
39
  /// \ingroup graph_prop
39
  /// \ingroup graph_properties
40 40
  ///This iterator provides an Euler tour (Eulerian circuit) of a \e directed
41 41
  ///graph (if there exists) and it converts to the \c Arc type of the digraph.
42 42
  ///
43 43
  ///For example, if the given digraph has an Euler tour (i.e it has only one
44 44
  ///non-trivial component and the in-degree is equal to the out-degree
45 45
  ///for all nodes), then the following code will put the arcs of \c g
46 46
  ///to the vector \c et according to an Euler tour of \c g.
47 47
  ///\code
48 48
  ///  std::vector<ListDigraph::Arc> et;
49 49
  ///  for(DiEulerIt<ListDigraph> e(g); e!=INVALID; ++e)
50 50
  ///    et.push_back(e);
51 51
  ///\endcode
52 52
  ///If \c g has no Euler tour, then the resulted walk will not be closed
53 53
  ///or not contain all arcs.
54 54
  ///\sa EulerIt
55 55
  template<typename GR>
56 56
  class DiEulerIt
57 57
  {
58 58
    typedef typename GR::Node Node;
59 59
    typedef typename GR::NodeIt NodeIt;
60 60
    typedef typename GR::Arc Arc;
61 61
    typedef typename GR::ArcIt ArcIt;
62 62
    typedef typename GR::OutArcIt OutArcIt;
63 63
    typedef typename GR::InArcIt InArcIt;
64 64

	
65 65
    const GR &g;
66 66
    typename GR::template NodeMap<OutArcIt> narc;
67 67
    std::list<Arc> euler;
68 68

	
69 69
  public:
70 70

	
71 71
    ///Constructor
72 72

	
73 73
    ///Constructor.
74 74
    ///\param gr A digraph.
75 75
    ///\param start The starting point of the tour. If it is not given,
76 76
    ///the tour will start from the first node that has an outgoing arc.
77 77
    DiEulerIt(const GR &gr, typename GR::Node start = INVALID)
78 78
      : g(gr), narc(g)
79 79
    {
80 80
      if (start==INVALID) {
81 81
        NodeIt n(g);
82 82
        while (n!=INVALID && OutArcIt(g,n)==INVALID) ++n;
83 83
        start=n;
84 84
      }
85 85
      if (start!=INVALID) {
86 86
        for (NodeIt n(g); n!=INVALID; ++n) narc[n]=OutArcIt(g,n);
87 87
        while (narc[start]!=INVALID) {
88 88
          euler.push_back(narc[start]);
89 89
          Node next=g.target(narc[start]);
90 90
          ++narc[start];
91 91
          start=next;
92 92
        }
93 93
      }
94 94
    }
95 95

	
96 96
    ///Arc conversion
97 97
    operator Arc() { return euler.empty()?INVALID:euler.front(); }
98 98
    ///Compare with \c INVALID
99 99
    bool operator==(Invalid) { return euler.empty(); }
100 100
    ///Compare with \c INVALID
101 101
    bool operator!=(Invalid) { return !euler.empty(); }
102 102

	
103 103
    ///Next arc of the tour
104 104

	
105 105
    ///Next arc of the tour
106 106
    ///
107 107
    DiEulerIt &operator++() {
108 108
      Node s=g.target(euler.front());
109 109
      euler.pop_front();
110 110
      typename std::list<Arc>::iterator next=euler.begin();
111 111
      while(narc[s]!=INVALID) {
112 112
        euler.insert(next,narc[s]);
113 113
        Node n=g.target(narc[s]);
114 114
        ++narc[s];
115 115
        s=n;
116 116
      }
117 117
      return *this;
118 118
    }
119 119
    ///Postfix incrementation
120 120

	
121 121
    /// Postfix incrementation.
122 122
    ///
123 123
    ///\warning This incrementation
124 124
    ///returns an \c Arc, not a \ref DiEulerIt, as one may
125 125
    ///expect.
126 126
    Arc operator++(int)
127 127
    {
128 128
      Arc e=*this;
129 129
      ++(*this);
130 130
      return e;
131 131
    }
132 132
  };
133 133

	
134 134
  ///Euler tour iterator for graphs.
135 135

	
136 136
  /// \ingroup graph_properties
137 137
  ///This iterator provides an Euler tour (Eulerian circuit) of an
138 138
  ///\e undirected graph (if there exists) and it converts to the \c Arc
139 139
  ///and \c Edge types of the graph.
140 140
  ///
141 141
  ///For example, if the given graph has an Euler tour (i.e it has only one
142 142
  ///non-trivial component and the degree of each node is even),
143 143
  ///the following code will print the arc IDs according to an
144 144
  ///Euler tour of \c g.
145 145
  ///\code
146 146
  ///  for(EulerIt<ListGraph> e(g); e!=INVALID; ++e) {
147 147
  ///    std::cout << g.id(Edge(e)) << std::eol;
148 148
  ///  }
149 149
  ///\endcode
150 150
  ///Although this iterator is for undirected graphs, it still returns
151 151
  ///arcs in order to indicate the direction of the tour.
152 152
  ///(But arcs convert to edges, of course.)
153 153
  ///
154 154
  ///If \c g has no Euler tour, then the resulted walk will not be closed
155 155
  ///or not contain all edges.
156 156
  template<typename GR>
157 157
  class EulerIt
158 158
  {
159 159
    typedef typename GR::Node Node;
160 160
    typedef typename GR::NodeIt NodeIt;
161 161
    typedef typename GR::Arc Arc;
162 162
    typedef typename GR::Edge Edge;
163 163
    typedef typename GR::ArcIt ArcIt;
164 164
    typedef typename GR::OutArcIt OutArcIt;
165 165
    typedef typename GR::InArcIt InArcIt;
166 166

	
167 167
    const GR &g;
168 168
    typename GR::template NodeMap<OutArcIt> narc;
169 169
    typename GR::template EdgeMap<bool> visited;
170 170
    std::list<Arc> euler;
171 171

	
172 172
  public:
173 173

	
174 174
    ///Constructor
175 175

	
176 176
    ///Constructor.
177 177
    ///\param gr A graph.
178 178
    ///\param start The starting point of the tour. If it is not given,
179 179
    ///the tour will start from the first node that has an incident edge.
180 180
    EulerIt(const GR &gr, typename GR::Node start = INVALID)
181 181
      : g(gr), narc(g), visited(g, false)
182 182
    {
183 183
      if (start==INVALID) {
184 184
        NodeIt n(g);
185 185
        while (n!=INVALID && OutArcIt(g,n)==INVALID) ++n;
186 186
        start=n;
187 187
      }
188 188
      if (start!=INVALID) {
189 189
        for (NodeIt n(g); n!=INVALID; ++n) narc[n]=OutArcIt(g,n);
190 190
        while(narc[start]!=INVALID) {
191 191
          euler.push_back(narc[start]);
192 192
          visited[narc[start]]=true;
193 193
          Node next=g.target(narc[start]);
194 194
          ++narc[start];
195 195
          start=next;
196 196
          while(narc[start]!=INVALID && visited[narc[start]]) ++narc[start];
197 197
        }
198 198
      }
199 199
    }
200 200

	
201 201
    ///Arc conversion
202 202
    operator Arc() const { return euler.empty()?INVALID:euler.front(); }
203 203
    ///Edge conversion
204 204
    operator Edge() const { return euler.empty()?INVALID:euler.front(); }
205 205
    ///Compare with \c INVALID
206 206
    bool operator==(Invalid) const { return euler.empty(); }
207 207
    ///Compare with \c INVALID
208 208
    bool operator!=(Invalid) const { return !euler.empty(); }
209 209

	
210 210
    ///Next arc of the tour
211 211

	
212 212
    ///Next arc of the tour
213 213
    ///
214 214
    EulerIt &operator++() {
215 215
      Node s=g.target(euler.front());
216 216
      euler.pop_front();
217 217
      typename std::list<Arc>::iterator next=euler.begin();
218 218
      while(narc[s]!=INVALID) {
219 219
        while(narc[s]!=INVALID && visited[narc[s]]) ++narc[s];
220 220
        if(narc[s]==INVALID) break;
221 221
        else {
222 222
          euler.insert(next,narc[s]);
223 223
          visited[narc[s]]=true;
224 224
          Node n=g.target(narc[s]);
225 225
          ++narc[s];
226 226
          s=n;
227 227
        }
228 228
      }
229 229
      return *this;
230 230
    }
231 231

	
232 232
    ///Postfix incrementation
233 233

	
234 234
    /// Postfix incrementation.
235 235
    ///
236 236
    ///\warning This incrementation returns an \c Arc (which converts to
237 237
    ///an \c Edge), not an \ref EulerIt, as one may expect.
238 238
    Arc operator++(int)
239 239
    {
240 240
      Arc e=*this;
241 241
      ++(*this);
242 242
      return e;
243 243
    }
244 244
  };
245 245

	
246 246

	
247 247
  ///Check if the given graph is Eulerian
248 248

	
249 249
  /// \ingroup graph_properties
250 250
  ///This function checks if the given graph is Eulerian.
251 251
  ///It works for both directed and undirected graphs.
252 252
  ///
253 253
  ///By definition, a digraph is called \e Eulerian if
254 254
  ///and only if it is connected and the number of incoming and outgoing
255 255
  ///arcs are the same for each node.
256 256
  ///Similarly, an undirected graph is called \e Eulerian if
257 257
  ///and only if it is connected and the number of incident edges is even
258 258
  ///for each node.
259 259
  ///
260 260
  ///\note There are (di)graphs that are not Eulerian, but still have an
261 261
  /// Euler tour, since they may contain isolated nodes.
262 262
  ///
263 263
  ///\sa DiEulerIt, EulerIt
264 264
  template<typename GR>
265 265
#ifdef DOXYGEN
266 266
  bool
267 267
#else
268 268
  typename enable_if<UndirectedTagIndicator<GR>,bool>::type
269 269
  eulerian(const GR &g)
270 270
  {
271 271
    for(typename GR::NodeIt n(g);n!=INVALID;++n)
272 272
      if(countIncEdges(g,n)%2) return false;
273 273
    return connected(g);
274 274
  }
275 275
  template<class GR>
276 276
  typename disable_if<UndirectedTagIndicator<GR>,bool>::type
277 277
#endif
278 278
  eulerian(const GR &g)
279 279
  {
280 280
    for(typename GR::NodeIt n(g);n!=INVALID;++n)
281 281
      if(countInArcs(g,n)!=countOutArcs(g,n)) return false;
282 282
    return connected(undirector(g));
283 283
  }
284 284

	
285 285
}
286 286

	
287 287
#endif
Ignore white space 6 line context
1 1
/* -*- mode: C++; indent-tabs-mode: nil; -*-
2 2
 *
3 3
 * This file is a part of LEMON, a generic C++ optimization library.
4 4
 *
5 5
 * Copyright (C) 2003-2010
6 6
 * Egervary Jeno Kombinatorikus Optimalizalasi Kutatocsoport
7 7
 * (Egervary Research Group on Combinatorial Optimization, EGRES).
8 8
 *
9 9
 * Permission to use, modify and distribute this software is granted
10 10
 * provided that this copyright notice appears in all copies. For
11 11
 * precise terms see the accompanying LICENSE file.
12 12
 *
13 13
 * This software is provided "AS IS" with no warranty of any kind,
14 14
 * express or implied, and with no claim as to its suitability for any
15 15
 * purpose.
16 16
 *
17 17
 */
18 18

	
19 19
#ifndef LEMON_GROSSO_LOCATELLI_PULLAN_MC_H
20 20
#define LEMON_GROSSO_LOCATELLI_PULLAN_MC_H
21 21

	
22 22
/// \ingroup approx_algs
23 23
///
24 24
/// \file
25 25
/// \brief The iterated local search algorithm of Grosso, Locatelli, and Pullan
26 26
/// for the maximum clique problem
27 27

	
28 28
#include <vector>
29 29
#include <limits>
30 30
#include <lemon/core.h>
31 31
#include <lemon/random.h>
32 32

	
33 33
namespace lemon {
34 34

	
35 35
  /// \addtogroup approx_algs
36 36
  /// @{
37 37

	
38 38
  /// \brief Implementation of the iterated local search algorithm of Grosso,
39 39
  /// Locatelli, and Pullan for the maximum clique problem
40 40
  ///
41 41
  /// \ref GrossoLocatelliPullanMc implements the iterated local search
42 42
  /// algorithm of Grosso, Locatelli, and Pullan for solving the \e maximum
43 43
  /// \e clique \e problem \ref grosso08maxclique.
44 44
  /// It is to find the largest complete subgraph (\e clique) in an
45 45
  /// undirected graph, i.e., the largest set of nodes where each
46 46
  /// pair of nodes is connected.
47 47
  ///
48 48
  /// This class provides a simple but highly efficient and robust heuristic
49
  /// method that quickly finds a large clique, but not necessarily the
49
  /// method that quickly finds a quite large clique, but not necessarily the
50 50
  /// largest one.
51
  /// The algorithm performs a certain number of iterations to find several
52
  /// cliques and selects the largest one among them. Various limits can be
53
  /// specified to control the running time and the effectiveness of the
54
  /// search process.
51 55
  ///
52 56
  /// \tparam GR The undirected graph type the algorithm runs on.
53 57
  ///
54 58
  /// \note %GrossoLocatelliPullanMc provides three different node selection
55 59
  /// rules, from which the most powerful one is used by default.
56 60
  /// For more information, see \ref SelectionRule.
57 61
  template <typename GR>
58 62
  class GrossoLocatelliPullanMc
59 63
  {
60 64
  public:
61 65

	
62 66
    /// \brief Constants for specifying the node selection rule.
63 67
    ///
64 68
    /// Enum type containing constants for specifying the node selection rule
65 69
    /// for the \ref run() function.
66 70
    ///
67 71
    /// During the algorithm, nodes are selected for addition to the current
68 72
    /// clique according to the applied rule.
69 73
    /// In general, the PENALTY_BASED rule turned out to be the most powerful
70 74
    /// and the most robust, thus it is the default option.
71 75
    /// However, another selection rule can be specified using the \ref run()
72 76
    /// function with the proper parameter.
73 77
    enum SelectionRule {
74 78

	
75 79
      /// A node is selected randomly without any evaluation at each step.
76 80
      RANDOM,
77 81

	
78 82
      /// A node of maximum degree is selected randomly at each step.
79 83
      DEGREE_BASED,
80 84

	
81 85
      /// A node of minimum penalty is selected randomly at each step.
82 86
      /// The node penalties are updated adaptively after each stage of the
83 87
      /// search process.
84 88
      PENALTY_BASED
85 89
    };
86 90

	
91
    /// \brief Constants for the causes of search termination.
92
    ///
93
    /// Enum type containing constants for the different causes of search
94
    /// termination. The \ref run() function returns one of these values.
95
    enum TerminationCause {
96

	
97
      /// The iteration count limit is reached.
98
      ITERATION_LIMIT,
99

	
100
      /// The step count limit is reached.
101
      STEP_LIMIT,
102

	
103
      /// The clique size limit is reached.
104
      SIZE_LIMIT
105
    };
106

	
87 107
  private:
88 108

	
89 109
    TEMPLATE_GRAPH_TYPEDEFS(GR);
90 110

	
91 111
    typedef std::vector<int> IntVector;
92 112
    typedef std::vector<char> BoolVector;
93 113
    typedef std::vector<BoolVector> BoolMatrix;
94 114
    // Note: vector<char> is used instead of vector<bool> for efficiency reasons
95 115

	
116
    // The underlying graph
96 117
    const GR &_graph;
97 118
    IntNodeMap _id;
98 119

	
99 120
    // Internal matrix representation of the graph
100 121
    BoolMatrix _gr;
101 122
    int _n;
123
    
124
    // Search options
125
    bool _delta_based_restart;
126
    int _restart_delta_limit;
127
 
128
    // Search limits
129
    int _iteration_limit;
130
    int _step_limit;
131
    int _size_limit;
102 132

	
103 133
    // The current clique
104 134
    BoolVector _clique;
105 135
    int _size;
106 136

	
107 137
    // The best clique found so far
108 138
    BoolVector _best_clique;
109 139
    int _best_size;
110 140

	
111 141
    // The "distances" of the nodes from the current clique.
112 142
    // _delta[u] is the number of nodes in the clique that are
113 143
    // not connected with u.
114 144
    IntVector _delta;
115 145

	
116 146
    // The current tabu set
117 147
    BoolVector _tabu;
118 148

	
119 149
    // Random number generator
120 150
    Random _rnd;
121 151

	
122 152
  private:
123 153

	
124 154
    // Implementation of the RANDOM node selection rule.
125 155
    class RandomSelectionRule
126 156
    {
127 157
    private:
128 158

	
129 159
      // References to the algorithm instance
130 160
      const BoolVector &_clique;
131 161
      const IntVector  &_delta;
132 162
      const BoolVector &_tabu;
133 163
      Random &_rnd;
134 164

	
135 165
      // Pivot rule data
136 166
      int _n;
137 167

	
138 168
    public:
139 169

	
140 170
      // Constructor
141 171
      RandomSelectionRule(GrossoLocatelliPullanMc &mc) :
142 172
        _clique(mc._clique), _delta(mc._delta), _tabu(mc._tabu),
143 173
        _rnd(mc._rnd), _n(mc._n)
144 174
      {}
145 175

	
146 176
      // Return a node index for a feasible add move or -1 if no one exists
147 177
      int nextFeasibleAddNode() const {
148 178
        int start_node = _rnd[_n];
149 179
        for (int i = start_node; i != _n; i++) {
150 180
          if (_delta[i] == 0 && !_tabu[i]) return i;
151 181
        }
152 182
        for (int i = 0; i != start_node; i++) {
153 183
          if (_delta[i] == 0 && !_tabu[i]) return i;
154 184
        }
155 185
        return -1;
156 186
      }
157 187

	
158 188
      // Return a node index for a feasible swap move or -1 if no one exists
159 189
      int nextFeasibleSwapNode() const {
160 190
        int start_node = _rnd[_n];
161 191
        for (int i = start_node; i != _n; i++) {
162 192
          if (!_clique[i] && _delta[i] == 1 && !_tabu[i]) return i;
163 193
        }
164 194
        for (int i = 0; i != start_node; i++) {
165 195
          if (!_clique[i] && _delta[i] == 1 && !_tabu[i]) return i;
166 196
        }
167 197
        return -1;
168 198
      }
169 199

	
170 200
      // Return a node index for an add move or -1 if no one exists
171 201
      int nextAddNode() const {
172 202
        int start_node = _rnd[_n];
173 203
        for (int i = start_node; i != _n; i++) {
174 204
          if (_delta[i] == 0) return i;
175 205
        }
176 206
        for (int i = 0; i != start_node; i++) {
177 207
          if (_delta[i] == 0) return i;
178 208
        }
179 209
        return -1;
180 210
      }
181 211

	
182 212
      // Update internal data structures between stages (if necessary)
183 213
      void update() {}
184 214

	
185 215
    }; //class RandomSelectionRule
186 216

	
187 217

	
188 218
    // Implementation of the DEGREE_BASED node selection rule.
189 219
    class DegreeBasedSelectionRule
190 220
    {
191 221
    private:
192 222

	
193 223
      // References to the algorithm instance
194 224
      const BoolVector &_clique;
195 225
      const IntVector  &_delta;
196 226
      const BoolVector &_tabu;
197 227
      Random &_rnd;
198 228

	
199 229
      // Pivot rule data
200 230
      int _n;
201 231
      IntVector _deg;
202 232

	
203 233
    public:
204 234

	
205 235
      // Constructor
206 236
      DegreeBasedSelectionRule(GrossoLocatelliPullanMc &mc) :
207 237
        _clique(mc._clique), _delta(mc._delta), _tabu(mc._tabu),
208 238
        _rnd(mc._rnd), _n(mc._n), _deg(_n)
209 239
      {
210 240
        for (int i = 0; i != _n; i++) {
211 241
          int d = 0;
212 242
          BoolVector &row = mc._gr[i];
213 243
          for (int j = 0; j != _n; j++) {
214 244
            if (row[j]) d++;
215 245
          }
216 246
          _deg[i] = d;
217 247
        }
218 248
      }
219 249

	
220 250
      // Return a node index for a feasible add move or -1 if no one exists
221 251
      int nextFeasibleAddNode() const {
222 252
        int start_node = _rnd[_n];
223 253
        int node = -1, max_deg = -1;
224 254
        for (int i = start_node; i != _n; i++) {
225 255
          if (_delta[i] == 0 && !_tabu[i] && _deg[i] > max_deg) {
226 256
            node = i;
227 257
            max_deg = _deg[i];
228 258
          }
229 259
        }
230 260
        for (int i = 0; i != start_node; i++) {
231 261
          if (_delta[i] == 0 && !_tabu[i] && _deg[i] > max_deg) {
232 262
            node = i;
233 263
            max_deg = _deg[i];
234 264
          }
235 265
        }
236 266
        return node;
237 267
      }
238 268

	
239 269
      // Return a node index for a feasible swap move or -1 if no one exists
240 270
      int nextFeasibleSwapNode() const {
241 271
        int start_node = _rnd[_n];
242 272
        int node = -1, max_deg = -1;
243 273
        for (int i = start_node; i != _n; i++) {
244 274
          if (!_clique[i] && _delta[i] == 1 && !_tabu[i] &&
245 275
              _deg[i] > max_deg) {
246 276
            node = i;
247 277
            max_deg = _deg[i];
248 278
          }
249 279
        }
250 280
        for (int i = 0; i != start_node; i++) {
251 281
          if (!_clique[i] && _delta[i] == 1 && !_tabu[i] &&
252 282
              _deg[i] > max_deg) {
253 283
            node = i;
254 284
            max_deg = _deg[i];
255 285
          }
256 286
        }
257 287
        return node;
258 288
      }
259 289

	
260 290
      // Return a node index for an add move or -1 if no one exists
261 291
      int nextAddNode() const {
262 292
        int start_node = _rnd[_n];
263 293
        int node = -1, max_deg = -1;
264 294
        for (int i = start_node; i != _n; i++) {
265 295
          if (_delta[i] == 0 && _deg[i] > max_deg) {
266 296
            node = i;
267 297
            max_deg = _deg[i];
268 298
          }
269 299
        }
270 300
        for (int i = 0; i != start_node; i++) {
271 301
          if (_delta[i] == 0 && _deg[i] > max_deg) {
272 302
            node = i;
273 303
            max_deg = _deg[i];
274 304
          }
275 305
        }
276 306
        return node;
277 307
      }
278 308

	
279 309
      // Update internal data structures between stages (if necessary)
280 310
      void update() {}
281 311

	
282 312
    }; //class DegreeBasedSelectionRule
283 313

	
284 314

	
285 315
    // Implementation of the PENALTY_BASED node selection rule.
286 316
    class PenaltyBasedSelectionRule
287 317
    {
288 318
    private:
289 319

	
290 320
      // References to the algorithm instance
291 321
      const BoolVector &_clique;
292 322
      const IntVector  &_delta;
293 323
      const BoolVector &_tabu;
294 324
      Random &_rnd;
295 325

	
296 326
      // Pivot rule data
297 327
      int _n;
298 328
      IntVector _penalty;
299 329

	
300 330
    public:
301 331

	
302 332
      // Constructor
303 333
      PenaltyBasedSelectionRule(GrossoLocatelliPullanMc &mc) :
304 334
        _clique(mc._clique), _delta(mc._delta), _tabu(mc._tabu),
305 335
        _rnd(mc._rnd), _n(mc._n), _penalty(_n, 0)
306 336
      {}
307 337

	
308 338
      // Return a node index for a feasible add move or -1 if no one exists
309 339
      int nextFeasibleAddNode() const {
310 340
        int start_node = _rnd[_n];
311 341
        int node = -1, min_p = std::numeric_limits<int>::max();
312 342
        for (int i = start_node; i != _n; i++) {
313 343
          if (_delta[i] == 0 && !_tabu[i] && _penalty[i] < min_p) {
314 344
            node = i;
315 345
            min_p = _penalty[i];
316 346
          }
317 347
        }
318 348
        for (int i = 0; i != start_node; i++) {
319 349
          if (_delta[i] == 0 && !_tabu[i] && _penalty[i] < min_p) {
320 350
            node = i;
321 351
            min_p = _penalty[i];
322 352
          }
323 353
        }
324 354
        return node;
325 355
      }
326 356

	
327 357
      // Return a node index for a feasible swap move or -1 if no one exists
328 358
      int nextFeasibleSwapNode() const {
329 359
        int start_node = _rnd[_n];
330 360
        int node = -1, min_p = std::numeric_limits<int>::max();
331 361
        for (int i = start_node; i != _n; i++) {
332 362
          if (!_clique[i] && _delta[i] == 1 && !_tabu[i] &&
333 363
              _penalty[i] < min_p) {
334 364
            node = i;
335 365
            min_p = _penalty[i];
336 366
          }
337 367
        }
338 368
        for (int i = 0; i != start_node; i++) {
339 369
          if (!_clique[i] && _delta[i] == 1 && !_tabu[i] &&
340 370
              _penalty[i] < min_p) {
341 371
            node = i;
342 372
            min_p = _penalty[i];
343 373
          }
344 374
        }
345 375
        return node;
346 376
      }
347 377

	
348 378
      // Return a node index for an add move or -1 if no one exists
349 379
      int nextAddNode() const {
350 380
        int start_node = _rnd[_n];
351 381
        int node = -1, min_p = std::numeric_limits<int>::max();
352 382
        for (int i = start_node; i != _n; i++) {
353 383
          if (_delta[i] == 0 && _penalty[i] < min_p) {
354 384
            node = i;
355 385
            min_p = _penalty[i];
356 386
          }
357 387
        }
358 388
        for (int i = 0; i != start_node; i++) {
359 389
          if (_delta[i] == 0 && _penalty[i] < min_p) {
360 390
            node = i;
361 391
            min_p = _penalty[i];
362 392
          }
363 393
        }
364 394
        return node;
365 395
      }
366 396

	
367 397
      // Update internal data structures between stages (if necessary)
368 398
      void update() {}
369 399

	
370 400
    }; //class PenaltyBasedSelectionRule
371 401

	
372 402
  public:
373 403

	
374 404
    /// \brief Constructor.
375 405
    ///
376 406
    /// Constructor.
377 407
    /// The global \ref rnd "random number generator instance" is used
378 408
    /// during the algorithm.
379 409
    ///
380 410
    /// \param graph The undirected graph the algorithm runs on.
381 411
    GrossoLocatelliPullanMc(const GR& graph) :
382 412
      _graph(graph), _id(_graph), _rnd(rnd)
383
    {}
413
    {
414
      initOptions();
415
    }
384 416

	
385 417
    /// \brief Constructor with random seed.
386 418
    ///
387 419
    /// Constructor with random seed.
388 420
    ///
389 421
    /// \param graph The undirected graph the algorithm runs on.
390 422
    /// \param seed Seed value for the internal random number generator
391 423
    /// that is used during the algorithm.
392 424
    GrossoLocatelliPullanMc(const GR& graph, int seed) :
393 425
      _graph(graph), _id(_graph), _rnd(seed)
394
    {}
426
    {
427
      initOptions();
428
    }
395 429

	
396 430
    /// \brief Constructor with random number generator.
397 431
    ///
398 432
    /// Constructor with random number generator.
399 433
    ///
400 434
    /// \param graph The undirected graph the algorithm runs on.
401 435
    /// \param random A random number generator that is used during the
402 436
    /// algorithm.
403 437
    GrossoLocatelliPullanMc(const GR& graph, const Random& random) :
404 438
      _graph(graph), _id(_graph), _rnd(random)
405
    {}
439
    {
440
      initOptions();
441
    }
406 442

	
407 443
    /// \name Execution Control
444
    /// The \ref run() function can be used to execute the algorithm.\n
445
    /// The functions \ref iterationLimit(int), \ref stepLimit(int), and 
446
    /// \ref sizeLimit(int) can be used to specify various limits for the
447
    /// search process.
448
    
408 449
    /// @{
450
    
451
    /// \brief Sets the maximum number of iterations.
452
    ///
453
    /// This function sets the maximum number of iterations.
454
    /// Each iteration of the algorithm finds a maximal clique (but not
455
    /// necessarily the largest one) by performing several search steps
456
    /// (node selections).
457
    ///
458
    /// This limit controls the running time and the success of the
459
    /// algorithm. For larger values, the algorithm runs slower, but it more
460
    /// likely finds larger cliques. For smaller values, the algorithm is
461
    /// faster but probably gives worse results.
462
    /// 
463
    /// The default value is \c 1000.
464
    /// \c -1 means that number of iterations is not limited.
465
    ///
466
    /// \warning You should specify a reasonable limit for the number of
467
    /// iterations and/or the number of search steps.
468
    ///
469
    /// \return <tt>(*this)</tt>
470
    ///
471
    /// \sa stepLimit(int)
472
    /// \sa sizeLimit(int)
473
    GrossoLocatelliPullanMc& iterationLimit(int limit) {
474
      _iteration_limit = limit;
475
      return *this;
476
    }
477
    
478
    /// \brief Sets the maximum number of search steps.
479
    ///
480
    /// This function sets the maximum number of elementary search steps.
481
    /// Each iteration of the algorithm finds a maximal clique (but not
482
    /// necessarily the largest one) by performing several search steps
483
    /// (node selections).
484
    ///
485
    /// This limit controls the running time and the success of the
486
    /// algorithm. For larger values, the algorithm runs slower, but it more
487
    /// likely finds larger cliques. For smaller values, the algorithm is
488
    /// faster but probably gives worse results.
489
    /// 
490
    /// The default value is \c -1, which means that number of steps
491
    /// is not limited explicitly. However, the number of iterations is
492
    /// limited and each iteration performs a finite number of search steps.
493
    ///
494
    /// \warning You should specify a reasonable limit for the number of
495
    /// iterations and/or the number of search steps.
496
    ///
497
    /// \return <tt>(*this)</tt>
498
    ///
499
    /// \sa iterationLimit(int)
500
    /// \sa sizeLimit(int)
501
    GrossoLocatelliPullanMc& stepLimit(int limit) {
502
      _step_limit = limit;
503
      return *this;
504
    }
505
    
506
    /// \brief Sets the desired clique size.
507
    ///
508
    /// This function sets the desired clique size that serves as a search
509
    /// limit. If a clique of this size (or a larger one) is found, then the
510
    /// algorithm terminates.
511
    /// 
512
    /// This function is especially useful if you know an exact upper bound
513
    /// for the size of the cliques in the graph or if any clique above 
514
    /// a certain size limit is sufficient for your application.
515
    /// 
516
    /// The default value is \c -1, which means that the size limit is set to
517
    /// the number of nodes in the graph.
518
    ///
519
    /// \return <tt>(*this)</tt>
520
    ///
521
    /// \sa iterationLimit(int)
522
    /// \sa stepLimit(int)
523
    GrossoLocatelliPullanMc& sizeLimit(int limit) {
524
      _size_limit = limit;
525
      return *this;
526
    }
527
    
528
    /// \brief The maximum number of iterations.
529
    ///
530
    /// This function gives back the maximum number of iterations.
531
    /// \c -1 means that no limit is specified.
532
    ///
533
    /// \sa iterationLimit(int)
534
    int iterationLimit() const {
535
      return _iteration_limit;
536
    }
537
    
538
    /// \brief The maximum number of search steps.
539
    ///
540
    /// This function gives back the maximum number of search steps.
541
    /// \c -1 means that no limit is specified.
542
    ///
543
    /// \sa stepLimit(int)
544
    int stepLimit() const {
545
      return _step_limit;
546
    }
547
    
548
    /// \brief The desired clique size.
549
    ///
550
    /// This function gives back the desired clique size that serves as a
551
    /// search limit. \c -1 means that this limit is set to the number of
552
    /// nodes in the graph.
553
    ///
554
    /// \sa sizeLimit(int)
555
    int sizeLimit() const {
556
      return _size_limit;
557
    }
409 558

	
410 559
    /// \brief Runs the algorithm.
411 560
    ///
412
    /// This function runs the algorithm.
561
    /// This function runs the algorithm. If one of the specified limits
562
    /// is reached, the search process terminates.
413 563
    ///
414
    /// \param step_num The maximum number of node selections (steps)
415
    /// during the search process.
416
    /// This parameter controls the running time and the success of the
417
    /// algorithm. For larger values, the algorithm runs slower but it more
418
    /// likely finds larger cliques. For smaller values, the algorithm is
419
    /// faster but probably gives worse results.
420 564
    /// \param rule The node selection rule. For more information, see
421 565
    /// \ref SelectionRule.
422 566
    ///
423
    /// \return The size of the found clique.
424
    int run(int step_num = 100000,
425
            SelectionRule rule = PENALTY_BASED)
567
    /// \return The termination cause of the search. For more information,
568
    /// see \ref TerminationCause.
569
    TerminationCause run(SelectionRule rule = PENALTY_BASED)
426 570
    {
427 571
      init();
428 572
      switch (rule) {
429 573
        case RANDOM:
430
          return start<RandomSelectionRule>(step_num);
574
          return start<RandomSelectionRule>();
431 575
        case DEGREE_BASED:
432
          return start<DegreeBasedSelectionRule>(step_num);
433
        case PENALTY_BASED:
434
          return start<PenaltyBasedSelectionRule>(step_num);
576
          return start<DegreeBasedSelectionRule>();
577
        default:
578
          return start<PenaltyBasedSelectionRule>();
435 579
      }
436
      return 0; // avoid warning
437 580
    }
438 581

	
439 582
    /// @}
440 583

	
441 584
    /// \name Query Functions
585
    /// The results of the algorithm can be obtained using these functions.\n
586
    /// The run() function must be called before using them. 
587

	
442 588
    /// @{
443 589

	
444 590
    /// \brief The size of the found clique
445 591
    ///
446 592
    /// This function returns the size of the found clique.
447 593
    ///
448 594
    /// \pre run() must be called before using this function.
449 595
    int cliqueSize() const {
450 596
      return _best_size;
451 597
    }
452 598

	
453 599
    /// \brief Gives back the found clique in a \c bool node map
454 600
    ///
455 601
    /// This function gives back the characteristic vector of the found
456 602
    /// clique in the given node map.
457 603
    /// It must be a \ref concepts::WriteMap "writable" node map with
458 604
    /// \c bool (or convertible) value type.
459 605
    ///
460 606
    /// \pre run() must be called before using this function.
461 607
    template <typename CliqueMap>
462 608
    void cliqueMap(CliqueMap &map) const {
463 609
      for (NodeIt n(_graph); n != INVALID; ++n) {
464 610
        map[n] = static_cast<bool>(_best_clique[_id[n]]);
465 611
      }
466 612
    }
467 613

	
468 614
    /// \brief Iterator to list the nodes of the found clique
469 615
    ///
470 616
    /// This iterator class lists the nodes of the found clique.
471 617
    /// Before using it, you must allocate a GrossoLocatelliPullanMc instance
472 618
    /// and call its \ref GrossoLocatelliPullanMc::run() "run()" method.
473 619
    ///
474 620
    /// The following example prints out the IDs of the nodes in the found
475 621
    /// clique.
476 622
    /// \code
477 623
    ///   GrossoLocatelliPullanMc<Graph> mc(g);
478 624
    ///   mc.run();
479 625
    ///   for (GrossoLocatelliPullanMc<Graph>::CliqueNodeIt n(mc);
480 626
    ///        n != INVALID; ++n)
481 627
    ///   {
482 628
    ///     std::cout << g.id(n) << std::endl;
483 629
    ///   }
484 630
    /// \endcode
485 631
    class CliqueNodeIt
486 632
    {
487 633
    private:
488 634
      NodeIt _it;
489 635
      BoolNodeMap _map;
490 636

	
491 637
    public:
492 638

	
493 639
      /// Constructor
494 640

	
495 641
      /// Constructor.
496 642
      /// \param mc The algorithm instance.
497 643
      CliqueNodeIt(const GrossoLocatelliPullanMc &mc)
498 644
       : _map(mc._graph)
499 645
      {
500 646
        mc.cliqueMap(_map);
501 647
        for (_it = NodeIt(mc._graph); _it != INVALID && !_map[_it]; ++_it) ;
502 648
      }
503 649

	
504 650
      /// Conversion to \c Node
505 651
      operator Node() const { return _it; }
506 652

	
507 653
      bool operator==(Invalid) const { return _it == INVALID; }
508 654
      bool operator!=(Invalid) const { return _it != INVALID; }
509 655

	
510 656
      /// Next node
511 657
      CliqueNodeIt &operator++() {
512 658
        for (++_it; _it != INVALID && !_map[_it]; ++_it) ;
513 659
        return *this;
514 660
      }
515 661

	
516 662
      /// Postfix incrementation
517 663

	
518 664
      /// Postfix incrementation.
519 665
      ///
520 666
      /// \warning This incrementation returns a \c Node, not a
521 667
      /// \c CliqueNodeIt as one may expect.
522 668
      typename GR::Node operator++(int) {
523 669
        Node n=*this;
524 670
        ++(*this);
525 671
        return n;
526 672
      }
527 673

	
528 674
    };
529 675

	
530 676
    /// @}
531 677

	
532 678
  private:
679
  
680
    // Initialize search options and limits
681
    void initOptions() {
682
      // Search options
683
      _delta_based_restart = true;
684
      _restart_delta_limit = 4;
685
     
686
      // Search limits
687
      _iteration_limit = 1000;
688
      _step_limit = -1;             // this is disabled by default
689
      _size_limit = -1;             // this is disabled by default
690
    }
533 691

	
534 692
    // Adds a node to the current clique
535 693
    void addCliqueNode(int u) {
536 694
      if (_clique[u]) return;
537 695
      _clique[u] = true;
538 696
      _size++;
539 697
      BoolVector &row = _gr[u];
540 698
      for (int i = 0; i != _n; i++) {
541 699
        if (!row[i]) _delta[i]++;
542 700
      }
543 701
    }
544 702

	
545 703
    // Removes a node from the current clique
546 704
    void delCliqueNode(int u) {
547 705
      if (!_clique[u]) return;
548 706
      _clique[u] = false;
549 707
      _size--;
550 708
      BoolVector &row = _gr[u];
551 709
      for (int i = 0; i != _n; i++) {
552 710
        if (!row[i]) _delta[i]--;
553 711
      }
554 712
    }
555 713

	
556 714
    // Initialize data structures
557 715
    void init() {
558 716
      _n = countNodes(_graph);
559 717
      int ui = 0;
560 718
      for (NodeIt u(_graph); u != INVALID; ++u) {
561 719
        _id[u] = ui++;
562 720
      }
563 721
      _gr.clear();
564 722
      _gr.resize(_n, BoolVector(_n, false));
565 723
      ui = 0;
566 724
      for (NodeIt u(_graph); u != INVALID; ++u) {
567 725
        for (IncEdgeIt e(_graph, u); e != INVALID; ++e) {
568 726
          int vi = _id[_graph.runningNode(e)];
569 727
          _gr[ui][vi] = true;
570 728
          _gr[vi][ui] = true;
571 729
        }
572 730
        ++ui;
573 731
      }
574 732

	
575 733
      _clique.clear();
576 734
      _clique.resize(_n, false);
577 735
      _size = 0;
578 736
      _best_clique.clear();
579 737
      _best_clique.resize(_n, false);
580 738
      _best_size = 0;
581 739
      _delta.clear();
582 740
      _delta.resize(_n, 0);
583 741
      _tabu.clear();
584 742
      _tabu.resize(_n, false);
585 743
    }
586 744

	
587 745
    // Executes the algorithm
588 746
    template <typename SelectionRuleImpl>
589
    int start(int max_select) {
590
      // Options for the restart rule
591
      const bool delta_based_restart = true;
592
      const int restart_delta_limit = 4;
593

	
594
      if (_n == 0) return 0;
747
    TerminationCause start() {
748
      if (_n == 0) return SIZE_LIMIT;
595 749
      if (_n == 1) {
596 750
        _best_clique[0] = true;
597 751
        _best_size = 1;
598
        return _best_size;
752
        return SIZE_LIMIT;
599 753
      }
600 754

	
601
      // Iterated local search
755
      // Iterated local search algorithm
756
      const int max_size = _size_limit >= 0 ? _size_limit : _n;
757
      const int max_restart = _iteration_limit >= 0 ?
758
        _iteration_limit : std::numeric_limits<int>::max();
759
      const int max_select = _step_limit >= 0 ?
760
        _step_limit : std::numeric_limits<int>::max();
761

	
602 762
      SelectionRuleImpl sel_method(*this);
603
      int select = 0;
763
      int select = 0, restart = 0;
604 764
      IntVector restart_nodes;
605

	
606
      while (select < max_select) {
765
      while (select < max_select && restart < max_restart) {
607 766

	
608 767
        // Perturbation/restart
609
        if (delta_based_restart) {
768
        restart++;
769
        if (_delta_based_restart) {
610 770
          restart_nodes.clear();
611 771
          for (int i = 0; i != _n; i++) {
612
            if (_delta[i] >= restart_delta_limit)
772
            if (_delta[i] >= _restart_delta_limit)
613 773
              restart_nodes.push_back(i);
614 774
          }
615 775
        }
616 776
        int rs_node = -1;
617 777
        if (restart_nodes.size() > 0) {
618 778
          rs_node = restart_nodes[_rnd[restart_nodes.size()]];
619 779
        } else {
620 780
          rs_node = _rnd[_n];
621 781
        }
622 782
        BoolVector &row = _gr[rs_node];
623 783
        for (int i = 0; i != _n; i++) {
624 784
          if (_clique[i] && !row[i]) delCliqueNode(i);
625 785
        }
626 786
        addCliqueNode(rs_node);
627 787

	
628 788
        // Local search
629 789
        _tabu.clear();
630 790
        _tabu.resize(_n, false);
631 791
        bool tabu_empty = true;
632 792
        int max_swap = _size;
633 793
        while (select < max_select) {
634 794
          select++;
635 795
          int u;
636 796
          if ((u = sel_method.nextFeasibleAddNode()) != -1) {
637 797
            // Feasible add move
638 798
            addCliqueNode(u);
639 799
            if (tabu_empty) max_swap = _size;
640 800
          }
641 801
          else if ((u = sel_method.nextFeasibleSwapNode()) != -1) {
642 802
            // Feasible swap move
643 803
            int v = -1;
644 804
            BoolVector &row = _gr[u];
645 805
            for (int i = 0; i != _n; i++) {
646 806
              if (_clique[i] && !row[i]) {
647 807
                v = i;
648 808
                break;
649 809
              }
650 810
            }
651 811
            addCliqueNode(u);
652 812
            delCliqueNode(v);
653 813
            _tabu[v] = true;
654 814
            tabu_empty = false;
655 815
            if (--max_swap <= 0) break;
656 816
          }
657 817
          else if ((u = sel_method.nextAddNode()) != -1) {
658 818
            // Non-feasible add move
659 819
            addCliqueNode(u);
660 820
          }
661 821
          else break;
662 822
        }
663 823
        if (_size > _best_size) {
664 824
          _best_clique = _clique;
665 825
          _best_size = _size;
666
          if (_best_size == _n) return _best_size;
826
          if (_best_size >= max_size) return SIZE_LIMIT;
667 827
        }
668 828
        sel_method.update();
669 829
      }
670 830

	
671
      return _best_size;
831
      return (restart >= max_restart ? ITERATION_LIMIT : STEP_LIMIT);
672 832
    }
673 833

	
674 834
  }; //class GrossoLocatelliPullanMc
675 835

	
676 836
  ///@}
677 837

	
678 838
} //namespace lemon
679 839

	
680 840
#endif //LEMON_GROSSO_LOCATELLI_PULLAN_MC_H

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