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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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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.
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The implementation of combinatorial algorithms heavily relies on
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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.
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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
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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
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in conjunction with other graph representations.
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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
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with any graph structure.
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<b>See also:</b> \ref graph_concepts "Graph Structure Concepts".
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*/
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/**
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@defgroup graph_adaptors Adaptor Classes for Graphs
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@ingroup graphs
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\brief Adaptor classes for digraphs and graphs
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This group contains several useful adaptor classes for digraphs and graphs.
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The main parts of LEMON are the different graph structures, generic
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graph algorithms, graph concepts, which couple them, and graph
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adaptors. While the previous notions are more or less clear, the
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latter one needs further explanation. Graph adaptors are graph classes
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which serve for considering graph structures in different ways.
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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
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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
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considering a new orientation, then an adaptor is worthwhile to use.
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To come back to the reverse oriented graph, in this situation
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\code
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template<typename Digraph> class ReverseDigraph;
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\endcode
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template class can be used. The code looks as follows
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\code
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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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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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/**
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@defgroup semi_adaptors Semi-Adaptor Classes for Graphs
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@ingroup graphs
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\brief Graph types between real graphs and graph adaptors.
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This group contains some graph types between real graphs and graph adaptors.
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These classes wrap graphs to give new functionality as the adaptors do it.
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On the other hand they are not light-weight structures as the adaptors.
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*/
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/**
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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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This group contains the map structures implemented in LEMON.
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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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<b>See also:</b> \ref map_concepts "Map Concepts".
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*/
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/**
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@defgroup graph_maps Graph Maps
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@ingroup maps
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\brief Special graph-related maps.
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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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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".
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*/
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/**
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\defgroup map_adaptors Map Adaptors
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\ingroup maps
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\brief Tools to create new maps from existing ones
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This group contains map adaptors that are used to create "implicit"
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maps from other maps.
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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
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(negation, shifting, addition, multiplication, logical 'and', 'or',
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'not' etc.) or e.g. convert a map to another one of different Value type.
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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
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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 {
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return Color(0.0, 0.0, 0.0);
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}
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}
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Digraph::NodeMap<int> degree_map(graph);
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graphToEps(graph, "graph.eps")
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.coords(coords).scaleToA4().undirected()
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.nodeColors(composeMap(functorToMap(nodeColor), degree_map))
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.run();
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\endcode
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The \c functorToMap() function makes an \c int to \c Color map from the
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\c nodeColor() function. The \c composeMap() compose the \c degree_map
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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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The usage with class type algorithms is little bit harder. In this
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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
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Digraph graph;
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typedef Digraph::ArcMap<double> DoubleArcMap;
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DoubleArcMap length(graph);
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DoubleArcMap speed(graph);
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typedef DivMap<DoubleArcMap, DoubleArcMap> TimeMap;
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TimeMap time(length, speed);
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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
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class. We use the implicit minimum time map as the length map of the
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\c Dijkstra algorithm.
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*/
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/**
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@defgroup matrices Matrices
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@ingroup datas
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\brief Two dimensional data storages implemented in LEMON.
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This group contains two dimensional data storages implemented in LEMON.
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*/
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/**
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@defgroup paths Path Structures
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@ingroup datas
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\brief %Path structures implemented in LEMON.
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This group contains the path structures implemented in LEMON.
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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
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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
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any kind of path structure.
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\sa lemon::concepts::Path
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*/
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/**
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@defgroup auxdat Auxiliary Data Structures
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@ingroup datas
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\brief Auxiliary data structures implemented in LEMON.
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This group contains some data structures implemented in LEMON in
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order to make it easier to implement combinatorial algorithms.
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*/
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/**
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@defgroup algs Algorithms
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\brief This group contains the several algorithms
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implemented in LEMON.
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This group contains the several algorithms
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implemented in LEMON.
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*/
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/**
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@defgroup search Graph Search
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@ingroup algs
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\brief Common graph search algorithms.
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This group contains the common graph search algorithms, namely
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\e breadth-first \e search (BFS) and \e depth-first \e search (DFS).
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*/
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/**
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@defgroup shortest_path Shortest Path Algorithms
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@ingroup algs
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\brief Algorithms for finding shortest paths.
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This group contains the algorithms for finding shortest paths in digraphs.
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- \ref Dijkstra algorithm for finding shortest paths from a source node
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when all arc lengths are non-negative.
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- \ref BellmanFord "Bellman-Ford" algorithm for finding shortest paths
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from a source node when arc lenghts can be either positive or negative,
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but the digraph should not contain directed cycles with negative total
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length.
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- \ref FloydWarshall "Floyd-Warshall" and \ref Johnson "Johnson" algorithms
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for solving the \e all-pairs \e shortest \e paths \e problem when arc
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lenghts can be either positive or negative, but the digraph should
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not contain directed cycles with negative total length.
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- \ref Suurballe A successive shortest path algorithm for finding
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arc-disjoint paths between two nodes having minimum total length.
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*/
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/**
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@defgroup max_flow Maximum Flow Algorithms
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@ingroup algs
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\brief Algorithms for finding maximum flows.
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This group contains the algorithms for finding maximum flows and
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feasible circulations.
|
alpar@40
|
317 |
|
kpeter@406
|
318 |
The \e maximum \e flow \e problem is to find a flow of maximum value between
|
kpeter@406
|
319 |
a single source and a single target. Formally, there is a \f$G=(V,A)\f$
|
kpeter@601
|
320 |
digraph, a \f$cap: A\rightarrow\mathbf{R}^+_0\f$ capacity function and
|
kpeter@406
|
321 |
\f$s, t \in V\f$ source and target nodes.
|
kpeter@601
|
322 |
A maximum flow is an \f$f: A\rightarrow\mathbf{R}^+_0\f$ solution of the
|
kpeter@406
|
323 |
following optimization problem.
|
alpar@40
|
324 |
|
kpeter@601
|
325 |
\f[ \max\sum_{sv\in A} f(sv) - \sum_{vs\in A} f(vs) \f]
|
kpeter@601
|
326 |
\f[ \sum_{uv\in A} f(uv) = \sum_{vu\in A} f(vu)
|
kpeter@601
|
327 |
\quad \forall u\in V\setminus\{s,t\} \f]
|
kpeter@601
|
328 |
\f[ 0 \leq f(uv) \leq cap(uv) \quad \forall uv\in A \f]
|
alpar@40
|
329 |
|
kpeter@50
|
330 |
LEMON contains several algorithms for solving maximum flow problems:
|
kpeter@406
|
331 |
- \ref EdmondsKarp Edmonds-Karp algorithm.
|
kpeter@406
|
332 |
- \ref Preflow Goldberg-Tarjan's preflow push-relabel algorithm.
|
kpeter@406
|
333 |
- \ref DinitzSleatorTarjan Dinitz's blocking flow algorithm with dynamic trees.
|
kpeter@406
|
334 |
- \ref GoldbergTarjan Preflow push-relabel algorithm with dynamic trees.
|
alpar@40
|
335 |
|
kpeter@406
|
336 |
In most cases the \ref Preflow "Preflow" algorithm provides the
|
kpeter@406
|
337 |
fastest method for computing a maximum flow. All implementations
|
kpeter@406
|
338 |
provides functions to also query the minimum cut, which is the dual
|
kpeter@406
|
339 |
problem of the maximum flow.
|
alpar@40
|
340 |
*/
|
alpar@40
|
341 |
|
alpar@40
|
342 |
/**
|
kpeter@314
|
343 |
@defgroup min_cost_flow Minimum Cost Flow Algorithms
|
alpar@40
|
344 |
@ingroup algs
|
alpar@40
|
345 |
|
kpeter@50
|
346 |
\brief Algorithms for finding minimum cost flows and circulations.
|
alpar@40
|
347 |
|
kpeter@601
|
348 |
This group contains the algorithms for finding minimum cost flows and
|
alpar@209
|
349 |
circulations.
|
kpeter@406
|
350 |
|
kpeter@406
|
351 |
The \e minimum \e cost \e flow \e problem is to find a feasible flow of
|
kpeter@406
|
352 |
minimum total cost from a set of supply nodes to a set of demand nodes
|
kpeter@601
|
353 |
in a network with capacity constraints (lower and upper bounds)
|
kpeter@601
|
354 |
and arc costs.
|
kpeter@636
|
355 |
Formally, let \f$G=(V,A)\f$ be a digraph, \f$lower: A\rightarrow\mathbf{Z}\f$,
|
kpeter@636
|
356 |
\f$upper: A\rightarrow\mathbf{Z}\cup\{+\infty\}\f$ denote the lower and
|
kpeter@601
|
357 |
upper bounds for the flow values on the arcs, for which
|
kpeter@636
|
358 |
\f$lower(uv) \leq upper(uv)\f$ must hold for all \f$uv\in A\f$,
|
kpeter@636
|
359 |
\f$cost: A\rightarrow\mathbf{Z}\f$ denotes the cost per unit flow
|
kpeter@636
|
360 |
on the arcs and \f$sup: V\rightarrow\mathbf{Z}\f$ denotes the
|
kpeter@601
|
361 |
signed supply values of the nodes.
|
kpeter@601
|
362 |
If \f$sup(u)>0\f$, then \f$u\f$ is a supply node with \f$sup(u)\f$
|
kpeter@601
|
363 |
supply, if \f$sup(u)<0\f$, then \f$u\f$ is a demand node with
|
kpeter@601
|
364 |
\f$-sup(u)\f$ demand.
|
kpeter@636
|
365 |
A minimum cost flow is an \f$f: A\rightarrow\mathbf{Z}\f$ solution
|
kpeter@601
|
366 |
of the following optimization problem.
|
kpeter@406
|
367 |
|
kpeter@601
|
368 |
\f[ \min\sum_{uv\in A} f(uv) \cdot cost(uv) \f]
|
kpeter@601
|
369 |
\f[ \sum_{uv\in A} f(uv) - \sum_{vu\in A} f(vu) \geq
|
kpeter@601
|
370 |
sup(u) \quad \forall u\in V \f]
|
kpeter@601
|
371 |
\f[ lower(uv) \leq f(uv) \leq upper(uv) \quad \forall uv\in A \f]
|
kpeter@406
|
372 |
|
kpeter@601
|
373 |
The sum of the supply values, i.e. \f$\sum_{u\in V} sup(u)\f$ must be
|
kpeter@601
|
374 |
zero or negative in order to have a feasible solution (since the sum
|
kpeter@601
|
375 |
of the expressions on the left-hand side of the inequalities is zero).
|
kpeter@601
|
376 |
It means that the total demand must be greater or equal to the total
|
kpeter@601
|
377 |
supply and all the supplies have to be carried out from the supply nodes,
|
kpeter@601
|
378 |
but there could be demands that are not satisfied.
|
kpeter@601
|
379 |
If \f$\sum_{u\in V} sup(u)\f$ is zero, then all the supply/demand
|
kpeter@601
|
380 |
constraints have to be satisfied with equality, i.e. all demands
|
kpeter@601
|
381 |
have to be satisfied and all supplies have to be used.
|
kpeter@601
|
382 |
|
kpeter@601
|
383 |
If you need the opposite inequalities in the supply/demand constraints
|
kpeter@601
|
384 |
(i.e. the total demand is less than the total supply and all the demands
|
kpeter@601
|
385 |
have to be satisfied while there could be supplies that are not used),
|
kpeter@601
|
386 |
then you could easily transform the problem to the above form by reversing
|
kpeter@601
|
387 |
the direction of the arcs and taking the negative of the supply values
|
kpeter@601
|
388 |
(e.g. using \ref ReverseDigraph and \ref NegMap adaptors).
|
kpeter@601
|
389 |
However \ref NetworkSimplex algorithm also supports this form directly
|
kpeter@601
|
390 |
for the sake of convenience.
|
kpeter@601
|
391 |
|
kpeter@601
|
392 |
A feasible solution for this problem can be found using \ref Circulation.
|
kpeter@601
|
393 |
|
kpeter@601
|
394 |
Note that the above formulation is actually more general than the usual
|
kpeter@601
|
395 |
definition of the minimum cost flow problem, in which strict equalities
|
kpeter@601
|
396 |
are required in the supply/demand contraints, i.e.
|
kpeter@601
|
397 |
|
kpeter@601
|
398 |
\f[ \sum_{uv\in A} f(uv) - \sum_{vu\in A} f(vu) =
|
kpeter@601
|
399 |
sup(u) \quad \forall u\in V. \f]
|
kpeter@601
|
400 |
|
kpeter@601
|
401 |
However if the sum of the supply values is zero, then these two problems
|
kpeter@601
|
402 |
are equivalent. So if you need the equality form, you have to ensure this
|
kpeter@601
|
403 |
additional contraint for the algorithms.
|
kpeter@601
|
404 |
|
kpeter@601
|
405 |
The dual solution of the minimum cost flow problem is represented by node
|
kpeter@601
|
406 |
potentials \f$\pi: V\rightarrow\mathbf{Z}\f$.
|
kpeter@636
|
407 |
An \f$f: A\rightarrow\mathbf{Z}\f$ feasible solution of the problem
|
kpeter@601
|
408 |
is optimal if and only if for some \f$\pi: V\rightarrow\mathbf{Z}\f$
|
kpeter@601
|
409 |
node potentials the following \e complementary \e slackness optimality
|
kpeter@601
|
410 |
conditions hold.
|
kpeter@601
|
411 |
|
kpeter@601
|
412 |
- For all \f$uv\in A\f$ arcs:
|
kpeter@601
|
413 |
- if \f$cost^\pi(uv)>0\f$, then \f$f(uv)=lower(uv)\f$;
|
kpeter@601
|
414 |
- if \f$lower(uv)<f(uv)<upper(uv)\f$, then \f$cost^\pi(uv)=0\f$;
|
kpeter@601
|
415 |
- if \f$cost^\pi(uv)<0\f$, then \f$f(uv)=upper(uv)\f$.
|
kpeter@636
|
416 |
- For all \f$u\in V\f$ nodes:
|
kpeter@601
|
417 |
- if \f$\sum_{uv\in A} f(uv) - \sum_{vu\in A} f(vu) \neq sup(u)\f$,
|
kpeter@601
|
418 |
then \f$\pi(u)=0\f$.
|
kpeter@601
|
419 |
|
kpeter@601
|
420 |
Here \f$cost^\pi(uv)\f$ denotes the \e reduced \e cost of the arc
|
kpeter@636
|
421 |
\f$uv\in A\f$ with respect to the potential function \f$\pi\f$, i.e.
|
kpeter@601
|
422 |
\f[ cost^\pi(uv) = cost(uv) + \pi(u) - \pi(v).\f]
|
kpeter@601
|
423 |
|
kpeter@636
|
424 |
All algorithms provide dual solution (node potentials) as well,
|
kpeter@601
|
425 |
if an optimal flow is found.
|
kpeter@601
|
426 |
|
kpeter@601
|
427 |
LEMON contains several algorithms for solving minimum cost flow problems.
|
kpeter@601
|
428 |
- \ref NetworkSimplex Primal Network Simplex algorithm with various
|
kpeter@601
|
429 |
pivot strategies.
|
kpeter@601
|
430 |
- \ref CostScaling Push-Relabel and Augment-Relabel algorithms based on
|
kpeter@601
|
431 |
cost scaling.
|
kpeter@601
|
432 |
- \ref CapacityScaling Successive Shortest %Path algorithm with optional
|
kpeter@406
|
433 |
capacity scaling.
|
kpeter@601
|
434 |
- \ref CancelAndTighten The Cancel and Tighten algorithm.
|
kpeter@601
|
435 |
- \ref CycleCanceling Cycle-Canceling algorithms.
|
kpeter@601
|
436 |
|
kpeter@601
|
437 |
Most of these implementations support the general inequality form of the
|
kpeter@601
|
438 |
minimum cost flow problem, but CancelAndTighten and CycleCanceling
|
kpeter@601
|
439 |
only support the equality form due to the primal method they use.
|
kpeter@601
|
440 |
|
kpeter@601
|
441 |
In general NetworkSimplex is the most efficient implementation,
|
kpeter@601
|
442 |
but in special cases other algorithms could be faster.
|
kpeter@601
|
443 |
For example, if the total supply and/or capacities are rather small,
|
kpeter@601
|
444 |
CapacityScaling is usually the fastest algorithm (without effective scaling).
|
alpar@40
|
445 |
*/
|
alpar@40
|
446 |
|
alpar@40
|
447 |
/**
|
kpeter@314
|
448 |
@defgroup min_cut Minimum Cut Algorithms
|
alpar@209
|
449 |
@ingroup algs
|
alpar@40
|
450 |
|
kpeter@50
|
451 |
\brief Algorithms for finding minimum cut in graphs.
|
alpar@40
|
452 |
|
kpeter@550
|
453 |
This group contains the algorithms for finding minimum cut in graphs.
|
alpar@40
|
454 |
|
kpeter@406
|
455 |
The \e minimum \e cut \e problem is to find a non-empty and non-complete
|
kpeter@406
|
456 |
\f$X\f$ subset of the nodes with minimum overall capacity on
|
kpeter@406
|
457 |
outgoing arcs. Formally, there is a \f$G=(V,A)\f$ digraph, a
|
kpeter@406
|
458 |
\f$cap: A\rightarrow\mathbf{R}^+_0\f$ capacity function. The minimum
|
kpeter@50
|
459 |
cut is the \f$X\f$ solution of the next optimization problem:
|
alpar@40
|
460 |
|
alpar@210
|
461 |
\f[ \min_{X \subset V, X\not\in \{\emptyset, V\}}
|
kpeter@406
|
462 |
\sum_{uv\in A, u\in X, v\not\in X}cap(uv) \f]
|
alpar@40
|
463 |
|
kpeter@50
|
464 |
LEMON contains several algorithms related to minimum cut problems:
|
alpar@40
|
465 |
|
kpeter@406
|
466 |
- \ref HaoOrlin "Hao-Orlin algorithm" for calculating minimum cut
|
kpeter@406
|
467 |
in directed graphs.
|
kpeter@406
|
468 |
- \ref NagamochiIbaraki "Nagamochi-Ibaraki algorithm" for
|
kpeter@406
|
469 |
calculating minimum cut in undirected graphs.
|
kpeter@550
|
470 |
- \ref GomoryHu "Gomory-Hu tree computation" for calculating
|
kpeter@406
|
471 |
all-pairs minimum cut in undirected graphs.
|
alpar@40
|
472 |
|
alpar@40
|
473 |
If you want to find minimum cut just between two distinict nodes,
|
kpeter@406
|
474 |
see the \ref max_flow "maximum flow problem".
|
alpar@40
|
475 |
*/
|
alpar@40
|
476 |
|
alpar@40
|
477 |
/**
|
kpeter@578
|
478 |
@defgroup graph_properties Connectivity and Other Graph Properties
|
alpar@40
|
479 |
@ingroup algs
|
kpeter@50
|
480 |
\brief Algorithms for discovering the graph properties
|
alpar@40
|
481 |
|
kpeter@550
|
482 |
This group contains the algorithms for discovering the graph properties
|
kpeter@50
|
483 |
like connectivity, bipartiteness, euler property, simplicity etc.
|
alpar@40
|
484 |
|
alpar@40
|
485 |
\image html edge_biconnected_components.png
|
alpar@40
|
486 |
\image latex edge_biconnected_components.eps "bi-edge-connected components" width=\textwidth
|
alpar@40
|
487 |
*/
|
alpar@40
|
488 |
|
alpar@40
|
489 |
/**
|
kpeter@314
|
490 |
@defgroup planar Planarity Embedding and Drawing
|
alpar@40
|
491 |
@ingroup algs
|
kpeter@50
|
492 |
\brief Algorithms for planarity checking, embedding and drawing
|
alpar@40
|
493 |
|
kpeter@550
|
494 |
This group contains the algorithms for planarity checking,
|
alpar@210
|
495 |
embedding and drawing.
|
alpar@40
|
496 |
|
alpar@40
|
497 |
\image html planar.png
|
alpar@40
|
498 |
\image latex planar.eps "Plane graph" width=\textwidth
|
alpar@40
|
499 |
*/
|
alpar@40
|
500 |
|
alpar@40
|
501 |
/**
|
kpeter@314
|
502 |
@defgroup matching Matching Algorithms
|
alpar@40
|
503 |
@ingroup algs
|
kpeter@50
|
504 |
\brief Algorithms for finding matchings in graphs and bipartite graphs.
|
alpar@40
|
505 |
|
kpeter@582
|
506 |
This group contains the algorithms for calculating
|
alpar@40
|
507 |
matchings in graphs and bipartite graphs. The general matching problem is
|
kpeter@582
|
508 |
finding a subset of the edges for which each node has at most one incident
|
kpeter@582
|
509 |
edge.
|
alpar@209
|
510 |
|
alpar@40
|
511 |
There are several different algorithms for calculate matchings in
|
alpar@40
|
512 |
graphs. The matching problems in bipartite graphs are generally
|
alpar@40
|
513 |
easier than in general graphs. The goal of the matching optimization
|
kpeter@406
|
514 |
can be finding maximum cardinality, maximum weight or minimum cost
|
alpar@40
|
515 |
matching. The search can be constrained to find perfect or
|
alpar@40
|
516 |
maximum cardinality matching.
|
alpar@40
|
517 |
|
kpeter@406
|
518 |
The matching algorithms implemented in LEMON:
|
kpeter@406
|
519 |
- \ref MaxBipartiteMatching Hopcroft-Karp augmenting path algorithm
|
kpeter@406
|
520 |
for calculating maximum cardinality matching in bipartite graphs.
|
kpeter@406
|
521 |
- \ref PrBipartiteMatching Push-relabel algorithm
|
kpeter@406
|
522 |
for calculating maximum cardinality matching in bipartite graphs.
|
kpeter@406
|
523 |
- \ref MaxWeightedBipartiteMatching
|
kpeter@406
|
524 |
Successive shortest path algorithm for calculating maximum weighted
|
kpeter@406
|
525 |
matching and maximum weighted bipartite matching in bipartite graphs.
|
kpeter@406
|
526 |
- \ref MinCostMaxBipartiteMatching
|
kpeter@406
|
527 |
Successive shortest path algorithm for calculating minimum cost maximum
|
kpeter@406
|
528 |
matching in bipartite graphs.
|
kpeter@406
|
529 |
- \ref MaxMatching Edmond's blossom shrinking algorithm for calculating
|
kpeter@406
|
530 |
maximum cardinality matching in general graphs.
|
kpeter@406
|
531 |
- \ref MaxWeightedMatching Edmond's blossom shrinking algorithm for calculating
|
kpeter@406
|
532 |
maximum weighted matching in general graphs.
|
kpeter@406
|
533 |
- \ref MaxWeightedPerfectMatching
|
kpeter@406
|
534 |
Edmond's blossom shrinking algorithm for calculating maximum weighted
|
kpeter@406
|
535 |
perfect matching in general graphs.
|
alpar@40
|
536 |
|
alpar@40
|
537 |
\image html bipartite_matching.png
|
alpar@40
|
538 |
\image latex bipartite_matching.eps "Bipartite Matching" width=\textwidth
|
alpar@40
|
539 |
*/
|
alpar@40
|
540 |
|
alpar@40
|
541 |
/**
|
kpeter@314
|
542 |
@defgroup spantree Minimum Spanning Tree Algorithms
|
alpar@40
|
543 |
@ingroup algs
|
kpeter@50
|
544 |
\brief Algorithms for finding a minimum cost spanning tree in a graph.
|
alpar@40
|
545 |
|
kpeter@550
|
546 |
This group contains the algorithms for finding a minimum cost spanning
|
kpeter@406
|
547 |
tree in a graph.
|
alpar@40
|
548 |
*/
|
alpar@40
|
549 |
|
alpar@40
|
550 |
/**
|
kpeter@314
|
551 |
@defgroup auxalg Auxiliary Algorithms
|
alpar@40
|
552 |
@ingroup algs
|
kpeter@50
|
553 |
\brief Auxiliary algorithms implemented in LEMON.
|
alpar@40
|
554 |
|
kpeter@550
|
555 |
This group contains some algorithms implemented in LEMON
|
kpeter@50
|
556 |
in order to make it easier to implement complex algorithms.
|
alpar@40
|
557 |
*/
|
alpar@40
|
558 |
|
alpar@40
|
559 |
/**
|
kpeter@314
|
560 |
@defgroup approx Approximation Algorithms
|
kpeter@314
|
561 |
@ingroup algs
|
kpeter@50
|
562 |
\brief Approximation algorithms.
|
alpar@40
|
563 |
|
kpeter@550
|
564 |
This group contains the approximation and heuristic algorithms
|
kpeter@50
|
565 |
implemented in LEMON.
|
alpar@40
|
566 |
*/
|
alpar@40
|
567 |
|
alpar@40
|
568 |
/**
|
alpar@40
|
569 |
@defgroup gen_opt_group General Optimization Tools
|
kpeter@550
|
570 |
\brief This group contains some general optimization frameworks
|
alpar@40
|
571 |
implemented in LEMON.
|
alpar@40
|
572 |
|
kpeter@550
|
573 |
This group contains some general optimization frameworks
|
alpar@40
|
574 |
implemented in LEMON.
|
alpar@40
|
575 |
*/
|
alpar@40
|
576 |
|
alpar@40
|
577 |
/**
|
kpeter@314
|
578 |
@defgroup lp_group Lp and Mip Solvers
|
alpar@40
|
579 |
@ingroup gen_opt_group
|
alpar@40
|
580 |
\brief Lp and Mip solver interfaces for LEMON.
|
alpar@40
|
581 |
|
kpeter@550
|
582 |
This group contains Lp and Mip solver interfaces for LEMON. The
|
alpar@40
|
583 |
various LP solvers could be used in the same manner with this
|
alpar@40
|
584 |
interface.
|
alpar@40
|
585 |
*/
|
alpar@40
|
586 |
|
alpar@209
|
587 |
/**
|
kpeter@314
|
588 |
@defgroup lp_utils Tools for Lp and Mip Solvers
|
alpar@40
|
589 |
@ingroup lp_group
|
kpeter@50
|
590 |
\brief Helper tools to the Lp and Mip solvers.
|
alpar@40
|
591 |
|
alpar@40
|
592 |
This group adds some helper tools to general optimization framework
|
alpar@40
|
593 |
implemented in LEMON.
|
alpar@40
|
594 |
*/
|
alpar@40
|
595 |
|
alpar@40
|
596 |
/**
|
alpar@40
|
597 |
@defgroup metah Metaheuristics
|
alpar@40
|
598 |
@ingroup gen_opt_group
|
alpar@40
|
599 |
\brief Metaheuristics for LEMON library.
|
alpar@40
|
600 |
|
kpeter@550
|
601 |
This group contains some metaheuristic optimization tools.
|
alpar@40
|
602 |
*/
|
alpar@40
|
603 |
|
alpar@40
|
604 |
/**
|
alpar@209
|
605 |
@defgroup utils Tools and Utilities
|
kpeter@50
|
606 |
\brief Tools and utilities for programming in LEMON
|
alpar@40
|
607 |
|
kpeter@50
|
608 |
Tools and utilities for programming in LEMON.
|
alpar@40
|
609 |
*/
|
alpar@40
|
610 |
|
alpar@40
|
611 |
/**
|
alpar@40
|
612 |
@defgroup gutils Basic Graph Utilities
|
alpar@40
|
613 |
@ingroup utils
|
kpeter@50
|
614 |
\brief Simple basic graph utilities.
|
alpar@40
|
615 |
|
kpeter@550
|
616 |
This group contains some simple basic graph utilities.
|
alpar@40
|
617 |
*/
|
alpar@40
|
618 |
|
alpar@40
|
619 |
/**
|
alpar@40
|
620 |
@defgroup misc Miscellaneous Tools
|
alpar@40
|
621 |
@ingroup utils
|
kpeter@50
|
622 |
\brief Tools for development, debugging and testing.
|
kpeter@50
|
623 |
|
kpeter@550
|
624 |
This group contains several useful tools for development,
|
alpar@40
|
625 |
debugging and testing.
|
alpar@40
|
626 |
*/
|
alpar@40
|
627 |
|
alpar@40
|
628 |
/**
|
kpeter@314
|
629 |
@defgroup timecount Time Measuring and Counting
|
alpar@40
|
630 |
@ingroup misc
|
kpeter@50
|
631 |
\brief Simple tools for measuring the performance of algorithms.
|
kpeter@50
|
632 |
|
kpeter@550
|
633 |
This group contains simple tools for measuring the performance
|
alpar@40
|
634 |
of algorithms.
|
alpar@40
|
635 |
*/
|
alpar@40
|
636 |
|
alpar@40
|
637 |
/**
|
alpar@40
|
638 |
@defgroup exceptions Exceptions
|
alpar@40
|
639 |
@ingroup utils
|
kpeter@50
|
640 |
\brief Exceptions defined in LEMON.
|
kpeter@50
|
641 |
|
kpeter@550
|
642 |
This group contains the exceptions defined in LEMON.
|
alpar@40
|
643 |
*/
|
alpar@40
|
644 |
|
alpar@40
|
645 |
/**
|
alpar@40
|
646 |
@defgroup io_group Input-Output
|
kpeter@50
|
647 |
\brief Graph Input-Output methods
|
alpar@40
|
648 |
|
kpeter@550
|
649 |
This group contains the tools for importing and exporting graphs
|
kpeter@314
|
650 |
and graph related data. Now it supports the \ref lgf-format
|
kpeter@314
|
651 |
"LEMON Graph Format", the \c DIMACS format and the encapsulated
|
kpeter@314
|
652 |
postscript (EPS) format.
|
alpar@40
|
653 |
*/
|
alpar@40
|
654 |
|
alpar@40
|
655 |
/**
|
kpeter@351
|
656 |
@defgroup lemon_io LEMON Graph Format
|
alpar@40
|
657 |
@ingroup io_group
|
kpeter@314
|
658 |
\brief Reading and writing LEMON Graph Format.
|
alpar@40
|
659 |
|
kpeter@550
|
660 |
This group contains methods for reading and writing
|
ladanyi@236
|
661 |
\ref lgf-format "LEMON Graph Format".
|
alpar@40
|
662 |
*/
|
alpar@40
|
663 |
|
alpar@40
|
664 |
/**
|
kpeter@314
|
665 |
@defgroup eps_io Postscript Exporting
|
alpar@40
|
666 |
@ingroup io_group
|
alpar@40
|
667 |
\brief General \c EPS drawer and graph exporter
|
alpar@40
|
668 |
|
kpeter@550
|
669 |
This group contains general \c EPS drawing methods and special
|
alpar@209
|
670 |
graph exporting tools.
|
alpar@40
|
671 |
*/
|
alpar@40
|
672 |
|
alpar@40
|
673 |
/**
|
kpeter@388
|
674 |
@defgroup dimacs_group DIMACS format
|
kpeter@388
|
675 |
@ingroup io_group
|
kpeter@388
|
676 |
\brief Read and write files in DIMACS format
|
kpeter@388
|
677 |
|
kpeter@388
|
678 |
Tools to read a digraph from or write it to a file in DIMACS format data.
|
kpeter@388
|
679 |
*/
|
kpeter@388
|
680 |
|
kpeter@388
|
681 |
/**
|
kpeter@351
|
682 |
@defgroup nauty_group NAUTY Format
|
kpeter@351
|
683 |
@ingroup io_group
|
kpeter@351
|
684 |
\brief Read \e Nauty format
|
kpeter@388
|
685 |
|
kpeter@351
|
686 |
Tool to read graphs from \e Nauty format data.
|
kpeter@351
|
687 |
*/
|
kpeter@351
|
688 |
|
kpeter@351
|
689 |
/**
|
alpar@40
|
690 |
@defgroup concept Concepts
|
alpar@40
|
691 |
\brief Skeleton classes and concept checking classes
|
alpar@40
|
692 |
|
kpeter@550
|
693 |
This group contains the data/algorithm skeletons and concept checking
|
alpar@40
|
694 |
classes implemented in LEMON.
|
alpar@40
|
695 |
|
alpar@40
|
696 |
The purpose of the classes in this group is fourfold.
|
alpar@209
|
697 |
|
kpeter@318
|
698 |
- These classes contain the documentations of the %concepts. In order
|
alpar@40
|
699 |
to avoid document multiplications, an implementation of a concept
|
alpar@40
|
700 |
simply refers to the corresponding concept class.
|
alpar@40
|
701 |
|
alpar@40
|
702 |
- These classes declare every functions, <tt>typedef</tt>s etc. an
|
kpeter@318
|
703 |
implementation of the %concepts should provide, however completely
|
alpar@40
|
704 |
without implementations and real data structures behind the
|
alpar@40
|
705 |
interface. On the other hand they should provide nothing else. All
|
alpar@40
|
706 |
the algorithms working on a data structure meeting a certain concept
|
alpar@40
|
707 |
should compile with these classes. (Though it will not run properly,
|
alpar@40
|
708 |
of course.) In this way it is easily to check if an algorithm
|
alpar@40
|
709 |
doesn't use any extra feature of a certain implementation.
|
alpar@40
|
710 |
|
alpar@40
|
711 |
- The concept descriptor classes also provide a <em>checker class</em>
|
kpeter@50
|
712 |
that makes it possible to check whether a certain implementation of a
|
alpar@40
|
713 |
concept indeed provides all the required features.
|
alpar@40
|
714 |
|
alpar@40
|
715 |
- Finally, They can serve as a skeleton of a new implementation of a concept.
|
alpar@40
|
716 |
*/
|
alpar@40
|
717 |
|
alpar@40
|
718 |
/**
|
alpar@40
|
719 |
@defgroup graph_concepts Graph Structure Concepts
|
alpar@40
|
720 |
@ingroup concept
|
alpar@40
|
721 |
\brief Skeleton and concept checking classes for graph structures
|
alpar@40
|
722 |
|
kpeter@550
|
723 |
This group contains the skeletons and concept checking classes of LEMON's
|
alpar@40
|
724 |
graph structures and helper classes used to implement these.
|
alpar@40
|
725 |
*/
|
alpar@40
|
726 |
|
kpeter@314
|
727 |
/**
|
kpeter@314
|
728 |
@defgroup map_concepts Map Concepts
|
kpeter@314
|
729 |
@ingroup concept
|
kpeter@314
|
730 |
\brief Skeleton and concept checking classes for maps
|
kpeter@314
|
731 |
|
kpeter@550
|
732 |
This group contains the skeletons and concept checking classes of maps.
|
alpar@40
|
733 |
*/
|
alpar@40
|
734 |
|
alpar@40
|
735 |
/**
|
alpar@40
|
736 |
\anchor demoprograms
|
alpar@40
|
737 |
|
kpeter@406
|
738 |
@defgroup demos Demo Programs
|
alpar@40
|
739 |
|
alpar@40
|
740 |
Some demo programs are listed here. Their full source codes can be found in
|
alpar@40
|
741 |
the \c demo subdirectory of the source tree.
|
alpar@40
|
742 |
|
ladanyi@556
|
743 |
In order to compile them, use the <tt>make demo</tt> or the
|
ladanyi@556
|
744 |
<tt>make check</tt> commands.
|
alpar@40
|
745 |
*/
|
alpar@40
|
746 |
|
alpar@40
|
747 |
/**
|
kpeter@406
|
748 |
@defgroup tools Standalone Utility Applications
|
alpar@40
|
749 |
|
alpar@209
|
750 |
Some utility applications are listed here.
|
alpar@40
|
751 |
|
alpar@40
|
752 |
The standard compilation procedure (<tt>./configure;make</tt>) will compile
|
alpar@209
|
753 |
them, as well.
|
alpar@40
|
754 |
*/
|
alpar@40
|
755 |
|
kpeter@406
|
756 |
}
|