lemon/network_simplex.h
author Peter Kovacs <kpeter@inf.elte.hu>
Wed, 01 Jul 2009 16:34:01 +0200
changeset 774 cab85bd7859b
parent 710 8b0df68370a4
child 775 e2bdd1a988f3
permissions -rw-r--r--
Small improvements in NS pivot rules (#298)
     1 /* -*- mode: C++; indent-tabs-mode: nil; -*-
     2  *
     3  * This file is a part of LEMON, a generic C++ optimization library.
     4  *
     5  * Copyright (C) 2003-2009
     6  * Egervary Jeno Kombinatorikus Optimalizalasi Kutatocsoport
     7  * (Egervary Research Group on Combinatorial Optimization, EGRES).
     8  *
     9  * Permission to use, modify and distribute this software is granted
    10  * provided that this copyright notice appears in all copies. For
    11  * precise terms see the accompanying LICENSE file.
    12  *
    13  * This software is provided "AS IS" with no warranty of any kind,
    14  * express or implied, and with no claim as to its suitability for any
    15  * purpose.
    16  *
    17  */
    18 
    19 #ifndef LEMON_NETWORK_SIMPLEX_H
    20 #define LEMON_NETWORK_SIMPLEX_H
    21 
    22 /// \ingroup min_cost_flow_algs
    23 ///
    24 /// \file
    25 /// \brief Network Simplex algorithm for finding a minimum cost flow.
    26 
    27 #include <vector>
    28 #include <limits>
    29 #include <algorithm>
    30 
    31 #include <lemon/core.h>
    32 #include <lemon/math.h>
    33 
    34 namespace lemon {
    35 
    36   /// \addtogroup min_cost_flow_algs
    37   /// @{
    38 
    39   /// \brief Implementation of the primal Network Simplex algorithm
    40   /// for finding a \ref min_cost_flow "minimum cost flow".
    41   ///
    42   /// \ref NetworkSimplex implements the primal Network Simplex algorithm
    43   /// for finding a \ref min_cost_flow "minimum cost flow".
    44   /// This algorithm is a specialized version of the linear programming
    45   /// simplex method directly for the minimum cost flow problem.
    46   /// It is one of the most efficient solution methods.
    47   ///
    48   /// In general this class is the fastest implementation available
    49   /// in LEMON for the minimum cost flow problem.
    50   /// Moreover it supports both directions of the supply/demand inequality
    51   /// constraints. For more information see \ref SupplyType.
    52   ///
    53   /// Most of the parameters of the problem (except for the digraph)
    54   /// can be given using separate functions, and the algorithm can be
    55   /// executed using the \ref run() function. If some parameters are not
    56   /// specified, then default values will be used.
    57   ///
    58   /// \tparam GR The digraph type the algorithm runs on.
    59   /// \tparam V The value type used for flow amounts, capacity bounds
    60   /// and supply values in the algorithm. By default it is \c int.
    61   /// \tparam C The value type used for costs and potentials in the
    62   /// algorithm. By default it is the same as \c V.
    63   ///
    64   /// \warning Both value types must be signed and all input data must
    65   /// be integer.
    66   ///
    67   /// \note %NetworkSimplex provides five different pivot rule
    68   /// implementations, from which the most efficient one is used
    69   /// by default. For more information see \ref PivotRule.
    70   template <typename GR, typename V = int, typename C = V>
    71   class NetworkSimplex
    72   {
    73   public:
    74 
    75     /// The type of the flow amounts, capacity bounds and supply values
    76     typedef V Value;
    77     /// The type of the arc costs
    78     typedef C Cost;
    79 
    80   public:
    81 
    82     /// \brief Problem type constants for the \c run() function.
    83     ///
    84     /// Enum type containing the problem type constants that can be
    85     /// returned by the \ref run() function of the algorithm.
    86     enum ProblemType {
    87       /// The problem has no feasible solution (flow).
    88       INFEASIBLE,
    89       /// The problem has optimal solution (i.e. it is feasible and
    90       /// bounded), and the algorithm has found optimal flow and node
    91       /// potentials (primal and dual solutions).
    92       OPTIMAL,
    93       /// The objective function of the problem is unbounded, i.e.
    94       /// there is a directed cycle having negative total cost and
    95       /// infinite upper bound.
    96       UNBOUNDED
    97     };
    98     
    99     /// \brief Constants for selecting the type of the supply constraints.
   100     ///
   101     /// Enum type containing constants for selecting the supply type,
   102     /// i.e. the direction of the inequalities in the supply/demand
   103     /// constraints of the \ref min_cost_flow "minimum cost flow problem".
   104     ///
   105     /// The default supply type is \c GEQ, the \c LEQ type can be
   106     /// selected using \ref supplyType().
   107     /// The equality form is a special case of both supply types.
   108     enum SupplyType {
   109       /// This option means that there are <em>"greater or equal"</em>
   110       /// supply/demand constraints in the definition of the problem.
   111       GEQ,
   112       /// This option means that there are <em>"less or equal"</em>
   113       /// supply/demand constraints in the definition of the problem.
   114       LEQ
   115     };
   116     
   117     /// \brief Constants for selecting the pivot rule.
   118     ///
   119     /// Enum type containing constants for selecting the pivot rule for
   120     /// the \ref run() function.
   121     ///
   122     /// \ref NetworkSimplex provides five different pivot rule
   123     /// implementations that significantly affect the running time
   124     /// of the algorithm.
   125     /// By default \ref BLOCK_SEARCH "Block Search" is used, which
   126     /// proved to be the most efficient and the most robust on various
   127     /// test inputs according to our benchmark tests.
   128     /// However another pivot rule can be selected using the \ref run()
   129     /// function with the proper parameter.
   130     enum PivotRule {
   131 
   132       /// The First Eligible pivot rule.
   133       /// The next eligible arc is selected in a wraparound fashion
   134       /// in every iteration.
   135       FIRST_ELIGIBLE,
   136 
   137       /// The Best Eligible pivot rule.
   138       /// The best eligible arc is selected in every iteration.
   139       BEST_ELIGIBLE,
   140 
   141       /// The Block Search pivot rule.
   142       /// A specified number of arcs are examined in every iteration
   143       /// in a wraparound fashion and the best eligible arc is selected
   144       /// from this block.
   145       BLOCK_SEARCH,
   146 
   147       /// The Candidate List pivot rule.
   148       /// In a major iteration a candidate list is built from eligible arcs
   149       /// in a wraparound fashion and in the following minor iterations
   150       /// the best eligible arc is selected from this list.
   151       CANDIDATE_LIST,
   152 
   153       /// The Altering Candidate List pivot rule.
   154       /// It is a modified version of the Candidate List method.
   155       /// It keeps only the several best eligible arcs from the former
   156       /// candidate list and extends this list in every iteration.
   157       ALTERING_LIST
   158     };
   159     
   160   private:
   161 
   162     TEMPLATE_DIGRAPH_TYPEDEFS(GR);
   163 
   164     typedef std::vector<Arc> ArcVector;
   165     typedef std::vector<Node> NodeVector;
   166     typedef std::vector<int> IntVector;
   167     typedef std::vector<bool> BoolVector;
   168     typedef std::vector<Value> ValueVector;
   169     typedef std::vector<Cost> CostVector;
   170 
   171     // State constants for arcs
   172     enum ArcStateEnum {
   173       STATE_UPPER = -1,
   174       STATE_TREE  =  0,
   175       STATE_LOWER =  1
   176     };
   177 
   178   private:
   179 
   180     // Data related to the underlying digraph
   181     const GR &_graph;
   182     int _node_num;
   183     int _arc_num;
   184     int _all_arc_num;
   185     int _search_arc_num;
   186 
   187     // Parameters of the problem
   188     bool _have_lower;
   189     SupplyType _stype;
   190     Value _sum_supply;
   191 
   192     // Data structures for storing the digraph
   193     IntNodeMap _node_id;
   194     IntArcMap _arc_id;
   195     IntVector _source;
   196     IntVector _target;
   197 
   198     // Node and arc data
   199     ValueVector _lower;
   200     ValueVector _upper;
   201     ValueVector _cap;
   202     CostVector _cost;
   203     ValueVector _supply;
   204     ValueVector _flow;
   205     CostVector _pi;
   206 
   207     // Data for storing the spanning tree structure
   208     IntVector _parent;
   209     IntVector _pred;
   210     IntVector _thread;
   211     IntVector _rev_thread;
   212     IntVector _succ_num;
   213     IntVector _last_succ;
   214     IntVector _dirty_revs;
   215     BoolVector _forward;
   216     IntVector _state;
   217     int _root;
   218 
   219     // Temporary data used in the current pivot iteration
   220     int in_arc, join, u_in, v_in, u_out, v_out;
   221     int first, second, right, last;
   222     int stem, par_stem, new_stem;
   223     Value delta;
   224 
   225   public:
   226   
   227     /// \brief Constant for infinite upper bounds (capacities).
   228     ///
   229     /// Constant for infinite upper bounds (capacities).
   230     /// It is \c std::numeric_limits<Value>::infinity() if available,
   231     /// \c std::numeric_limits<Value>::max() otherwise.
   232     const Value INF;
   233 
   234   private:
   235 
   236     // Implementation of the First Eligible pivot rule
   237     class FirstEligiblePivotRule
   238     {
   239     private:
   240 
   241       // References to the NetworkSimplex class
   242       const IntVector  &_source;
   243       const IntVector  &_target;
   244       const CostVector &_cost;
   245       const IntVector  &_state;
   246       const CostVector &_pi;
   247       int &_in_arc;
   248       int _search_arc_num;
   249 
   250       // Pivot rule data
   251       int _next_arc;
   252 
   253     public:
   254 
   255       // Constructor
   256       FirstEligiblePivotRule(NetworkSimplex &ns) :
   257         _source(ns._source), _target(ns._target),
   258         _cost(ns._cost), _state(ns._state), _pi(ns._pi),
   259         _in_arc(ns.in_arc), _search_arc_num(ns._search_arc_num),
   260         _next_arc(0)
   261       {}
   262 
   263       // Find next entering arc
   264       bool findEnteringArc() {
   265         Cost c;
   266         for (int e = _next_arc; e < _search_arc_num; ++e) {
   267           c = _state[e] * (_cost[e] + _pi[_source[e]] - _pi[_target[e]]);
   268           if (c < 0) {
   269             _in_arc = e;
   270             _next_arc = e + 1;
   271             return true;
   272           }
   273         }
   274         for (int e = 0; e < _next_arc; ++e) {
   275           c = _state[e] * (_cost[e] + _pi[_source[e]] - _pi[_target[e]]);
   276           if (c < 0) {
   277             _in_arc = e;
   278             _next_arc = e + 1;
   279             return true;
   280           }
   281         }
   282         return false;
   283       }
   284 
   285     }; //class FirstEligiblePivotRule
   286 
   287 
   288     // Implementation of the Best Eligible pivot rule
   289     class BestEligiblePivotRule
   290     {
   291     private:
   292 
   293       // References to the NetworkSimplex class
   294       const IntVector  &_source;
   295       const IntVector  &_target;
   296       const CostVector &_cost;
   297       const IntVector  &_state;
   298       const CostVector &_pi;
   299       int &_in_arc;
   300       int _search_arc_num;
   301 
   302     public:
   303 
   304       // Constructor
   305       BestEligiblePivotRule(NetworkSimplex &ns) :
   306         _source(ns._source), _target(ns._target),
   307         _cost(ns._cost), _state(ns._state), _pi(ns._pi),
   308         _in_arc(ns.in_arc), _search_arc_num(ns._search_arc_num)
   309       {}
   310 
   311       // Find next entering arc
   312       bool findEnteringArc() {
   313         Cost c, min = 0;
   314         for (int e = 0; e < _search_arc_num; ++e) {
   315           c = _state[e] * (_cost[e] + _pi[_source[e]] - _pi[_target[e]]);
   316           if (c < min) {
   317             min = c;
   318             _in_arc = e;
   319           }
   320         }
   321         return min < 0;
   322       }
   323 
   324     }; //class BestEligiblePivotRule
   325 
   326 
   327     // Implementation of the Block Search pivot rule
   328     class BlockSearchPivotRule
   329     {
   330     private:
   331 
   332       // References to the NetworkSimplex class
   333       const IntVector  &_source;
   334       const IntVector  &_target;
   335       const CostVector &_cost;
   336       const IntVector  &_state;
   337       const CostVector &_pi;
   338       int &_in_arc;
   339       int _search_arc_num;
   340 
   341       // Pivot rule data
   342       int _block_size;
   343       int _next_arc;
   344 
   345     public:
   346 
   347       // Constructor
   348       BlockSearchPivotRule(NetworkSimplex &ns) :
   349         _source(ns._source), _target(ns._target),
   350         _cost(ns._cost), _state(ns._state), _pi(ns._pi),
   351         _in_arc(ns.in_arc), _search_arc_num(ns._search_arc_num),
   352         _next_arc(0)
   353       {
   354         // The main parameters of the pivot rule
   355         const double BLOCK_SIZE_FACTOR = 0.5;
   356         const int MIN_BLOCK_SIZE = 10;
   357 
   358         _block_size = std::max( int(BLOCK_SIZE_FACTOR *
   359                                     std::sqrt(double(_search_arc_num))),
   360                                 MIN_BLOCK_SIZE );
   361       }
   362 
   363       // Find next entering arc
   364       bool findEnteringArc() {
   365         Cost c, min = 0;
   366         int cnt = _block_size;
   367         int e;
   368         for (e = _next_arc; e < _search_arc_num; ++e) {
   369           c = _state[e] * (_cost[e] + _pi[_source[e]] - _pi[_target[e]]);
   370           if (c < min) {
   371             min = c;
   372             _in_arc = e;
   373           }
   374           if (--cnt == 0) {
   375             if (min < 0) goto search_end;
   376             cnt = _block_size;
   377           }
   378         }
   379         for (e = 0; e < _next_arc; ++e) {
   380           c = _state[e] * (_cost[e] + _pi[_source[e]] - _pi[_target[e]]);
   381           if (c < min) {
   382             min = c;
   383             _in_arc = e;
   384           }
   385           if (--cnt == 0) {
   386             if (min < 0) goto search_end;
   387             cnt = _block_size;
   388           }
   389         }
   390         if (min >= 0) return false;
   391 
   392       search_end:
   393         _next_arc = e;
   394         return true;
   395       }
   396 
   397     }; //class BlockSearchPivotRule
   398 
   399 
   400     // Implementation of the Candidate List pivot rule
   401     class CandidateListPivotRule
   402     {
   403     private:
   404 
   405       // References to the NetworkSimplex class
   406       const IntVector  &_source;
   407       const IntVector  &_target;
   408       const CostVector &_cost;
   409       const IntVector  &_state;
   410       const CostVector &_pi;
   411       int &_in_arc;
   412       int _search_arc_num;
   413 
   414       // Pivot rule data
   415       IntVector _candidates;
   416       int _list_length, _minor_limit;
   417       int _curr_length, _minor_count;
   418       int _next_arc;
   419 
   420     public:
   421 
   422       /// Constructor
   423       CandidateListPivotRule(NetworkSimplex &ns) :
   424         _source(ns._source), _target(ns._target),
   425         _cost(ns._cost), _state(ns._state), _pi(ns._pi),
   426         _in_arc(ns.in_arc), _search_arc_num(ns._search_arc_num),
   427         _next_arc(0)
   428       {
   429         // The main parameters of the pivot rule
   430         const double LIST_LENGTH_FACTOR = 0.25;
   431         const int MIN_LIST_LENGTH = 10;
   432         const double MINOR_LIMIT_FACTOR = 0.1;
   433         const int MIN_MINOR_LIMIT = 3;
   434 
   435         _list_length = std::max( int(LIST_LENGTH_FACTOR *
   436                                      std::sqrt(double(_search_arc_num))),
   437                                  MIN_LIST_LENGTH );
   438         _minor_limit = std::max( int(MINOR_LIMIT_FACTOR * _list_length),
   439                                  MIN_MINOR_LIMIT );
   440         _curr_length = _minor_count = 0;
   441         _candidates.resize(_list_length);
   442       }
   443 
   444       /// Find next entering arc
   445       bool findEnteringArc() {
   446         Cost min, c;
   447         int e;
   448         if (_curr_length > 0 && _minor_count < _minor_limit) {
   449           // Minor iteration: select the best eligible arc from the
   450           // current candidate list
   451           ++_minor_count;
   452           min = 0;
   453           for (int i = 0; i < _curr_length; ++i) {
   454             e = _candidates[i];
   455             c = _state[e] * (_cost[e] + _pi[_source[e]] - _pi[_target[e]]);
   456             if (c < min) {
   457               min = c;
   458               _in_arc = e;
   459             }
   460             else if (c >= 0) {
   461               _candidates[i--] = _candidates[--_curr_length];
   462             }
   463           }
   464           if (min < 0) return true;
   465         }
   466 
   467         // Major iteration: build a new candidate list
   468         min = 0;
   469         _curr_length = 0;
   470         for (e = _next_arc; e < _search_arc_num; ++e) {
   471           c = _state[e] * (_cost[e] + _pi[_source[e]] - _pi[_target[e]]);
   472           if (c < 0) {
   473             _candidates[_curr_length++] = e;
   474             if (c < min) {
   475               min = c;
   476               _in_arc = e;
   477             }
   478             if (_curr_length == _list_length) goto search_end;
   479           }
   480         }
   481         for (e = 0; e < _next_arc; ++e) {
   482           c = _state[e] * (_cost[e] + _pi[_source[e]] - _pi[_target[e]]);
   483           if (c < 0) {
   484             _candidates[_curr_length++] = e;
   485             if (c < min) {
   486               min = c;
   487               _in_arc = e;
   488             }
   489             if (_curr_length == _list_length) goto search_end;
   490           }
   491         }
   492         if (_curr_length == 0) return false;
   493       
   494       search_end:        
   495         _minor_count = 1;
   496         _next_arc = e;
   497         return true;
   498       }
   499 
   500     }; //class CandidateListPivotRule
   501 
   502 
   503     // Implementation of the Altering Candidate List pivot rule
   504     class AlteringListPivotRule
   505     {
   506     private:
   507 
   508       // References to the NetworkSimplex class
   509       const IntVector  &_source;
   510       const IntVector  &_target;
   511       const CostVector &_cost;
   512       const IntVector  &_state;
   513       const CostVector &_pi;
   514       int &_in_arc;
   515       int _search_arc_num;
   516 
   517       // Pivot rule data
   518       int _block_size, _head_length, _curr_length;
   519       int _next_arc;
   520       IntVector _candidates;
   521       CostVector _cand_cost;
   522 
   523       // Functor class to compare arcs during sort of the candidate list
   524       class SortFunc
   525       {
   526       private:
   527         const CostVector &_map;
   528       public:
   529         SortFunc(const CostVector &map) : _map(map) {}
   530         bool operator()(int left, int right) {
   531           return _map[left] > _map[right];
   532         }
   533       };
   534 
   535       SortFunc _sort_func;
   536 
   537     public:
   538 
   539       // Constructor
   540       AlteringListPivotRule(NetworkSimplex &ns) :
   541         _source(ns._source), _target(ns._target),
   542         _cost(ns._cost), _state(ns._state), _pi(ns._pi),
   543         _in_arc(ns.in_arc), _search_arc_num(ns._search_arc_num),
   544         _next_arc(0), _cand_cost(ns._search_arc_num), _sort_func(_cand_cost)
   545       {
   546         // The main parameters of the pivot rule
   547         const double BLOCK_SIZE_FACTOR = 1.0;
   548         const int MIN_BLOCK_SIZE = 10;
   549         const double HEAD_LENGTH_FACTOR = 0.1;
   550         const int MIN_HEAD_LENGTH = 3;
   551 
   552         _block_size = std::max( int(BLOCK_SIZE_FACTOR *
   553                                     std::sqrt(double(_search_arc_num))),
   554                                 MIN_BLOCK_SIZE );
   555         _head_length = std::max( int(HEAD_LENGTH_FACTOR * _block_size),
   556                                  MIN_HEAD_LENGTH );
   557         _candidates.resize(_head_length + _block_size);
   558         _curr_length = 0;
   559       }
   560 
   561       // Find next entering arc
   562       bool findEnteringArc() {
   563         // Check the current candidate list
   564         int e;
   565         for (int i = 0; i < _curr_length; ++i) {
   566           e = _candidates[i];
   567           _cand_cost[e] = _state[e] *
   568             (_cost[e] + _pi[_source[e]] - _pi[_target[e]]);
   569           if (_cand_cost[e] >= 0) {
   570             _candidates[i--] = _candidates[--_curr_length];
   571           }
   572         }
   573 
   574         // Extend the list
   575         int cnt = _block_size;
   576         int limit = _head_length;
   577 
   578         for (e = _next_arc; e < _search_arc_num; ++e) {
   579           _cand_cost[e] = _state[e] *
   580             (_cost[e] + _pi[_source[e]] - _pi[_target[e]]);
   581           if (_cand_cost[e] < 0) {
   582             _candidates[_curr_length++] = e;
   583           }
   584           if (--cnt == 0) {
   585             if (_curr_length > limit) goto search_end;
   586             limit = 0;
   587             cnt = _block_size;
   588           }
   589         }
   590         for (e = 0; e < _next_arc; ++e) {
   591           _cand_cost[e] = _state[e] *
   592             (_cost[e] + _pi[_source[e]] - _pi[_target[e]]);
   593           if (_cand_cost[e] < 0) {
   594             _candidates[_curr_length++] = e;
   595           }
   596           if (--cnt == 0) {
   597             if (_curr_length > limit) goto search_end;
   598             limit = 0;
   599             cnt = _block_size;
   600           }
   601         }
   602         if (_curr_length == 0) return false;
   603         
   604       search_end:
   605 
   606         // Make heap of the candidate list (approximating a partial sort)
   607         make_heap( _candidates.begin(), _candidates.begin() + _curr_length,
   608                    _sort_func );
   609 
   610         // Pop the first element of the heap
   611         _in_arc = _candidates[0];
   612         _next_arc = e;
   613         pop_heap( _candidates.begin(), _candidates.begin() + _curr_length,
   614                   _sort_func );
   615         _curr_length = std::min(_head_length, _curr_length - 1);
   616         return true;
   617       }
   618 
   619     }; //class AlteringListPivotRule
   620 
   621   public:
   622 
   623     /// \brief Constructor.
   624     ///
   625     /// The constructor of the class.
   626     ///
   627     /// \param graph The digraph the algorithm runs on.
   628     NetworkSimplex(const GR& graph) :
   629       _graph(graph), _node_id(graph), _arc_id(graph),
   630       INF(std::numeric_limits<Value>::has_infinity ?
   631           std::numeric_limits<Value>::infinity() :
   632           std::numeric_limits<Value>::max())
   633     {
   634       // Check the value types
   635       LEMON_ASSERT(std::numeric_limits<Value>::is_signed,
   636         "The flow type of NetworkSimplex must be signed");
   637       LEMON_ASSERT(std::numeric_limits<Cost>::is_signed,
   638         "The cost type of NetworkSimplex must be signed");
   639         
   640       // Resize vectors
   641       _node_num = countNodes(_graph);
   642       _arc_num = countArcs(_graph);
   643       int all_node_num = _node_num + 1;
   644       int max_arc_num = _arc_num + 2 * _node_num;
   645 
   646       _source.resize(max_arc_num);
   647       _target.resize(max_arc_num);
   648 
   649       _lower.resize(_arc_num);
   650       _upper.resize(_arc_num);
   651       _cap.resize(max_arc_num);
   652       _cost.resize(max_arc_num);
   653       _supply.resize(all_node_num);
   654       _flow.resize(max_arc_num);
   655       _pi.resize(all_node_num);
   656 
   657       _parent.resize(all_node_num);
   658       _pred.resize(all_node_num);
   659       _forward.resize(all_node_num);
   660       _thread.resize(all_node_num);
   661       _rev_thread.resize(all_node_num);
   662       _succ_num.resize(all_node_num);
   663       _last_succ.resize(all_node_num);
   664       _state.resize(max_arc_num);
   665 
   666       // Copy the graph (store the arcs in a mixed order)
   667       int i = 0;
   668       for (NodeIt n(_graph); n != INVALID; ++n, ++i) {
   669         _node_id[n] = i;
   670       }
   671       int k = std::max(int(std::sqrt(double(_arc_num))), 10);
   672       i = 0;
   673       for (ArcIt a(_graph); a != INVALID; ++a) {
   674         _arc_id[a] = i;
   675         _source[i] = _node_id[_graph.source(a)];
   676         _target[i] = _node_id[_graph.target(a)];
   677         if ((i += k) >= _arc_num) i = (i % k) + 1;
   678       }
   679       
   680       // Initialize maps
   681       for (int i = 0; i != _node_num; ++i) {
   682         _supply[i] = 0;
   683       }
   684       for (int i = 0; i != _arc_num; ++i) {
   685         _lower[i] = 0;
   686         _upper[i] = INF;
   687         _cost[i] = 1;
   688       }
   689       _have_lower = false;
   690       _stype = GEQ;
   691     }
   692 
   693     /// \name Parameters
   694     /// The parameters of the algorithm can be specified using these
   695     /// functions.
   696 
   697     /// @{
   698 
   699     /// \brief Set the lower bounds on the arcs.
   700     ///
   701     /// This function sets the lower bounds on the arcs.
   702     /// If it is not used before calling \ref run(), the lower bounds
   703     /// will be set to zero on all arcs.
   704     ///
   705     /// \param map An arc map storing the lower bounds.
   706     /// Its \c Value type must be convertible to the \c Value type
   707     /// of the algorithm.
   708     ///
   709     /// \return <tt>(*this)</tt>
   710     template <typename LowerMap>
   711     NetworkSimplex& lowerMap(const LowerMap& map) {
   712       _have_lower = true;
   713       for (ArcIt a(_graph); a != INVALID; ++a) {
   714         _lower[_arc_id[a]] = map[a];
   715       }
   716       return *this;
   717     }
   718 
   719     /// \brief Set the upper bounds (capacities) on the arcs.
   720     ///
   721     /// This function sets the upper bounds (capacities) on the arcs.
   722     /// If it is not used before calling \ref run(), the upper bounds
   723     /// will be set to \ref INF on all arcs (i.e. the flow value will be
   724     /// unbounded from above on each arc).
   725     ///
   726     /// \param map An arc map storing the upper bounds.
   727     /// Its \c Value type must be convertible to the \c Value type
   728     /// of the algorithm.
   729     ///
   730     /// \return <tt>(*this)</tt>
   731     template<typename UpperMap>
   732     NetworkSimplex& upperMap(const UpperMap& map) {
   733       for (ArcIt a(_graph); a != INVALID; ++a) {
   734         _upper[_arc_id[a]] = map[a];
   735       }
   736       return *this;
   737     }
   738 
   739     /// \brief Set the costs of the arcs.
   740     ///
   741     /// This function sets the costs of the arcs.
   742     /// If it is not used before calling \ref run(), the costs
   743     /// will be set to \c 1 on all arcs.
   744     ///
   745     /// \param map An arc map storing the costs.
   746     /// Its \c Value type must be convertible to the \c Cost type
   747     /// of the algorithm.
   748     ///
   749     /// \return <tt>(*this)</tt>
   750     template<typename CostMap>
   751     NetworkSimplex& costMap(const CostMap& map) {
   752       for (ArcIt a(_graph); a != INVALID; ++a) {
   753         _cost[_arc_id[a]] = map[a];
   754       }
   755       return *this;
   756     }
   757 
   758     /// \brief Set the supply values of the nodes.
   759     ///
   760     /// This function sets the supply values of the nodes.
   761     /// If neither this function nor \ref stSupply() is used before
   762     /// calling \ref run(), the supply of each node will be set to zero.
   763     /// (It makes sense only if non-zero lower bounds are given.)
   764     ///
   765     /// \param map A node map storing the supply values.
   766     /// Its \c Value type must be convertible to the \c Value type
   767     /// of the algorithm.
   768     ///
   769     /// \return <tt>(*this)</tt>
   770     template<typename SupplyMap>
   771     NetworkSimplex& supplyMap(const SupplyMap& map) {
   772       for (NodeIt n(_graph); n != INVALID; ++n) {
   773         _supply[_node_id[n]] = map[n];
   774       }
   775       return *this;
   776     }
   777 
   778     /// \brief Set single source and target nodes and a supply value.
   779     ///
   780     /// This function sets a single source node and a single target node
   781     /// and the required flow value.
   782     /// If neither this function nor \ref supplyMap() is used before
   783     /// calling \ref run(), the supply of each node will be set to zero.
   784     /// (It makes sense only if non-zero lower bounds are given.)
   785     ///
   786     /// Using this function has the same effect as using \ref supplyMap()
   787     /// with such a map in which \c k is assigned to \c s, \c -k is
   788     /// assigned to \c t and all other nodes have zero supply value.
   789     ///
   790     /// \param s The source node.
   791     /// \param t The target node.
   792     /// \param k The required amount of flow from node \c s to node \c t
   793     /// (i.e. the supply of \c s and the demand of \c t).
   794     ///
   795     /// \return <tt>(*this)</tt>
   796     NetworkSimplex& stSupply(const Node& s, const Node& t, Value k) {
   797       for (int i = 0; i != _node_num; ++i) {
   798         _supply[i] = 0;
   799       }
   800       _supply[_node_id[s]] =  k;
   801       _supply[_node_id[t]] = -k;
   802       return *this;
   803     }
   804     
   805     /// \brief Set the type of the supply constraints.
   806     ///
   807     /// This function sets the type of the supply/demand constraints.
   808     /// If it is not used before calling \ref run(), the \ref GEQ supply
   809     /// type will be used.
   810     ///
   811     /// For more information see \ref SupplyType.
   812     ///
   813     /// \return <tt>(*this)</tt>
   814     NetworkSimplex& supplyType(SupplyType supply_type) {
   815       _stype = supply_type;
   816       return *this;
   817     }
   818 
   819     /// @}
   820 
   821     /// \name Execution Control
   822     /// The algorithm can be executed using \ref run().
   823 
   824     /// @{
   825 
   826     /// \brief Run the algorithm.
   827     ///
   828     /// This function runs the algorithm.
   829     /// The paramters can be specified using functions \ref lowerMap(),
   830     /// \ref upperMap(), \ref costMap(), \ref supplyMap(), \ref stSupply(), 
   831     /// \ref supplyType().
   832     /// For example,
   833     /// \code
   834     ///   NetworkSimplex<ListDigraph> ns(graph);
   835     ///   ns.lowerMap(lower).upperMap(upper).costMap(cost)
   836     ///     .supplyMap(sup).run();
   837     /// \endcode
   838     ///
   839     /// This function can be called more than once. All the parameters
   840     /// that have been given are kept for the next call, unless
   841     /// \ref reset() is called, thus only the modified parameters
   842     /// have to be set again. See \ref reset() for examples.
   843     /// However the underlying digraph must not be modified after this
   844     /// class have been constructed, since it copies and extends the graph.
   845     ///
   846     /// \param pivot_rule The pivot rule that will be used during the
   847     /// algorithm. For more information see \ref PivotRule.
   848     ///
   849     /// \return \c INFEASIBLE if no feasible flow exists,
   850     /// \n \c OPTIMAL if the problem has optimal solution
   851     /// (i.e. it is feasible and bounded), and the algorithm has found
   852     /// optimal flow and node potentials (primal and dual solutions),
   853     /// \n \c UNBOUNDED if the objective function of the problem is
   854     /// unbounded, i.e. there is a directed cycle having negative total
   855     /// cost and infinite upper bound.
   856     ///
   857     /// \see ProblemType, PivotRule
   858     ProblemType run(PivotRule pivot_rule = BLOCK_SEARCH) {
   859       if (!init()) return INFEASIBLE;
   860       return start(pivot_rule);
   861     }
   862 
   863     /// \brief Reset all the parameters that have been given before.
   864     ///
   865     /// This function resets all the paramaters that have been given
   866     /// before using functions \ref lowerMap(), \ref upperMap(),
   867     /// \ref costMap(), \ref supplyMap(), \ref stSupply(), \ref supplyType().
   868     ///
   869     /// It is useful for multiple run() calls. If this function is not
   870     /// used, all the parameters given before are kept for the next
   871     /// \ref run() call.
   872     /// However the underlying digraph must not be modified after this
   873     /// class have been constructed, since it copies and extends the graph.
   874     ///
   875     /// For example,
   876     /// \code
   877     ///   NetworkSimplex<ListDigraph> ns(graph);
   878     ///
   879     ///   // First run
   880     ///   ns.lowerMap(lower).upperMap(upper).costMap(cost)
   881     ///     .supplyMap(sup).run();
   882     ///
   883     ///   // Run again with modified cost map (reset() is not called,
   884     ///   // so only the cost map have to be set again)
   885     ///   cost[e] += 100;
   886     ///   ns.costMap(cost).run();
   887     ///
   888     ///   // Run again from scratch using reset()
   889     ///   // (the lower bounds will be set to zero on all arcs)
   890     ///   ns.reset();
   891     ///   ns.upperMap(capacity).costMap(cost)
   892     ///     .supplyMap(sup).run();
   893     /// \endcode
   894     ///
   895     /// \return <tt>(*this)</tt>
   896     NetworkSimplex& reset() {
   897       for (int i = 0; i != _node_num; ++i) {
   898         _supply[i] = 0;
   899       }
   900       for (int i = 0; i != _arc_num; ++i) {
   901         _lower[i] = 0;
   902         _upper[i] = INF;
   903         _cost[i] = 1;
   904       }
   905       _have_lower = false;
   906       _stype = GEQ;
   907       return *this;
   908     }
   909 
   910     /// @}
   911 
   912     /// \name Query Functions
   913     /// The results of the algorithm can be obtained using these
   914     /// functions.\n
   915     /// The \ref run() function must be called before using them.
   916 
   917     /// @{
   918 
   919     /// \brief Return the total cost of the found flow.
   920     ///
   921     /// This function returns the total cost of the found flow.
   922     /// Its complexity is O(e).
   923     ///
   924     /// \note The return type of the function can be specified as a
   925     /// template parameter. For example,
   926     /// \code
   927     ///   ns.totalCost<double>();
   928     /// \endcode
   929     /// It is useful if the total cost cannot be stored in the \c Cost
   930     /// type of the algorithm, which is the default return type of the
   931     /// function.
   932     ///
   933     /// \pre \ref run() must be called before using this function.
   934     template <typename Number>
   935     Number totalCost() const {
   936       Number c = 0;
   937       for (ArcIt a(_graph); a != INVALID; ++a) {
   938         int i = _arc_id[a];
   939         c += Number(_flow[i]) * Number(_cost[i]);
   940       }
   941       return c;
   942     }
   943 
   944 #ifndef DOXYGEN
   945     Cost totalCost() const {
   946       return totalCost<Cost>();
   947     }
   948 #endif
   949 
   950     /// \brief Return the flow on the given arc.
   951     ///
   952     /// This function returns the flow on the given arc.
   953     ///
   954     /// \pre \ref run() must be called before using this function.
   955     Value flow(const Arc& a) const {
   956       return _flow[_arc_id[a]];
   957     }
   958 
   959     /// \brief Return the flow map (the primal solution).
   960     ///
   961     /// This function copies the flow value on each arc into the given
   962     /// map. The \c Value type of the algorithm must be convertible to
   963     /// the \c Value type of the map.
   964     ///
   965     /// \pre \ref run() must be called before using this function.
   966     template <typename FlowMap>
   967     void flowMap(FlowMap &map) const {
   968       for (ArcIt a(_graph); a != INVALID; ++a) {
   969         map.set(a, _flow[_arc_id[a]]);
   970       }
   971     }
   972 
   973     /// \brief Return the potential (dual value) of the given node.
   974     ///
   975     /// This function returns the potential (dual value) of the
   976     /// given node.
   977     ///
   978     /// \pre \ref run() must be called before using this function.
   979     Cost potential(const Node& n) const {
   980       return _pi[_node_id[n]];
   981     }
   982 
   983     /// \brief Return the potential map (the dual solution).
   984     ///
   985     /// This function copies the potential (dual value) of each node
   986     /// into the given map.
   987     /// The \c Cost type of the algorithm must be convertible to the
   988     /// \c Value type of the map.
   989     ///
   990     /// \pre \ref run() must be called before using this function.
   991     template <typename PotentialMap>
   992     void potentialMap(PotentialMap &map) const {
   993       for (NodeIt n(_graph); n != INVALID; ++n) {
   994         map.set(n, _pi[_node_id[n]]);
   995       }
   996     }
   997 
   998     /// @}
   999 
  1000   private:
  1001 
  1002     // Initialize internal data structures
  1003     bool init() {
  1004       if (_node_num == 0) return false;
  1005 
  1006       // Check the sum of supply values
  1007       _sum_supply = 0;
  1008       for (int i = 0; i != _node_num; ++i) {
  1009         _sum_supply += _supply[i];
  1010       }
  1011       if ( !((_stype == GEQ && _sum_supply <= 0) ||
  1012              (_stype == LEQ && _sum_supply >= 0)) ) return false;
  1013 
  1014       // Remove non-zero lower bounds
  1015       if (_have_lower) {
  1016         for (int i = 0; i != _arc_num; ++i) {
  1017           Value c = _lower[i];
  1018           if (c >= 0) {
  1019             _cap[i] = _upper[i] < INF ? _upper[i] - c : INF;
  1020           } else {
  1021             _cap[i] = _upper[i] < INF + c ? _upper[i] - c : INF;
  1022           }
  1023           _supply[_source[i]] -= c;
  1024           _supply[_target[i]] += c;
  1025         }
  1026       } else {
  1027         for (int i = 0; i != _arc_num; ++i) {
  1028           _cap[i] = _upper[i];
  1029         }
  1030       }
  1031 
  1032       // Initialize artifical cost
  1033       Cost ART_COST;
  1034       if (std::numeric_limits<Cost>::is_exact) {
  1035         ART_COST = std::numeric_limits<Cost>::max() / 2 + 1;
  1036       } else {
  1037         ART_COST = std::numeric_limits<Cost>::min();
  1038         for (int i = 0; i != _arc_num; ++i) {
  1039           if (_cost[i] > ART_COST) ART_COST = _cost[i];
  1040         }
  1041         ART_COST = (ART_COST + 1) * _node_num;
  1042       }
  1043 
  1044       // Initialize arc maps
  1045       for (int i = 0; i != _arc_num; ++i) {
  1046         _flow[i] = 0;
  1047         _state[i] = STATE_LOWER;
  1048       }
  1049       
  1050       // Set data for the artificial root node
  1051       _root = _node_num;
  1052       _parent[_root] = -1;
  1053       _pred[_root] = -1;
  1054       _thread[_root] = 0;
  1055       _rev_thread[0] = _root;
  1056       _succ_num[_root] = _node_num + 1;
  1057       _last_succ[_root] = _root - 1;
  1058       _supply[_root] = -_sum_supply;
  1059       _pi[_root] = 0;
  1060 
  1061       // Add artificial arcs and initialize the spanning tree data structure
  1062       if (_sum_supply == 0) {
  1063         // EQ supply constraints
  1064         _search_arc_num = _arc_num;
  1065         _all_arc_num = _arc_num + _node_num;
  1066         for (int u = 0, e = _arc_num; u != _node_num; ++u, ++e) {
  1067           _parent[u] = _root;
  1068           _pred[u] = e;
  1069           _thread[u] = u + 1;
  1070           _rev_thread[u + 1] = u;
  1071           _succ_num[u] = 1;
  1072           _last_succ[u] = u;
  1073           _cap[e] = INF;
  1074           _state[e] = STATE_TREE;
  1075           if (_supply[u] >= 0) {
  1076             _forward[u] = true;
  1077             _pi[u] = 0;
  1078             _source[e] = u;
  1079             _target[e] = _root;
  1080             _flow[e] = _supply[u];
  1081             _cost[e] = 0;
  1082           } else {
  1083             _forward[u] = false;
  1084             _pi[u] = ART_COST;
  1085             _source[e] = _root;
  1086             _target[e] = u;
  1087             _flow[e] = -_supply[u];
  1088             _cost[e] = ART_COST;
  1089           }
  1090         }
  1091       }
  1092       else if (_sum_supply > 0) {
  1093         // LEQ supply constraints
  1094         _search_arc_num = _arc_num + _node_num;
  1095         int f = _arc_num + _node_num;
  1096         for (int u = 0, e = _arc_num; u != _node_num; ++u, ++e) {
  1097           _parent[u] = _root;
  1098           _thread[u] = u + 1;
  1099           _rev_thread[u + 1] = u;
  1100           _succ_num[u] = 1;
  1101           _last_succ[u] = u;
  1102           if (_supply[u] >= 0) {
  1103             _forward[u] = true;
  1104             _pi[u] = 0;
  1105             _pred[u] = e;
  1106             _source[e] = u;
  1107             _target[e] = _root;
  1108             _cap[e] = INF;
  1109             _flow[e] = _supply[u];
  1110             _cost[e] = 0;
  1111             _state[e] = STATE_TREE;
  1112           } else {
  1113             _forward[u] = false;
  1114             _pi[u] = ART_COST;
  1115             _pred[u] = f;
  1116             _source[f] = _root;
  1117             _target[f] = u;
  1118             _cap[f] = INF;
  1119             _flow[f] = -_supply[u];
  1120             _cost[f] = ART_COST;
  1121             _state[f] = STATE_TREE;
  1122             _source[e] = u;
  1123             _target[e] = _root;
  1124             _cap[e] = INF;
  1125             _flow[e] = 0;
  1126             _cost[e] = 0;
  1127             _state[e] = STATE_LOWER;
  1128             ++f;
  1129           }
  1130         }
  1131         _all_arc_num = f;
  1132       }
  1133       else {
  1134         // GEQ supply constraints
  1135         _search_arc_num = _arc_num + _node_num;
  1136         int f = _arc_num + _node_num;
  1137         for (int u = 0, e = _arc_num; u != _node_num; ++u, ++e) {
  1138           _parent[u] = _root;
  1139           _thread[u] = u + 1;
  1140           _rev_thread[u + 1] = u;
  1141           _succ_num[u] = 1;
  1142           _last_succ[u] = u;
  1143           if (_supply[u] <= 0) {
  1144             _forward[u] = false;
  1145             _pi[u] = 0;
  1146             _pred[u] = e;
  1147             _source[e] = _root;
  1148             _target[e] = u;
  1149             _cap[e] = INF;
  1150             _flow[e] = -_supply[u];
  1151             _cost[e] = 0;
  1152             _state[e] = STATE_TREE;
  1153           } else {
  1154             _forward[u] = true;
  1155             _pi[u] = -ART_COST;
  1156             _pred[u] = f;
  1157             _source[f] = u;
  1158             _target[f] = _root;
  1159             _cap[f] = INF;
  1160             _flow[f] = _supply[u];
  1161             _state[f] = STATE_TREE;
  1162             _cost[f] = ART_COST;
  1163             _source[e] = _root;
  1164             _target[e] = u;
  1165             _cap[e] = INF;
  1166             _flow[e] = 0;
  1167             _cost[e] = 0;
  1168             _state[e] = STATE_LOWER;
  1169             ++f;
  1170           }
  1171         }
  1172         _all_arc_num = f;
  1173       }
  1174 
  1175       return true;
  1176     }
  1177 
  1178     // Find the join node
  1179     void findJoinNode() {
  1180       int u = _source[in_arc];
  1181       int v = _target[in_arc];
  1182       while (u != v) {
  1183         if (_succ_num[u] < _succ_num[v]) {
  1184           u = _parent[u];
  1185         } else {
  1186           v = _parent[v];
  1187         }
  1188       }
  1189       join = u;
  1190     }
  1191 
  1192     // Find the leaving arc of the cycle and returns true if the
  1193     // leaving arc is not the same as the entering arc
  1194     bool findLeavingArc() {
  1195       // Initialize first and second nodes according to the direction
  1196       // of the cycle
  1197       if (_state[in_arc] == STATE_LOWER) {
  1198         first  = _source[in_arc];
  1199         second = _target[in_arc];
  1200       } else {
  1201         first  = _target[in_arc];
  1202         second = _source[in_arc];
  1203       }
  1204       delta = _cap[in_arc];
  1205       int result = 0;
  1206       Value d;
  1207       int e;
  1208 
  1209       // Search the cycle along the path form the first node to the root
  1210       for (int u = first; u != join; u = _parent[u]) {
  1211         e = _pred[u];
  1212         d = _forward[u] ?
  1213           _flow[e] : (_cap[e] == INF ? INF : _cap[e] - _flow[e]);
  1214         if (d < delta) {
  1215           delta = d;
  1216           u_out = u;
  1217           result = 1;
  1218         }
  1219       }
  1220       // Search the cycle along the path form the second node to the root
  1221       for (int u = second; u != join; u = _parent[u]) {
  1222         e = _pred[u];
  1223         d = _forward[u] ? 
  1224           (_cap[e] == INF ? INF : _cap[e] - _flow[e]) : _flow[e];
  1225         if (d <= delta) {
  1226           delta = d;
  1227           u_out = u;
  1228           result = 2;
  1229         }
  1230       }
  1231 
  1232       if (result == 1) {
  1233         u_in = first;
  1234         v_in = second;
  1235       } else {
  1236         u_in = second;
  1237         v_in = first;
  1238       }
  1239       return result != 0;
  1240     }
  1241 
  1242     // Change _flow and _state vectors
  1243     void changeFlow(bool change) {
  1244       // Augment along the cycle
  1245       if (delta > 0) {
  1246         Value val = _state[in_arc] * delta;
  1247         _flow[in_arc] += val;
  1248         for (int u = _source[in_arc]; u != join; u = _parent[u]) {
  1249           _flow[_pred[u]] += _forward[u] ? -val : val;
  1250         }
  1251         for (int u = _target[in_arc]; u != join; u = _parent[u]) {
  1252           _flow[_pred[u]] += _forward[u] ? val : -val;
  1253         }
  1254       }
  1255       // Update the state of the entering and leaving arcs
  1256       if (change) {
  1257         _state[in_arc] = STATE_TREE;
  1258         _state[_pred[u_out]] =
  1259           (_flow[_pred[u_out]] == 0) ? STATE_LOWER : STATE_UPPER;
  1260       } else {
  1261         _state[in_arc] = -_state[in_arc];
  1262       }
  1263     }
  1264 
  1265     // Update the tree structure
  1266     void updateTreeStructure() {
  1267       int u, w;
  1268       int old_rev_thread = _rev_thread[u_out];
  1269       int old_succ_num = _succ_num[u_out];
  1270       int old_last_succ = _last_succ[u_out];
  1271       v_out = _parent[u_out];
  1272 
  1273       u = _last_succ[u_in];  // the last successor of u_in
  1274       right = _thread[u];    // the node after it
  1275 
  1276       // Handle the case when old_rev_thread equals to v_in
  1277       // (it also means that join and v_out coincide)
  1278       if (old_rev_thread == v_in) {
  1279         last = _thread[_last_succ[u_out]];
  1280       } else {
  1281         last = _thread[v_in];
  1282       }
  1283 
  1284       // Update _thread and _parent along the stem nodes (i.e. the nodes
  1285       // between u_in and u_out, whose parent have to be changed)
  1286       _thread[v_in] = stem = u_in;
  1287       _dirty_revs.clear();
  1288       _dirty_revs.push_back(v_in);
  1289       par_stem = v_in;
  1290       while (stem != u_out) {
  1291         // Insert the next stem node into the thread list
  1292         new_stem = _parent[stem];
  1293         _thread[u] = new_stem;
  1294         _dirty_revs.push_back(u);
  1295 
  1296         // Remove the subtree of stem from the thread list
  1297         w = _rev_thread[stem];
  1298         _thread[w] = right;
  1299         _rev_thread[right] = w;
  1300 
  1301         // Change the parent node and shift stem nodes
  1302         _parent[stem] = par_stem;
  1303         par_stem = stem;
  1304         stem = new_stem;
  1305 
  1306         // Update u and right
  1307         u = _last_succ[stem] == _last_succ[par_stem] ?
  1308           _rev_thread[par_stem] : _last_succ[stem];
  1309         right = _thread[u];
  1310       }
  1311       _parent[u_out] = par_stem;
  1312       _thread[u] = last;
  1313       _rev_thread[last] = u;
  1314       _last_succ[u_out] = u;
  1315 
  1316       // Remove the subtree of u_out from the thread list except for
  1317       // the case when old_rev_thread equals to v_in
  1318       // (it also means that join and v_out coincide)
  1319       if (old_rev_thread != v_in) {
  1320         _thread[old_rev_thread] = right;
  1321         _rev_thread[right] = old_rev_thread;
  1322       }
  1323 
  1324       // Update _rev_thread using the new _thread values
  1325       for (int i = 0; i < int(_dirty_revs.size()); ++i) {
  1326         u = _dirty_revs[i];
  1327         _rev_thread[_thread[u]] = u;
  1328       }
  1329 
  1330       // Update _pred, _forward, _last_succ and _succ_num for the
  1331       // stem nodes from u_out to u_in
  1332       int tmp_sc = 0, tmp_ls = _last_succ[u_out];
  1333       u = u_out;
  1334       while (u != u_in) {
  1335         w = _parent[u];
  1336         _pred[u] = _pred[w];
  1337         _forward[u] = !_forward[w];
  1338         tmp_sc += _succ_num[u] - _succ_num[w];
  1339         _succ_num[u] = tmp_sc;
  1340         _last_succ[w] = tmp_ls;
  1341         u = w;
  1342       }
  1343       _pred[u_in] = in_arc;
  1344       _forward[u_in] = (u_in == _source[in_arc]);
  1345       _succ_num[u_in] = old_succ_num;
  1346 
  1347       // Set limits for updating _last_succ form v_in and v_out
  1348       // towards the root
  1349       int up_limit_in = -1;
  1350       int up_limit_out = -1;
  1351       if (_last_succ[join] == v_in) {
  1352         up_limit_out = join;
  1353       } else {
  1354         up_limit_in = join;
  1355       }
  1356 
  1357       // Update _last_succ from v_in towards the root
  1358       for (u = v_in; u != up_limit_in && _last_succ[u] == v_in;
  1359            u = _parent[u]) {
  1360         _last_succ[u] = _last_succ[u_out];
  1361       }
  1362       // Update _last_succ from v_out towards the root
  1363       if (join != old_rev_thread && v_in != old_rev_thread) {
  1364         for (u = v_out; u != up_limit_out && _last_succ[u] == old_last_succ;
  1365              u = _parent[u]) {
  1366           _last_succ[u] = old_rev_thread;
  1367         }
  1368       } else {
  1369         for (u = v_out; u != up_limit_out && _last_succ[u] == old_last_succ;
  1370              u = _parent[u]) {
  1371           _last_succ[u] = _last_succ[u_out];
  1372         }
  1373       }
  1374 
  1375       // Update _succ_num from v_in to join
  1376       for (u = v_in; u != join; u = _parent[u]) {
  1377         _succ_num[u] += old_succ_num;
  1378       }
  1379       // Update _succ_num from v_out to join
  1380       for (u = v_out; u != join; u = _parent[u]) {
  1381         _succ_num[u] -= old_succ_num;
  1382       }
  1383     }
  1384 
  1385     // Update potentials
  1386     void updatePotential() {
  1387       Cost sigma = _forward[u_in] ?
  1388         _pi[v_in] - _pi[u_in] - _cost[_pred[u_in]] :
  1389         _pi[v_in] - _pi[u_in] + _cost[_pred[u_in]];
  1390       // Update potentials in the subtree, which has been moved
  1391       int end = _thread[_last_succ[u_in]];
  1392       for (int u = u_in; u != end; u = _thread[u]) {
  1393         _pi[u] += sigma;
  1394       }
  1395     }
  1396 
  1397     // Execute the algorithm
  1398     ProblemType start(PivotRule pivot_rule) {
  1399       // Select the pivot rule implementation
  1400       switch (pivot_rule) {
  1401         case FIRST_ELIGIBLE:
  1402           return start<FirstEligiblePivotRule>();
  1403         case BEST_ELIGIBLE:
  1404           return start<BestEligiblePivotRule>();
  1405         case BLOCK_SEARCH:
  1406           return start<BlockSearchPivotRule>();
  1407         case CANDIDATE_LIST:
  1408           return start<CandidateListPivotRule>();
  1409         case ALTERING_LIST:
  1410           return start<AlteringListPivotRule>();
  1411       }
  1412       return INFEASIBLE; // avoid warning
  1413     }
  1414 
  1415     template <typename PivotRuleImpl>
  1416     ProblemType start() {
  1417       PivotRuleImpl pivot(*this);
  1418 
  1419       // Execute the Network Simplex algorithm
  1420       while (pivot.findEnteringArc()) {
  1421         findJoinNode();
  1422         bool change = findLeavingArc();
  1423         if (delta >= INF) return UNBOUNDED;
  1424         changeFlow(change);
  1425         if (change) {
  1426           updateTreeStructure();
  1427           updatePotential();
  1428         }
  1429       }
  1430       
  1431       // Check feasibility
  1432       for (int e = _search_arc_num; e != _all_arc_num; ++e) {
  1433         if (_flow[e] != 0) return INFEASIBLE;
  1434       }
  1435 
  1436       // Transform the solution and the supply map to the original form
  1437       if (_have_lower) {
  1438         for (int i = 0; i != _arc_num; ++i) {
  1439           Value c = _lower[i];
  1440           if (c != 0) {
  1441             _flow[i] += c;
  1442             _supply[_source[i]] += c;
  1443             _supply[_target[i]] -= c;
  1444           }
  1445         }
  1446       }
  1447       
  1448       // Shift potentials to meet the requirements of the GEQ/LEQ type
  1449       // optimality conditions
  1450       if (_sum_supply == 0) {
  1451         if (_stype == GEQ) {
  1452           Cost max_pot = std::numeric_limits<Cost>::min();
  1453           for (int i = 0; i != _node_num; ++i) {
  1454             if (_pi[i] > max_pot) max_pot = _pi[i];
  1455           }
  1456           if (max_pot > 0) {
  1457             for (int i = 0; i != _node_num; ++i)
  1458               _pi[i] -= max_pot;
  1459           }
  1460         } else {
  1461           Cost min_pot = std::numeric_limits<Cost>::max();
  1462           for (int i = 0; i != _node_num; ++i) {
  1463             if (_pi[i] < min_pot) min_pot = _pi[i];
  1464           }
  1465           if (min_pot < 0) {
  1466             for (int i = 0; i != _node_num; ++i)
  1467               _pi[i] -= min_pot;
  1468           }
  1469         }
  1470       }
  1471 
  1472       return OPTIMAL;
  1473     }
  1474 
  1475   }; //class NetworkSimplex
  1476 
  1477   ///@}
  1478 
  1479 } //namespace lemon
  1480 
  1481 #endif //LEMON_NETWORK_SIMPLEX_H