Translate Hungarian varible names and improve messages in dim_test.cc.
3 * This file is a part of LEMON, a generic C++ optimization library
5 * Copyright (C) 2003-2008
6 * Egervary Jeno Kombinatorikus Optimalizalasi Kutatocsoport
7 * (Egervary Research Group on Combinatorial Optimization, EGRES).
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.
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
19 #ifndef LEMON_BIPARTITE_MATCHING
20 #define LEMON_BIPARTITE_MATCHING
24 #include <lemon/bin_heap.h>
25 #include <lemon/maps.h>
31 ///\brief Maximum matching algorithms in bipartite graphs.
33 ///\note The pr_bipartite_matching.h file also contains algorithms to
34 ///solve maximum cardinality bipartite matching problems.
40 /// \brief Bipartite Max Cardinality Matching algorithm
42 /// Bipartite Max Cardinality Matching algorithm. This class implements
43 /// the Hopcroft-Karp algorithm which has \f$ O(e\sqrt{n}) \f$ time
46 /// \note In several cases the push-relabel based algorithms have
47 /// better runtime performance than the augmenting path based ones.
49 /// \see PrBipartiteMatching
50 template <typename BpUGraph>
51 class MaxBipartiteMatching {
54 typedef BpUGraph Graph;
56 typedef typename Graph::Node Node;
57 typedef typename Graph::ANodeIt ANodeIt;
58 typedef typename Graph::BNodeIt BNodeIt;
59 typedef typename Graph::UEdge UEdge;
60 typedef typename Graph::UEdgeIt UEdgeIt;
61 typedef typename Graph::IncEdgeIt IncEdgeIt;
63 typedef typename BpUGraph::template ANodeMap<UEdge> ANodeMatchingMap;
64 typedef typename BpUGraph::template BNodeMap<UEdge> BNodeMatchingMap;
69 /// \brief Constructor.
71 /// Constructor of the algorithm.
72 MaxBipartiteMatching(const BpUGraph& graph)
73 : _matching(graph), _rmatching(graph), _reached(graph), _graph(&graph) {}
75 /// \name Execution control
76 /// The simplest way to execute the algorithm is to use
77 /// one of the member functions called \c run().
79 /// If you need more control on the execution,
80 /// first you must call \ref init() or one alternative for it.
81 /// Finally \ref start() will perform the matching computation or
82 /// with step-by-step execution you can augment the solution.
86 /// \brief Initalize the data structures.
88 /// It initalizes the data structures and creates an empty matching.
90 for (ANodeIt it(*_graph); it != INVALID; ++it) {
91 _matching.set(it, INVALID);
93 for (BNodeIt it(*_graph); it != INVALID; ++it) {
94 _rmatching.set(it, INVALID);
101 /// \brief Initalize the data structures.
103 /// It initalizes the data structures and creates a greedy
104 /// matching. From this matching sometimes it is faster to get
105 /// the matching than from the initial empty matching.
108 for (BNodeIt it(*_graph); it != INVALID; ++it) {
109 _rmatching.set(it, INVALID);
112 for (ANodeIt it(*_graph); it != INVALID; ++it) {
113 _matching[it] = INVALID;
114 for (IncEdgeIt jt(*_graph, it); jt != INVALID; ++jt) {
115 if (_rmatching[_graph->bNode(jt)] == INVALID) {
116 _matching.set(it, jt);
117 _rmatching.set(_graph->bNode(jt), jt);
118 _reached.set(_graph->bNode(jt), -1);
127 /// \brief Initalize the data structures with an initial matching.
129 /// It initalizes the data structures with an initial matching.
130 template <typename MatchingMap>
131 void matchingInit(const MatchingMap& mm) {
132 for (ANodeIt it(*_graph); it != INVALID; ++it) {
133 _matching.set(it, INVALID);
135 for (BNodeIt it(*_graph); it != INVALID; ++it) {
136 _rmatching.set(it, INVALID);
140 for (UEdgeIt it(*_graph); it != INVALID; ++it) {
143 _matching.set(_graph->aNode(it), it);
144 _rmatching.set(_graph->bNode(it), it);
151 /// \brief Initalize the data structures with an initial matching.
153 /// It initalizes the data structures with an initial matching.
154 /// \return %True when the given map contains really a matching.
155 template <typename MatchingMap>
156 bool checkedMatchingInit(const MatchingMap& mm) {
157 for (ANodeIt it(*_graph); it != INVALID; ++it) {
158 _matching.set(it, INVALID);
160 for (BNodeIt it(*_graph); it != INVALID; ++it) {
161 _rmatching.set(it, INVALID);
165 for (UEdgeIt it(*_graph); it != INVALID; ++it) {
168 if (_matching[_graph->aNode(it)] != INVALID) {
171 _matching.set(_graph->aNode(it), it);
172 if (_matching[_graph->bNode(it)] != INVALID) {
175 _matching.set(_graph->bNode(it), it);
176 _reached.set(_graph->bNode(it), -1);
185 bool _find_path(Node anode, int maxlevel,
186 typename Graph::template BNodeMap<int>& level) {
187 for (IncEdgeIt it(*_graph, anode); it != INVALID; ++it) {
188 Node bnode = _graph->bNode(it);
189 if (level[bnode] == maxlevel) {
190 level.set(bnode, -1);
192 _matching.set(anode, it);
193 _rmatching.set(bnode, it);
196 Node nnode = _graph->aNode(_rmatching[bnode]);
197 if (_find_path(nnode, maxlevel - 1, level)) {
198 _matching.set(anode, it);
199 _rmatching.set(bnode, it);
210 /// \brief An augmenting phase of the Hopcroft-Karp algorithm
212 /// It runs an augmenting phase of the Hopcroft-Karp
213 /// algorithm. This phase finds maximal edge disjoint augmenting
214 /// paths and augments on these paths. The algorithm consists at
215 /// most of \f$ O(\sqrt{n}) \f$ phase and one phase is \f$ O(e)
221 typename Graph::template BNodeMap<int> _level(*_graph, -1);
222 typename Graph::template ANodeMap<bool> _found(*_graph, false);
224 std::vector<Node> queue, aqueue;
225 for (BNodeIt it(*_graph); it != INVALID; ++it) {
226 if (_rmatching[it] == INVALID) {
228 _reached.set(it, _phase);
233 bool success = false;
236 while (!success && !queue.empty()) {
237 std::vector<Node> nqueue;
238 for (int i = 0; i < int(queue.size()); ++i) {
239 Node bnode = queue[i];
240 for (IncEdgeIt jt(*_graph, bnode); jt != INVALID; ++jt) {
241 Node anode = _graph->aNode(jt);
242 if (_matching[anode] == INVALID) {
244 if (!_found[anode]) {
245 if (_find_path(anode, level, _level)) {
248 _found.set(anode, true);
252 Node nnode = _graph->bNode(_matching[anode]);
253 if (_reached[nnode] != _phase) {
254 _reached.set(nnode, _phase);
255 nqueue.push_back(nnode);
256 _level.set(nnode, level + 1);
269 void _find_path_bfs(Node anode,
270 typename Graph::template ANodeMap<UEdge>& pred) {
272 UEdge uedge = pred[anode];
273 Node bnode = _graph->bNode(uedge);
275 UEdge nedge = _rmatching[bnode];
277 _matching.set(anode, uedge);
278 _rmatching.set(bnode, uedge);
280 if (nedge == INVALID) break;
281 anode = _graph->aNode(nedge);
287 /// \brief An augmenting phase with single path augementing
289 /// This phase finds only one augmenting paths and augments on
290 /// these paths. The algorithm consists at most of \f$ O(n) \f$
291 /// phase and one phase is \f$ O(e) \f$ long.
292 bool simpleAugment() {
295 typename Graph::template ANodeMap<UEdge> _pred(*_graph);
297 std::vector<Node> queue, aqueue;
298 for (BNodeIt it(*_graph); it != INVALID; ++it) {
299 if (_rmatching[it] == INVALID) {
301 _reached.set(it, _phase);
305 bool success = false;
308 while (!success && !queue.empty()) {
309 std::vector<Node> nqueue;
310 for (int i = 0; i < int(queue.size()); ++i) {
311 Node bnode = queue[i];
312 for (IncEdgeIt jt(*_graph, bnode); jt != INVALID; ++jt) {
313 Node anode = _graph->aNode(jt);
314 if (_matching[anode] == INVALID) {
315 _pred.set(anode, jt);
316 _find_path_bfs(anode, _pred);
320 Node nnode = _graph->bNode(_matching[anode]);
321 if (_reached[nnode] != _phase) {
322 _pred.set(anode, jt);
323 _reached.set(nnode, _phase);
324 nqueue.push_back(nnode);
338 /// \brief Starts the algorithm.
340 /// Starts the algorithm. It runs augmenting phases until the optimal
341 /// solution reached.
346 /// \brief Runs the algorithm.
348 /// It just initalize the algorithm and then start it.
356 /// \name Query Functions
357 /// The result of the %Matching algorithm can be obtained using these
359 /// Before the use of these functions,
360 /// either run() or start() must be called.
364 /// \brief Return true if the given uedge is in the matching.
366 /// It returns true if the given uedge is in the matching.
367 bool matchingEdge(const UEdge& edge) const {
368 return _matching[_graph->aNode(edge)] == edge;
371 /// \brief Returns the matching edge from the node.
373 /// Returns the matching edge from the node. If there is not such
374 /// edge it gives back \c INVALID.
375 /// \note If the parameter node is a B-node then the running time is
376 /// propotional to the degree of the node.
377 UEdge matchingEdge(const Node& node) const {
378 if (_graph->aNode(node)) {
379 return _matching[node];
381 return _rmatching[node];
385 /// \brief Set true all matching uedge in the map.
387 /// Set true all matching uedge in the map. It does not change the
388 /// value mapped to the other uedges.
389 /// \return The number of the matching edges.
390 template <typename MatchingMap>
391 int quickMatching(MatchingMap& mm) const {
392 for (ANodeIt it(*_graph); it != INVALID; ++it) {
393 if (_matching[it] != INVALID) {
394 mm.set(_matching[it], true);
400 /// \brief Set true all matching uedge in the map and the others to false.
402 /// Set true all matching uedge in the map and the others to false.
403 /// \return The number of the matching edges.
404 template <typename MatchingMap>
405 int matching(MatchingMap& mm) const {
406 for (UEdgeIt it(*_graph); it != INVALID; ++it) {
407 mm.set(it, it == _matching[_graph->aNode(it)]);
412 ///Gives back the matching in an ANodeMap.
414 ///Gives back the matching in an ANodeMap. The parameter should
415 ///be a write ANodeMap of UEdge values.
416 ///\return The number of the matching edges.
417 template<class MatchingMap>
418 int aMatching(MatchingMap& mm) const {
419 for (ANodeIt it(*_graph); it != INVALID; ++it) {
420 mm.set(it, _matching[it]);
425 ///Gives back the matching in a BNodeMap.
427 ///Gives back the matching in a BNodeMap. The parameter should
428 ///be a write BNodeMap of UEdge values.
429 ///\return The number of the matching edges.
430 template<class MatchingMap>
431 int bMatching(MatchingMap& mm) const {
432 for (BNodeIt it(*_graph); it != INVALID; ++it) {
433 mm.set(it, _rmatching[it]);
438 /// \brief Returns a minimum covering of the nodes.
440 /// The minimum covering set problem is the dual solution of the
441 /// maximum bipartite matching. It provides a solution for this
442 /// problem what is proof of the optimality of the matching.
443 /// \return The size of the cover set.
444 template <typename CoverMap>
445 int coverSet(CoverMap& covering) const {
448 for (ANodeIt it(*_graph); it != INVALID; ++it) {
449 bool cn = _matching[it] != INVALID &&
450 _reached[_graph->bNode(_matching[it])] == _phase;
451 covering.set(it, cn);
454 for (BNodeIt it(*_graph); it != INVALID; ++it) {
455 bool cn = _reached[it] != _phase;
456 covering.set(it, cn);
462 /// \brief Gives back a barrier on the A-nodes
464 /// The barrier is s subset of the nodes on the same side of the
465 /// graph, which size minus its neighbours is exactly the
466 /// unmatched nodes on the A-side.
467 /// \retval barrier A WriteMap on the ANodes with bool value.
468 template <typename BarrierMap>
469 void aBarrier(BarrierMap& barrier) const {
471 for (ANodeIt it(*_graph); it != INVALID; ++it) {
472 barrier.set(it, _matching[it] == INVALID ||
473 _reached[_graph->bNode(_matching[it])] != _phase);
477 /// \brief Gives back a barrier on the B-nodes
479 /// The barrier is s subset of the nodes on the same side of the
480 /// graph, which size minus its neighbours is exactly the
481 /// unmatched nodes on the B-side.
482 /// \retval barrier A WriteMap on the BNodes with bool value.
483 template <typename BarrierMap>
484 void bBarrier(BarrierMap& barrier) const {
486 for (BNodeIt it(*_graph); it != INVALID; ++it) {
487 barrier.set(it, _reached[it] == _phase);
491 /// \brief Gives back the number of the matching edges.
493 /// Gives back the number of the matching edges.
494 int matchingSize() const {
502 typename BpUGraph::template ANodeMap<UEdge> _matching;
503 typename BpUGraph::template BNodeMap<UEdge> _rmatching;
505 typename BpUGraph::template BNodeMap<int> _reached;
514 /// \ingroup matching
516 /// \brief Maximum cardinality bipartite matching
518 /// This function calculates the maximum cardinality matching
519 /// in a bipartite graph. It gives back the matching in an undirected
522 /// \param graph The bipartite graph.
523 /// \return The size of the matching.
524 template <typename BpUGraph>
525 int maxBipartiteMatching(const BpUGraph& graph) {
526 MaxBipartiteMatching<BpUGraph> bpmatching(graph);
528 return bpmatching.matchingSize();
531 /// \ingroup matching
533 /// \brief Maximum cardinality bipartite matching
535 /// This function calculates the maximum cardinality matching
536 /// in a bipartite graph. It gives back the matching in an undirected
539 /// \param graph The bipartite graph.
540 /// \retval matching The ANodeMap of UEdges which will be set to covered
541 /// matching undirected edge.
542 /// \return The size of the matching.
543 template <typename BpUGraph, typename MatchingMap>
544 int maxBipartiteMatching(const BpUGraph& graph, MatchingMap& matching) {
545 MaxBipartiteMatching<BpUGraph> bpmatching(graph);
547 bpmatching.aMatching(matching);
548 return bpmatching.matchingSize();
551 /// \ingroup matching
553 /// \brief Maximum cardinality bipartite matching
555 /// This function calculates the maximum cardinality matching
556 /// in a bipartite graph. It gives back the matching in an undirected
559 /// \param graph The bipartite graph.
560 /// \retval matching The ANodeMap of UEdges which will be set to covered
561 /// matching undirected edge.
562 /// \retval barrier The BNodeMap of bools which will be set to a barrier
563 /// of the BNode-set.
564 /// \return The size of the matching.
565 template <typename BpUGraph, typename MatchingMap, typename BarrierMap>
566 int maxBipartiteMatching(const BpUGraph& graph,
567 MatchingMap& matching, BarrierMap& barrier) {
568 MaxBipartiteMatching<BpUGraph> bpmatching(graph);
570 bpmatching.aMatching(matching);
571 bpmatching.bBarrier(barrier);
572 return bpmatching.matchingSize();
575 /// \brief Default traits class for weighted bipartite matching algoritms.
577 /// Default traits class for weighted bipartite matching algoritms.
578 /// \param _BpUGraph The bipartite undirected graph type.
579 /// \param _WeightMap Type of weight map.
580 template <typename _BpUGraph, typename _WeightMap>
581 struct MaxWeightedBipartiteMatchingDefaultTraits {
582 /// \brief The type of the weight of the undirected edges.
583 typedef typename _WeightMap::Value Value;
585 /// The undirected bipartite graph type the algorithm runs on.
586 typedef _BpUGraph BpUGraph;
588 /// The map of the edges weights
589 typedef _WeightMap WeightMap;
591 /// \brief The cross reference type used by heap.
593 /// The cross reference type used by heap.
594 /// Usually it is \c Graph::ANodeMap<int>.
595 typedef typename BpUGraph::template ANodeMap<int> HeapCrossRef;
597 /// \brief Instantiates a HeapCrossRef.
599 /// This function instantiates a \ref HeapCrossRef.
600 /// \param graph is the graph, to which we would like to define the
602 static HeapCrossRef *createHeapCrossRef(const BpUGraph &graph) {
603 return new HeapCrossRef(graph);
606 /// \brief The heap type used by weighted matching algorithms.
608 /// The heap type used by weighted matching algorithms. It should
609 /// minimize the priorities and the heap's key type is the graph's
610 /// anode graph's node.
613 typedef BinHeap<Value, HeapCrossRef> Heap;
615 /// \brief Instantiates a Heap.
617 /// This function instantiates a \ref Heap.
618 /// \param crossref The cross reference of the heap.
619 static Heap *createHeap(HeapCrossRef& crossref) {
620 return new Heap(crossref);
626 /// \ingroup matching
628 /// \brief Bipartite Max Weighted Matching algorithm
630 /// This class implements the bipartite Max Weighted Matching
631 /// algorithm. It uses the successive shortest path algorithm to
632 /// calculate the maximum weighted matching in the bipartite
633 /// graph. The algorithm can be used also to calculate the maximum
634 /// cardinality maximum weighted matching. The time complexity
635 /// of the algorithm is \f$ O(ne\log(n)) \f$ with the default binary
636 /// heap implementation but this can be improved to
637 /// \f$ O(n^2\log(n)+ne) \f$ if we use fibonacci heaps.
639 /// The algorithm also provides a potential function on the nodes
640 /// which a dual solution of the matching algorithm and it can be
641 /// used to proof the optimality of the given pimal solution.
643 template <typename _BpUGraph, typename _WeightMap, typename _Traits>
645 template <typename _BpUGraph,
646 typename _WeightMap = typename _BpUGraph::template UEdgeMap<int>,
648 MaxWeightedBipartiteMatchingDefaultTraits<_BpUGraph, _WeightMap> >
650 class MaxWeightedBipartiteMatching {
653 typedef _Traits Traits;
654 typedef typename Traits::BpUGraph BpUGraph;
655 typedef typename Traits::WeightMap WeightMap;
656 typedef typename Traits::Value Value;
660 typedef typename Traits::HeapCrossRef HeapCrossRef;
661 typedef typename Traits::Heap Heap;
664 typedef typename BpUGraph::Node Node;
665 typedef typename BpUGraph::ANodeIt ANodeIt;
666 typedef typename BpUGraph::BNodeIt BNodeIt;
667 typedef typename BpUGraph::UEdge UEdge;
668 typedef typename BpUGraph::UEdgeIt UEdgeIt;
669 typedef typename BpUGraph::IncEdgeIt IncEdgeIt;
671 typedef typename BpUGraph::template ANodeMap<UEdge> ANodeMatchingMap;
672 typedef typename BpUGraph::template BNodeMap<UEdge> BNodeMatchingMap;
674 typedef typename BpUGraph::template ANodeMap<Value> ANodePotentialMap;
675 typedef typename BpUGraph::template BNodeMap<Value> BNodePotentialMap;
680 /// \brief \ref Exception for uninitialized parameters.
682 /// This error represents problems in the initialization
683 /// of the parameters of the algorithms.
684 class UninitializedParameter : public lemon::UninitializedParameter {
686 virtual const char* what() const throw() {
687 return "lemon::MaxWeightedBipartiteMatching::UninitializedParameter";
691 ///\name Named template parameters
695 template <class H, class CR>
696 struct DefHeapTraits : public Traits {
697 typedef CR HeapCrossRef;
699 static HeapCrossRef *createHeapCrossRef(const BpUGraph &) {
700 throw UninitializedParameter();
702 static Heap *createHeap(HeapCrossRef &) {
703 throw UninitializedParameter();
707 /// \brief \ref named-templ-param "Named parameter" for setting heap
708 /// and cross reference type
710 /// \ref named-templ-param "Named parameter" for setting heap and cross
712 template <class H, class CR = typename BpUGraph::template NodeMap<int> >
714 : public MaxWeightedBipartiteMatching<BpUGraph, WeightMap,
715 DefHeapTraits<H, CR> > {
716 typedef MaxWeightedBipartiteMatching<BpUGraph, WeightMap,
717 DefHeapTraits<H, CR> > Create;
720 template <class H, class CR>
721 struct DefStandardHeapTraits : public Traits {
722 typedef CR HeapCrossRef;
724 static HeapCrossRef *createHeapCrossRef(const BpUGraph &graph) {
725 return new HeapCrossRef(graph);
727 static Heap *createHeap(HeapCrossRef &crossref) {
728 return new Heap(crossref);
732 /// \brief \ref named-templ-param "Named parameter" for setting heap and
733 /// cross reference type with automatic allocation
735 /// \ref named-templ-param "Named parameter" for setting heap and cross
736 /// reference type. It can allocate the heap and the cross reference
737 /// object if the cross reference's constructor waits for the graph as
738 /// parameter and the heap's constructor waits for the cross reference.
739 template <class H, class CR = typename BpUGraph::template NodeMap<int> >
740 struct DefStandardHeap
741 : public MaxWeightedBipartiteMatching<BpUGraph, WeightMap,
742 DefStandardHeapTraits<H, CR> > {
743 typedef MaxWeightedBipartiteMatching<BpUGraph, WeightMap,
744 DefStandardHeapTraits<H, CR> >
751 /// \brief Constructor.
753 /// Constructor of the algorithm.
754 MaxWeightedBipartiteMatching(const BpUGraph& _graph,
755 const WeightMap& _weight)
756 : graph(&_graph), weight(&_weight),
757 anode_matching(_graph), bnode_matching(_graph),
758 anode_potential(_graph), bnode_potential(_graph),
759 _heap_cross_ref(0), local_heap_cross_ref(false),
760 _heap(0), local_heap(0) {}
762 /// \brief Destructor.
764 /// Destructor of the algorithm.
765 ~MaxWeightedBipartiteMatching() {
769 /// \brief Sets the heap and the cross reference used by algorithm.
771 /// Sets the heap and the cross reference used by algorithm.
772 /// If you don't use this function before calling \ref run(),
773 /// it will allocate one. The destuctor deallocates this
774 /// automatically allocated map, of course.
775 /// \return \c (*this)
776 MaxWeightedBipartiteMatching& heap(Heap& hp, HeapCrossRef &cr) {
777 if(local_heap_cross_ref) {
778 delete _heap_cross_ref;
779 local_heap_cross_ref = false;
781 _heap_cross_ref = &cr;
790 /// \name Execution control
791 /// The simplest way to execute the algorithm is to use
792 /// one of the member functions called \c run().
794 /// If you need more control on the execution,
795 /// first you must call \ref init() or one alternative for it.
796 /// Finally \ref start() will perform the matching computation or
797 /// with step-by-step execution you can augment the solution.
801 /// \brief Initalize the data structures.
803 /// It initalizes the data structures and creates an empty matching.
806 for (ANodeIt it(*graph); it != INVALID; ++it) {
807 anode_matching[it] = INVALID;
808 anode_potential[it] = 0;
810 for (BNodeIt it(*graph); it != INVALID; ++it) {
811 bnode_matching[it] = INVALID;
812 bnode_potential[it] = 0;
813 for (IncEdgeIt jt(*graph, it); jt != INVALID; ++jt) {
814 if ((*weight)[jt] > bnode_potential[it]) {
815 bnode_potential[it] = (*weight)[jt];
824 /// \brief An augmenting phase of the weighted matching algorithm
826 /// It runs an augmenting phase of the weighted matching
827 /// algorithm. This phase finds the best augmenting path and
828 /// augments only on this paths.
830 /// The algorithm consists at most
831 /// of \f$ O(n) \f$ phase and one phase is \f$ O(n\log(n)+e) \f$
832 /// long with Fibonacci heap or \f$ O((n+e)\log(n)) \f$ long
833 /// with binary heap.
834 /// \param decrease If the given parameter true the matching value
835 /// can be decreased in the augmenting phase. If we would like
836 /// to calculate the maximum cardinality maximum weighted matching
837 /// then we should let the algorithm to decrease the matching
838 /// value in order to increase the number of the matching edges.
839 bool augment(bool decrease = false) {
841 typename BpUGraph::template BNodeMap<Value> bdist(*graph);
842 typename BpUGraph::template BNodeMap<UEdge> bpred(*graph, INVALID);
844 Node bestNode = INVALID;
848 for (ANodeIt it(*graph); it != INVALID; ++it) {
849 (*_heap_cross_ref)[it] = Heap::PRE_HEAP;
852 for (ANodeIt it(*graph); it != INVALID; ++it) {
853 if (anode_matching[it] == INVALID) {
859 while (!_heap->empty()) {
860 Node anode = _heap->top();
861 Value avalue = _heap->prio();
863 for (IncEdgeIt jt(*graph, anode); jt != INVALID; ++jt) {
864 if (jt == anode_matching[anode]) continue;
865 Node bnode = graph->bNode(jt);
866 Value bvalue = avalue - (*weight)[jt] +
867 anode_potential[anode] + bnode_potential[bnode];
868 if (bvalue > bdistMax) {
871 if (bpred[bnode] == INVALID || bvalue < bdist[bnode]) {
872 bdist[bnode] = bvalue;
875 if (bnode_matching[bnode] != INVALID) {
876 Node newanode = graph->aNode(bnode_matching[bnode]);
877 switch (_heap->state(newanode)) {
879 _heap->push(newanode, bvalue);
882 if (bvalue < (*_heap)[newanode]) {
883 _heap->decrease(newanode, bvalue);
886 case Heap::POST_HEAP:
890 if (bestNode == INVALID ||
891 bnode_potential[bnode] - bvalue > bestValue) {
892 bestValue = bnode_potential[bnode] - bvalue;
899 if (bestNode == INVALID || (!decrease && bestValue < 0)) {
903 matching_value += bestValue;
906 for (BNodeIt it(*graph); it != INVALID; ++it) {
907 if (bpred[it] != INVALID) {
908 bnode_potential[it] -= bdist[it];
910 bnode_potential[it] -= bdistMax;
913 for (ANodeIt it(*graph); it != INVALID; ++it) {
914 if (anode_matching[it] != INVALID) {
915 Node bnode = graph->bNode(anode_matching[it]);
916 if (bpred[bnode] != INVALID) {
917 anode_potential[it] += bdist[bnode];
919 anode_potential[it] += bdistMax;
924 while (bestNode != INVALID) {
925 UEdge uedge = bpred[bestNode];
926 Node anode = graph->aNode(uedge);
928 bnode_matching[bestNode] = uedge;
929 if (anode_matching[anode] != INVALID) {
930 bestNode = graph->bNode(anode_matching[anode]);
934 anode_matching[anode] = uedge;
941 /// \brief Starts the algorithm.
943 /// Starts the algorithm. It runs augmenting phases until the
944 /// optimal solution reached.
946 /// \param maxCardinality If the given value is true it will
947 /// calculate the maximum cardinality maximum matching instead of
948 /// the maximum matching.
949 void start(bool maxCardinality = false) {
950 while (augment(maxCardinality)) {}
953 /// \brief Runs the algorithm.
955 /// It just initalize the algorithm and then start it.
957 /// \param maxCardinality If the given value is true it will
958 /// calculate the maximum cardinality maximum matching instead of
959 /// the maximum matching.
960 void run(bool maxCardinality = false) {
962 start(maxCardinality);
967 /// \name Query Functions
968 /// The result of the %Matching algorithm can be obtained using these
970 /// Before the use of these functions,
971 /// either run() or start() must be called.
975 /// \brief Gives back the potential in the NodeMap
977 /// Gives back the potential in the NodeMap. The matching is optimal
978 /// with the current number of edges if \f$ \pi(a) + \pi(b) - w(ab) = 0 \f$
979 /// for each matching edges and \f$ \pi(a) + \pi(b) - w(ab) \ge 0 \f$
981 template <typename PotentialMap>
982 void potential(PotentialMap& pt) const {
983 for (ANodeIt it(*graph); it != INVALID; ++it) {
984 pt.set(it, anode_potential[it]);
986 for (BNodeIt it(*graph); it != INVALID; ++it) {
987 pt.set(it, bnode_potential[it]);
991 /// \brief Set true all matching uedge in the map.
993 /// Set true all matching uedge in the map. It does not change the
994 /// value mapped to the other uedges.
995 /// \return The number of the matching edges.
996 template <typename MatchingMap>
997 int quickMatching(MatchingMap& mm) const {
998 for (ANodeIt it(*graph); it != INVALID; ++it) {
999 if (anode_matching[it] != INVALID) {
1000 mm.set(anode_matching[it], true);
1003 return matching_size;
1006 /// \brief Set true all matching uedge in the map and the others to false.
1008 /// Set true all matching uedge in the map and the others to false.
1009 /// \return The number of the matching edges.
1010 template <typename MatchingMap>
1011 int matching(MatchingMap& mm) const {
1012 for (UEdgeIt it(*graph); it != INVALID; ++it) {
1013 mm.set(it, it == anode_matching[graph->aNode(it)]);
1015 return matching_size;
1018 ///Gives back the matching in an ANodeMap.
1020 ///Gives back the matching in an ANodeMap. The parameter should
1021 ///be a write ANodeMap of UEdge values.
1022 ///\return The number of the matching edges.
1023 template<class MatchingMap>
1024 int aMatching(MatchingMap& mm) const {
1025 for (ANodeIt it(*graph); it != INVALID; ++it) {
1026 mm.set(it, anode_matching[it]);
1028 return matching_size;
1031 ///Gives back the matching in a BNodeMap.
1033 ///Gives back the matching in a BNodeMap. The parameter should
1034 ///be a write BNodeMap of UEdge values.
1035 ///\return The number of the matching edges.
1036 template<class MatchingMap>
1037 int bMatching(MatchingMap& mm) const {
1038 for (BNodeIt it(*graph); it != INVALID; ++it) {
1039 mm.set(it, bnode_matching[it]);
1041 return matching_size;
1045 /// \brief Return true if the given uedge is in the matching.
1047 /// It returns true if the given uedge is in the matching.
1048 bool matchingEdge(const UEdge& edge) const {
1049 return anode_matching[graph->aNode(edge)] == edge;
1052 /// \brief Returns the matching edge from the node.
1054 /// Returns the matching edge from the node. If there is not such
1055 /// edge it gives back \c INVALID.
1056 UEdge matchingEdge(const Node& node) const {
1057 if (graph->aNode(node)) {
1058 return anode_matching[node];
1060 return bnode_matching[node];
1064 /// \brief Gives back the sum of weights of the matching edges.
1066 /// Gives back the sum of weights of the matching edges.
1067 Value matchingValue() const {
1068 return matching_value;
1071 /// \brief Gives back the number of the matching edges.
1073 /// Gives back the number of the matching edges.
1074 int matchingSize() const {
1075 return matching_size;
1082 void initStructures() {
1083 if (!_heap_cross_ref) {
1084 local_heap_cross_ref = true;
1085 _heap_cross_ref = Traits::createHeapCrossRef(*graph);
1089 _heap = Traits::createHeap(*_heap_cross_ref);
1093 void destroyStructures() {
1094 if (local_heap_cross_ref) delete _heap_cross_ref;
1095 if (local_heap) delete _heap;
1101 const BpUGraph *graph;
1102 const WeightMap* weight;
1104 ANodeMatchingMap anode_matching;
1105 BNodeMatchingMap bnode_matching;
1107 ANodePotentialMap anode_potential;
1108 BNodePotentialMap bnode_potential;
1110 Value matching_value;
1113 HeapCrossRef *_heap_cross_ref;
1114 bool local_heap_cross_ref;
1121 /// \ingroup matching
1123 /// \brief Maximum weighted bipartite matching
1125 /// This function calculates the maximum weighted matching
1126 /// in a bipartite graph. It gives back the matching in an undirected
1129 /// \param graph The bipartite graph.
1130 /// \param weight The undirected edge map which contains the weights.
1131 /// \retval matching The undirected edge map which will be set to
1133 /// \return The value of the matching.
1134 template <typename BpUGraph, typename WeightMap, typename MatchingMap>
1135 typename WeightMap::Value
1136 maxWeightedBipartiteMatching(const BpUGraph& graph, const WeightMap& weight,
1137 MatchingMap& matching) {
1138 MaxWeightedBipartiteMatching<BpUGraph, WeightMap>
1139 bpmatching(graph, weight);
1141 bpmatching.matching(matching);
1142 return bpmatching.matchingValue();
1145 /// \ingroup matching
1147 /// \brief Maximum weighted maximum cardinality bipartite matching
1149 /// This function calculates the maximum weighted of the maximum cardinality
1150 /// matchings of a bipartite graph. It gives back the matching in an
1151 /// undirected edge map.
1153 /// \param graph The bipartite graph.
1154 /// \param weight The undirected edge map which contains the weights.
1155 /// \retval matching The undirected edge map which will be set to
1157 /// \return The value of the matching.
1158 template <typename BpUGraph, typename WeightMap, typename MatchingMap>
1159 typename WeightMap::Value
1160 maxWeightedMaxBipartiteMatching(const BpUGraph& graph,
1161 const WeightMap& weight,
1162 MatchingMap& matching) {
1163 MaxWeightedBipartiteMatching<BpUGraph, WeightMap>
1164 bpmatching(graph, weight);
1165 bpmatching.run(true);
1166 bpmatching.matching(matching);
1167 return bpmatching.matchingValue();
1170 /// \brief Default traits class for minimum cost bipartite matching
1173 /// Default traits class for minimum cost bipartite matching
1176 /// \param _BpUGraph The bipartite undirected graph
1179 /// \param _CostMap Type of cost map.
1180 template <typename _BpUGraph, typename _CostMap>
1181 struct MinCostMaxBipartiteMatchingDefaultTraits {
1182 /// \brief The type of the cost of the undirected edges.
1183 typedef typename _CostMap::Value Value;
1185 /// The undirected bipartite graph type the algorithm runs on.
1186 typedef _BpUGraph BpUGraph;
1188 /// The map of the edges costs
1189 typedef _CostMap CostMap;
1191 /// \brief The cross reference type used by heap.
1193 /// The cross reference type used by heap.
1194 /// Usually it is \c Graph::NodeMap<int>.
1195 typedef typename BpUGraph::template NodeMap<int> HeapCrossRef;
1197 /// \brief Instantiates a HeapCrossRef.
1199 /// This function instantiates a \ref HeapCrossRef.
1200 /// \param graph is the graph, to which we would like to define the
1202 static HeapCrossRef *createHeapCrossRef(const BpUGraph &graph) {
1203 return new HeapCrossRef(graph);
1206 /// \brief The heap type used by costed matching algorithms.
1208 /// The heap type used by costed matching algorithms. It should
1209 /// minimize the priorities and the heap's key type is the graph's
1210 /// anode graph's node.
1213 typedef BinHeap<Value, HeapCrossRef> Heap;
1215 /// \brief Instantiates a Heap.
1217 /// This function instantiates a \ref Heap.
1218 /// \param crossref The cross reference of the heap.
1219 static Heap *createHeap(HeapCrossRef& crossref) {
1220 return new Heap(crossref);
1226 /// \ingroup matching
1228 /// \brief Bipartite Min Cost Matching algorithm
1230 /// This class implements the bipartite Min Cost Matching algorithm.
1231 /// It uses the successive shortest path algorithm to calculate the
1232 /// minimum cost maximum matching in the bipartite graph. The time
1233 /// complexity of the algorithm is \f$ O(ne\log(n)) \f$ with the
1234 /// default binary heap implementation but this can be improved to
1235 /// \f$ O(n^2\log(n)+ne) \f$ if we use fibonacci heaps.
1237 /// The algorithm also provides a potential function on the nodes
1238 /// which a dual solution of the matching algorithm and it can be
1239 /// used to proof the optimality of the given pimal solution.
1241 template <typename _BpUGraph, typename _CostMap, typename _Traits>
1243 template <typename _BpUGraph,
1244 typename _CostMap = typename _BpUGraph::template UEdgeMap<int>,
1246 MinCostMaxBipartiteMatchingDefaultTraits<_BpUGraph, _CostMap> >
1248 class MinCostMaxBipartiteMatching {
1251 typedef _Traits Traits;
1252 typedef typename Traits::BpUGraph BpUGraph;
1253 typedef typename Traits::CostMap CostMap;
1254 typedef typename Traits::Value Value;
1258 typedef typename Traits::HeapCrossRef HeapCrossRef;
1259 typedef typename Traits::Heap Heap;
1262 typedef typename BpUGraph::Node Node;
1263 typedef typename BpUGraph::ANodeIt ANodeIt;
1264 typedef typename BpUGraph::BNodeIt BNodeIt;
1265 typedef typename BpUGraph::UEdge UEdge;
1266 typedef typename BpUGraph::UEdgeIt UEdgeIt;
1267 typedef typename BpUGraph::IncEdgeIt IncEdgeIt;
1269 typedef typename BpUGraph::template ANodeMap<UEdge> ANodeMatchingMap;
1270 typedef typename BpUGraph::template BNodeMap<UEdge> BNodeMatchingMap;
1272 typedef typename BpUGraph::template ANodeMap<Value> ANodePotentialMap;
1273 typedef typename BpUGraph::template BNodeMap<Value> BNodePotentialMap;
1278 /// \brief \ref Exception for uninitialized parameters.
1280 /// This error represents problems in the initialization
1281 /// of the parameters of the algorithms.
1282 class UninitializedParameter : public lemon::UninitializedParameter {
1284 virtual const char* what() const throw() {
1285 return "lemon::MinCostMaxBipartiteMatching::UninitializedParameter";
1289 ///\name Named template parameters
1293 template <class H, class CR>
1294 struct DefHeapTraits : public Traits {
1295 typedef CR HeapCrossRef;
1297 static HeapCrossRef *createHeapCrossRef(const BpUGraph &) {
1298 throw UninitializedParameter();
1300 static Heap *createHeap(HeapCrossRef &) {
1301 throw UninitializedParameter();
1305 /// \brief \ref named-templ-param "Named parameter" for setting heap
1306 /// and cross reference type
1308 /// \ref named-templ-param "Named parameter" for setting heap and cross
1310 template <class H, class CR = typename BpUGraph::template NodeMap<int> >
1312 : public MinCostMaxBipartiteMatching<BpUGraph, CostMap,
1313 DefHeapTraits<H, CR> > {
1314 typedef MinCostMaxBipartiteMatching<BpUGraph, CostMap,
1315 DefHeapTraits<H, CR> > Create;
1318 template <class H, class CR>
1319 struct DefStandardHeapTraits : public Traits {
1320 typedef CR HeapCrossRef;
1322 static HeapCrossRef *createHeapCrossRef(const BpUGraph &graph) {
1323 return new HeapCrossRef(graph);
1325 static Heap *createHeap(HeapCrossRef &crossref) {
1326 return new Heap(crossref);
1330 /// \brief \ref named-templ-param "Named parameter" for setting heap and
1331 /// cross reference type with automatic allocation
1333 /// \ref named-templ-param "Named parameter" for setting heap and cross
1334 /// reference type. It can allocate the heap and the cross reference
1335 /// object if the cross reference's constructor waits for the graph as
1336 /// parameter and the heap's constructor waits for the cross reference.
1337 template <class H, class CR = typename BpUGraph::template NodeMap<int> >
1338 struct DefStandardHeap
1339 : public MinCostMaxBipartiteMatching<BpUGraph, CostMap,
1340 DefStandardHeapTraits<H, CR> > {
1341 typedef MinCostMaxBipartiteMatching<BpUGraph, CostMap,
1342 DefStandardHeapTraits<H, CR> >
1349 /// \brief Constructor.
1351 /// Constructor of the algorithm.
1352 MinCostMaxBipartiteMatching(const BpUGraph& _graph,
1353 const CostMap& _cost)
1354 : graph(&_graph), cost(&_cost),
1355 anode_matching(_graph), bnode_matching(_graph),
1356 anode_potential(_graph), bnode_potential(_graph),
1357 _heap_cross_ref(0), local_heap_cross_ref(false),
1358 _heap(0), local_heap(0) {}
1360 /// \brief Destructor.
1362 /// Destructor of the algorithm.
1363 ~MinCostMaxBipartiteMatching() {
1364 destroyStructures();
1367 /// \brief Sets the heap and the cross reference used by algorithm.
1369 /// Sets the heap and the cross reference used by algorithm.
1370 /// If you don't use this function before calling \ref run(),
1371 /// it will allocate one. The destuctor deallocates this
1372 /// automatically allocated map, of course.
1373 /// \return \c (*this)
1374 MinCostMaxBipartiteMatching& heap(Heap& hp, HeapCrossRef &cr) {
1375 if(local_heap_cross_ref) {
1376 delete _heap_cross_ref;
1377 local_heap_cross_ref = false;
1379 _heap_cross_ref = &cr;
1388 /// \name Execution control
1389 /// The simplest way to execute the algorithm is to use
1390 /// one of the member functions called \c run().
1392 /// If you need more control on the execution,
1393 /// first you must call \ref init() or one alternative for it.
1394 /// Finally \ref start() will perform the matching computation or
1395 /// with step-by-step execution you can augment the solution.
1399 /// \brief Initalize the data structures.
1401 /// It initalizes the data structures and creates an empty matching.
1404 for (ANodeIt it(*graph); it != INVALID; ++it) {
1405 anode_matching[it] = INVALID;
1406 anode_potential[it] = 0;
1408 for (BNodeIt it(*graph); it != INVALID; ++it) {
1409 bnode_matching[it] = INVALID;
1410 bnode_potential[it] = 0;
1417 /// \brief An augmenting phase of the costed matching algorithm
1419 /// It runs an augmenting phase of the matching algorithm. The
1420 /// phase finds the best augmenting path and augments only on this
1423 /// The algorithm consists at most
1424 /// of \f$ O(n) \f$ phase and one phase is \f$ O(n\log(n)+e) \f$
1425 /// long with Fibonacci heap or \f$ O((n+e)\log(n)) \f$ long
1426 /// with binary heap.
1429 typename BpUGraph::template BNodeMap<Value> bdist(*graph);
1430 typename BpUGraph::template BNodeMap<UEdge> bpred(*graph, INVALID);
1432 Node bestNode = INVALID;
1433 Value bestValue = 0;
1436 for (ANodeIt it(*graph); it != INVALID; ++it) {
1437 (*_heap_cross_ref)[it] = Heap::PRE_HEAP;
1440 for (ANodeIt it(*graph); it != INVALID; ++it) {
1441 if (anode_matching[it] == INVALID) {
1447 while (!_heap->empty()) {
1448 Node anode = _heap->top();
1449 Value avalue = _heap->prio();
1451 for (IncEdgeIt jt(*graph, anode); jt != INVALID; ++jt) {
1452 if (jt == anode_matching[anode]) continue;
1453 Node bnode = graph->bNode(jt);
1454 Value bvalue = avalue + (*cost)[jt] +
1455 anode_potential[anode] - bnode_potential[bnode];
1456 if (bvalue > bdistMax) {
1459 if (bpred[bnode] == INVALID || bvalue < bdist[bnode]) {
1460 bdist[bnode] = bvalue;
1463 if (bnode_matching[bnode] != INVALID) {
1464 Node newanode = graph->aNode(bnode_matching[bnode]);
1465 switch (_heap->state(newanode)) {
1466 case Heap::PRE_HEAP:
1467 _heap->push(newanode, bvalue);
1470 if (bvalue < (*_heap)[newanode]) {
1471 _heap->decrease(newanode, bvalue);
1474 case Heap::POST_HEAP:
1478 if (bestNode == INVALID ||
1479 bvalue + bnode_potential[bnode] < bestValue) {
1480 bestValue = bvalue + bnode_potential[bnode];
1487 if (bestNode == INVALID) {
1491 matching_cost += bestValue;
1494 for (BNodeIt it(*graph); it != INVALID; ++it) {
1495 if (bpred[it] != INVALID) {
1496 bnode_potential[it] += bdist[it];
1498 bnode_potential[it] += bdistMax;
1501 for (ANodeIt it(*graph); it != INVALID; ++it) {
1502 if (anode_matching[it] != INVALID) {
1503 Node bnode = graph->bNode(anode_matching[it]);
1504 if (bpred[bnode] != INVALID) {
1505 anode_potential[it] += bdist[bnode];
1507 anode_potential[it] += bdistMax;
1512 while (bestNode != INVALID) {
1513 UEdge uedge = bpred[bestNode];
1514 Node anode = graph->aNode(uedge);
1516 bnode_matching[bestNode] = uedge;
1517 if (anode_matching[anode] != INVALID) {
1518 bestNode = graph->bNode(anode_matching[anode]);
1522 anode_matching[anode] = uedge;
1529 /// \brief Starts the algorithm.
1531 /// Starts the algorithm. It runs augmenting phases until the
1532 /// optimal solution reached.
1534 while (augment()) {}
1537 /// \brief Runs the algorithm.
1539 /// It just initalize the algorithm and then start it.
1547 /// \name Query Functions
1548 /// The result of the %Matching algorithm can be obtained using these
1550 /// Before the use of these functions,
1551 /// either run() or start() must be called.
1555 /// \brief Gives back the potential in the NodeMap
1557 /// Gives back the potential in the NodeMap. The matching is optimal
1558 /// with the current number of edges if \f$ \pi(a) + \pi(b) - w(ab) = 0 \f$
1559 /// for each matching edges and \f$ \pi(a) + \pi(b) - w(ab) \ge 0 \f$
1561 template <typename PotentialMap>
1562 void potential(PotentialMap& pt) const {
1563 for (ANodeIt it(*graph); it != INVALID; ++it) {
1564 pt.set(it, anode_potential[it]);
1566 for (BNodeIt it(*graph); it != INVALID; ++it) {
1567 pt.set(it, bnode_potential[it]);
1571 /// \brief Set true all matching uedge in the map.
1573 /// Set true all matching uedge in the map. It does not change the
1574 /// value mapped to the other uedges.
1575 /// \return The number of the matching edges.
1576 template <typename MatchingMap>
1577 int quickMatching(MatchingMap& mm) const {
1578 for (ANodeIt it(*graph); it != INVALID; ++it) {
1579 if (anode_matching[it] != INVALID) {
1580 mm.set(anode_matching[it], true);
1583 return matching_size;
1586 /// \brief Set true all matching uedge in the map and the others to false.
1588 /// Set true all matching uedge in the map and the others to false.
1589 /// \return The number of the matching edges.
1590 template <typename MatchingMap>
1591 int matching(MatchingMap& mm) const {
1592 for (UEdgeIt it(*graph); it != INVALID; ++it) {
1593 mm.set(it, it == anode_matching[graph->aNode(it)]);
1595 return matching_size;
1598 /// \brief Gives back the matching in an ANodeMap.
1600 /// Gives back the matching in an ANodeMap. The parameter should
1601 /// be a write ANodeMap of UEdge values.
1602 /// \return The number of the matching edges.
1603 template<class MatchingMap>
1604 int aMatching(MatchingMap& mm) const {
1605 for (ANodeIt it(*graph); it != INVALID; ++it) {
1606 mm.set(it, anode_matching[it]);
1608 return matching_size;
1611 /// \brief Gives back the matching in a BNodeMap.
1613 /// Gives back the matching in a BNodeMap. The parameter should
1614 /// be a write BNodeMap of UEdge values.
1615 /// \return The number of the matching edges.
1616 template<class MatchingMap>
1617 int bMatching(MatchingMap& mm) const {
1618 for (BNodeIt it(*graph); it != INVALID; ++it) {
1619 mm.set(it, bnode_matching[it]);
1621 return matching_size;
1624 /// \brief Return true if the given uedge is in the matching.
1626 /// It returns true if the given uedge is in the matching.
1627 bool matchingEdge(const UEdge& edge) const {
1628 return anode_matching[graph->aNode(edge)] == edge;
1631 /// \brief Returns the matching edge from the node.
1633 /// Returns the matching edge from the node. If there is not such
1634 /// edge it gives back \c INVALID.
1635 UEdge matchingEdge(const Node& node) const {
1636 if (graph->aNode(node)) {
1637 return anode_matching[node];
1639 return bnode_matching[node];
1643 /// \brief Gives back the sum of costs of the matching edges.
1645 /// Gives back the sum of costs of the matching edges.
1646 Value matchingCost() const {
1647 return matching_cost;
1650 /// \brief Gives back the number of the matching edges.
1652 /// Gives back the number of the matching edges.
1653 int matchingSize() const {
1654 return matching_size;
1661 void initStructures() {
1662 if (!_heap_cross_ref) {
1663 local_heap_cross_ref = true;
1664 _heap_cross_ref = Traits::createHeapCrossRef(*graph);
1668 _heap = Traits::createHeap(*_heap_cross_ref);
1672 void destroyStructures() {
1673 if (local_heap_cross_ref) delete _heap_cross_ref;
1674 if (local_heap) delete _heap;
1680 const BpUGraph *graph;
1681 const CostMap* cost;
1683 ANodeMatchingMap anode_matching;
1684 BNodeMatchingMap bnode_matching;
1686 ANodePotentialMap anode_potential;
1687 BNodePotentialMap bnode_potential;
1689 Value matching_cost;
1692 HeapCrossRef *_heap_cross_ref;
1693 bool local_heap_cross_ref;
1700 /// \ingroup matching
1702 /// \brief Minimum cost maximum cardinality bipartite matching
1704 /// This function calculates the maximum cardinality matching with
1705 /// minimum cost of a bipartite graph. It gives back the matching in
1706 /// an undirected edge map.
1708 /// \param graph The bipartite graph.
1709 /// \param cost The undirected edge map which contains the costs.
1710 /// \retval matching The undirected edge map which will be set to
1712 /// \return The cost of the matching.
1713 template <typename BpUGraph, typename CostMap, typename MatchingMap>
1714 typename CostMap::Value
1715 minCostMaxBipartiteMatching(const BpUGraph& graph,
1716 const CostMap& cost,
1717 MatchingMap& matching) {
1718 MinCostMaxBipartiteMatching<BpUGraph, CostMap>
1719 bpmatching(graph, cost);
1721 bpmatching.matching(matching);
1722 return bpmatching.matchingCost();