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* |
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*/ |
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namespace lemon { |
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/** |
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@defgroup datas Data Structures |
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This group describes the several data structures implemented in LEMON. |
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\brief Special graph-related maps. |
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This group describes maps that are specifically designed to assign |
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values to the nodes and arcs of graphs. |
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values to the nodes and arcs/edges of graphs. |
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If you are looking for the standard graph maps (\c NodeMap, \c ArcMap, |
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\c EdgeMap), see the \ref graph_concepts "Graph Structure Concepts". |
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*/ |
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/** |
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This group describes map adaptors that are used to create "implicit" |
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maps from other maps. |
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Most of them are \ref |
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Most of them are \ref concepts::ReadMap "read-only maps". |
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They can make arithmetic and logical operations between one or two maps |
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(negation, shifting, addition, multiplication, logical 'and', 'or', |
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'not' etc.) or e.g. convert a map to another one of different Value type. |
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@ingroup algs |
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\brief Common graph search algorithms. |
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This group describes the common graph search algorithms like |
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Breadth-First Search (BFS) and Depth-First Search (DFS). |
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This group describes the common graph search algorithms, namely |
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\e breadth-first \e search (BFS) and \e depth-first \e search (DFS). |
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*/ |
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/** |
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@ingroup algs |
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\brief Algorithms for finding shortest paths. |
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This group describes the algorithms for finding shortest paths in |
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This group describes the algorithms for finding shortest paths in digraphs. |
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- \ref Dijkstra algorithm for finding shortest paths from a source node |
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when all arc lengths are non-negative. |
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- \ref BellmanFord "Bellman-Ford" algorithm for finding shortest paths |
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from a source node when arc lenghts can be either positive or negative, |
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but the digraph should not contain directed cycles with negative total |
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length. |
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- \ref FloydWarshall "Floyd-Warshall" and \ref Johnson "Johnson" algorithms |
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for solving the \e all-pairs \e shortest \e paths \e problem when arc |
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lenghts can be either positive or negative, but the digraph should |
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not contain directed cycles with negative total length. |
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- \ref Suurballe A successive shortest path algorithm for finding |
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arc-disjoint paths between two nodes having minimum total length. |
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*/ |
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|
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/** |
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This group describes the algorithms for finding maximum flows and |
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feasible circulations. |
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The maximum flow problem is to find a flow between a single source and |
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a single target that is maximum. Formally, there is a \f$G=(V,A)\f$ |
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directed graph, an \f$c_a:A\rightarrow\mathbf{R}^+_0\f$ capacity |
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function and given \f$s, t \in V\f$ source and target node. The |
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maximum flow is |
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The \e maximum \e flow \e problem is to find a flow of maximum value between |
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a single source and a single target. Formally, there is a \f$G=(V,A)\f$ |
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digraph, a \f$cap:A\rightarrow\mathbf{R}^+_0\f$ capacity function and |
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\f$s, t \in V\f$ source and target nodes. |
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A maximum flow is an \f$f:A\rightarrow\mathbf{R}^+_0\f$ solution of the |
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following optimization problem. |
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\f[ 0 \le f_a \le c_a \f] |
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\f[ \sum_{v\in\delta^{-}(u)}f_{vu}=\sum_{v\in\delta^{+}(u)}f_{uv} |
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\qquad \forall u \in V \setminus \{s,t\}\f] |
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\f[ \max \sum_{v\in\delta^{+}(s)}f_{uv} - \sum_{v\in\delta^{-}(s)}f_{vu}\f] |
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\f[ \max\sum_{a\in\delta_{out}(s)}f(a) - \sum_{a\in\delta_{in}(s)}f(a) \f] |
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\f[ \sum_{a\in\delta_{out}(v)} f(a) = \sum_{a\in\delta_{in}(v)} f(a) |
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\qquad \forall v\in V\setminus\{s,t\} \f] |
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\f[ 0 \leq f(a) \leq cap(a) \qquad \forall a\in A \f] |
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LEMON contains several algorithms for solving maximum flow problems: |
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- \ref lemon::EdmondsKarp "Edmonds-Karp" |
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- \ref lemon::Preflow "Goldberg's Preflow algorithm" |
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- \ref lemon::DinitzSleatorTarjan "Dinitz's blocking flow algorithm with dynamic trees" |
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- \ref lemon::GoldbergTarjan "Preflow algorithm with dynamic trees" |
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- \ref EdmondsKarp Edmonds-Karp algorithm. |
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- \ref Preflow Goldberg-Tarjan's preflow push-relabel algorithm. |
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- \ref DinitzSleatorTarjan Dinitz's blocking flow algorithm with dynamic trees. |
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- \ref GoldbergTarjan Preflow push-relabel algorithm with dynamic trees. |
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In most cases the \ref lemon::Preflow "Preflow" algorithm provides the |
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fastest method to compute the maximum flow. All impelementations |
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provides functions to query the minimum cut, which is the dual linear |
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programming problem of the maximum flow. |
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In most cases the \ref Preflow "Preflow" algorithm provides the |
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fastest method for computing a maximum flow. All implementations |
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provides functions to also query the minimum cut, which is the dual |
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problem of the maximum flow. |
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*/ |
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/** |
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This group describes the algorithms for finding minimum cost flows and |
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circulations. |
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The \e minimum \e cost \e flow \e problem is to find a feasible flow of |
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minimum total cost from a set of supply nodes to a set of demand nodes |
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in a network with capacity constraints and arc costs. |
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Formally, let \f$G=(V,A)\f$ be a digraph, |
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\f$lower, upper: A\rightarrow\mathbf{Z}^+_0\f$ denote the lower and |
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upper bounds for the flow values on the arcs, |
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\f$cost: A\rightarrow\mathbf{Z}^+_0\f$ denotes the cost per unit flow |
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on the arcs, and |
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\f$supply: V\rightarrow\mathbf{Z}\f$ denotes the supply/demand values |
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of the nodes. |
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A minimum cost flow is an \f$f:A\rightarrow\mathbf{R}^+_0\f$ solution of |
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the following optimization problem. |
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\f[ \min\sum_{a\in A} f(a) cost(a) \f] |
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\f[ \sum_{a\in\delta_{out}(v)} f(a) - \sum_{a\in\delta_{in}(v)} f(a) = |
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supply(v) \qquad \forall v\in V \f] |
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\f[ lower(a) \leq f(a) \leq upper(a) \qquad \forall a\in A \f] |
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LEMON contains several algorithms for solving minimum cost flow problems: |
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- \ref CycleCanceling Cycle-canceling algorithms. |
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- \ref CapacityScaling Successive shortest path algorithm with optional |
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capacity scaling. |
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- \ref CostScaling Push-relabel and augment-relabel algorithms based on |
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cost scaling. |
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- \ref NetworkSimplex Primal network simplex algorithm with various |
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pivot strategies. |
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*/ |
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|
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/** |
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This group describes the algorithms for finding minimum cut in graphs. |
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The minimum cut problem is to find a non-empty and non-complete |
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\f$X\f$ subset of the vertices with minimum overall capacity on |
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outgoing arcs. Formally, there is \f$G=(V,A)\f$ directed graph, an |
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\f$c_a:A\rightarrow\mathbf{R}^+_0\f$ capacity function. The minimum |
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The \e minimum \e cut \e problem is to find a non-empty and non-complete |
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\f$X\f$ subset of the nodes with minimum overall capacity on |
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outgoing arcs. Formally, there is a \f$G=(V,A)\f$ digraph, a |
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\f$cap: A\rightarrow\mathbf{R}^+_0\f$ capacity function. The minimum |
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cut is the \f$X\f$ solution of the next optimization problem: |
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\f[ \min_{X \subset V, X\not\in \{\emptyset, V\}} |
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\sum_{uv\in A, u\in X, v\not\in X} |
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\sum_{uv\in A, u\in X, v\not\in X}cap(uv) \f] |
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LEMON contains several algorithms related to minimum cut problems: |
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- \ref lemon::HaoOrlin "Hao-Orlin algorithm" to calculate minimum cut |
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in directed graphs |
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- \ref lemon::NagamochiIbaraki "Nagamochi-Ibaraki algorithm" to |
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calculate minimum cut in undirected graphs |
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- \ref lemon::GomoryHuTree "Gomory-Hu tree computation" to calculate all |
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pairs minimum cut in undirected graphs |
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- \ref HaoOrlin "Hao-Orlin algorithm" for calculating minimum cut |
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in directed graphs. |
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- \ref NagamochiIbaraki "Nagamochi-Ibaraki algorithm" for |
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calculating minimum cut in undirected graphs. |
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- \ref GomoryHuTree "Gomory-Hu tree computation" for calculating |
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all-pairs minimum cut in undirected graphs. |
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If you want to find minimum cut just between two distinict nodes, |
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see the \ref max_flow "maximum flow problem". |
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*/ |
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/** |
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There are several different algorithms for calculate matchings in |
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graphs. The matching problems in bipartite graphs are generally |
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easier than in general graphs. The goal of the matching optimization |
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can be |
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can be finding maximum cardinality, maximum weight or minimum cost |
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matching. The search can be constrained to find perfect or |
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maximum cardinality matching. |
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LEMON contains the next algorithms: |
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- \ref lemon::MaxBipartiteMatching "MaxBipartiteMatching" Hopcroft-Karp |
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augmenting path algorithm for calculate maximum cardinality matching in |
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bipartite graphs |
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- \ref lemon::PrBipartiteMatching "PrBipartiteMatching" Push-Relabel |
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algorithm for calculate maximum cardinality matching in bipartite graphs |
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- \ref lemon::MaxWeightedBipartiteMatching "MaxWeightedBipartiteMatching" |
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Successive shortest path algorithm for calculate maximum weighted matching |
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and maximum weighted bipartite matching in bipartite graph |
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- \ref lemon::MinCostMaxBipartiteMatching "MinCostMaxBipartiteMatching" |
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Successive shortest path algorithm for calculate minimum cost maximum |
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matching in bipartite graph |
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- \ref lemon::MaxMatching "MaxMatching" Edmond's blossom shrinking algorithm |
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for calculate maximum cardinality matching in general graph |
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- \ref lemon::MaxWeightedMatching "MaxWeightedMatching" Edmond's blossom |
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shrinking algorithm for calculate maximum weighted matching in general |
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graph |
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- \ref lemon::MaxWeightedPerfectMatching "MaxWeightedPerfectMatching" |
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Edmond's blossom shrinking algorithm for calculate maximum weighted |
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perfect matching in general graph |
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The matching algorithms implemented in LEMON: |
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- \ref MaxBipartiteMatching Hopcroft-Karp augmenting path algorithm |
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for calculating maximum cardinality matching in bipartite graphs. |
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- \ref PrBipartiteMatching Push-relabel algorithm |
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for calculating maximum cardinality matching in bipartite graphs. |
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- \ref MaxWeightedBipartiteMatching |
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Successive shortest path algorithm for calculating maximum weighted |
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matching and maximum weighted bipartite matching in bipartite graphs. |
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- \ref MinCostMaxBipartiteMatching |
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Successive shortest path algorithm for calculating minimum cost maximum |
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matching in bipartite graphs. |
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- \ref MaxMatching Edmond's blossom shrinking algorithm for calculating |
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maximum cardinality matching in general graphs. |
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- \ref MaxWeightedMatching Edmond's blossom shrinking algorithm for calculating |
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maximum weighted matching in general graphs. |
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- \ref MaxWeightedPerfectMatching |
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Edmond's blossom shrinking algorithm for calculating maximum weighted |
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perfect matching in general graphs. |
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\image html bipartite_matching.png |
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\image latex bipartite_matching.eps "Bipartite Matching" width=\textwidth |
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\brief Algorithms for finding a minimum cost spanning tree in a graph. |
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This group describes the algorithms for finding a minimum cost spanning |
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tree in a graph |
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tree in a graph. |
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*/ |
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/** |
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/** |
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\anchor demoprograms |
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@defgroup demos Demo |
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@defgroup demos Demo Programs |
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Some demo programs are listed here. Their full source codes can be found in |
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the \c demo subdirectory of the source tree. |
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*/ |
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|
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/** |
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@defgroup tools Standalone |
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@defgroup tools Standalone Utility Applications |
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Some utility applications are listed here. |
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|
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them, as well. |
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*/ |
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} |
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