1 | // Copyright 2004 The Trustees of Indiana University.
|
---|
2 |
|
---|
3 | // Use, modification and distribution is subject to the Boost Software
|
---|
4 | // License, Version 1.0. (See accompanying file LICENSE_1_0.txt or copy at
|
---|
5 | // http://www.boost.org/LICENSE_1_0.txt)
|
---|
6 |
|
---|
7 | // Authors: Douglas Gregor
|
---|
8 | // Andrew Lumsdaine
|
---|
9 | #ifndef BOOST_GRAPH_BETWEENNESS_CENTRALITY_CLUSTERING_HPP
|
---|
10 | #define BOOST_GRAPH_BETWEENNESS_CENTRALITY_CLUSTERING_HPP
|
---|
11 |
|
---|
12 | #include <boost/graph/betweenness_centrality.hpp>
|
---|
13 | #include <boost/graph/graph_traits.hpp>
|
---|
14 | #include <boost/pending/indirect_cmp.hpp>
|
---|
15 | #include <algorithm>
|
---|
16 | #include <vector>
|
---|
17 | #include <boost/property_map.hpp>
|
---|
18 |
|
---|
19 | namespace boost {
|
---|
20 |
|
---|
21 | /** Threshold termination function for the betweenness centrality
|
---|
22 | * clustering algorithm.
|
---|
23 | */
|
---|
24 | template<typename T>
|
---|
25 | struct bc_clustering_threshold
|
---|
26 | {
|
---|
27 | typedef T centrality_type;
|
---|
28 |
|
---|
29 | /// Terminate clustering when maximum absolute edge centrality is
|
---|
30 | /// below the given threshold.
|
---|
31 | explicit bc_clustering_threshold(T threshold)
|
---|
32 | : threshold(threshold), dividend(1.0) {}
|
---|
33 |
|
---|
34 | /**
|
---|
35 | * Terminate clustering when the maximum edge centrality is below
|
---|
36 | * the given threshold.
|
---|
37 | *
|
---|
38 | * @param threshold the threshold value
|
---|
39 | *
|
---|
40 | * @param g the graph on which the threshold will be calculated
|
---|
41 | *
|
---|
42 | * @param normalize when true, the threshold is compared against the
|
---|
43 | * normalized edge centrality based on the input graph; otherwise,
|
---|
44 | * the threshold is compared against the absolute edge centrality.
|
---|
45 | */
|
---|
46 | template<typename Graph>
|
---|
47 | bc_clustering_threshold(T threshold, const Graph& g, bool normalize = true)
|
---|
48 | : threshold(threshold), dividend(1.0)
|
---|
49 | {
|
---|
50 | if (normalize) {
|
---|
51 | typename graph_traits<Graph>::vertices_size_type n = num_vertices(g);
|
---|
52 | dividend = T((n - 1) * (n - 2)) / T(2);
|
---|
53 | }
|
---|
54 | }
|
---|
55 |
|
---|
56 | /** Returns true when the given maximum edge centrality (potentially
|
---|
57 | * normalized) falls below the threshold.
|
---|
58 | */
|
---|
59 | template<typename Graph, typename Edge>
|
---|
60 | bool operator()(T max_centrality, Edge, const Graph&)
|
---|
61 | {
|
---|
62 | return (max_centrality / dividend) < threshold;
|
---|
63 | }
|
---|
64 |
|
---|
65 | protected:
|
---|
66 | T threshold;
|
---|
67 | T dividend;
|
---|
68 | };
|
---|
69 |
|
---|
70 | /** Graph clustering based on edge betweenness centrality.
|
---|
71 | *
|
---|
72 | * This algorithm implements graph clustering based on edge
|
---|
73 | * betweenness centrality. It is an iterative algorithm, where in each
|
---|
74 | * step it compute the edge betweenness centrality (via @ref
|
---|
75 | * brandes_betweenness_centrality) and removes the edge with the
|
---|
76 | * maximum betweenness centrality. The @p done function object
|
---|
77 | * determines when the algorithm terminates (the edge found when the
|
---|
78 | * algorithm terminates will not be removed).
|
---|
79 | *
|
---|
80 | * @param g The graph on which clustering will be performed. The type
|
---|
81 | * of this parameter (@c MutableGraph) must be a model of the
|
---|
82 | * VertexListGraph, IncidenceGraph, EdgeListGraph, and Mutable Graph
|
---|
83 | * concepts.
|
---|
84 | *
|
---|
85 | * @param done The function object that indicates termination of the
|
---|
86 | * algorithm. It must be a ternary function object thats accepts the
|
---|
87 | * maximum centrality, the descriptor of the edge that will be
|
---|
88 | * removed, and the graph @p g.
|
---|
89 | *
|
---|
90 | * @param edge_centrality (UTIL/OUT) The property map that will store
|
---|
91 | * the betweenness centrality for each edge. When the algorithm
|
---|
92 | * terminates, it will contain the edge centralities for the
|
---|
93 | * graph. The type of this property map must model the
|
---|
94 | * ReadWritePropertyMap concept. Defaults to an @c
|
---|
95 | * iterator_property_map whose value type is
|
---|
96 | * @c Done::centrality_type and using @c get(edge_index, g) for the
|
---|
97 | * index map.
|
---|
98 | *
|
---|
99 | * @param vertex_index (IN) The property map that maps vertices to
|
---|
100 | * indices in the range @c [0, num_vertices(g)). This type of this
|
---|
101 | * property map must model the ReadablePropertyMap concept and its
|
---|
102 | * value type must be an integral type. Defaults to
|
---|
103 | * @c get(vertex_index, g).
|
---|
104 | */
|
---|
105 | template<typename MutableGraph, typename Done, typename EdgeCentralityMap,
|
---|
106 | typename VertexIndexMap>
|
---|
107 | void
|
---|
108 | betweenness_centrality_clustering(MutableGraph& g, Done done,
|
---|
109 | EdgeCentralityMap edge_centrality,
|
---|
110 | VertexIndexMap vertex_index)
|
---|
111 | {
|
---|
112 | typedef typename property_traits<EdgeCentralityMap>::value_type
|
---|
113 | centrality_type;
|
---|
114 | typedef typename graph_traits<MutableGraph>::edge_iterator edge_iterator;
|
---|
115 | typedef typename graph_traits<MutableGraph>::edge_descriptor edge_descriptor;
|
---|
116 | typedef typename graph_traits<MutableGraph>::vertices_size_type
|
---|
117 | vertices_size_type;
|
---|
118 |
|
---|
119 | if (edges(g).first == edges(g).second) return;
|
---|
120 |
|
---|
121 | // Function object that compares the centrality of edges
|
---|
122 | indirect_cmp<EdgeCentralityMap, std::less<centrality_type> >
|
---|
123 | cmp(edge_centrality);
|
---|
124 |
|
---|
125 | bool is_done;
|
---|
126 | do {
|
---|
127 | brandes_betweenness_centrality(g,
|
---|
128 | edge_centrality_map(edge_centrality)
|
---|
129 | .vertex_index_map(vertex_index));
|
---|
130 | edge_descriptor e = *max_element(edges(g).first, edges(g).second, cmp);
|
---|
131 | is_done = done(get(edge_centrality, e), e, g);
|
---|
132 | if (!is_done) remove_edge(e, g);
|
---|
133 | } while (!is_done && edges(g).first != edges(g).second);
|
---|
134 | }
|
---|
135 |
|
---|
136 | /**
|
---|
137 | * \overload
|
---|
138 | */
|
---|
139 | template<typename MutableGraph, typename Done, typename EdgeCentralityMap>
|
---|
140 | void
|
---|
141 | betweenness_centrality_clustering(MutableGraph& g, Done done,
|
---|
142 | EdgeCentralityMap edge_centrality)
|
---|
143 | {
|
---|
144 | betweenness_centrality_clustering(g, done, edge_centrality,
|
---|
145 | get(vertex_index, g));
|
---|
146 | }
|
---|
147 |
|
---|
148 | /**
|
---|
149 | * \overload
|
---|
150 | */
|
---|
151 | template<typename MutableGraph, typename Done>
|
---|
152 | void
|
---|
153 | betweenness_centrality_clustering(MutableGraph& g, Done done)
|
---|
154 | {
|
---|
155 | typedef typename Done::centrality_type centrality_type;
|
---|
156 | std::vector<centrality_type> edge_centrality(num_edges(g));
|
---|
157 | betweenness_centrality_clustering(g, done,
|
---|
158 | make_iterator_property_map(edge_centrality.begin(), get(edge_index, g)),
|
---|
159 | get(vertex_index, g));
|
---|
160 | }
|
---|
161 |
|
---|
162 | } // end namespace boost
|
---|
163 |
|
---|
164 | #endif // BOOST_GRAPH_BETWEENNESS_CENTRALITY_CLUSTERING_HPP
|
---|