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165 lines
5.9 KiB
C++
165 lines
5.9 KiB
C++
// Copyright 2004 The Trustees of Indiana University.
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// Distributed under the Boost Software License, Version 1.0.
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// (See accompanying file LICENSE_1_0.txt or copy at
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// http://www.boost.org/LICENSE_1_0.txt)
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// Authors: Douglas Gregor
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// Andrew Lumsdaine
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#ifndef BOOST_GRAPH_BETWEENNESS_CENTRALITY_CLUSTERING_HPP
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#define BOOST_GRAPH_BETWEENNESS_CENTRALITY_CLUSTERING_HPP
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#include <boost/graph/betweenness_centrality.hpp>
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#include <boost/graph/graph_traits.hpp>
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#include <boost/graph/graph_utility.hpp>
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#include <boost/pending/indirect_cmp.hpp>
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#include <algorithm>
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#include <vector>
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#include <boost/property_map/property_map.hpp>
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namespace boost {
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/** Threshold termination function for the betweenness centrality
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* clustering algorithm.
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*/
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template<typename T>
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struct bc_clustering_threshold
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{
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typedef T centrality_type;
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/// Terminate clustering when maximum absolute edge centrality is
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/// below the given threshold.
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explicit bc_clustering_threshold(T threshold)
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: threshold(threshold), dividend(1.0) {}
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/**
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* Terminate clustering when the maximum edge centrality is below
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* the given threshold.
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*
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* @param threshold the threshold value
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*
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* @param g the graph on which the threshold will be calculated
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*
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* @param normalize when true, the threshold is compared against the
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* normalized edge centrality based on the input graph; otherwise,
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* the threshold is compared against the absolute edge centrality.
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*/
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template<typename Graph>
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bc_clustering_threshold(T threshold, const Graph& g, bool normalize = true)
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: threshold(threshold), dividend(1.0)
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{
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if (normalize) {
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typename graph_traits<Graph>::vertices_size_type n = num_vertices(g);
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dividend = T((n - 1) * (n - 2)) / T(2);
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}
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}
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/** Returns true when the given maximum edge centrality (potentially
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* normalized) falls below the threshold.
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*/
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template<typename Graph, typename Edge>
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bool operator()(T max_centrality, Edge, const Graph&)
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{
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return (max_centrality / dividend) < threshold;
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}
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protected:
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T threshold;
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T dividend;
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};
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/** Graph clustering based on edge betweenness centrality.
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*
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* This algorithm implements graph clustering based on edge
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* betweenness centrality. It is an iterative algorithm, where in each
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* step it compute the edge betweenness centrality (via @ref
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* brandes_betweenness_centrality) and removes the edge with the
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* maximum betweenness centrality. The @p done function object
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* determines when the algorithm terminates (the edge found when the
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* algorithm terminates will not be removed).
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*
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* @param g The graph on which clustering will be performed. The type
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* of this parameter (@c MutableGraph) must be a model of the
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* VertexListGraph, IncidenceGraph, EdgeListGraph, and Mutable Graph
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* concepts.
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*
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* @param done The function object that indicates termination of the
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* algorithm. It must be a ternary function object thats accepts the
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* maximum centrality, the descriptor of the edge that will be
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* removed, and the graph @p g.
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*
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* @param edge_centrality (UTIL/OUT) The property map that will store
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* the betweenness centrality for each edge. When the algorithm
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* terminates, it will contain the edge centralities for the
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* graph. The type of this property map must model the
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* ReadWritePropertyMap concept. Defaults to an @c
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* iterator_property_map whose value type is
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* @c Done::centrality_type and using @c get(edge_index, g) for the
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* index map.
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*
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* @param vertex_index (IN) The property map that maps vertices to
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* indices in the range @c [0, num_vertices(g)). This type of this
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* property map must model the ReadablePropertyMap concept and its
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* value type must be an integral type. Defaults to
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* @c get(vertex_index, g).
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*/
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template<typename MutableGraph, typename Done, typename EdgeCentralityMap,
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typename VertexIndexMap>
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void
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betweenness_centrality_clustering(MutableGraph& g, Done done,
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EdgeCentralityMap edge_centrality,
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VertexIndexMap vertex_index)
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{
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typedef typename property_traits<EdgeCentralityMap>::value_type
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centrality_type;
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typedef typename graph_traits<MutableGraph>::edge_iterator edge_iterator;
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typedef typename graph_traits<MutableGraph>::edge_descriptor edge_descriptor;
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if (has_no_edges(g)) return;
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// Function object that compares the centrality of edges
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indirect_cmp<EdgeCentralityMap, std::less<centrality_type> >
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cmp(edge_centrality);
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bool is_done;
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do {
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brandes_betweenness_centrality(g,
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edge_centrality_map(edge_centrality)
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.vertex_index_map(vertex_index));
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std::pair<edge_iterator, edge_iterator> edges_iters = edges(g);
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edge_descriptor e = *max_element(edges_iters.first, edges_iters.second, cmp);
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is_done = done(get(edge_centrality, e), e, g);
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if (!is_done) remove_edge(e, g);
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} while (!is_done && !has_no_edges(g));
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}
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/**
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* \overload
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*/
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template<typename MutableGraph, typename Done, typename EdgeCentralityMap>
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void
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betweenness_centrality_clustering(MutableGraph& g, Done done,
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EdgeCentralityMap edge_centrality)
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{
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betweenness_centrality_clustering(g, done, edge_centrality,
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get(vertex_index, g));
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}
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/**
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* \overload
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*/
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template<typename MutableGraph, typename Done>
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void
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betweenness_centrality_clustering(MutableGraph& g, Done done)
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{
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typedef typename Done::centrality_type centrality_type;
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std::vector<centrality_type> edge_centrality(num_edges(g));
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betweenness_centrality_clustering(g, done,
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make_iterator_property_map(edge_centrality.begin(), get(edge_index, g)),
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get(vertex_index, g));
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}
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} // end namespace boost
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#endif // BOOST_GRAPH_BETWEENNESS_CENTRALITY_CLUSTERING_HPP
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