From 4a52a71956a8d46fcb7294ac71734504bb09bcc2 Mon Sep 17 00:00:00 2001 From: S. Solomon Darnell Date: Fri, 28 Mar 2025 21:52:21 -0500 Subject: two version of R2R are here --- .../networkx/algorithms/community/divisive.py | 216 +++++++++++++++++++++ 1 file changed, 216 insertions(+) create mode 100644 .venv/lib/python3.12/site-packages/networkx/algorithms/community/divisive.py (limited to '.venv/lib/python3.12/site-packages/networkx/algorithms/community/divisive.py') diff --git a/.venv/lib/python3.12/site-packages/networkx/algorithms/community/divisive.py b/.venv/lib/python3.12/site-packages/networkx/algorithms/community/divisive.py new file mode 100644 index 00000000..be3c7d86 --- /dev/null +++ b/.venv/lib/python3.12/site-packages/networkx/algorithms/community/divisive.py @@ -0,0 +1,216 @@ +import functools + +import networkx as nx + +__all__ = [ + "edge_betweenness_partition", + "edge_current_flow_betweenness_partition", +] + + +@nx._dispatchable(edge_attrs="weight") +def edge_betweenness_partition(G, number_of_sets, *, weight=None): + """Partition created by iteratively removing the highest edge betweenness edge. + + This algorithm works by calculating the edge betweenness for all + edges and removing the edge with the highest value. It is then + determined whether the graph has been broken into at least + `number_of_sets` connected components. + If not the process is repeated. + + Parameters + ---------- + G : NetworkX Graph, DiGraph or MultiGraph + Graph to be partitioned + + number_of_sets : int + Number of sets in the desired partition of the graph + + weight : key, optional, default=None + The key to use if using weights for edge betweenness calculation + + Returns + ------- + C : list of sets + Partition of the nodes of G + + Raises + ------ + NetworkXError + If number_of_sets is <= 0 or if number_of_sets > len(G) + + Examples + -------- + >>> G = nx.karate_club_graph() + >>> part = nx.community.edge_betweenness_partition(G, 2) + >>> {0, 1, 3, 4, 5, 6, 7, 10, 11, 12, 13, 16, 17, 19, 21} in part + True + >>> { + ... 2, + ... 8, + ... 9, + ... 14, + ... 15, + ... 18, + ... 20, + ... 22, + ... 23, + ... 24, + ... 25, + ... 26, + ... 27, + ... 28, + ... 29, + ... 30, + ... 31, + ... 32, + ... 33, + ... } in part + True + + See Also + -------- + edge_current_flow_betweenness_partition + + Notes + ----- + This algorithm is fairly slow, as both the calculation of connected + components and edge betweenness relies on all pairs shortest + path algorithms. They could potentially be combined to cut down + on overall computation time. + + References + ---------- + .. [1] Santo Fortunato 'Community Detection in Graphs' Physical Reports + Volume 486, Issue 3-5 p. 75-174 + http://arxiv.org/abs/0906.0612 + """ + if number_of_sets <= 0: + raise nx.NetworkXError("number_of_sets must be >0") + if number_of_sets == 1: + return [set(G)] + if number_of_sets == len(G): + return [{n} for n in G] + if number_of_sets > len(G): + raise nx.NetworkXError("number_of_sets must be <= len(G)") + + H = G.copy() + partition = list(nx.connected_components(H)) + while len(partition) < number_of_sets: + ranking = nx.edge_betweenness_centrality(H, weight=weight) + edge = max(ranking, key=ranking.get) + H.remove_edge(*edge) + partition = list(nx.connected_components(H)) + return partition + + +@nx._dispatchable(edge_attrs="weight") +def edge_current_flow_betweenness_partition(G, number_of_sets, *, weight=None): + """Partition created by removing the highest edge current flow betweenness edge. + + This algorithm works by calculating the edge current flow + betweenness for all edges and removing the edge with the + highest value. It is then determined whether the graph has + been broken into at least `number_of_sets` connected + components. If not the process is repeated. + + Parameters + ---------- + G : NetworkX Graph, DiGraph or MultiGraph + Graph to be partitioned + + number_of_sets : int + Number of sets in the desired partition of the graph + + weight : key, optional (default=None) + The edge attribute key to use as weights for + edge current flow betweenness calculations + + Returns + ------- + C : list of sets + Partition of G + + Raises + ------ + NetworkXError + If number_of_sets is <= 0 or number_of_sets > len(G) + + Examples + -------- + >>> G = nx.karate_club_graph() + >>> part = nx.community.edge_current_flow_betweenness_partition(G, 2) + >>> {0, 1, 2, 3, 4, 5, 6, 7, 9, 10, 11, 12, 13, 16, 17, 19, 21} in part + True + >>> {8, 14, 15, 18, 20, 22, 23, 24, 25, 26, 27, 28, 29, 30, 31, 32, 33} in part + True + + + See Also + -------- + edge_betweenness_partition + + Notes + ----- + This algorithm is extremely slow, as the recalculation of the edge + current flow betweenness is extremely slow. + + References + ---------- + .. [1] Santo Fortunato 'Community Detection in Graphs' Physical Reports + Volume 486, Issue 3-5 p. 75-174 + http://arxiv.org/abs/0906.0612 + """ + if number_of_sets <= 0: + raise nx.NetworkXError("number_of_sets must be >0") + elif number_of_sets == 1: + return [set(G)] + elif number_of_sets == len(G): + return [{n} for n in G] + elif number_of_sets > len(G): + raise nx.NetworkXError("number_of_sets must be <= len(G)") + + rank = functools.partial( + nx.edge_current_flow_betweenness_centrality, normalized=False, weight=weight + ) + + # current flow requires a connected network so we track the components explicitly + H = G.copy() + partition = list(nx.connected_components(H)) + if len(partition) > 1: + Hcc_subgraphs = [H.subgraph(cc).copy() for cc in partition] + else: + Hcc_subgraphs = [H] + + ranking = {} + for Hcc in Hcc_subgraphs: + ranking.update(rank(Hcc)) + + while len(partition) < number_of_sets: + edge = max(ranking, key=ranking.get) + for cc, Hcc in zip(partition, Hcc_subgraphs): + if edge[0] in cc: + Hcc.remove_edge(*edge) + del ranking[edge] + splitcc_list = list(nx.connected_components(Hcc)) + if len(splitcc_list) > 1: + # there are 2 connected components. split off smaller one + cc_new = min(splitcc_list, key=len) + Hcc_new = Hcc.subgraph(cc_new).copy() + # update edge rankings for Hcc_new + newranks = rank(Hcc_new) + for e, r in newranks.items(): + ranking[e if e in ranking else e[::-1]] = r + # append new cc and Hcc to their lists. + partition.append(cc_new) + Hcc_subgraphs.append(Hcc_new) + + # leave existing cc and Hcc in their lists, but shrink them + Hcc.remove_nodes_from(cc_new) + cc.difference_update(cc_new) + # update edge rankings for Hcc whether it was split or not + newranks = rank(Hcc) + for e, r in newranks.items(): + ranking[e if e in ranking else e[::-1]] = r + break + return partition -- cgit v1.2.3