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community.py
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community.py
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#!/usr/bin/python
# -*- coding: utf-8 -*-
"""
This module implements community detection.
"""
__all__ = ["partition_at_level", "modularity", "best_partition", "generate_dendogram", "induced_graph"]
__author__ = """Thomas Aynaud ([email protected])"""
# Copyright (C) 2009 by
# Thomas Aynaud <[email protected]>
# All rights reserved.
# BSD license.
__PASS_MAX = -1
__MIN = 0.0000001
import networkx as nx
import sys
import types
import array
def partition_at_level(dendogram, level) :
"""Return the partition of the nodes at the given level
A dendogram is a tree and each level is a partition of the graph nodes.
Level 0 is the first partition, which contains the smallest communities, and the best is len(dendogram) - 1.
The higher the level is, the bigger are the communities
Parameters
----------
dendogram : list of dict
a list of partitions, ie dictionnaries where keys of the i+1 are the values of the i.
level : int
the level which belongs to [0..len(dendogram)-1]
Returns
-------
partition : dictionnary
A dictionary where keys are the nodes and the values are the set it belongs to
Raises
------
KeyError
If the dendogram is not well formed or the level is too high
See Also
--------
best_partition which directly combines partition_at_level and generate_dendogram to obtain the partition of highest modularity
Examples
--------
>>> G=nx.erdos_renyi_graph(100, 0.01)
>>> dendo = generate_dendogram(G)
>>> for level in range(len(dendo) - 1) :
>>> print "partition at level", level, "is", partition_at_level(dendo, level)
"""
partition = dendogram[0].copy()
for index in range(1, level + 1) :
for node, community in partition.iteritems() :
partition[node] = dendogram[index][community]
return partition
def modularity(partition, graph) :
"""Compute the modularity of a partition of a graph
Parameters
----------
partition : dict
the partition of the nodes, i.e a dictionary where keys are their nodes and values the communities
graph : networkx.Graph
the networkx graph which is decomposed
Returns
-------
modularity : float
The modularity
Raises
------
KeyError
If the partition is not a partition of all graph nodes
ValueError
If the graph has no link
TypeError
If graph is not a networkx.Graph
References
----------
.. 1. Newman, M.E.J. & Girvan, M. Finding and evaluating community structure in networks. Physical Review E 69, 26113(2004).
Examples
--------
>>> G=nx.erdos_renyi_graph(100, 0.01)
>>> part = best_partition(G)
>>> modularity(part, G)
"""
if type(graph) != nx.Graph :
raise TypeError("Bad graph type, use only non directed graph")
inc = dict([])
deg = dict([])
links = graph.size(weight='weight')
if links == 0 :
raise ValueError("A graph without link has an undefined modularity")
for node in graph :
com = partition[node]
deg[com] = deg.get(com, 0.) + graph.degree(node, weight = 'weight')
for neighbor, datas in graph[node].iteritems() :
weight = datas.get("weight", 1)
if partition[neighbor] == com :
if neighbor == node :
inc[com] = inc.get(com, 0.) + float(weight)
else :
inc[com] = inc.get(com, 0.) + float(weight) / 2.
res = 0.
for com in set(partition.values()) :
res += (inc.get(com, 0.) / links) - (deg.get(com, 0.) / (2.*links))**2
return res
def best_partition(graph, partition = None) :
"""Compute the partition of the graph nodes which maximises the modularity
(or try..) using the Louvain heuristices
This is the partition of highest modularity, i.e. the highest partition of the dendogram
generated by the Louvain algorithm.
Parameters
----------
graph : networkx.Graph
the networkx graph which is decomposed
partition : dict, optionnal
the algorithm will start using this partition of the nodes. It's a dictionary where keys are their nodes and values the communities
Returns
-------
partition : dictionnary
The partition, with communities numbered from 0 to number of communities
Raises
------
NetworkXError
If the graph is not Eulerian.
See Also
--------
generate_dendogram to obtain all the decompositions levels
Notes
-----
Uses Louvain algorithm
References
----------
.. 1. Blondel, V.D. et al. Fast unfolding of communities in large networks. J. Stat. Mech 10008, 1-12(2008).
Examples
--------
>>> #Basic usage
>>> G=nx.erdos_renyi_graph(100, 0.01)
>>> part = best_partition(G)
>>> #other example to display a graph with its community :
>>> #better with karate_graph() as defined in networkx examples
>>> #erdos renyi don't have true community structure
>>> G = nx.erdos_renyi_graph(30, 0.05)
>>> #first compute the best partition
>>> partition = community.best_partition(G)
>>> #drawing
>>> size = float(len(set(partition.values())))
>>> pos = nx.spring_layout(G)
>>> count = 0.
>>> for com in set(partition.values()) :
>>> count = count + 1.
>>> list_nodes = [nodes for nodes in partition.keys()
>>> if partition[nodes] == com]
>>> nx.draw_networkx_nodes(G, pos, list_nodes, node_size = 20,
node_color = str(count / size))
>>> nx.draw_networkx_edges(G,pos, alpha=0.5)
>>> plt.show()
"""
dendo = generate_dendogram(graph, partition)
return partition_at_level(dendo, len(dendo) - 1 )
def generate_dendogram(graph, part_init = None) :
"""Find communities in the graph and return the associated dendogram
A dendogram is a tree and each level is a partition of the graph nodes. Level 0 is the first partition, which contains the smallest communities, and the best is len(dendogram) - 1. The higher the level is, the bigger are the communities
Parameters
----------
graph : networkx.Graph
the networkx graph which will be decomposed
part_init : dict, optionnal
the algorithm will start using this partition of the nodes. It's a dictionary where keys are their nodes and values the communities
Returns
-------
dendogram : list of dictionaries
a list of partitions, ie dictionnaries where keys of the i+1 are the values of the i. and where keys of the first are the nodes of graph
Raises
------
TypeError
If the graph is not a networkx.Graph
See Also
--------
best_partition
Notes
-----
Uses Louvain algorithm
References
----------
.. 1. Blondel, V.D. et al. Fast unfolding of communities in large networks. J. Stat. Mech 10008, 1-12(2008).
Examples
--------
>>> G=nx.erdos_renyi_graph(100, 0.01)
>>> dendo = generate_dendogram(G)
>>> for level in range(len(dendo) - 1) :
>>> print "partition at level", level, "is", partition_at_level(dendo, level)
"""
if type(graph) != nx.Graph :
raise TypeError("Bad graph type, use only non directed graph")
current_graph = graph.copy()
status = Status()
status.init(current_graph, part_init)
mod = __modularity(status)
status_list = list()
__one_level(current_graph, status)
new_mod = __modularity(status)
partition = __renumber(status.node2com)
status_list.append(partition)
mod = new_mod
current_graph = induced_graph(partition, current_graph)
status.init(current_graph)
while True :
__one_level(current_graph, status)
new_mod = __modularity(status)
if new_mod - mod < __MIN :
break
partition = __renumber(status.node2com)
status_list.append(partition)
mod = new_mod
current_graph = induced_graph(partition, current_graph)
status.init(current_graph)
return status_list[:]
def induced_graph(partition, graph) :
"""Produce the graph where nodes are the communities
there is a link of weight w between communities if the sum of the weights of the links between their elements is w
Parameters
----------
partition : dict
a dictionary where keys are graph nodes and values the part the node belongs to
graph : networkx.Graph
the initial graph
Returns
-------
g : networkx.Graph
a networkx graph where nodes are the parts
Examples
--------
>>> n = 5
>>> g = nx.complete_graph(2*n)
>>> part = dict([])
>>> for node in g.nodes() :
>>> part[node] = node % 2
>>> ind = induced_graph(part, g)
>>> goal = nx.Graph()
>>> goal.add_weighted_edges_from([(0,1,n*n),(0,0,n*(n-1)/2), (1, 1, n*(n-1)/2)])
>>> nx.is_isomorphic(int, goal)
True
"""
ret = nx.Graph()
ret.add_nodes_from(partition.values())
for node1, node2, datas in graph.edges_iter(data = True) :
weight = datas.get("weight", 1)
com1 = partition[node1]
com2 = partition[node2]
w_prec = ret.get_edge_data(com1, com2, {"weight":0}).get("weight", 1)
ret.add_edge(com1, com2, weight = w_prec + weight)
return ret
def __renumber(dictionary) :
"""Renumber the values of the dictionary from 0 to n
"""
count = 0
ret = dictionary.copy()
new_values = dict([])
for key in dictionary.keys() :
value = dictionary[key]
new_value = new_values.get(value, -1)
if new_value == -1 :
new_values[value] = count
new_value = count
count = count + 1
ret[key] = new_value
return ret
def __load_binary(data) :
"""Load binary graph as used by the cpp implementation of this algorithm
"""
if type(data) == types.StringType :
data = open(data, "rb")
reader = array.array("I")
reader.fromfile(data, 1)
num_nodes = reader.pop()
reader = array.array("I")
reader.fromfile(data, num_nodes)
cum_deg = reader.tolist()
num_links = reader.pop()
reader = array.array("I")
reader.fromfile(data, num_links)
links = reader.tolist()
graph = nx.Graph()
graph.add_nodes_from(range(num_nodes))
prec_deg = 0
for index in range(num_nodes) :
last_deg = cum_deg[index]
neighbors = links[prec_deg:last_deg]
graph.add_edges_from([(index, int(neigh)) for neigh in neighbors])
prec_deg = last_deg
return graph
def __one_level(graph, status) :
"""Compute one level of communities
"""
modif = True
nb_pass_done = 0
cur_mod = __modularity(status)
new_mod = cur_mod
while modif and nb_pass_done != __PASS_MAX :
cur_mod = new_mod
modif = False
nb_pass_done += 1
for node in graph.nodes() :
com_node = status.node2com[node]
degc_totw = status.gdegrees.get(node, 0.) / (status.total_weight*2.)
neigh_communities = __neighcom(node, graph, status)
__remove(node, com_node,
neigh_communities.get(com_node, 0.), status)
best_com = com_node
best_increase = 0
for com, dnc in neigh_communities.iteritems() :
incr = dnc - status.degrees.get(com, 0.) * degc_totw
if incr > best_increase :
best_increase = incr
best_com = com
__insert(node, best_com,
neigh_communities.get(best_com, 0.), status)
if best_com != com_node :
modif = True
new_mod = __modularity(status)
if new_mod - cur_mod < __MIN :
break
class Status :
"""
To handle several data in one struct.
Could be replaced by named tuple, but don't want to depend on python 2.6
"""
node2com = {}
total_weight = 0
internals = {}
degrees = {}
gdegrees = {}
def __init__(self) :
self.node2com = dict([])
self.total_weight = 0
self.degrees = dict([])
self.gdegrees = dict([])
self.internals = dict([])
self.loops = dict([])
def __str__(self) :
return ("node2com : " + str(self.node2com) + " degrees : "
+ str(self.degrees) + " internals : " + str(self.internals)
+ " total_weight : " + str(self.total_weight))
def copy(self) :
"""Perform a deep copy of status"""
new_status = Status()
new_status.node2com = self.node2com.copy()
new_status.internals = self.internals.copy()
new_status.degrees = self.degrees.copy()
new_status.gdegrees = self.gdegrees.copy()
new_status.total_weight = self.total_weight
def init(self, graph, part = None) :
"""Initialize the status of a graph with every node in one community"""
count = 0
self.node2com = dict([])
self.total_weight = 0
self.degrees = dict([])
self.gdegrees = dict([])
self.internals = dict([])
self.total_weight = graph.size(weight = 'weight')
if part == None :
for node in graph.nodes() :
self.node2com[node] = count
deg = float(graph.degree(node, weight = 'weight'))
self.degrees[count] = deg
self.gdegrees[node] = deg
self.loops[node] = float(graph.get_edge_data(node, node,
{"weight":0}).get("weight", 1))
self.internals[count] = self.loops[node]
count = count + 1
else :
for node in graph.nodes() :
com = part[node]
self.node2com[node] = com
deg = float(graph.degree(node, weigh = 'weight'))
self.degrees[com] = self.degrees.get(com, 0) + deg
self.gdegrees[node] = deg
inc = 0.
for neighbor, datas in graph[node].iteritems() :
weight = datas.get("weight", 1)
if part[neighbor] == com :
if neighbor == node :
inc += float(weight)
else :
inc += float(weight) / 2.
self.internals[com] = self.internals.get(com, 0) + inc
def __neighcom(node, graph, status) :
"""
Compute the communities in the neighborood of node in the graph given
with the decomposition node2com
"""
weights = {}
for neighbor, datas in graph[node].iteritems() :
if neighbor != node :
weight = datas.get("weight", 1)
neighborcom = status.node2com[neighbor]
weights[neighborcom] = weights.get(neighborcom, 0) + weight
return weights
def __remove(node, com, weight, status) :
""" Remove node from community com and modify status"""
status.degrees[com] = ( status.degrees.get(com, 0.)
- status.gdegrees.get(node, 0.) )
status.internals[com] = float( status.internals.get(com, 0.) -
weight - status.loops.get(node, 0.) )
status.node2com[node] = -1
def __insert(node, com, weight, status) :
""" Insert node into community and modify status"""
status.node2com[node] = com
status.degrees[com] = ( status.degrees.get(com, 0.) +
status.gdegrees.get(node, 0.) )
status.internals[com] = float( status.internals.get(com, 0.) +
weight + status.loops.get(node, 0.) )
def __modularity(status) :
"""
Compute the modularity of the partition of the graph faslty using status precomputed
"""
links = float(status.total_weight)
result = 0.
for community in set(status.node2com.values()) :
in_degree = status.internals.get(community, 0.)
degree = status.degrees.get(community, 0.)
if links > 0 :
result = result + in_degree / links - ((degree / (2.*links))**2)
return result
def __main() :
"""Main function to mimic C++ version behavior"""
try :
filename = sys.argv[1]
graphfile = __load_binary(filename)
partition = best_partition(graphfile)
print >> sys.stderr, str(modularity(partition, graphfile))
for elem, part in partition.iteritems() :
print str(elem) + " " + str(part)
except (IndexError, IOError):
print "Usage : ./community filename"
print "find the communities in graph filename and display the dendogram"
print "Parameters:"
print "filename is a binary file as generated by the "
print "convert utility distributed with the C implementation"
if __name__ == "__main__" :
__main()