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"""Functions for measuring the quality of a partition (into | |
communities). | |
""" | |
from itertools import combinations | |
import networkx as nx | |
from networkx import NetworkXError | |
from networkx.algorithms.community.community_utils import is_partition | |
from networkx.utils.decorators import argmap | |
__all__ = ["modularity", "partition_quality"] | |
class NotAPartition(NetworkXError): | |
"""Raised if a given collection is not a partition.""" | |
def __init__(self, G, collection): | |
msg = f"{collection} is not a valid partition of the graph {G}" | |
super().__init__(msg) | |
def _require_partition(G, partition): | |
"""Decorator to check that a valid partition is input to a function | |
Raises :exc:`networkx.NetworkXError` if the partition is not valid. | |
This decorator should be used on functions whose first two arguments | |
are a graph and a partition of the nodes of that graph (in that | |
order):: | |
>>> @require_partition | |
... def foo(G, partition): | |
... print("partition is valid!") | |
... | |
>>> G = nx.complete_graph(5) | |
>>> partition = [{0, 1}, {2, 3}, {4}] | |
>>> foo(G, partition) | |
partition is valid! | |
>>> partition = [{0}, {2, 3}, {4}] | |
>>> foo(G, partition) | |
Traceback (most recent call last): | |
... | |
networkx.exception.NetworkXError: `partition` is not a valid partition of the nodes of G | |
>>> partition = [{0, 1}, {1, 2, 3}, {4}] | |
>>> foo(G, partition) | |
Traceback (most recent call last): | |
... | |
networkx.exception.NetworkXError: `partition` is not a valid partition of the nodes of G | |
""" | |
if is_partition(G, partition): | |
return G, partition | |
raise nx.NetworkXError("`partition` is not a valid partition of the nodes of G") | |
require_partition = argmap(_require_partition, (0, 1)) | |
def intra_community_edges(G, partition): | |
"""Returns the number of intra-community edges for a partition of `G`. | |
Parameters | |
---------- | |
G : NetworkX graph. | |
partition : iterable of sets of nodes | |
This must be a partition of the nodes of `G`. | |
The "intra-community edges" are those edges joining a pair of nodes | |
in the same block of the partition. | |
""" | |
return sum(G.subgraph(block).size() for block in partition) | |
def inter_community_edges(G, partition): | |
"""Returns the number of inter-community edges for a partition of `G`. | |
according to the given | |
partition of the nodes of `G`. | |
Parameters | |
---------- | |
G : NetworkX graph. | |
partition : iterable of sets of nodes | |
This must be a partition of the nodes of `G`. | |
The *inter-community edges* are those edges joining a pair of nodes | |
in different blocks of the partition. | |
Implementation note: this function creates an intermediate graph | |
that may require the same amount of memory as that of `G`. | |
""" | |
# Alternate implementation that does not require constructing a new | |
# graph object (but does require constructing an affiliation | |
# dictionary): | |
# | |
# aff = dict(chain.from_iterable(((v, block) for v in block) | |
# for block in partition)) | |
# return sum(1 for u, v in G.edges() if aff[u] != aff[v]) | |
# | |
MG = nx.MultiDiGraph if G.is_directed() else nx.MultiGraph | |
return nx.quotient_graph(G, partition, create_using=MG).size() | |
def inter_community_non_edges(G, partition): | |
"""Returns the number of inter-community non-edges according to the | |
given partition of the nodes of `G`. | |
Parameters | |
---------- | |
G : NetworkX graph. | |
partition : iterable of sets of nodes | |
This must be a partition of the nodes of `G`. | |
A *non-edge* is a pair of nodes (undirected if `G` is undirected) | |
that are not adjacent in `G`. The *inter-community non-edges* are | |
those non-edges on a pair of nodes in different blocks of the | |
partition. | |
Implementation note: this function creates two intermediate graphs, | |
which may require up to twice the amount of memory as required to | |
store `G`. | |
""" | |
# Alternate implementation that does not require constructing two | |
# new graph objects (but does require constructing an affiliation | |
# dictionary): | |
# | |
# aff = dict(chain.from_iterable(((v, block) for v in block) | |
# for block in partition)) | |
# return sum(1 for u, v in nx.non_edges(G) if aff[u] != aff[v]) | |
# | |
return inter_community_edges(nx.complement(G), partition) | |
def modularity(G, communities, weight="weight", resolution=1): | |
r"""Returns the modularity of the given partition of the graph. | |
Modularity is defined in [1]_ as | |
.. math:: | |
Q = \frac{1}{2m} \sum_{ij} \left( A_{ij} - \gamma\frac{k_ik_j}{2m}\right) | |
\delta(c_i,c_j) | |
where $m$ is the number of edges (or sum of all edge weights as in [5]_), | |
$A$ is the adjacency matrix of `G`, $k_i$ is the (weighted) degree of $i$, | |
$\gamma$ is the resolution parameter, and $\delta(c_i, c_j)$ is 1 if $i$ and | |
$j$ are in the same community else 0. | |
According to [2]_ (and verified by some algebra) this can be reduced to | |
.. math:: | |
Q = \sum_{c=1}^{n} | |
\left[ \frac{L_c}{m} - \gamma\left( \frac{k_c}{2m} \right) ^2 \right] | |
where the sum iterates over all communities $c$, $m$ is the number of edges, | |
$L_c$ is the number of intra-community links for community $c$, | |
$k_c$ is the sum of degrees of the nodes in community $c$, | |
and $\gamma$ is the resolution parameter. | |
The resolution parameter sets an arbitrary tradeoff between intra-group | |
edges and inter-group edges. More complex grouping patterns can be | |
discovered by analyzing the same network with multiple values of gamma | |
and then combining the results [3]_. That said, it is very common to | |
simply use gamma=1. More on the choice of gamma is in [4]_. | |
The second formula is the one actually used in calculation of the modularity. | |
For directed graphs the second formula replaces $k_c$ with $k^{in}_c k^{out}_c$. | |
Parameters | |
---------- | |
G : NetworkX Graph | |
communities : list or iterable of set of nodes | |
These node sets must represent a partition of G's nodes. | |
weight : string or None, optional (default="weight") | |
The edge attribute that holds the numerical value used | |
as a weight. If None or an edge does not have that attribute, | |
then that edge has weight 1. | |
resolution : float (default=1) | |
If resolution is less than 1, modularity favors larger communities. | |
Greater than 1 favors smaller communities. | |
Returns | |
------- | |
Q : float | |
The modularity of the partition. | |
Raises | |
------ | |
NotAPartition | |
If `communities` is not a partition of the nodes of `G`. | |
Examples | |
-------- | |
>>> G = nx.barbell_graph(3, 0) | |
>>> nx.community.modularity(G, [{0, 1, 2}, {3, 4, 5}]) | |
0.35714285714285715 | |
>>> nx.community.modularity(G, nx.community.label_propagation_communities(G)) | |
0.35714285714285715 | |
References | |
---------- | |
.. [1] M. E. J. Newman "Networks: An Introduction", page 224. | |
Oxford University Press, 2011. | |
.. [2] Clauset, Aaron, Mark EJ Newman, and Cristopher Moore. | |
"Finding community structure in very large networks." | |
Phys. Rev. E 70.6 (2004). <https://arxiv.org/abs/cond-mat/0408187> | |
.. [3] Reichardt and Bornholdt "Statistical Mechanics of Community Detection" | |
Phys. Rev. E 74, 016110, 2006. https://doi.org/10.1103/PhysRevE.74.016110 | |
.. [4] M. E. J. Newman, "Equivalence between modularity optimization and | |
maximum likelihood methods for community detection" | |
Phys. Rev. E 94, 052315, 2016. https://doi.org/10.1103/PhysRevE.94.052315 | |
.. [5] Blondel, V.D. et al. "Fast unfolding of communities in large | |
networks" J. Stat. Mech 10008, 1-12 (2008). | |
https://doi.org/10.1088/1742-5468/2008/10/P10008 | |
""" | |
if not isinstance(communities, list): | |
communities = list(communities) | |
if not is_partition(G, communities): | |
raise NotAPartition(G, communities) | |
directed = G.is_directed() | |
if directed: | |
out_degree = dict(G.out_degree(weight=weight)) | |
in_degree = dict(G.in_degree(weight=weight)) | |
m = sum(out_degree.values()) | |
norm = 1 / m**2 | |
else: | |
out_degree = in_degree = dict(G.degree(weight=weight)) | |
deg_sum = sum(out_degree.values()) | |
m = deg_sum / 2 | |
norm = 1 / deg_sum**2 | |
def community_contribution(community): | |
comm = set(community) | |
L_c = sum(wt for u, v, wt in G.edges(comm, data=weight, default=1) if v in comm) | |
out_degree_sum = sum(out_degree[u] for u in comm) | |
in_degree_sum = sum(in_degree[u] for u in comm) if directed else out_degree_sum | |
return L_c / m - resolution * out_degree_sum * in_degree_sum * norm | |
return sum(map(community_contribution, communities)) | |
def partition_quality(G, partition): | |
"""Returns the coverage and performance of a partition of G. | |
The *coverage* of a partition is the ratio of the number of | |
intra-community edges to the total number of edges in the graph. | |
The *performance* of a partition is the number of | |
intra-community edges plus inter-community non-edges divided by the total | |
number of potential edges. | |
This algorithm has complexity $O(C^2 + L)$ where C is the number of communities and L is the number of links. | |
Parameters | |
---------- | |
G : NetworkX graph | |
partition : sequence | |
Partition of the nodes of `G`, represented as a sequence of | |
sets of nodes (blocks). Each block of the partition represents a | |
community. | |
Returns | |
------- | |
(float, float) | |
The (coverage, performance) tuple of the partition, as defined above. | |
Raises | |
------ | |
NetworkXError | |
If `partition` is not a valid partition of the nodes of `G`. | |
Notes | |
----- | |
If `G` is a multigraph; | |
- for coverage, the multiplicity of edges is counted | |
- for performance, the result is -1 (total number of possible edges is not defined) | |
References | |
---------- | |
.. [1] Santo Fortunato. | |
"Community Detection in Graphs". | |
*Physical Reports*, Volume 486, Issue 3--5 pp. 75--174 | |
<https://arxiv.org/abs/0906.0612> | |
""" | |
node_community = {} | |
for i, community in enumerate(partition): | |
for node in community: | |
node_community[node] = i | |
# `performance` is not defined for multigraphs | |
if not G.is_multigraph(): | |
# Iterate over the communities, quadratic, to calculate `possible_inter_community_edges` | |
possible_inter_community_edges = sum( | |
len(p1) * len(p2) for p1, p2 in combinations(partition, 2) | |
) | |
if G.is_directed(): | |
possible_inter_community_edges *= 2 | |
else: | |
possible_inter_community_edges = 0 | |
# Compute the number of edges in the complete graph -- `n` nodes, | |
# directed or undirected, depending on `G` | |
n = len(G) | |
total_pairs = n * (n - 1) | |
if not G.is_directed(): | |
total_pairs //= 2 | |
intra_community_edges = 0 | |
inter_community_non_edges = possible_inter_community_edges | |
# Iterate over the links to count `intra_community_edges` and `inter_community_non_edges` | |
for e in G.edges(): | |
if node_community[e[0]] == node_community[e[1]]: | |
intra_community_edges += 1 | |
else: | |
inter_community_non_edges -= 1 | |
coverage = intra_community_edges / len(G.edges) | |
if G.is_multigraph(): | |
performance = -1.0 | |
else: | |
performance = (intra_community_edges + inter_community_non_edges) / total_pairs | |
return coverage, performance | |