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mightyscape-1.1-deprecated/extensions/networkx/algorithms/centrality/dispersion.py
2020-07-30 01:16:18 +02:00

106 lines
3.5 KiB
Python

from itertools import combinations
__author__ = "\n".join(['Ben Edwards (bedwards@cs.unm.edu)',
'Huston Hedinger (hstn@hdngr.com)',
'Dan Schult (dschult@colgate.edu)'])
__all__ = ['dispersion']
def dispersion(G, u=None, v=None, normalized=True, alpha=1.0, b=0.0, c=0.0):
r"""Calculate dispersion between `u` and `v` in `G`.
A link between two actors (`u` and `v`) has a high dispersion when their
mutual ties (`s` and `t`) are not well connected with each other.
Parameters
----------
G : graph
A NetworkX graph.
u : node, optional
The source for the dispersion score (e.g. ego node of the network).
v : node, optional
The target of the dispersion score if specified.
normalized : bool
If True (default) normalize by the embededness of the nodes (u and v).
Returns
-------
nodes : dictionary
If u (v) is specified, returns a dictionary of nodes with dispersion
score for all "target" ("source") nodes. If neither u nor v is
specified, returns a dictionary of dictionaries for all nodes 'u' in the
graph with a dispersion score for each node 'v'.
Notes
-----
This implementation follows Lars Backstrom and Jon Kleinberg [1]_. Typical
usage would be to run dispersion on the ego network $G_u$ if $u$ were
specified. Running :func:`dispersion` with neither $u$ nor $v$ specified
can take some time to complete.
References
----------
.. [1] Romantic Partnerships and the Dispersion of Social Ties:
A Network Analysis of Relationship Status on Facebook.
Lars Backstrom, Jon Kleinberg.
https://arxiv.org/pdf/1310.6753v1.pdf
"""
def _dispersion(G_u, u, v):
"""dispersion for all nodes 'v' in a ego network G_u of node 'u'"""
u_nbrs = set(G_u[u])
ST = set(n for n in G_u[v] if n in u_nbrs)
set_uv = set([u, v])
# all possible ties of connections that u and b share
possib = combinations(ST, 2)
total = 0
for (s, t) in possib:
# neighbors of s that are in G_u, not including u and v
nbrs_s = u_nbrs.intersection(G_u[s]) - set_uv
# s and t are not directly connected
if t not in nbrs_s:
# s and t do not share a connection
if nbrs_s.isdisjoint(G_u[t]):
# tick for disp(u, v)
total += 1
# neighbors that u and v share
embededness = len(ST)
if normalized:
if embededness + c != 0:
norm_disp = ((total + b)**alpha) / (embededness + c)
else:
norm_disp = (total + b)**alpha
dispersion = norm_disp
else:
dispersion = total
return dispersion
if u is None:
# v and u are not specified
if v is None:
results = dict((n, {}) for n in G)
for u in G:
for v in G[u]:
results[u][v] = _dispersion(G, u, v)
# u is not specified, but v is
else:
results = dict.fromkeys(G[v], {})
for u in G[v]:
results[u] = _dispersion(G, v, u)
else:
# u is specified with no target v
if v is None:
results = dict.fromkeys(G[u], {})
for v in G[u]:
results[v] = _dispersion(G, u, v)
# both u and v are specified
else:
results = _dispersion(G, u, v)
return results