ai-content-maker/.venv/Lib/site-packages/networkx/algorithms/richclub.py

121 lines
4.1 KiB
Python

"""Functions for computing rich-club coefficients."""
from itertools import accumulate
import networkx as nx
from networkx.utils import not_implemented_for
__all__ = ["rich_club_coefficient"]
@not_implemented_for("directed")
@not_implemented_for("multigraph")
def rich_club_coefficient(G, normalized=True, Q=100, seed=None):
r"""Returns the rich-club coefficient of the graph `G`.
For each degree *k*, the *rich-club coefficient* is the ratio of the
number of actual to the number of potential edges for nodes with
degree greater than *k*:
.. math::
\phi(k) = \frac{2 E_k}{N_k (N_k - 1)}
where `N_k` is the number of nodes with degree larger than *k*, and
`E_k` is the number of edges among those nodes.
Parameters
----------
G : NetworkX graph
Undirected graph with neither parallel edges nor self-loops.
normalized : bool (optional)
Normalize using randomized network as in [1]_
Q : float (optional, default=100)
If `normalized` is True, perform `Q * m` double-edge
swaps, where `m` is the number of edges in `G`, to use as a
null-model for normalization.
seed : integer, random_state, or None (default)
Indicator of random number generation state.
See :ref:`Randomness<randomness>`.
Returns
-------
rc : dictionary
A dictionary, keyed by degree, with rich-club coefficient values.
Examples
--------
>>> G = nx.Graph([(0, 1), (0, 2), (1, 2), (1, 3), (1, 4), (4, 5)])
>>> rc = nx.rich_club_coefficient(G, normalized=False, seed=42)
>>> rc[0]
0.4
Notes
-----
The rich club definition and algorithm are found in [1]_. This
algorithm ignores any edge weights and is not defined for directed
graphs or graphs with parallel edges or self loops.
Estimates for appropriate values of `Q` are found in [2]_.
References
----------
.. [1] Julian J. McAuley, Luciano da Fontoura Costa,
and Tibério S. Caetano,
"The rich-club phenomenon across complex network hierarchies",
Applied Physics Letters Vol 91 Issue 8, August 2007.
https://arxiv.org/abs/physics/0701290
.. [2] R. Milo, N. Kashtan, S. Itzkovitz, M. E. J. Newman, U. Alon,
"Uniform generation of random graphs with arbitrary degree
sequences", 2006. https://arxiv.org/abs/cond-mat/0312028
"""
if nx.number_of_selfloops(G) > 0:
raise Exception(
"rich_club_coefficient is not implemented for " "graphs with self loops."
)
rc = _compute_rc(G)
if normalized:
# make R a copy of G, randomize with Q*|E| double edge swaps
# and use rich_club coefficient of R to normalize
R = G.copy()
E = R.number_of_edges()
nx.double_edge_swap(R, Q * E, max_tries=Q * E * 10, seed=seed)
rcran = _compute_rc(R)
rc = {k: v / rcran[k] for k, v in rc.items()}
return rc
def _compute_rc(G):
"""Returns the rich-club coefficient for each degree in the graph
`G`.
`G` is an undirected graph without multiedges.
Returns a dictionary mapping degree to rich-club coefficient for
that degree.
"""
deghist = nx.degree_histogram(G)
total = sum(deghist)
# Compute the number of nodes with degree greater than `k`, for each
# degree `k` (omitting the last entry, which is zero).
nks = (total - cs for cs in accumulate(deghist) if total - cs > 1)
# Create a sorted list of pairs of edge endpoint degrees.
#
# The list is sorted in reverse order so that we can pop from the
# right side of the list later, instead of popping from the left
# side of the list, which would have a linear time cost.
edge_degrees = sorted((sorted(map(G.degree, e)) for e in G.edges()), reverse=True)
ek = G.number_of_edges()
k1, k2 = edge_degrees.pop()
rc = {}
for d, nk in enumerate(nks):
while k1 <= d:
if len(edge_degrees) == 0:
ek = 0
break
k1, k2 = edge_degrees.pop()
ek -= 1
rc[d] = 2 * ek / (nk * (nk - 1))
return rc