383 lines
13 KiB
Python
383 lines
13 KiB
Python
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# Copyright (C) 2017 by
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# Romain Fontugne <romain@iij.ad.jp>
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# All rights reserved.
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# BSD license.
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#
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# Author: Romain Fontugne (romain@iij.ad.jp)
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"""Functions for estimating the small-world-ness of graphs.
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A small world network is characterized by a small average shortest path length,
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and a large clustering coefficient.
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Small-worldness is commonly measured with the coefficient sigma or omega.
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Both coefficients compare the average clustering coefficient and shortest path
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length of a given graph against the same quantities for an equivalent random
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or lattice graph.
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For more information, see the Wikipedia article on small-world network [1]_.
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.. [1] Small-world network:: https://en.wikipedia.org/wiki/Small-world_network
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"""
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import networkx as nx
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from networkx.utils import not_implemented_for
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from networkx.utils import py_random_state
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__all__ = ['random_reference', 'lattice_reference', 'sigma', 'omega']
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@py_random_state(3)
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@not_implemented_for('directed')
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@not_implemented_for('multigraph')
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def random_reference(G, niter=1, connectivity=True, seed=None):
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"""Compute a random graph by swapping edges of a given graph.
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Parameters
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----------
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G : graph
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An undirected graph with 4 or more nodes.
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niter : integer (optional, default=1)
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An edge is rewired approximately `niter` times.
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connectivity : boolean (optional, default=True)
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When True, ensure connectivity for the randomized graph.
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seed : integer, random_state, or None (default)
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Indicator of random number generation state.
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See :ref:`Randomness<randomness>`.
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Returns
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-------
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G : graph
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The randomized graph.
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Notes
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-----
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The implementation is adapted from the algorithm by Maslov and Sneppen
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(2002) [1]_.
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References
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----------
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.. [1] Maslov, Sergei, and Kim Sneppen.
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"Specificity and stability in topology of protein networks."
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Science 296.5569 (2002): 910-913.
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"""
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if G.is_directed():
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msg = "random_reference() not defined for directed graphs."
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raise nx.NetworkXError(msg)
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if len(G) < 4:
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raise nx.NetworkXError("Graph has less than four nodes.")
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from networkx.utils import cumulative_distribution, discrete_sequence
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local_conn = nx.connectivity.local_edge_connectivity
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G = G.copy()
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keys, degrees = zip(*G.degree()) # keys, degree
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cdf = nx.utils.cumulative_distribution(degrees) # cdf of degree
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nnodes = len(G)
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nedges = nx.number_of_edges(G)
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niter = niter*nedges
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ntries = int(nnodes*nedges/(nnodes*(nnodes-1)/2))
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swapcount = 0
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for i in range(niter):
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n = 0
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while n < ntries:
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# pick two random edges without creating edge list
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# choose source node indices from discrete distribution
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(ai, ci) = discrete_sequence(2, cdistribution=cdf, seed=seed)
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if ai == ci:
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continue # same source, skip
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a = keys[ai] # convert index to label
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c = keys[ci]
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# choose target uniformly from neighbors
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b = seed.choice(list(G.neighbors(a)))
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d = seed.choice(list(G.neighbors(c)))
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bi = keys.index(b)
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di = keys.index(d)
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if b in [a, c, d] or d in [a, b, c]:
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continue # all vertices should be different
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# don't create parallel edges
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if (d not in G[a]) and (b not in G[c]):
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G.add_edge(a, d)
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G.add_edge(c, b)
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G.remove_edge(a, b)
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G.remove_edge(c, d)
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# Check if the graph is still connected
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if connectivity and local_conn(G, a, b) == 0:
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# Not connected, revert the swap
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G.remove_edge(a, d)
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G.remove_edge(c, b)
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G.add_edge(a, b)
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G.add_edge(c, d)
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else:
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swapcount += 1
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break
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n += 1
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return G
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@py_random_state(4)
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@not_implemented_for('directed')
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@not_implemented_for('multigraph')
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def lattice_reference(G, niter=1, D=None, connectivity=True, seed=None):
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"""Latticize the given graph by swapping edges.
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Parameters
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----------
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G : graph
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An undirected graph with 4 or more nodes.
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niter : integer (optional, default=1)
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An edge is rewired approximatively niter times.
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D : numpy.array (optional, default=None)
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Distance to the diagonal matrix.
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connectivity : boolean (optional, default=True)
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Ensure connectivity for the latticized graph when set to True.
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seed : integer, random_state, or None (default)
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Indicator of random number generation state.
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See :ref:`Randomness<randomness>`.
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Returns
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-------
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G : graph
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The latticized graph.
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Notes
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-----
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The implementation is adapted from the algorithm by Sporns et al. [1]_.
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which is inspired from the original work by Maslov and Sneppen(2002) [2]_.
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References
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----------
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.. [1] Sporns, Olaf, and Jonathan D. Zwi.
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"The small world of the cerebral cortex."
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Neuroinformatics 2.2 (2004): 145-162.
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.. [2] Maslov, Sergei, and Kim Sneppen.
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"Specificity and stability in topology of protein networks."
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Science 296.5569 (2002): 910-913.
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"""
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import numpy as np
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from networkx.utils import cumulative_distribution, discrete_sequence
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local_conn = nx.connectivity.local_edge_connectivity
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if G.is_directed():
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msg = "lattice_reference() not defined for directed graphs."
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raise nx.NetworkXError(msg)
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if len(G) < 4:
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raise nx.NetworkXError("Graph has less than four nodes.")
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# Instead of choosing uniformly at random from a generated edge list,
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# this algorithm chooses nonuniformly from the set of nodes with
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# probability weighted by degree.
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G = G.copy()
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keys, degrees = zip(*G.degree()) # keys, degree
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cdf = cumulative_distribution(degrees) # cdf of degree
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nnodes = len(G)
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nedges = nx.number_of_edges(G)
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if D is None:
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D = np.zeros((nnodes, nnodes))
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un = np.arange(1, nnodes)
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um = np.arange(nnodes - 1, 0, -1)
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u = np.append((0,), np.where(un < um, un, um))
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for v in range(int(np.ceil(nnodes / 2))):
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D[nnodes - v - 1, :] = np.append(u[v + 1:], u[:v + 1])
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D[v, :] = D[nnodes - v - 1, :][::-1]
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niter = niter*nedges
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ntries = int(nnodes * nedges / (nnodes * (nnodes - 1) / 2))
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swapcount = 0
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for i in range(niter):
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n = 0
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while n < ntries:
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# pick two random edges without creating edge list
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# choose source node indices from discrete distribution
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(ai, ci) = discrete_sequence(2, cdistribution=cdf, seed=seed)
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if ai == ci:
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continue # same source, skip
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a = keys[ai] # convert index to label
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c = keys[ci]
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# choose target uniformly from neighbors
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b = seed.choice(list(G.neighbors(a)))
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d = seed.choice(list(G.neighbors(c)))
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bi = keys.index(b)
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di = keys.index(d)
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if b in [a, c, d] or d in [a, b, c]:
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continue # all vertices should be different
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# don't create parallel edges
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if (d not in G[a]) and (b not in G[c]):
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if D[ai, bi] + D[ci, di] >= D[ai, ci] + D[bi, di]:
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# only swap if we get closer to the diagonal
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G.add_edge(a, d)
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G.add_edge(c, b)
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G.remove_edge(a, b)
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G.remove_edge(c, d)
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# Check if the graph is still connected
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if connectivity and local_conn(G, a, b) == 0:
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# Not connected, revert the swap
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G.remove_edge(a, d)
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G.remove_edge(c, b)
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G.add_edge(a, b)
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G.add_edge(c, d)
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else:
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swapcount += 1
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break
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n += 1
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return G
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@py_random_state(3)
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@not_implemented_for('directed')
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@not_implemented_for('multigraph')
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def sigma(G, niter=100, nrand=10, seed=None):
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"""Returns the small-world coefficient (sigma) of the given graph.
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The small-world coefficient is defined as:
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sigma = C/Cr / L/Lr
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where C and L are respectively the average clustering coefficient and
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average shortest path length of G. Cr and Lr are respectively the average
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clustering coefficient and average shortest path length of an equivalent
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random graph.
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A graph is commonly classified as small-world if sigma>1.
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Parameters
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----------
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G : NetworkX graph
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An undirected graph.
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niter : integer (optional, default=100)
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Approximate number of rewiring per edge to compute the equivalent
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random graph.
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nrand : integer (optional, default=10)
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Number of random graphs generated to compute the average clustering
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coefficient (Cr) and average shortest path length (Lr).
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seed : integer, random_state, or None (default)
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Indicator of random number generation state.
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See :ref:`Randomness<randomness>`.
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Returns
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-------
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sigma : float
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The small-world coefficient of G.
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Notes
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-----
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The implementation is adapted from Humphries et al. [1]_ [2]_.
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References
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----------
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.. [1] The brainstem reticular formation is a small-world, not scale-free,
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network M. D. Humphries, K. Gurney and T. J. Prescott,
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Proc. Roy. Soc. B 2006 273, 503-511, doi:10.1098/rspb.2005.3354.
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.. [2] Humphries and Gurney (2008).
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"Network 'Small-World-Ness': A Quantitative Method for Determining
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Canonical Network Equivalence".
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PLoS One. 3 (4). PMID 18446219. doi:10.1371/journal.pone.0002051.
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"""
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import numpy as np
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# Compute the mean clustering coefficient and average shortest path length
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# for an equivalent random graph
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randMetrics = {"C": [], "L": []}
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for i in range(nrand):
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Gr = random_reference(G, niter=niter, seed=seed)
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randMetrics["C"].append(nx.transitivity(Gr))
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randMetrics["L"].append(nx.average_shortest_path_length(Gr))
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C = nx.transitivity(G)
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L = nx.average_shortest_path_length(G)
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Cr = np.mean(randMetrics["C"])
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Lr = np.mean(randMetrics["L"])
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sigma = (C / Cr) / (L / Lr)
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return sigma
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@py_random_state(3)
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@not_implemented_for('directed')
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@not_implemented_for('multigraph')
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def omega(G, niter=100, nrand=10, seed=None):
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"""Returns the small-world coefficient (omega) of a graph
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The small-world coefficient of a graph G is:
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omega = Lr/L - C/Cl
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where C and L are respectively the average clustering coefficient and
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average shortest path length of G. Lr is the average shortest path length
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of an equivalent random graph and Cl is the average clustering coefficient
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of an equivalent lattice graph.
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The small-world coefficient (omega) ranges between -1 and 1. Values close
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to 0 means the G features small-world characteristics. Values close to -1
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means G has a lattice shape whereas values close to 1 means G is a random
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graph.
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Parameters
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----------
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G : NetworkX graph
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An undirected graph.
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niter: integer (optional, default=100)
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Approximate number of rewiring per edge to compute the equivalent
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random graph.
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nrand: integer (optional, default=10)
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Number of random graphs generated to compute the average clustering
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coefficient (Cr) and average shortest path length (Lr).
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seed : integer, random_state, or None (default)
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Indicator of random number generation state.
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See :ref:`Randomness<randomness>`.
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Returns
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-------
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omega : float
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The small-work coefficient (omega)
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Notes
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-----
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The implementation is adapted from the algorithm by Telesford et al. [1]_.
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References
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----------
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.. [1] Telesford, Joyce, Hayasaka, Burdette, and Laurienti (2011).
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"The Ubiquity of Small-World Networks".
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Brain Connectivity. 1 (0038): 367-75. PMC 3604768. PMID 22432451.
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doi:10.1089/brain.2011.0038.
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"""
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import numpy as np
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# Compute the mean clustering coefficient and average shortest path length
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# for an equivalent random graph
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randMetrics = {"C": [], "L": []}
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for i in range(nrand):
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Gr = random_reference(G, niter=niter, seed=seed)
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Gl = lattice_reference(G, niter=niter, seed=seed)
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randMetrics["C"].append(nx.transitivity(Gl))
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randMetrics["L"].append(nx.average_shortest_path_length(Gr))
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C = nx.transitivity(G)
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L = nx.average_shortest_path_length(G)
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Cl = np.mean(randMetrics["C"])
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Lr = np.mean(randMetrics["L"])
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omega = (Lr / L) - (C / Cl)
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return omega
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