betweenness_centrality¶
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betweenness_centrality(G, nodes)[source]¶ Compute betweenness centrality for nodes in a bipartite network.
Betweenness centrality of a node
vis the sum of the fraction of all-pairs shortest paths that pass throughv.Values of betweenness are normalized by the maximum possible value which for bipartite graphs is limited by the relative size of the two node sets [1].
Let
nbe the number of nodes in the node setUandmbe the number of nodes in the node setV, then nodes inUare normalized by dividing by\[\frac{1}{2} [m^2 (s + 1)^2 + m (s + 1)(2t - s - 1) - t (2s - t + 3)] ,\]where
\[s = (n - 1) \div m , t = (n - 1) \mod m ,\]and nodes in
Vare normalized by dividing by\[\frac{1}{2} [n^2 (p + 1)^2 + n (p + 1)(2r - p - 1) - r (2p - r + 3)] ,\]where,
\[p = (m - 1) \div n , r = (m - 1) \mod n .\]Parameters: - G (graph) – A bipartite graph
- nodes (list or container) – Container with all nodes in one bipartite node set.
Returns: betweenness – Dictionary keyed by node with bipartite betweenness centrality as the value.
Return type: dictionary
See also
degree_centrality(),closeness_centrality(),sets(),is_bipartite()Notes
The nodes input parameter must contain all nodes in one bipartite node set, but the dictionary returned contains all nodes from both node sets.
References
[1] Borgatti, S.P. and Halgin, D. In press. “Analyzing Affiliation Networks”. In Carrington, P. and Scott, J. (eds) The Sage Handbook of Social Network Analysis. Sage Publications. http://www.steveborgatti.com/papers/bhaffiliations.pdf