Compute the clustering coefficient for nodes.
For unweighted graphs, the clustering of a node is the fraction of possible triangles through that node that exist,
where is the number of triangles through node and is the degree of .
For weighted graphs, the clustering is defined as the geometric average of the subgraph edge weights [R185],
The edge weights are normalized by the maximum weight in the network .
The value of is assigned to 0 if .
Parameters : | G : graph nodes : container of nodes, optional (default=all nodes in G)
weight : string or None, optional (default=None)
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Returns : | out : float, or dictionary
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Notes
Self loops are ignored.
References
[R185] | (1, 2) Generalizations of the clustering coefficient to weighted complex networks by J. Saramäki, M. Kivelä, J.-P. Onnela, K. Kaski, and J. Kertész, Physical Review E, 75 027105 (2007). http://jponnela.com/web_documents/a9.pdf |
Examples
>>> G=nx.complete_graph(5)
>>> print(nx.clustering(G,0))
1.0
>>> print(nx.clustering(G))
{0: 1.0, 1: 1.0, 2: 1.0, 3: 1.0, 4: 1.0}