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arxiv: 1207.4941 · v2 · pith:7XKQ4DVWnew · submitted 2012-07-20 · 📊 stat.AP · cs.SI· math.CO· math.PR· physics.soc-ph

Clustering function: a measure of social influence

classification 📊 stat.AP cs.SImath.COmath.PRphysics.soc-ph
keywords clusteringcoefficientfunctionadjacentasymptoticgivenhavingneighbours
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A commonly used characteristic of statistical dependence of adjacency relations in real networks, the clustering coefficient, evaluates chances that two neighbours of a given vertex are adjacent. An extension is obtained by considering conditional probabilities that two randomly chosen vertices are adjacent given that they have r common neighbours. We denote such probabilities cl(r) and call r-> cl(r) the clustering function. We compare clustering functions of several networks having non-negligible clustering coefficient. They show similar patterns and surprising regularity. We establish a first order asymptotic (as the number of vertices tends to infinity) of the clustering function of related random intersection graph models admitting nonvanishing clustering coefficient and asymptotic degree distribution having a finite second moment.

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