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arxiv: 1702.06363 · v1 · pith:DVBIX5J3new · submitted 2017-02-21 · ⚛️ physics.soc-ph · cs.SI· physics.data-an

Stochastic graph Voronoi tessellation reveals community structure

classification ⚛️ physics.soc-ph cs.SIphysics.data-an
keywords networkinformationvoronoicellcenterscommunitymeasurephenomenon
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Given a network, the statistical ensemble of its graph-Voronoi diagrams with randomly chosen cell centers exhibits properties convertible into information on the network's large scale structures. We define a node-pair level measure called {\it Voronoi cohesion} which describes the probability for sharing the same Voronoi cell, when randomly choosing $g$ centers in the network. This measure provides information based on the global context (the network in its entirety) a type of information that is not carried by other similarity measures. We explore the mathematical background of this phenomenon and several of its potential applications. A special focus is laid on the possibilities and limitations pertaining to the exploitation of the phenomenon for community detection purposes.

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