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arxiv: 1410.8521 · v7 · pith:DMSQ4UISnew · submitted 2014-10-23 · 💻 cs.SI · cond-mat.stat-mech· cs.CG· cs.NI· math.PR· physics.soc-ph

Betweenness Centrality in Dense Random Geometric Networks

classification 💻 cs.SI cond-mat.stat-mechcs.CGcs.NImath.PRphysics.soc-ph
keywords networknetworksbetweennessboundarycentralitydensegeometricrandom
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Random geometric networks consist of 1) a set of nodes embedded randomly in a bounded domain $\mathcal{V} \subseteq \mathbb{R}^d$ and 2) links formed probabilistically according to a function of mutual Euclidean separation. We quantify how often all paths in the network characterisable as topologically `shortest' contain a given node (betweenness centrality), deriving an expression in terms of a known integral whenever 1) the network boundary is the perimeter of a disk and 2) the network is extremely dense. Our method shows how similar formulas can be obtained for any convex geometry. Numerical corroboration is provided, as well as a discussion of our formula's potential use for cluster head election and boundary detection in densely deployed wireless ad hoc networks.

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