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Partial Recovery Bounds for the Sparse Stochastic Block Model

2 February 2016
Jonathan Scarlett
Volkan Cevher
ArXiv (abs)PDFHTML
Abstract

In this paper, we study the information-theoretic limits of community detection in the symmetric two-community stochastic block model, with intra-community and inter-community edge probabilities an\frac{a}{n}na​ and bn\frac{b}{n}nb​ respectively. We consider the sparse setting, in which aaa and bbb do not scale with nnn, and provide upper and lower bounds on the proportion of community labels recovered on average. We provide a numerical example for which the bounds are near-matching for moderate values of a−ba - ba−b, and matching in the limit as a−ba-ba−b grows large.

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