Community detection in general stochastic block models: fundamental limits and efficient recovery algorithms

نویسندگان

  • Emmanuel Abbe
  • Colin Sandon
چکیده

New phase transition phenomena have recently been discovered for the stochastic block model, for the special case of two non-overlapping symmetric communities. This gives raise in particular to new algorithmic challenges driven by the thresholds. This paper investigates whether a general phenomenon takes place for multiple communities, without imposing symmetry. In the general stochastic block model SBM(n, p,W ), n vertices are split into k communities of relative size {pi}i∈[k], and vertices in community i and j connect independently with probability {Wi,j}i,j∈[k]. This paper investigates the partial and exact recovery of communities in the general SBM (in the constant and logarithmic degree regimes), and uses the generality of the results to tackle overlapping communities. The contributions of the paper are: (i) an explicit characterization of the recovery threshold in the general SBM in terms of a new divergence function D+, which generalizes the Hellinger and Chernoff divergences, and which provides an operational meaning to a divergence function analog to the KL-divergence in the channel coding theorem, (ii) the development of an algorithm that recovers the communities all the way down to the optimal threshold and runs in quasi-linear time, showing that exact recovery has no information-theoretic to computational gap for multiple communities; note that the algorithm is optimal both in terms of achieving the threshold and in having quasi-linear complexity, (iii) the development of an efficient algorithm that detects communities in the constant degree regime with an explicit accuracy bound that can be made arbitrarily close to 1 when a prescribed signal-to-noise ratio (defined in term of the spectrum of diag(p)W ) tends to infinity. ∗This paper pas presented at FOCS 2015. †Program in Applied and Computational Mathematics, and EE department, Princeton University, Princeton, USA, [email protected]. This research was partially supported by the 2014 Bell Labs Prize. ‡Department of Mathematics, Princeton University, USA, [email protected].

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عنوان ژورنال:
  • CoRR

دوره abs/1503.00609  شماره 

صفحات  -

تاریخ انتشار 2015