English

A Proof Of The Block Model Threshold Conjecture

Probability 2015-08-26 v4 Social and Information Networks

Abstract

We study a random graph model named the "block model" in statistics and the "planted partition model" in theoretical computer science. In its simplest form, this is a random graph with two equal-sized clusters, with a between-class edge probability of qq and a within-class edge probability of pp. A striking conjecture of Decelle, Krzkala, Moore and Zdeborov\'a based on deep, non-rigorous ideas from statistical physics, gave a precise prediction for the algorithmic threshold of clustering in the sparse planted partition model. In particular, if p=a/np = a/n and q=b/nq = b/n, s=(ab)/2s=(a-b)/2 and p=(a+b)/2p=(a+b)/2 then Decelle et al.\ conjectured that it is possible to efficiently cluster in a way correlated with the true partition if s2>ps^2 > p and impossible if s2<ps^2 < p. By comparison, the best-known rigorous result is that of Coja-Oghlan, who showed that clustering is possible if s2>Cplnps^2 > C p \ln p for some sufficiently large CC. In a previous work, we proved that indeed it is information theoretically impossible to to cluster if s2<ps^2 < p and furthermore it is information theoretically impossible to even estimate the model parameters from the graph when s2<ps^2 < p. Here we complete the proof of the conjecture by providing an efficient algorithm for clustering in a way that is correlated with the true partition when s2>ps^2 > p. A different independent proof of the same result was recently obtained by Laurent Massoulie.

Keywords

Cite

@article{arxiv.1311.4115,
  title  = {A Proof Of The Block Model Threshold Conjecture},
  author = {Elchanan Mossel and Joe Neeman and Allan Sly},
  journal= {arXiv preprint arXiv:1311.4115},
  year   = {2015}
}

Comments

32 pages, v3 extends the results to slowly growing degrees

R2 v1 2026-06-22T02:08:55.148Z