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arxiv: 1412.6156 · v2 · pith:IP7EOMCHnew · submitted 2014-11-24 · 📊 stat.ML · cs.DS· math.PR

Achieving Exact Cluster Recovery Threshold via Semidefinite Programming

classification 📊 stat.ML cs.DSmath.PR
keywords clustersprogrammingsemidefinitethresholdachievesclustergraphmodel
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The binary symmetric stochastic block model deals with a random graph of $n$ vertices partitioned into two equal-sized clusters, such that each pair of vertices is connected independently with probability $p$ within clusters and $q$ across clusters. In the asymptotic regime of $p=a \log n/n$ and $q=b \log n/n$ for fixed $a,b$ and $n \to \infty$, we show that the semidefinite programming relaxation of the maximum likelihood estimator achieves the optimal threshold for exactly recovering the partition from the graph with probability tending to one, resolving a conjecture of Abbe et al. \cite{Abbe14}. Furthermore, we show that the semidefinite programming relaxation also achieves the optimal recovery threshold in the planted dense subgraph model containing a single cluster of size proportional to $n$.

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