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Merge-split Markov chain Monte Carlo for community detection

Tiago P. Peixoto

2020Physical review. E46 citationsDOIOpen Access PDF

Abstract

We present a Markov chain Monte Carlo scheme based on merges and splits of groups that is capable of efficiently sampling from the posterior distribution of network partitions, defined according to the stochastic block model (SBM). We demonstrate how schemes based on the move of single nodes between groups systematically fail at correctly sampling from the posterior distribution even on small networks, and how our merge-split approach behaves significantly better, and improves the mixing time of the Markov chain by several orders of magnitude in typical cases. We also show how the scheme can be straightforwardly extended to nested versions of the SBM, yielding asymptotically exact samples of hierarchical network partitions.

Topics & Concepts

Merge (version control)Markov chain Monte CarloMarkov chainComputer scienceMarkov chain mixing timeMonte Carlo methodAlgorithmImportance samplingMathematicsHybrid Monte CarloStatistical physicsVariable-order Markov modelMarkov modelStatisticsPhysicsInformation retrievalComplex Network Analysis TechniquesFunctional Brain Connectivity StudiesOpinion Dynamics and Social Influence