Massively Parallel Algorithms for the Stochastic Block Model
Zelin Li, Pan Peng, Xianbin Zhu

TL;DR
This paper introduces new massively parallel algorithms for exactly recovering community structures in large-scale graphs generated by the Stochastic Block Model, improving efficiency and space complexity over previous methods.
Contribution
The paper presents the first $s$-space MPC algorithms for SBM community detection with improved round complexity and relaxed conditions on parameters.
Findings
Algorithms achieve exact community recovery under certain parameter conditions.
Significant reduction in round complexity compared to previous sublinear space MPC algorithms.
Efficient implementation of graph operations in the $s$-space MPC model.
Abstract
Learning the community structure of a large-scale graph is a fundamental problem in machine learning, computer science and statistics. We study the problem of exactly recovering the communities in a graph generated from the Stochastic Block Model (SBM) in the Massively Parallel Computation (MPC) model. Specifically, given vertices that are partitioned into equal-sized clusters (i.e., each has size ), a graph on these vertices is randomly generated such that each pair of vertices is connected with probability~ if they are in the same cluster and with probability if not, where . We give MPC algorithms for the SBM in the (very general) \emph{-space MPC model}, where each machine has memory . Under the condition that for any integer $r\in [3,O(\log…
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