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Non-Convex Joint Community Detection and Group Synchronization via Generalized Power Method

28 December 2021
Sijin Chen
Xiwei Cheng
Anthony Man-Cho So
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Abstract

This paper proposes a Generalized Power Method (GPM) to tackle the problem of community detection and group synchronization simultaneously in a direct non-convex manner. Under the stochastic group block model (SGBM), theoretical analysis indicates that the algorithm is able to exactly recover the ground truth in O(nlog⁡2n)O(n\log^2n)O(nlog2n) time, sharply outperforming the benchmark method of semidefinite programming (SDP) in O(n3.5)O(n^{3.5})O(n3.5) time. Moreover, a lower bound of parameters is given as a necessary condition for exact recovery of GPM. The new bound breaches the information-theoretic threshold for pure community detection under the stochastic block model (SBM), thus demonstrating the superiority of our simultaneous optimization algorithm over the trivial two-stage method which performs the two tasks in succession. We also conduct numerical experiments on GPM and SDP to evidence and complement our theoretical analysis.

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