Mohamed Seif;Yanxi Chen;Andrea J. Goldsmith;H. Vincent Poor
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Differentially Private Sketch-and-Solve for Community Detection via Semidefinite Programming
We study the community detection problem over binary symmetric stochastic block models (SBMs) while preserving the privacy of the individual connections between the vertices. We present and analyze the associated information-theoretic tradeoff for differentially private exact recovery of the underlying communities by deriving sufficient separation conditions between the intra-community and inter-community connection probabilities while taking into account the privacy budget and graph sketching as a speed-up technique to improve the computational complexity of maximum likelihood (ML) based recovery algorithms.