Differentially Private Community Detection for Stochastic Block Models
January 31, 2022 Β· Declared Dead Β· π International Conference on Machine Learning
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Authors
Mohamed Seif, Dung Nguyen, Anil Vullikanti, Ravi Tandon
arXiv ID
2202.00636
Category
cs.SI: Social & Info Networks
Cross-listed
cs.CR,
cs.IT,
cs.LG
Citations
23
Venue
International Conference on Machine Learning
Last Checked
4 months ago
Abstract
The goal of community detection over graphs is to recover underlying labels/attributes of users (e.g., political affiliation) given the connectivity between users (represented by adjacency matrix of a graph). There has been significant recent progress on understanding the fundamental limits of community detection when the graph is generated from a stochastic block model (SBM). Specifically, sharp information theoretic limits and efficient algorithms have been obtained for SBMs as a function of $p$ and $q$, which represent the intra-community and inter-community connection probabilities. In this paper, we study the community detection problem while preserving the privacy of the individual connections (edges) between the vertices. Focusing on the notion of $(Ξ΅, Ξ΄)$-edge differential privacy (DP), we seek to understand the fundamental tradeoffs between $(p, q)$, DP budget $(Ξ΅, Ξ΄)$, and computational efficiency for exact recovery of the community labels. To this end, we present and analyze the associated information-theoretic tradeoffs for three broad classes of differentially private community recovery mechanisms: a) stability based mechanism; b) sampling based mechanisms; and c) graph perturbation mechanisms. Our main findings are that stability and sampling based mechanisms lead to a superior tradeoff between $(p,q)$ and the privacy budget $(Ξ΅, Ξ΄)$; however this comes at the expense of higher computational complexity. On the other hand, albeit low complexity, graph perturbation mechanisms require the privacy budget $Ξ΅$ to scale as $Ξ©(\log(n))$ for exact recovery. To the best of our knowledge, this is the first work to study the impact of privacy constraints on the fundamental limits for community detection.
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