Differentially Private Online Community Detection for Censored Block Models: Algorithms and Fundamental Limits
Article 2025 en
Authors
MS
Mohamed Seif
LX
Liyan Xie
AG
Andrea Goldsmith
Abstract
1 min read
We study the private online change detection problem for dynamic communities, using a censored block model (CBM). We consider edge differential privacy (DP) in both local and central settings, and propose joint change detection and community estimation procedures for both scenarios. We seek to understand the fundamental tradeoffs between the privacy budget, detection delay, and exact community recovery of community labels. Further, we provide theoretical guarantees for the effectiveness of our proposed method by showing necessary and sufficient conditions for change detection and exact recovery under edge DP. Simulation and real data examples are provided to validate the proposed methods.
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