Dropout-Robust Mechanisms for Differentially Private and Fully Decentralized Mean Estimation

Abstract

Achieving differentially private computations in decentralized settings poses significant challenges, particularly regarding accuracy, communication cost, and robustness against information leakage. While cryptographic solutions offer promise, they often suffer from high communication overhead or require centralization in the presence of network failures. Conversely, existing fully decentralized approaches typically rely on relaxed adversarial models or pairwise noise cancellation, the latter suffering from substantial accuracy degradation if parties unexpectedly disconnect. In this work, we propose IncA, a new protocol for fully decentralized mean estimation, a widely used primitive in data-intensive processing. Our protocol, which enforces differential privacy, requires no central orchestration and employs low-variance correlated noise, achieved by incrementally injecting sensitive information into the computation. First, we theoretically demonstrate that, when no parties permanently disconnect, our protocol achieves accuracy comparable to that of a centralized setting-already an improvement over most existing decentralized differentially private techniques. Second, we empirically show that our use of low-variance correlated noise significantly mitigates the accuracy loss experienced by existing techniques in the presence of dropouts.

César Sabater
César Sabater
Postdoctoral Researcher

I am a postdoctoral researcher in the DRIM Team at INSA Lyon. My research focuses on privacy-preserving and secure algorithms for processing sensitive data, with an emphasis on differential privacy, robustness against active adversaries, and efficient decentralized computation.

Sonia Ben Mokhtar
Sonia Ben Mokhtar
Research director

Research director CNRS

Jan Ramon
Jan Ramon
Research director

Researcher at INRIA