Privacy Amplification via Compression: Achieving the Optimal Privacy-Accuracy-Communication Trade-off in Distributed Mean Estimation
Wei-Ning Chen, Dan Song, Ayfer Ozgur, Peter Kairouz

TL;DR
This paper introduces a method using compression for privacy amplification in federated learning and analytics, achieving optimal accuracy under differential privacy with significantly reduced communication costs.
Contribution
It demonstrates that compression can be effectively used for privacy amplification, enabling optimal mean and frequency estimation with minimal communication under differential privacy constraints.
Findings
Optimal communication bits for mean estimation under DP
Significant communication savings in practical regimes
Privacy amplification achieved through partial information sharing
Abstract
Privacy and communication constraints are two major bottlenecks in federated learning (FL) and analytics (FA). We study the optimal accuracy of mean and frequency estimation (canonical models for FL and FA respectively) under joint communication and -differential privacy (DP) constraints. We show that in order to achieve the optimal error under -DP, it is sufficient for each client to send bits for FL and bits for FA to the server, where is the number of participating clients. Without compression, each client needs bits and bits for the mean and frequency estimation problems respectively (where corresponds to the number of trainable parameters in FL or the domain size…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Distributed Sensor Networks and Detection Algorithms · Wireless Communication Security Techniques
MethodsFeedback Alignment
