Federated Experiment Design under Distributed Differential Privacy
Wei-Ning Chen, Graham Cormode, Akash Bharadwaj, Peter Romov, and Ayfer \"Ozg\"ur

TL;DR
This paper develops privacy-preserving methods for distributed experiment design under differential privacy, enabling accurate estimation of treatment effects with minimal trust in service providers and practical scalability.
Contribution
It introduces local privatization mechanisms compatible with secure aggregation for distributed experiments under differential privacy, a novel approach in private A/B testing.
Findings
Mechanisms achieve asymptotic and non-asymptotic utility guarantees.
Scalable solutions handle large participant numbers.
Experimental results demonstrate effective privacy-utility trade-offs.
Abstract
Experiment design has a rich history dating back over a century and has found many critical applications across various fields since then. The use and collection of users' data in experiments often involve sensitive personal information, so additional measures to protect individual privacy are required during data collection, storage, and usage. In this work, we focus on the rigorous protection of users' privacy (under the notion of differential privacy (DP)) while minimizing the trust toward service providers. Specifically, we consider the estimation of the average treatment effect (ATE) under DP, while only allowing the analyst to collect population-level statistics via secure aggregation, a distributed protocol enabling a service provider to aggregate information without accessing individual data. Although a vital component in modern A/B testing workflows, private distributed…
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Taxonomy
TopicsAdvanced Causal Inference Techniques · Privacy-Preserving Technologies in Data · Statistical Methods in Clinical Trials
