Optimal Best Arm Identification under Differential Privacy
Marc Jourdan, Achraf Azize

TL;DR
This paper advances the understanding of best arm identification under differential privacy by establishing tighter bounds, proposing new algorithms, and demonstrating improved performance in privacy-sensitive settings.
Contribution
It introduces a new lower bound, a stopping rule, and a sampling strategy for private BAI, reducing the gap between theory and practice under differential privacy constraints.
Findings
Lower bound on sample complexity with a new information-theoretic quantity
A stopping rule with proven correctness and concentration results
An algorithm outperforming existing private BAI methods
Abstract
Best Arm Identification (BAI) algorithms are deployed in data-sensitive applications, such as adaptive clinical trials or user studies. Driven by the privacy concerns of these applications, we study the problem of fixed-confidence BAI under global Differential Privacy (DP) for Bernoulli distributions. While numerous asymptotically optimal BAI algorithms exist in the non-private setting, a significant gap remains between the best lower and upper bounds in the global DP setting. This work reduces this gap to a small multiplicative constant, for any privacy budget . First, we provide a tighter lower bound on the expected sample complexity of any -correct and -global DP strategy. Our lower bound replaces the Kullback-Leibler (KL) divergence in the transportation cost used by the non-private characteristic time with a new information-theoretic quantity that…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Cryptography and Data Security · Ethics and Social Impacts of AI
