Achieving Privacy in the Adversarial Multi-Armed Bandit
Author(s)
Aristide C. Y. Tossou
Date issued
2017
In
Proceedings of the Thirty-First AAAI Conference on Artificial Intelligence
From page
2653
To page
2659
Subjects
Machine Learning (cs.LG) Artificial Intelligence (cs.AI) Cryptography and Security (cs.CR)
Abstract
In this paper, we improve the previously best known regret bound to achieve ϵ-differential privacy in oblivious adversarial bandits from O(T2/3/ϵ) to O(T−−√lnT/ϵ). This is achieved by combining a Laplace Mechanism with EXP3. We show that though EXP3 is already differentially private, it leaks a linear amount of information in T. However, we can improve this privacy by relying on its intrinsic exponential mechanism for selecting actions. This allows us to reach O(lnT−−−√)-DP, with a regret of O(T2/3) that holds against an adaptive adversary, an improvement from the best known of O(T3/4). This is done by using an algorithm that run EXP3 in a mini-batch loop. Finally, we run experiments that clearly demonstrate the validity of our theoretical analysis.
Event name
Proceedings of the Thirty-First AAAI Conference on Artificial Intelligence
Location
San Francisco, California, USA
Publication type
conference paper
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