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Algorithms for Differentially Private Multi-Armed Bandits

Published 27 Nov 2015 in stat.ML, cs.CR, and cs.LG | (1511.08681v1)

Abstract: We present differentially private algorithms for the stochastic Multi-Armed Bandit (MAB) problem. This is a problem for applications such as adaptive clinical trials, experiment design, and user-targeted advertising where private information is connected to individual rewards. Our major contribution is to show that there exist $(\epsilon, \delta)$ differentially private variants of Upper Confidence Bound algorithms which have optimal regret, $O(\epsilon{-1} + \log T)$. This is a significant improvement over previous results, which only achieve poly-log regret $O(\epsilon{-2} \log{2} T)$, because of our use of a novel interval-based mechanism. We also substantially improve the bounds of previous family of algorithms which use a continual release mechanism. Experiments clearly validate our theoretical bounds.

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