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An algorithm with nearly optimal pseudo-regret for both stochastic and adversarial bandits

Abstract

We present an algorithm that achieves almost optimal pseudo-regret bounds against adversarial and stochastic bandits. Against adversarial bandits the pseudo-regret is O(Knlogn)O(K\sqrt{n \log n}) and against stochastic bandits the pseudo-regret is O(i(logn)/Δi)O(\sum_i (\log n)/\Delta_i). We also show that no algorithm with O(logn)O(\log n) pseudo-regret against stochastic bandits can achieve O~(n)\tilde{O}(\sqrt{n}) expected regret against adaptive adversarial bandits. This complements previous results of Bubeck and Slivkins (2012) that show O~(n)\tilde{O}(\sqrt{n}) expected adversarial regret with O((logn)2)O((\log n)^2) stochastic pseudo-regret.

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