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An Improved Parametrization and Analysis of the EXP3++ Algorithm for Stochastic and Adversarial Bandits

Annual Conference Computational Learning Theory (COLT), 2017
Gábor Lugosi
Abstract

We present a new strategy for gap estimation in randomized algorithms for multiarmed bandits and combine it with the EXP3++ algorithm of Seldin and Slivkins (2014). In the stochastic regime the strategy reduces dependence of regret on a time horizon from (lnt)3(\ln t)^3 to (lnt)2(\ln t)^2 and eliminates an additive factor of order Δe1/Δ2\Delta e^{1/\Delta^2}, where Δ\Delta is the minimal gap of a problem instance. In the adversarial regime regret guarantee remains unchanged.

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