Bounded regret in stochastic multi-armed bandits
Abstract
We study the stochastic multi-armed bandit problem when one knows the value μ() of an optimal arm, as a well as a positive lower bound on the smallest positive gap . We propose a new randomized policy that attains a regret uniformly bounded over time in this setting. We also prove several lower bounds, which show in particular that bounded regret is not possible if one only knows , and bounded regret of order 1/ is not possible if one only knows μ()
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