Bandits with heavy tail
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The stochastic multi-armed bandit problem is well understood when the reward distributions are sub-Gaussian. In this paper we examine the bandit problem under the weaker assumption that the distributions have moments of order 1+\epsilon, for some $\epsilon \in (0,1]$. Surprisingly, moments of order 2 (i.e., finite variance) are sufficient to obtain regret bounds of the same order as under sub-Gaussian reward distributions. In order to achieve such regret, we define sampling strategies based on refined estimators of the mean such as the truncated empirical mean, Catoni's M-estimator, and the median-of-means estimator. We also derive matching lower bounds that also show that the best achievable regret deteriorates when \epsilon <1.
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Scheduling jobs with unknown size distribution in a M/G/1 queue: the shifted empirical Gittins
Shifted empirical Gittins indices derived from discretized and right-shifted samples of a bounded job-size distribution yield an index policy that is asymptotically optimal for response-time minimization in M/G/1 queues.
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