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Optimal Algorithms for Stochastic Multi-Armed Bandits with Heavy Tailed Rewards

2020-10-24NeurIPS 2020Unverified0· sign in to hype

Kyungjae Lee, Hongjun Yang, Sungbin Lim, Songhwai Oh

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Abstract

In this paper, we consider stochastic multi-armed bandits (MABs) with heavy-tailed rewards, whose p-th moment is bounded by a constant _p for 1<p2. First, we propose a novel robust estimator which does not require _p as prior information, while other existing robust estimators demand prior knowledge about _p. We show that an error probability of the proposed estimator decays exponentially fast. Using this estimator, we propose a perturbation-based exploration strategy and develop a generalized regret analysis scheme that provides upper and lower regret bounds by revealing the relationship between the regret and the cumulative density function of the perturbation. From the proposed analysis scheme, we obtain gap-dependent and gap-independent upper and lower regret bounds of various perturbations. We also find the optimal hyperparameters for each perturbation, which can achieve the minimax optimal regret bound with respect to total rounds. In simulation, the proposed estimator shows favorable performance compared to existing robust estimators for various p values and, for MAB problems, the proposed perturbation strategy outperforms existing exploration methods.

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