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Nearly Optimal Regret for Stochastic Linear Bandits with Heavy-Tailed Payoffs

International Joint Conference on Artificial Intelligence (IJCAI), 2020
Abstract

In this paper, we study the problem of stochastic linear bandits with finite action sets. Most of existing work assume the payoffs are bounded or sub-Gaussian, which may be violated in some scenarios such as financial markets. To settle this issue, we analyze the linear bandits with heavy-tailed payoffs, where the payoffs admit finite 1+ϵ1+\epsilon moments for some ϵ(0,1]\epsilon\in(0,1]. Through median of means and dynamic truncation, we propose two novel algorithms which enjoy a sublinear regret bound of O~(d12T11+ϵ)\widetilde{O}(d^{\frac{1}{2}}T^{\frac{1}{1+\epsilon}}), where dd is the dimension of contextual information and TT is the time horizon. Meanwhile, we provide an Ω(dϵ1+ϵT11+ϵ)\Omega(d^{\frac{\epsilon}{1+\epsilon}}T^{\frac{1}{1+\epsilon}}) lower bound, which implies our upper bound matches the lower bound up to polylogarithmic factors in the order of dd and TT when ϵ=1\epsilon=1. Finally, we conduct numerical experiments to demonstrate the effectiveness of our algorithms and the empirical results strongly support our theoretical guarantees.

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