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

28 April 2020
Bo Xue
Guanghui Wang
Yimu Wang
Lijun Zhang
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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+\epsilon1+ϵ moments for some ϵ∈(0,1]\epsilon\in(0,1]ϵ∈(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}})O(d21​T1+ϵ1​), where ddd is the dimension of contextual information and TTT is the time horizon. Meanwhile, we provide an Ω(dϵ1+ϵT11+ϵ)\Omega(d^{\frac{\epsilon}{1+\epsilon}}T^{\frac{1}{1+\epsilon}})Ω(d1+ϵϵ​T1+ϵ1​) lower bound, which implies our upper bound matches the lower bound up to polylogarithmic factors in the order of ddd and TTT when ϵ=1\epsilon=1ϵ=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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