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MOTS: Minimax Optimal Thompson Sampling

Authors :
Jin, Tianyuan
Xu, Pan
Shi, Jieming
Xiao, Xiaokui
Gu, Quanquan
Publication Year :
2020

Abstract

Thompson sampling is one of the most widely used algorithms for many online decision problems, due to its simplicity in implementation and superior empirical performance over other state-of-the-art methods. Despite its popularity and empirical success, it has remained an open problem whether Thompson sampling can match the minimax lower bound $\Omega(\sqrt{KT})$ for $K$-armed bandit problems, where $T$ is the total time horizon. In this paper, we solve this long open problem by proposing a variant of Thompson sampling called MOTS that adaptively clips the sampling instance of the chosen arm at each time step. We prove that this simple variant of Thompson sampling achieves the minimax optimal regret bound $O(\sqrt{KT})$ for finite time horizon $T$, as well as the asymptotic optimal regret bound for Gaussian rewards when $T$ approaches infinity. To our knowledge, MOTS is the first Thompson sampling type algorithm that achieves the minimax optimality for multi-armed bandit problems.<br />Comment: 27 pages, 1 table, 2 figures. This version improves the presentation in V2

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2003.01803
Document Type :
Working Paper