固定置信度下多臂强盗的最佳臂识别算法

Kevin G. Jamieson, R. Nowak
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引用次数: 160

摘要

本文关注的是在多臂强盗问题中使用尽可能少的独立样本来识别具有最高平均值的臂。虽然所谓的“最佳臂问题”可以追溯到20世纪50年代,但直到最近才提出了两种性质不同的算法来实现该问题的最佳样本复杂度。本文回顾了这些最新进展,并表明大多数最佳臂算法可以被描述为两种最新最优算法的变体。对于每种算法类型,我们都考虑一个特定的实例来进行理论和经验分析,从而揭示这些算法的理论分析的核心组成部分以及算法在实践中如何工作的直觉。导出的样本复杂度界限是新颖的,并且在某些情况下改进了以前的界限。此外,我们比较了各种最先进的算法经验,通过模拟的最佳臂问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Best-arm identification algorithms for multi-armed bandits in the fixed confidence setting
This paper is concerned with identifying the arm with the highest mean in a multi-armed bandit problem using as few independent samples from the arms as possible. While the so-called “best arm problem” dates back to the 1950s, only recently were two qualitatively different algorithms proposed that achieve the optimal sample complexity for the problem. This paper reviews these recent advances and shows that most best-arm algorithms can be described as variants of the two recent optimal algorithms. For each algorithm type we consider a specific instance to analyze both theoretically and empirically thereby exposing the core components of the theoretical analysis of these algorithms and intuition about how the algorithms work in practice. The derived sample complexity bounds are novel, and in certain cases improve upon previous bounds. In addition, we compare a variety of state-of-the-art algorithms empirically through simulations for the best-arm-problem.
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