SPRT-Based Efficient Best Arm Identification in Stochastic Bandits

Arpan Mukherjee;Ali Tajer
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引用次数: 2

Abstract

This paper investigates the best arm identification (BAI) problem in stochastic multi-armed bandits in the fixed confidence setting. The general class of the exponential family of bandits is considered. The existing algorithms for the exponential family of bandits face computational challenges. To mitigate these challenges, the BAI problem is viewed and analyzed as a sequential composite hypothesis testing task, and a framework is proposed that adopts the likelihood ratio-based tests known to be effective for sequential testing. Based on this test statistic, a BAI algorithm is designed that leverages the canonical sequential probability ratio tests for arm selection and is amenable to tractable analysis for the exponential family of bandits. This algorithm has two key features: (1) its sample complexity is asymptotically optimal, and (2) it is guaranteed to be $\delta -$ PAC. Existing efficient approaches focus on the Gaussian setting and require Thompson sampling for the arm deemed the best and the challenger arm. Additionally, this paper analytically quantifies the computational expense of identifying the challenger in an existing approach. Finally, numerical experiments are provided to support the analysis.
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基于sprt的随机盗匪有效最佳臂识别
本文研究了在固定置信度条件下随机多武装匪徒的最佳武器识别问题。考虑了土匪指数族的一般类。现有的土匪指数族算法面临计算挑战。为了缓解这些挑战,BAI问题被视为一个连续的复合假设测试任务,并进行了分析,提出了一个框架,该框架采用了已知对连续测试有效的基于似然比的测试。基于这一测试统计,设计了一种BAI算法,该算法利用正则序列概率比测试进行手臂选择,并适用于指数土匪家族的易处理分析。该算法具有两个关键特征:(1)其样本复杂度是渐近最优的;(2)保证其为$\delta-$PAC。现有的有效方法侧重于高斯设置,并且需要对被认为是最好的手臂和挑战者手臂进行汤普森采样。此外,本文分析量化了现有方法中识别挑战者的计算费用。最后,通过数值实验为分析提供了支持。
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