Max-Quantile Grouped Infinite-Arm Bandits

Ivan Lau, Yan Hao Ling, Mayank Shrivastava, J. Scarlett
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Abstract

In this paper, we consider a bandit problem in which there are a number of groups each consisting of infinitely many arms. Whenever a new arm is requested from a given group, its mean reward is drawn from an unknown reservoir distribution (different for each group), and the uncertainty in the arm's mean reward can only be reduced via subsequent pulls of the arm. The goal is to identify the infinite-arm group whose reservoir distribution has the highest $(1-\alpha)$-quantile (e.g., median if $\alpha = \frac{1}{2}$), using as few total arm pulls as possible. We introduce a two-step algorithm that first requests a fixed number of arms from each group and then runs a finite-arm grouped max-quantile bandit algorithm. We characterize both the instance-dependent and worst-case regret, and provide a matching lower bound for the latter, while discussing various strengths, weaknesses, algorithmic improvements, and potential lower bounds associated with our instance-dependent upper bounds.
最大分位数分组无限臂强盗
本文考虑一个土匪问题,其中有若干组,每组由无穷多个武器组成。每当从给定的组中请求新的手臂时,其平均奖励是从未知的库分布(每个组不同)中提取的,并且手臂平均奖励的不确定性只能通过随后的手臂拉动来减少。目标是确定其储层分布具有最高$(1-\alpha)$分位数(例如,$\alpha = \frac{1}{2}$的中位数)的无限臂组,使用尽可能少的总臂拉力。我们介绍了一种两步算法,首先从每组请求固定数量的手臂,然后运行有限手臂分组最大分位数强盗算法。我们描述了依赖实例和最坏情况的遗憾,并为后者提供了一个匹配的下界,同时讨论了各种优势、弱点、算法改进以及与依赖实例的上界相关的潜在下界。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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