Towards Q-learning the Whittle Index for Restless Bandits

Jing-Zhi Fu, Y. Nazarathy, S. Moka, P. Taylor
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引用次数: 35

Abstract

We consider the multi-armed restless bandit problem (RMABP) with an infinite horizon average cost objective. Each arm of the RMABP is associated with a Markov process that operates in two modes: active and passive. At each time slot a controller needs to designate a subset of the arms to be active, of which the associated processes will evolve differently from the passive case. Treated as an optimal control problem, the optimal solution of the RMABP is known to be computationally intractable. In many cases, the Whittle index policy achieves near optimal performance and can be tractably found. Nevertheless, computation of the Whittle indices requires knowledge of the transition matrices of the underlying processes, which are sometimes hidden from decision makers. In this paper, we take first steps towards a tractable and efficient reinforcement learning algorithm for controlling such a system. We setup parallel Q-learning recursions, with each recursion mapping to individual possible values of the Whittle index. We then update these recursions as we control the system, learning an approximation of the Whittle index as time evolves. Tested on several examples, our control outperforms naive priority allocations and nears the performance of the fully-informed Whittle index policy.
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论对“不宁匪”惠特尔指数的Q-learning
考虑具有无限视界平均成本目标的多臂不宁土匪问题(RMABP)。RMABP的每个分支都与一个马尔可夫过程相关联,该过程以两种模式运行:主动和被动。在每个时隙,控制器需要指定一个臂的子集为活动臂,其相关过程将以不同于被动情况的方式发展。作为一个最优控制问题,RMABP的最优解在计算上是难以解决的。在许多情况下,Whittle索引策略实现了接近最优的性能,并且可以跟踪地找到。然而,计算惠特尔指数需要了解潜在过程的转移矩阵,这些过程有时对决策者是隐藏的。在本文中,我们为控制这样的系统迈出了易于处理和有效的强化学习算法的第一步。我们设置了并行q学习递归,每个递归映射到Whittle索引的单个可能值。然后我们在控制系统的同时更新这些递归,随着时间的推移学习惠特尔指数的近似值。经过几个例子的测试,我们的控制优于单纯的优先级分配,接近完全知情的Whittle索引策略的性能。
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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