Weighted Restless Bandit and Its Applications

P. Wan, Xiaohua Xu
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引用次数: 4

Abstract

Motivated by many applications such as cognitive radio spectrum scheduling, downlink fading channel scheduling, and unmanned aerial vehicle dynamic routing, we study two restless bandit problems. Given a bandit consisting of multiple restless arms, the state of each arm evolves as a Markov chain. Assume each arm is associated with a positive weight. At each step, we select a subset of arms to play such that the weighted sum of the selected arms cannot exceed a limit. The reward of playing each arm varies according to the arm's state. The exact state of each arm is only revealed when the arm is played. The problem weighted restless bandit aims to maximize the expected average reward over the infinite horizon. We also study an extended problem called multiply-constrained restless bandit where each time there are two simultaneous constraints on the selected arms. First, the weighted sum of the selected arms cannot exceed a limit, Second, the number of the selected arms is at most a constant K. The objective of multiply-constrained restless bandit is to maximize the long term average reward. Both problems are partially observable Markov decision processes and have been proved to be PSPACE-hard even in their special cases. We propose constant approximation algorithms for both problems. Our method involves solving a semi-infinite program, converting back to a low-complexity policy, and accounting for the average reward via a Lyapunov function analysis.
加权不宁土匪及其应用
在认知无线电频谱调度、下行衰落信道调度和无人机动态路由等诸多应用的启发下,我们研究了两个不宁强盗问题。给定一个由多个不安分的手臂组成的强盗,每个手臂的状态演变为一个马尔可夫链。假设每只手臂都有一个正的重量。在每一步,我们选择一个臂的子集来玩,这样所选臂的加权和不能超过一个限制。玩每只手臂的奖励根据手臂的状态而不同。每个手臂的确切状态只有在手臂被播放时才会显示出来。问题加权不宁盗匪的目标是最大化无限视界上的期望平均回报。我们还研究了一个扩展问题,称为多重约束的不宁土匪,每次都有两个同时约束在所选的武器上。首先,所选武器的加权和不能超过一个限制,其次,所选武器的数量最多是一个常数k。多重约束的不宁盗匪的目标是最大化长期平均奖励。这两个问题都是部分可观察的马尔可夫决策过程,并且即使在它们的特殊情况下也被证明是pspace困难的。我们对这两个问题都提出了常数近似算法。我们的方法包括解决半无限程序,转换回低复杂性策略,并通过李雅普诺夫函数分析计算平均奖励。
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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