Contextual Multi-Armed Bandit With Costly Feature Observation in Non-Stationary Environments

IF 2.9 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Saeed Ghoorchian;Evgenii Kortukov;Setareh Maghsudi
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引用次数: 0

Abstract

Maximizing long-term rewards is the primary goal in sequential decision-making problems. The majority of existing methods assume that side information is freely available, enabling the learning agent to observe all features' states before making a decision. In real-world problems, however, collecting beneficial information is often costly. That implies that, besides individual arms' reward, learning the observations of the features' states is essential to improve the decision-making strategy. The problem is aggravated in a non-stationary environment where reward and cost distributions undergo abrupt changes over time. To address the aforementioned dual learning problem, we extend the contextual bandit setting and allow the agent to observe subsets of features' states. The objective is to maximize the long-term average gain, which is the difference between the accumulated rewards and the paid costs on average. Therefore, the agent faces a trade-off between minimizing the cost of information acquisition and possibly improving the decision-making process using the obtained information. To this end, we develop an algorithm that guarantees a sublinear regret in time. Numerical results demonstrate the superiority of our proposed policy in a real-world scenario.
在非静态环境中进行高成本特征观测的情境多臂匪帮
最大化长期回报是连续决策问题的首要目标。现有的大多数方法都假设边际信息是免费提供的,学习代理可以在做出决策前观察到所有特征的状态。然而,在实际问题中,收集有利信息往往成本高昂。这就意味着,除了单兵奖励外,学习代理对特征状态的观察对于改进决策策略也至关重要。在非稳态环境中,奖励和成本分布会随着时间的推移而发生突变,这就加剧了问题的严重性。为了解决上述双重学习问题,我们扩展了情境强盗设置,允许代理观察特征状态子集。目标是最大化长期平均收益,即累积奖励与平均支付成本之间的差值。因此,代理需要在获取信息的成本最小化与利用所获信息改进决策过程之间做出权衡。为此,我们开发了一种算法,它能保证时间上的亚线性遗憾。数值结果表明,我们提出的策略在现实世界中具有优越性。
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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来源期刊
CiteScore
5.30
自引率
0.00%
发文量
0
审稿时长
22 weeks
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