MAB问题的贪婪选择方法中的乐观初值分析

Kambiz Shojaee, H. R. Mashhadi
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引用次数: 1

摘要

Multi - Arm Bandit (MAB)问题是一个众所周知的决策问题,即赌徒(经营者)在不同奖励分配的武器中寻求最高价值和最佳选择。近年来,针对上述MAB问题提出了许多有效的策略。该策略的过程主要包括尝试获得更好的利用和效率,同时通过有效地探索搜索空间来最大化可靠性。因此,在勘探和开采之间进行适当的权衡被认为是实现最高预期回报的必要条件。在本文中,分配初始值的影响已被研究作为上述权衡的决定因素。在此基础上,研究了初始值作为基于贪婪选择策略的隐式探索代理。利用一个类似的示例案例,对五种方法进行了仿真和比较。与一般看法相反,获得的结果表明,适当的初始化具有很高的效率和勘探能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimistic initial value analysis in a greedy selection approach to MAB problems
The Multi Arm Bandit (MAB) problem is a well-known decision making problem, where the gambler (operator), seeks the highest value and best choice among arms with different reward distributions. In recent years, many effective strategies have been proposed for the mentioned MAB problem. The strategy's procedure mainly includes attempts on acquiring a better exploitation and efficiency, while also maximizing reliability by effectively exploring the search space. Hence, a suitable tradeoff between exploration and exploitation has been deemed necessary for achieving highest expected rewards. In the presented paper, the effect of assigning initial values has been studied as a deciding factor in the aforementioned tradeoff. In this regard, the initial value has been studied as an implicit exploration agent in greedy based selection strategies. Simulation and comparison of five methods have been presented and evaluated, using a similar exemplary case. Contrary to common belief, the obtained results have illustrated the high efficiency and exploration capability with proper initializing.
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