Asymptotic Optimality of Myopic Ranking and Selection Procedures

Yanwen Li, Siyang Gao, Zhongshun Shi
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引用次数: 1

Abstract

Ranking and selection (R&S) is a popular model for studying discrete-event dynamic systems. It aims to select the best design (the design with the largest mean performance) from a finite set, where the mean of each design is unknown and has to be learned by samples. Great research efforts have been devoted to this problem in the literature for developing procedures with superior empirical performance and showing their optimality. In these efforts, myopic procedures were popular. They select the best design using a 'naive' mechanism of iteratively and myopically improving an approximation of the objective measure. Although they are based on simple heuristics and lack theoretical support, they turned out highly effective, and often achieved competitive empirical performance compared to procedures that were proposed later and shown to be asymptotically optimal. In this paper, we theoretically analyze these myopic procedures and prove that they also satisfy the optimality conditions of R&S, just like some other popular R&S methods. It explains the good performance of myopic procedures in various numerical tests, and provides good insight into the structure and theoretical development of efficient R&S procedures.
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近视眼排序与选择程序的渐近最优性
排序与选择(R&S)模型是研究离散事件动态系统的常用模型。它旨在从有限的集合中选择最佳设计(具有最大平均性能的设计),其中每个设计的平均值是未知的,必须通过样本学习。为了开发具有卓越经验性能的程序并显示其最优性,文献中对这一问题进行了大量的研究。在这些努力中,近视手术很受欢迎。他们使用一种“朴素”的机制来选择最好的设计,这种机制是迭代和近视地改进客观测量的近似值。尽管它们是基于简单的启发式,缺乏理论支持,但它们被证明是非常有效的,与后来提出的、被证明是渐近最优的程序相比,它们往往取得了有竞争力的经验表现。本文从理论上对这些近视眼方法进行了分析,并证明了它们与其他一些流行的近视眼方法一样,也满足R&S的最优性条件。它解释了近视程序在各种数值试验中的良好性能,并为有效的R&S程序的结构和理论发展提供了很好的见解。
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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