Selecting good enough simulated designs

Fei Gao, Siyang Gao
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引用次数: 1

Abstract

This paper studies the problem of selecting a subset of good designs from a finite set of simulated designs. We develop an approach to select r good enough designs instead of the exact top r designs from k alternatives, where good enough designs are defined as the top g designs (r ≤ g < k). Our approach aims to improve the selection efficiency while ensuring the performance of the selected designs in an acceptable range. Using the optimal computing budget allocation (OCBA) framework, we formulate the problem as that of maximizing the probability of correctly selecting r good enough designs under a simulation budget constraint. Based on the approximate measure of the probability of correct selection, we derive an asymptotically optimal selection procedure for selecting a good enough design subset. The proposed method demonstrates good empirical performance on some typical selection problems, including a practical inventory system problem.
选择足够好的模拟设计
本文研究了从有限的模拟设计集合中选择优秀设计子集的问题。我们开发了一种方法来选择r个足够好的设计,而不是从k个备选方案中选择精确的前r个设计,其中足够好的设计被定义为前g个设计(r≤g < k)。我们的方法旨在提高选择效率,同时确保所选设计的性能在可接受的范围内。使用最优计算预算分配(OCBA)框架,我们将问题表述为在模拟预算约束下正确选择r个足够好的设计的概率最大化问题。基于正确选择概率的近似度量,我们导出了一个选择足够好的设计子集的渐近最优选择过程。该方法在一些典型的选择问题(包括一个实际的库存系统问题)上显示了良好的经验性能。
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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