基于规范决策和节约自适应批量抽样的全局仿真

A. V. Beek, Siyu Tao, Wei Chen
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引用次数: 4

摘要

我们考虑了有限预算下全局仿真(元建模)的自适应采样问题。传统上,这个问题是通过贪婪采样策略来解决的,这种策略最适合在单个采样阶段采集单个样本或少量样本,但忽略了未来样本的影响。这就提出了一个问题:“我们能否优化采样阶段的数量以及每个阶段的样本数量?”提出的节俭自适应批量抽样(TABS)方法通过采用规范的决策角度来确定所需样本的总数,并根据阶段总数和每个阶段的批量大小最大化多阶段奖励函数,从而解决了这一挑战。为了修正tab的数值复杂性,我们提出了两种基于启发式的策略,这两种策略在最小化奖励最优性的情况下显著减少了计算时间。通过数值示例,tab显示优于或至少可与传统的贪婪采样技术相媲美。通过这种方式,TABS为建模者提供了一种灵活的自适应采样工具,用于全局仿真,在保持预测准确性的同时有效地降低了计算成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Global Emulation Through Normative Decision Making and Thrifty Adaptive Batch Sampling
We consider the problem of adaptive sampling for global emulation (metamodeling) with a finite budget. Conventionally this problem is tackled through a greedy sampling strategy, which is optimal for taking either a single sample or a handful of samples at a single sampling stage but neglects the influence of future samples. This raises the question: “Can we optimize the number of sampling stages as well as the number of samples at each stage?” The proposed thrifty adaptive batch sampling (TABS) approach addresses this challenge by adopting a normative decision-making perspective to determine the total number of required samples and maximize a multistage reward function with respect to the total number of stages and the batch size at each stage. To amend TABS’ numerical complexity we propose two heuristic-based strategies that significantly reduce computational time with minimal reduction of reward optimality. Through numerical examples, TABS is shown to outperform or at least be comparable to conventional greedy sampling techniques. In this fashion, TABS provides modelers a flexible adaptive sampling tool for global emulation, effectively reducing computational cost while maintaining prediction accuracy.
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