A Note on Piecewise Affine Decision Rules for Robust, Stochastic, and Data-Driven Optimization

Simon Thomä, Maximilian Schiffer, Wolfram Wiesemann
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引用次数: 0

Abstract

Multi-stage decision-making under uncertainty, where decisions are taken under sequentially revealing uncertain problem parameters, is often essential to faithfully model managerial problems. Given the significant computational challenges involved, these problems are typically solved approximately. This short note introduces an algorithmic framework that revisits a popular approximation scheme for multi-stage stochastic programs by Georghiou et al. (2015) and improves upon it to deliver superior policies in the stochastic setting, as well as extend its applicability to robust optimization and a contemporary Wasserstein-based data-driven setting. We demonstrate how the policies of our framework can be computed efficiently, and we present numerical experiments that highlight the benefits of our method.
关于用于稳健、随机和数据驱动优化的片断仿射决策规则的说明
不确定情况下的多阶段决策,即在连续揭示不确定问题参数的情况下做出决策,往往是忠实模拟管理问题的关键。考虑到所涉及的重大计算挑战,这些问题通常都是近似求解的。本短文介绍了一种算法框架,该框架重新审视了 Georghiou 等人(2015 年)提出的一种流行的多阶段随机程序近似方案,并对其进行了改进,从而在随机设置中提供了卓越的策略,同时还将其适用性扩展到了鲁棒优化和当代基于 Wasserstein 的数据驱动设置中。我们展示了如何高效计算我们框架中的策略,并通过数值实验突出了我们方法的优势。
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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