Optimization-Based Scenario Reduction for Data-Driven Two-Stage Stochastic Optimization

Oper. Res. Pub Date : 2022-04-04 DOI:10.1287/opre.2022.2265
D. Bertsimas, Nishanth Mundru
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引用次数: 20

Abstract

In the field of data-driven optimization under uncertainty, scenario reduction is a commonly used technique for computing a smaller number of scenarios to improve computational tractability and interpretability. However traditional approaches do not consider the decision quality when computing these scenarios. In “Optimization-Based Scenario Reduction for Data-Driven Two-Stage Stochastic Optimization,” Bertsimas and Mundru present a novel optimization-based method that explicitly considers the objective and problem structure for reducing the number of scenarios needed for solving two-stage stochastic optimization problems. This new proposed method is generally applicable and has significantly better performance when the number of reduced scenarios is 1%–2% of the full sample size compared with other state-of-the-art optimization and randomization methods, which suggests this improves both tractability and interpretability.
基于优化的数据驱动两阶段随机优化场景约简
在不确定条件下的数据驱动优化领域,场景约简是一种常用的计算较少场景数量以提高计算可追溯性和可解释性的技术。然而,传统方法在计算这些场景时没有考虑决策质量。在“基于优化的场景简化用于数据驱动的两阶段随机优化”中,Bertsimas和Mundru提出了一种新的基于优化的方法,该方法明确考虑了减少解决两阶段随机优化问题所需的场景数量的目标和问题结构。与其他最先进的优化和随机化方法相比,该方法具有普遍适用性,并且在减少场景数量为全样本量的1%-2%时具有明显更好的性能,这表明该方法提高了可追溯性和可解释性。
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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