Li Chen,Melvyn Sim,Xun Zhang,Long Zhao,Minglong Zhou
出处
期刊:Operations Research [Institute for Operations Research and the Management Sciences] 日期:2025-05-30
标识
DOI:10.1287/opre.2023.0300
摘要
In "Robust Actionable Prescriptive Analytics," Chen et al. present a significant advancement in prescriptive analytics. The authors propose a novel robust prescriptive analytics framework that bridges data-driven decision making and actionable policy optimization. Unlike traditional approaches that follow a “predict, then optimize” methodology, this framework directly maps side information to optimized decisions, ensuring both interpretability and implementability. Leveraging a robust satisficing approach, the model effectively mitigates overfitting to empirical data while maintaining computational tractability. The authors also introduce tree-based static and affine policies for enhanced interpretability, and they demonstrate the framework’s practical value through a portfolio optimization case study. This innovative approach provides a powerful tool for decision makers seeking robust, data-driven policies across various operational contexts.