数学优化
稳健优化
计算机科学
稳健性(进化)
最优化问题
凸优化
航程(航空)
估计理论
算法
数学
正多边形
生物化学
化学
材料科学
几何学
复合材料
基因
作者
Taozeng Zhu,Jingui Xie,Melvyn Sim
出处
期刊:Management Science
[Institute for Operations Research and the Management Sciences]
日期:2021-02-26
卷期号:68 (3): 1659-1677
被引量:35
标识
DOI:10.1287/mnsc.2020.3898
摘要
Many real-world optimization problems have input parameters estimated from data whose inherent imprecision can lead to fragile solutions that may impede desired objectives and/or render constraints infeasible. We propose a joint estimation and robustness optimization (JERO) framework to mitigate estimation uncertainty in optimization problems by seamlessly incorporating both the parameter estimation procedure and the optimization problem. Toward that end, we construct an uncertainty set that incorporates all of the data, and the size of the uncertainty set is based on how well the parameters are estimated from that data when using a particular estimation procedure: regressions, the least absolute shrinkage and selection operator, and maximum likelihood estimation (among others). The JERO model maximizes the uncertainty set’s size and so obtains solutions that—unlike those derived from models dedicated strictly to robust optimization—are immune to parameter perturbations that would violate constraints or lead to objective function values exceeding their desired levels. We describe several applications and provide explicit formulations of the JERO framework for a variety of estimation procedures. To solve the JERO models with exponential cones, we develop a second-order conic approximation that limits errors beyond an operating range; with this approach, we can use state-of-the-art second-order conic programming solvers to solve even large-scale convex optimization problems. This paper was accepted by J. George Shanthikumar, Management Science Special Section on Data-Driven Prescriptive Analytics.
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