scholarly journals Robust two-stage stochastic linear optimization with risk aversion

2017 ◽  
Vol 256 (1) ◽  
pp. 215-229 ◽  
Author(s):  
Aifan Ling ◽  
Jie Sun ◽  
Naihua Xiu ◽  
Xiaoguang Yang
2021 ◽  
Author(s):  
Dimitris Bertsimas ◽  
Shimrit Shtern ◽  
Bradley Sturt

In “Two-Stage Sample Robust Optimization,” Bertsimas, Shtern, and Sturt investigate a simple approximation scheme, based on overlapping linear decision rules, for solving data-driven two-stage distributionally robust optimization problems with the type-infinity Wasserstein ambiguity set. Their main result establishes that this approximation scheme is asymptotically optimal for two-stage stochastic linear optimization problems; that is, under mild assumptions, the optimal cost and optimal first-stage decisions obtained by approximating the robust optimization problem converge to those of the underlying stochastic problem as the number of data points grows to infinity. These guarantees notably apply to two-stage stochastic problems that do not have relatively complete recourse, which arise frequently in applications. In this context, the authors show through numerical experiments that the approximation scheme is practically tractable and produces decisions that significantly outperform those obtained from state-of-the-art data-driven alternatives.


2010 ◽  
Vol 35 (3) ◽  
pp. 580-602 ◽  
Author(s):  
Dimitris Bertsimas ◽  
Xuan Vinh Doan ◽  
Karthik Natarajan ◽  
Chung-Piaw Teo

2020 ◽  
Vol 66 (8) ◽  
pp. 3329-3339 ◽  
Author(s):  
Zhi Chen ◽  
Melvyn Sim ◽  
Peng Xiong

We present a new distributionally robust optimization model called robust stochastic optimization (RSO), which unifies both scenario-tree-based stochastic linear optimization and distributionally robust optimization in a practicable framework that can be solved using the state-of-the-art commercial optimization solvers. We also develop a new algebraic modeling package, Robust Stochastic Optimization Made Easy (RSOME), to facilitate the implementation of RSO models. The model of uncertainty incorporates both discrete and continuous random variables, typically assumed in scenario-tree-based stochastic linear optimization and distributionally robust optimization, respectively. To address the nonanticipativity of recourse decisions, we introduce the event-wise recourse adaptations, which integrate the scenario-tree adaptation originating from stochastic linear optimization and the affine adaptation popularized in distributionally robust optimization. Our proposed event-wise ambiguity set is rich enough to capture traditional statistic-based ambiguity sets with convex generalized moments, mixture distribution, φ-divergence, Wasserstein (Kantorovich-Rubinstein) metric, and also inspire machine-learning-based ones using techniques such as K-means clustering and classification and regression trees. Several interesting RSO models, including optimizing over the Hurwicz criterion and two-stage problems over Wasserstein ambiguity sets, are provided. This paper was accepted by David Simchi-Levi, optimization.


2012 ◽  
Vol 51 (1) ◽  
pp. 59 ◽  
Author(s):  
Donghan Liang ◽  
Gang Li ◽  
Linyan Sun ◽  
Jie Gao ◽  
Xinyu Sun
Keyword(s):  

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