Data-driven Stochastic Programming with Distributionally Robust Constraints Under Wasserstein Distance: Asymptotic Properties

被引:0
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作者
Yu Mei
Zhi-Ping Chen
Bing-Bing Ji
Zhu-Jia Xu
Jia Liu
机构
[1] Xi’an Jiaotong University,Department of Computing Science, School of Mathematics and Statistics
[2] Xi’an International Academy for Mathematics and Mathematical Technology,Center for Optimization Technique and Quantitative Finance
关键词
Distributionally robust optimization; Wasserstein distance; Ambiguity set; Asymptotic analysis; Empirical distribution; 90C59; 90C34;
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学科分类号
摘要
Distributionally robust optimization is a dominant paradigm for decision-making problems where the distribution of random variables is unknown. We investigate a distributionally robust optimization problem with ambiguities in the objective function and countably infinite constraints. The ambiguity set is defined as a Wasserstein ball centered at the empirical distribution. Based on the concentration inequality of Wasserstein distance, we establish the asymptotic convergence property of the data-driven distributionally robust optimization problem when the sample size goes to infinity. We show that with probability 1, the optimal value and the optimal solution set of the data-driven distributionally robust problem converge to those of the stochastic optimization problem with true distribution. Finally, we provide numerical evidences for the established theoretical results.
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页码:525 / 542
页数:17
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