Data-driven risk-averse stochastic optimization with Wasserstein metric |
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Authors: | Chaoyue Zhao Yongpei Guan |
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Affiliation: | 1. School of Industrial Engineering and Management, Oklahoma State University, Stillwater, OK 74074, United States;2. Department of Industrial and Systems Engineering, University of Florida, Gainesville, FL 32611, United States |
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Abstract: | In this paper, we study a data-driven risk-averse stochastic optimization approach with Wasserstein Metric for the general distribution case. By using the Wasserstein Metric, we can successfully reformulate the risk-averse two-stage stochastic optimization problem with distributional ambiguity to a traditional two-stage robust optimization problem. In addition, we derive the worst-case distribution and perform convergence analysis to show that the risk aversion of the proposed formulation vanishes as the size of historical data grows to infinity. |
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Keywords: | Stochastic optimization Data-driven decision making Wasserstein metric |
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