Data-driven robust optimization
Author(s)
Gupta, Vishal; Kallus, Nathan; Bertsimas, Dimitris J
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The last decade witnessed an explosion in the availability of data for operations research applications. Motivated by this growing availability, we propose a novel schema for utilizing data to design uncertainty sets for robust optimization using statistical hypothesis tests. The approach is flexible and widely applicable, and robust optimization problems built from our new sets are computationally tractable, both theoretically and practically. Furthermore, optimal solutions to these problems enjoy a strong, finite-sample probabilistic guarantee whenever the constraints and objective function are concave in the uncertainty. We describe concrete procedures for choosing an appropriate set for a given application and applying our approach to multiple uncertain constraints. Computational evidence in portfolio management and queueing confirm that our data-driven sets significantly outperform traditional robust optimization techniques whenever data are available. Keywords: Robust optimization, Data-driven optimization, Chance-constraints, Hypothesis testing
Date issued
2017-02Department
Sloan School of ManagementJournal
Mathematical Programming
Publisher
Springer Berlin Heidelberg
Citation
Bertsimas, Dimitris, et al. “Data-Driven Robust Optimization.” Mathematical Programming, vol. 167, no. 2, Feb. 2018, pp. 235–92.
Version: Author's final manuscript
ISSN
0025-5610
1436-4646