4.5 Article

A robust optmization perspective on stochastic programming

Journal

OPERATIONS RESEARCH
Volume 55, Issue 6, Pages 1058-1071

Publisher

INFORMS
DOI: 10.1287/opre.1070.0441

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In this paper, we introduce an approach for constructing uncertainty sets for robust optimization using new deviation measures for random variables termed the forward and backward deviations. These deviation measures capture distributional asymmetry and lead to better approximations of chance constraints. Using a linear decision rule, we also propose a tractable approximation approach for solving a class of multistage chance-constrained stochastic linear optimization problems. An attractive feature of the framework is that we convert the original model into a second-order cone program, which is computationally tractable both in theory and in practice. We demonstrate the framework through an application of a project management problem with uncertain activity completion time.

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