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Data-driven two-stage conic optimization with zero-one uncertainties

By Anirudh Subramanyam and others
We address high-dimensional zero-one random parameters in two-stage convex conic optimization problems. Such parameters typically represent failures of network elements and constitute rare, high-impact random events in several applications. Given a sparse training dataset of the parameters, we motivate and study a distributionally robust formulation of the problem using a... Show more
July 17, 2021
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Data-driven two-stage conic optimization with zero-one uncertainties
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