28 juillet 2025 à 1 août 2025
Fuseau horaire Europe/Paris

Convex Chance-Constrained Programs with Wasserstein Ambiguity

29 juil. 2025, 11:09
24m
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Contributed talk Stochastic Programming Mini-symposium

Orateur

Haoming Shen (University of Arkansas, USA)

Description

AChance constraints yield nonconvex feasible regions in general. In particular, when the uncertain parameters are modeled by a Wasserstein ball, existing studies showed that the distributionally robust (pessimistic) chance constraint admits a mixed-integer conic representation. This talk identifies sufficient conditions that lead to convex feasible regions of chance constraints with Wasserstein ambiguity. First, when uncertainty arises from the right-hand side of a pessimistic joint chance constraint, we show that the ensuing feasible region is convex if the Wasserstein ball is centered around a log-concave distribution (or, more generally, an α-concave distribution with 𝛼≥−1 ). In addition, we propose a block coordinate ascent algorithm and prove its convergence to global optimum, as well as the rate of convergence. Second, when uncertainty arises from the left-hand side of a pessimistic two-sided chance constraint, we show the convexity if the Wasserstein ball is centered around an elliptical and star unimodal distribution. In addition, we propose a family of second-order conic inner approximations, and we bound their approximation error and prove their asymptotic exactness. Furthermore, we extend the convexity results to optimistic chance constraints.

Authors

Haoming Shen (University of Arkansas, USA) Ruiwei Jiang (University of Michigan)

Documents de présentation

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