Splitting Algorithms for Distributionally Robust Optimization
Optimization and Control
2024-10-30 v1
Abstract
In this paper, we provide different splitting methods for solving distributionally robust optimization problems in cases where the uncertainties are described by discrete distributions. The first method involves computing the proximity operator of the supremum function that appears in the optimization problem. The second method solves an equivalent monotone inclusion formulation derived from the first-order optimality conditions, where the resolvents of the monotone operators involved in the inclusion are computable. The proposed methods are applied to solve the Couette inverse problem with uncertainty and the denoising problem with uncertainty. We present numerical results to compare the efficiency of the algorithms.
Keywords
Cite
@article{arxiv.2410.21398,
title = {Splitting Algorithms for Distributionally Robust Optimization},
author = {Luis Briceño-Arias and Sergio López-Rivera and Emilio Vilches},
journal= {arXiv preprint arXiv:2410.21398},
year = {2024}
}
Comments
25 pages