English

Loss-aware distributionally robust optimization via trainable optimal transport ambiguity sets

Optimization and Control 2025-09-17 v1 Systems and Control Systems and Control

Abstract

Optimal-Transport Distributionally Robust Optimization (OT-DRO) robustifies data-driven decision-making under uncertainty by capturing the sampling-induced statistical error via optimal transport ambiguity sets. The standard OT-DRO pipeline consists of a two-step procedure, where the ambiguity set is first designed and subsequently embedded into the downstream OT-DRO problem. However, this separation between uncertainty quantification and optimization might result in excessive conservatism. We introduce an end-to-end pipeline to automatically learn decision-focused ambiguity sets for OT-DRO problems, where the loss function informs the shape of the optimal transport ambiguity set, leading to less conservative yet distributionally robust decisions. We formulate the learning problem as a bilevel optimization program and solve it via a hypergradient-based method. By leveraging the recently introduced nonsmooth conservative implicit function theorem, we establish convergence to a critical point of the bilevel problem. We present experiments validating our method on standard portfolio optimization and linear regression tasks.

Keywords

Cite

@article{arxiv.2509.12689,
  title  = {Loss-aware distributionally robust optimization via trainable optimal transport ambiguity sets},
  author = {Jonas Ohnemus and Marta Fochesato and Riccardo Zuliani and John Lygeros},
  journal= {arXiv preprint arXiv:2509.12689},
  year   = {2025}
}
R2 v1 2026-07-01T05:38:26.066Z