English

Decision-Dependent Distributionally Robust Optimization with Application to Dynamic Pricing

Optimization and Control 2025-08-12 v1

Abstract

We consider decision-making problems under decision-dependent uncertainty (DDU), where the distribution of uncertain parameters depends on the decision variables and is only observable through a finite offline dataset. To address this challenge, we formulate a decision-dependent distributionally robust optimization (DD-DRO) problem, and leverage multivariate interpolation techniques along with the Wasserstein metric to construct decision-dependent nominal distributions (thereby decision-dependent ambiguity sets) based on the offline data. We show that the resulting ambiguity sets provide a finite-sample, high-probability guarantee that the true decision-dependent distribution is contained within them. Furthermore, we establish key properties of the DD-DRO framework, including a non-asymptotic out-of-sample performance guarantee, an optimality gap bound, and a tractable reformulation. The practical effectiveness of our approach is demonstrated through numerical experiments on a dynamic pricing problem with nonstationary demand, where the DD-DRO solution produces pricing strategies with guaranteed expected revenue.

Keywords

Cite

@article{arxiv.2508.06965,
  title  = {Decision-Dependent Distributionally Robust Optimization with Application to Dynamic Pricing},
  author = {Chengrui Qu and Huiwen Jia and Pengcheng You},
  journal= {arXiv preprint arXiv:2508.06965},
  year   = {2025}
}

Comments

submission to CDC 2025

R2 v1 2026-07-01T04:42:28.485Z