Compact Optimality Verification for Optimization Proxies
Abstract
Recent years have witnessed increasing interest in optimization proxies, i.e., machine learning models that approximate the input-output mapping of parametric optimization problems and return near-optimal feasible solutions. Following recent work by (Nellikkath & Chatzivasileiadis, 2021), this paper reconsiders the optimality verification problem for optimization proxies, i.e., the determination of the worst-case optimality gap over the instance distribution. The paper proposes a compact formulation for optimality verification and a gradient-based primal heuristic that brings substantial computational benefits to the original formulation. The compact formulation is also more general and applies to non-convex optimization problems. The benefits of the compact formulation are demonstrated on large-scale DC Optimal Power Flow and knapsack problems.
Cite
@article{arxiv.2405.21023,
title = {Compact Optimality Verification for Optimization Proxies},
author = {Wenbo Chen and Haoruo Zhao and Mathieu Tanneau and Pascal Van Hentenryck},
journal= {arXiv preprint arXiv:2405.21023},
year = {2024}
}
Comments
International Conference on Machine Learning 2024