English

Conformal Mixed-Integer Constraint Learning with Feasibility Guarantees

Machine Learning 2025-06-05 v1 Optimization and Control

Abstract

We propose Conformal Mixed-Integer Constraint Learning (C-MICL), a novel framework that provides probabilistic feasibility guarantees for data-driven constraints in optimization problems. While standard Mixed-Integer Constraint Learning methods often violate the true constraints due to model error or data limitations, our C-MICL approach leverages conformal prediction to ensure feasible solutions are ground-truth feasible. This guarantee holds with probability at least 1α1{-}\alpha, under a conditional independence assumption. The proposed framework supports both regression and classification tasks without requiring access to the true constraint function, while avoiding the scalability issues associated with ensemble-based heuristics. Experiments on real-world applications demonstrate that C-MICL consistently achieves target feasibility rates, maintains competitive objective performance, and significantly reduces computational cost compared to existing methods. Our work bridges mathematical optimization and machine learning, offering a principled approach to incorporate uncertainty-aware constraints into decision-making with rigorous statistical guarantees.

Keywords

Cite

@article{arxiv.2506.03531,
  title  = {Conformal Mixed-Integer Constraint Learning with Feasibility Guarantees},
  author = {Daniel Ovalle and Lorenz T. Biegler and Ignacio E. Grossmann and Carl D. Laird and Mateo Dulce Rubio},
  journal= {arXiv preprint arXiv:2506.03531},
  year   = {2025}
}
R2 v1 2026-07-01T02:58:14.709Z