Constrained Discrete Black-Box Optimization using Mixed-Integer Programming
Abstract
Discrete black-box optimization problems are challenging for model-based optimization (MBO) algorithms, such as Bayesian optimization, due to the size of the search space and the need to satisfy combinatorial constraints. In particular, these methods require repeatedly solving a complex discrete global optimization problem in the inner loop, where popular heuristic inner-loop solvers introduce approximations and are difficult to adapt to combinatorial constraints. In response, we propose NN+MILP, a general discrete MBO framework using piecewise-linear neural networks as surrogate models and mixed-integer linear programming (MILP) to optimize the acquisition function. MILP provides optimality guarantees and a versatile declarative language for domain-specific constraints. We test our approach on a range of unconstrained and constrained problems, including DNA binding, constrained binary quadratic problems from the MINLPLib benchmark, and the NAS-Bench-101 neural architecture search benchmark. NN+MILP surpasses or matches the performance of black-box algorithms tailored to the constraints at hand, with global optimization of the acquisition problem running in a few minutes using only standard software packages and hardware.
Cite
@article{arxiv.2110.09569,
title = {Constrained Discrete Black-Box Optimization using Mixed-Integer Programming},
author = {Theodore Papalexopoulos and Christian Tjandraatmadja and Ross Anderson and Juan Pablo Vielma and David Belanger},
journal= {arXiv preprint arXiv:2110.09569},
year = {2022}
}
Comments
9 pages, 4 figures, accepted to ICML 2022, appendix with additional results in same file