Stochastic Cutting Planes for Data-Driven Optimization
Optimization and Control
2021-03-04 v1 Computation
Machine Learning
Abstract
We introduce a stochastic version of the cutting-plane method for a large class of data-driven Mixed-Integer Nonlinear Optimization (MINLO) problems. We show that under very weak assumptions the stochastic algorithm is able to converge to an -optimal solution with high probability. Numerical experiments on several problems show that stochastic cutting planes is able to deliver a multiple order-of-magnitude speedup compared to the standard cutting-plane method. We further experimentally explore the lower limits of sampling for stochastic cutting planes and show that for many problems, a sampling size of appears to be sufficient for high quality solutions.
Cite
@article{arxiv.2103.02506,
title = {Stochastic Cutting Planes for Data-Driven Optimization},
author = {Dimitris Bertsimas and Michael Lingzhi Li},
journal= {arXiv preprint arXiv:2103.02506},
year = {2021}
}