Stochastic Cutting Planes for Data-Driven Optimization
Author(s)
Bertsimas, Dimitris; Li, Michael Lingzhi
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<jats:p> 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 can converge to an ϵ-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 with 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 [Formula: see text] appears to be sufficient for high-quality solutions. </jats:p>
Date issued
2022-06-06Department
Sloan School of Management; Massachusetts Institute of Technology. Operations Research CenterJournal
INFORMS Journal on Computing
Publisher
Institute for Operations Research and the Management Sciences (INFORMS)
Citation
Bertsimas, Dimitris and Li, Michael Lingzhi. 2022. "Stochastic Cutting Planes for Data-Driven Optimization." INFORMS Journal on Computing.
Version: Author's final manuscript