Back to Search Start Over

Machine Learning for Optimization-Based Separation: the Case of Mixed-Integer Rounding Cuts

Authors :
Guaje, Oscar
Deza, Arnaud
Kazachkov, Aleksandr M.
Khalil, Elias B.
Publication Year :
2024

Abstract

Mixed-Integer Rounding (MIR) cuts are effective at improving the dual bound in Mixed-Integer Linear Programming (MIP). However, in practice, MIR cuts are separated heuristically rather than using optimization as the latter is prohibitively expensive. We present a hybrid cut generation framework in which we train a Machine Learning (ML) model to inform cut generation for a family of similar instances. Our framework solves a MIP-based separation problem to generate high-quality MIR cuts, then learns to identify useful constraints that led to these effective cuts. At test time, the predictions of the ML model allow us to solve a reduced MIP-based separation problem. We present computational results for this approach on datasets of randomly perturbed MIPLIB2017 instances.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2408.08449
Document Type :
Working Paper