Neur2BiLO: Neural Bilevel Optimization
Justin Dumouchelle1
Esther Julien2
Jannis Kurtz3
Elias B. Khalil1

1University of Toronto, 2TU Delft, 3University of Amsterdam
justin.dumouchelle@mail.utoronto.ca

[Paper]  
[GitHub]  
[Poster]  

Abstract

Bilevel optimization deals with nested problems in which leader takes the first decision to minimize their objective function while accounting for a follower's best-response reaction. Constrained bilevel problems with integer variables are particularly notorious for their hardness. While exact solvers have been proposed for mixed-integer linear bilevel optimization, they tend to scale poorly with problem size and are hard to generalize to the non-linear case. On the other hand, problem-specific algorithms (exact and heuristic) are limited in scope. Under a data-driven setting in which similar instances of a bilevel problem are solved routinely, our proposed framework, Neur2BiLO, embeds a neural network approximation of the leader's or follower's value function, trained via supervised regression, into an easy-to-solve mixed-integer program. Neur2BiLO serves as a heuristic that produces high-quality solutions extremely fast for four applications with linear and non-linear objectives and pure and mixed-integer variables.



[Poster]




[Paper]

J. Dumouchelle, E. Julien, J. Kurtz, E. B. Khalil
Neur2BiLO: Neural Bilevel Optimization
In NeurIPS, 2024
(hosted on OpenReview)






Bibtex

@inproceedings{
	dumouchelle2024neurbilo,
	title={Neur2Bi{LO}: Neural Bilevel Optimization},
	author={Justin Dumouchelle and Esther Julien and Jannis Kurtz and Elias Boutros Khalil},
	booktitle={The Thirty-eighth Annual Conference on Neural Information Processing Systems},
	year={2024},
}