Learning Interpretable Error Functions for Combinatorial Optimization Problem Modeling
Abstract
In Constraint Programming, constraints are usually represented as predicates allowing or forbidding combinations of values. However, some algorithms exploit a finer representation: error functions. Their usage comes with a price though: it makes problem modeling significantly harder. Here, we propose a method to automatically learn an error function corresponding to a constraint, given a function deciding if assignments are valid or not. This is, to the best of our knowledge, the first attempt to automatically learn error functions for hard constraints. Our method uses a variant of neural networks we named Interpretable Compositional Networks, allowing us to get interpretable results, unlike regular artificial neural networks. Experiments on 5 different constraints show that our system can learn functions that scale to high dimensions, and can learn fairly good functions over incomplete spaces.
Cite
@article{arxiv.2002.09811,
title = {Learning Interpretable Error Functions for Combinatorial Optimization Problem Modeling},
author = {Florian Richoux and Jean-François Baffier},
journal= {arXiv preprint arXiv:2002.09811},
year = {2023}
}