Expertini Research Research
Artificial Intelligence And Data Science PDF Available DOI: 10.1007/s10472-022-09829-8 Non-peer-reviewed Preprint

Learning Interpretable Error Functions for Combinatorial Optimization Problem Modeling

Florian Richoux, Jean-Francois Baffier  ยท  Published 2020-02-23

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.
๐Ÿ“„ Full Paper Available as PDF
This paper is available as a downloadable PDF.
๐Ÿ“„ Download PDF

โœจ AI Plain-English Summary

Get a plain-English summary of this paper generated by AI (5 free per day).

Comments (0)

No comments yet. Be the first to comment.

Related Papers

Artificial Intelligence And Data Science PDF

Sparse matrix-variate Gaussian process blockmodels for network modeling

2012
Artificial Intelligence And Data Science PDF

Hierarchical Maximum Margin Learning for Multi-Class Classification

2012
Artificial Intelligence And Data Science PDF

Tightening MRF Relaxations with Planar Subproblems

2012
Artificial Intelligence And Data Science PDF

Rank/Norm Regularization with Closed-Form Solutions: Application to ...

2012