Learning logic programs by discovering where not to search
Machine Learning
2022-12-06 v2 Artificial Intelligence
Logic in Computer Science
Abstract
The goal of inductive logic programming (ILP) is to search for a hypothesis that generalises training examples and background knowledge (BK). To improve performance, we introduce an approach that, before searching for a hypothesis, first discovers where not to search. We use given BK to discover constraints on hypotheses, such as that a number cannot be both even and odd. We use the constraints to bootstrap a constraint-driven ILP system. Our experiments on multiple domains (including program synthesis and game playing) show that our approach can (i) substantially reduce learning times by up to 97%, and (ii) scale to domains with millions of facts.
Cite
@article{arxiv.2202.09806,
title = {Learning logic programs by discovering where not to search},
author = {Andrew Cropper and Céline Hocquette},
journal= {arXiv preprint arXiv:2202.09806},
year = {2022}
}
Comments
Preprint for AAAI23