Inductive Learning of Answer Set Programs from Noisy Examples
Abstract
In recent years, non-monotonic Inductive Logic Programming has received growing interest. Specifically, several new learning frameworks and algorithms have been introduced for learning under the answer set semantics, allowing the learning of common-sense knowledge involving defaults and exceptions, which are essential aspects of human reasoning. In this paper, we present a noise-tolerant generalisation of the learning from answer sets framework. We evaluate our ILASP3 system, both on synthetic and on real datasets, represented in the new framework. In particular, we show that on many of the datasets ILASP3 achieves a higher accuracy than other ILP systems that have previously been applied to the datasets, including a recently proposed differentiable learning framework.
Cite
@article{arxiv.1808.08441,
title = {Inductive Learning of Answer Set Programs from Noisy Examples},
author = {Mark Law and Alessandra Russo and Krysia Broda},
journal= {arXiv preprint arXiv:1808.08441},
year = {2018}
}
Comments
To appear in Advances in Cognitive Systems