An abductive-inductive algorithm for probabilistic inductive logic programming
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Accepted version
Published version
Author(s)
Dragiev, S
Russo, A
Broda, K
Law, M
Turliuc, R
Type
Conference Paper
Abstract
The integration of abduction and induction has lead to a variety of non-monotonic ILP systems. XHAIL is one of these systems, in which abduction is used to compute hypotheses that subsume Kernel Sets. On the other hand, Peircebayes is a recently proposed logic-based probabilistic programming approach that combines abduction with parameter learning to learn distributions of most likely explanations. In this paper, we propose an approach for integrating probabilistic inference with ILP. The basic idea is to redefine the inductive task of XHAIL as a statistical abduction, and to use Peircebayes to learn probability distribution of hypotheses. An initial evaluation of the proposed algorithm is given using synthetic data.
Date Issued
2017-01-01
Date Acceptance
2016-06-14
Citation
CEUR Workshop Proceedings, 2017, 1865, pp.20-26
ISSN
1613-0073
Start Page
20
End Page
26
Journal / Book Title
CEUR Workshop Proceedings
Volume
1865
Copyright Statement
© The Authors
Source
26th International Conference on Inductive Logic Programming
Publication Status
Published