Confirmation-guided discovery of first-order rules with Tertius (2000)
| Venue: | Machine Learning |
| Citations: | 23 - 9 self |
BibTeX
@INPROCEEDINGS{Flach00confirmation-guideddiscovery,
author = {Peter A. Flach and Nicolas Lachiche},
title = {Confirmation-guided discovery of first-order rules with Tertius},
booktitle = {Machine Learning},
year = {2000},
pages = {61--95},
publisher = {Forthcoming}
}
Years of Citing Articles
OpenURL
Abstract
. This paper deals with learning first-order logic rules from data lacking an explicit classification predicate. Consequently, the learned rules are not restricted to predicate definitions as in supervised inductive logic programming. First-order logic offers the ability to deal with structured, multi-relational knowledge. Possible applications include first-order knowledge discovery, induction of integrity constraints in databases, multiple predicate learning, and learning mixed theories of predicate definitions and integrity constraints. One of the contributions of our work is a heuristic measure of confirmation, trading off novelty and satisfaction of the rule. The approach has been implemented in the Tertius system. The system performs an optimal bestfirst search, finding the k most confirmed hypotheses, and includes a non-redundant refinement operator to avoid duplicates in the search. Tertius can be adapted to many different domains by tuning its parameters, and it can deal eithe...







