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An extended transformation approach to inductive logic programming
Nada Lavrac
and Peter A. Flach.
ACM Transactions on Computational Logic, 2(4):458--494, October
2001. More behind this link.
Abstract
Inductive logic programming (ILP) is concerned with learning relational
descriptions that typically have the form of logic programs. In a
transformation approach, an ILP task is transformed into an equivalent
learning task in a different representation formalism. Propositionalization
is a particular transformation method, in which the ILP task is compiled to
an attribute-value learning task. The main restriction of
propositionalization methods such as LINUS is that they are unable to deal
with nondeterminate local variables in the body of hypothesis clauses. In
this paper we show how this limitation can be overcome., by systematic
first-order feature construction using a particular individual-centered
feature bias. The approach can be applied in any domain where there is a
clear notion of individual. We also show how to improve upon exhaustive
first-order feature construction by using a relevancy filter. The proposed
approach is illustrated on the `trains' and `mutagenesis' ILP domains.
BibTeX entry.
Other publications
N Lavrac,
Nada.Lavrac@ijs.si,
P A Flach,
Peter.Flach@bristol.ac.uk. Last modified on Wednesday 9 April 2003 at 18:31. © 2003 ILPnet2