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Relational Instance-Based Learning with Lists and Terms
Tamas Horvath,
Stefan Wrobel,
and Uta Bohnebeck.
Machine Learning, 43(1/2):53--80, April 2001.
Abstract
The similarity measures used in first-order IBL so far have been limited to the
function-free case. In this paper we show that a lot of power can be gained
by allowing lists and other terms in the input representation and designing
similarity measures that work directly on these structures. We present an
improved similarity measure for the first-order instance-based learner RIBL
that employs the concept of edit distances to efficiently compute distances
between lists and terms, discuss its computational and formal properties, and
empirically demonstrate its additional power on a problem from the domain of
biochemistry .The paper also includes a thorough reconstruction of RIBL'S
overall algorithm.
BibTeX entry.
Other publications
T Horvath,
tamas.horvath@gmd.de,
S Wrobel,
Stefan.Wrobel@gmd.de. Last modified on Wednesday 9 April 2003 at 18:31. © 2003 ILPnet2