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2002 | OriginalPaper | Chapter

XCS and GALE: A Comparative Study of Two Learning Classifier Systems on Data Mining

Authors : Ester Bernadó, Xavier Llorà, Josep M. Garrell

Published in: Advances in Learning Classifier Systems

Publisher: Springer Berlin Heidelberg

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This paper compares the learning performance, in terms of prediction accuracy, of two genetic-based learning systems, XCS and GALE, with six well-known learning algorithms, coming from instance based learning, decision tree induction, rule-learning, statistical modeling and support vector machines. The experiments, performed on several datasets, show the suitability of the genetic-based learning classifier systems for classification tasks. Both XCS and GALE significantly achieved better results than IB1 and Naive Bayes. Besides, any method could not outperform XCS and GALE significantly.

Metadata
Title
XCS and GALE: A Comparative Study of Two Learning Classifier Systems on Data Mining
Authors
Ester Bernadó
Xavier Llorà
Josep M. Garrell
Copyright Year
2002
Publisher
Springer Berlin Heidelberg
DOI
https://doi.org/10.1007/3-540-48104-4_8