GP-COACH: Genetic Programming-based learning of Compact and ACcurate fuzzy rule-based classification systems for High-dimensional problems
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Abstract |
In this paper we propose GP-COACH, a Genetic Programming-based method for the learning of COmpact and ACcurate fuzzy rule-based classification systems for High-dimensional problems. GP-COACH learns disjunctive normal form rules (generated by means of a context-free grammar) coded as one rule per tree. The population constitutes the rule base, so it is a genetic cooperative-competitive learning approach. GP-COACH uses a token competition mechanism to maintain the diversity of the population and this obliges the rules to compete and cooperate among themselves and allows the obtaining of a compact set of fuzzy rules. The results obtained have been validated by the use of non-parametric statistical tests, showing a good performance in terms of accuracy and interpretability. |
Año de publicación |
2010
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Journal |
Information Sciences
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Volume |
180
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Number of Pages |
1183-1200
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ISSN Number |
0020-0255
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URL |
http://www.sciencedirect.com/science/article/pii/S0020025509005635
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DOI |
10.1016/j.ins.2009.12.020
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