A novel genetic cooperative-competitive fuzzy rule based learning method using genetic programming for high dimensional problems
Witten-Bommerholz(2008)
摘要
In this contribution, we present GP-COACH, a novel GFS based on the cooperative-competitive learning approach, that uses genetic programming to code fuzzy rules with a different number of variables, for getting compact and accurate rule bases for high dimensional problems. GP-COACH learns disjunctive normal form rules (generated by means of a context-free grammar) and uses a token competition mechanism to maintain the diversity of the population. It makes the rules compete and cooperate among themselves, giving out a compact set of fuzzy rules that presents a good performance. The good results obtained in an experimental study involving several high dimensional classification problems support our proposal.
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关键词
fuzzy set theory,genetic algorithms,knowledge based systems,learning (artificial intelligence),genetic cooperative-competitive fuzzy rule based learning method,genetic programming,high dimensional classification problems,high dimensional problems,token competition mechanism
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