Rule base and inference system cooperative learning of mamdani fuzzy systems with multiobjective genetic algorithms

2009 International Fuzzy Systems Association World Congress and 2009 European Society for Fuzzy Logic and Technology Conference, IFSA-EUSFLAT 2009 - Proceedings
páginas 1045 - 1050
2009-12-01
Citas: 5
Abstract
In this paper, we present an evolutionary multiobjective learning model achieving positive synergy between the Inference System and the Rule Base in order to obtain simpler, more compact and still accurate linguistic fuzzy models by learning fuzzy inference operators together with Rule Base. The Multiobjective Evolutionary Algorithm proposed generates a set of Fuzzy Rule Based Systems with different trade-offs between interpretability and accuracy in linguistic fuzzy modeling, allowing the designers select the one that involves the most adequate equilibrium for the desired application.
Adaptive defuzzification, Adaptive Inference System, Interpretability-accuracy trade-off, Linguistic fuzzy modeling, Multiobjective genetic algorithms, Rule learning
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