Title of article :
Automatic Construction of Fuzzy Rule Bases: a further Investigation into two Alternative Inductive Approaches
Author/Authors :
Cintra, Marcos Evandro (Federal University of Sao Carlos (UFSCar) - Computer Science Departament, Brazil , Camargo, Heloisa Arruda , Hruschka Jr., Estevam R. Federal University of Sao Carlos (UFSCar) - Computer Science Departament, Brazil , Nicoletti, Maria do Carmo Federal University of Sao Carlos (UFSCar) - Computer Science Departament, Brazil
From page :
2456
To page :
2470
Abstract :
The definition of the Fuzzy Rule Base is one of the most important and difficult tasks when designing Fuzzy Systems. This paper discusses the results of two different hybrid methods, previously investigated, for the automatic generation of fuzzy rules from numerical data. One of the methods, named DoC-based, proposes the creation of Fuzzy Rule Bases using genetic algorithms in association with a heuristic for preselecting candidate rules based on the degree of coverage. The other, named BayesFuzzy, induces a Bayesian Classifier using a dataset previously granulated by fuzzy partitions and then translates it into a Fuzzy Rule Base. A comparative analysis between both approaches focusing on their main characteristics, strengths/weaknesses and easiness of use is carried out. The reliability of both methods is also compared by analyzing their results in a few knowledge domains.
Keywords :
Bayesian classification , Bayesian networks , fuzzy logics , genetic fuzzy systems , machine learning
Journal title :
Journal of J.UCS (Journal of Universal Computer Science)
Journal title :
Journal of J.UCS (Journal of Universal Computer Science)
Record number :
2661003
Link To Document :
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