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Learning fuzzy partitions in FIR methodology. (English) Zbl 1160.68485

Summary: The main goal of this research is the development of a hybrid Genetic Fuzzy System (GFS), composed by the Fuzzy Inductive Reasoning (FIR) methodology and a genetic algorithm that is responsible of learning the fuzzy partitions needed in the recode process of FIR. A partition includes the number of fuzzy sets (classes) per variable and the membership function of each class. The resulting GFS is applied to two real problems, i.e. the estimation of the maintenance cost of medium voltage lines in Spanish towns and the prediction of ozone levels in Austria. The results obtained in each application are compared with some of the most popular classical statistical modeling methods, neural networks and other hybrid evolutionary data analysis techniques.

MSC:

68T05 Learning and adaptive systems in artificial intelligence
93C42 Fuzzy control/observation systems
90C59 Approximation methods and heuristics in mathematical programming

Software:

Genocop
Full Text: DOI

References:

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