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Data-based fuzzy rule test for fuzzy modelling. (English) Zbl 1023.62007

Summary: In the field of fuzzy modelling, the exclusive consideration of the modelling error leads to problems concerning the handling of high-dimensional applications and the interpretability of the resulting rule base. To solve those problems, a statistically motivated fuzzy rule test is proposed. It decides if a fuzzy IF/THEN statement is a relevant rule or not. In this way, the problem of finding a good rule base can be reduced to the problem of finding good, relevant rules.

MSC:

62C99 Statistical decision theory
62G10 Nonparametric hypothesis testing

Software:

bootstrap
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Full Text: DOI

References:

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