Balanced Neurofuzzy Models

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Дата

2008

Автори

Науковий керівник

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Анотація

This paper is devoted to the problem of a high complexity of fuzzy knowledge bases which contain enormous number of compound fuzzy rules. In order to significantly decrease the number of fuzzy rules and increase their transparency we present balanced neurofuzzy models. These models use the idea of Gabor-Kolmogorov expansion for additive decomposition into univariate and bivariate neurofuzzy submodels as well as maximum entropy principle to ground independent use of these submodels. Each submodel generates simplified rules independently of other submodels and contributes to fuzzy knowledge base of reduced complexity. The last but not least advantage of balanced neurofuzzy models is that they can be regularized and learned by modern inductive methods. Although the present paper omits learning. We demonstrate the potential of balanced neurofuzzy approach on a toy example of wind-induced wave model.

Опис

Ключові слова

fuzzy knowledge base (FKB), neurofuzzy model

Бібліографічний опис

Mytnyk, O. Yu. Balanced neurofuzzy models / Oleg Yu. Mytnyk // Proceedings of 2nd International Conference on Inductive Modelling, 15-19 Sept. 2008. - Kyiv : 2008. - P. 148-152. – Bibliogr.: 8 ref.

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