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High-performance adaptive neurofuzzy classifier with a parametric tuning S. Gorbachev, V. Syryamkin

By: Gorbachev, Sergey VContributor(s): Syryamkin, Vladimir IMaterial type: ArticleArticleSubject(s): нейро-нечеткий вывод | адаптивные алгоритмы | нейро-нечеткое моделированиеGenre/Form: статьи в журналах Online resources: Click here to access online In: MATEC Web of conferences Vol. 155. P. 01037 (1-7)Abstract: The article is devoted to research and development of adaptive algorithms for neuro-fuzzy inference when solving multicriteria problems connected with analysis of expert (foresight) data to identify technological breakthroughs and strategic perspectives of scientific, technological and innovative development. The article describes the optimized structuralfunctional scheme of the high-performance adaptive neuro-fuzzy classifier with a logical output, which has such specific features as a block of decision tree-based fuzzy rules and a hybrid algorithm for neural network adaptation of parameters based on the error back-propagation to the root of the decision tree.
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The article is devoted to research and development of adaptive algorithms for neuro-fuzzy inference when solving multicriteria problems connected with analysis of expert (foresight) data to identify technological breakthroughs and strategic perspectives of scientific, technological and innovative development. The article describes the optimized structuralfunctional scheme of the high-performance adaptive neuro-fuzzy classifier with a logical output, which has such specific features as a block of decision tree-based fuzzy rules and a hybrid algorithm for neural network adaptation of parameters based on the error back-propagation to the root of the decision tree.

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