Нейро-нечеткие классификаторы
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Научный журнал Моделирование, оптимизация и информационные технологииThe scientific journal Modeling, Optimization and Information Technology
Online media
issn 2310-6018

Neuro-fuzzy classifiers

Lomakina L.S.   Chernobaev I.D.  

UDC 004.852
DOI: 10.26102/2310-6018/2021.35.4.027

  • Abstract
  • List of references
  • About authors

This paper considers the problem of increasing the accuracy of artificial neural networks in the tasks of states classification of objects with different physical nature. It is proposed to define this problem as a problem of choosing the activation function type in artificial neural networks and to consider it from the perspective of the fuzzy sets theory. In this regard, a mathematical model of the artificial neuron adaptive activation function has been developed, using a fuzzy logic system with interval fuzzy sets of the second type. This function differs from ordinary activation functions used in neural network models in that the range of its input values is limited, and, at the same time, such a function allows to optimize the parameters that determine the shape of the curve in the process of training an artificial neural network. To reduce the computational complexity of a neuro-fuzzy model with a fuzzy activation function, its modification is proposed, which involves the use of the mathematical function of the hyperbolic tangent to normalize the values of the vector supplied to the fuzzy function input. Algorithmic support has been developed for two architectures of neuro-fuzzy classifiers - a recurrent neuro-fuzzy classifier and a convolutional neuro-fuzzy classifier. Two experiments on the classification of biomedical and text objects were carried out, in which the accuracy indicators of neuro-fuzzy classifiers models and classifiers similar in structure without a fuzzy activation function were compared; additionally, an increase in the accuracy of artificial neural networks, which used fuzzy activation functions, was confirmed.

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Lomakina Liubov Sergeevna
Doctor of Technical Science, Professor

Nizhny Novgorod State Technical University n.a. R.E. Alekseev

Nizhny Novgorod, Russian Federation

Chernobaev Igor Dmitrievich

Swtec
Nizhny Novgorod State Technical University n.a. R.E. Alekseev

Nizhny Novgorod, Russian Federation

Keywords: neuro-fuzzy classifier, fuzzy logic system, adaptive activation function, neuro-fuzzy recurrent classifier, neuro-fuzzy convolution classifier

For citation: Lomakina L.S. Chernobaev I.D. Neuro-fuzzy classifiers. Modeling, Optimization and Information Technology. 2021;9(4). Available from: https://moitvivt.ru/ru/journal/pdf?id=1092 DOI: 10.26102/2310-6018/2021.35.4.027 (In Russ).

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Full text in PDF

Received 26.11.2021

Revised 22.12.2021

Accepted 29.12.2021

Published 30.12.2021