This research contribution instantiates a framework of a hybrid cascade neural network based on the application of a specific sort of neo-fuzzy elements and a new peculiar adaptive training rule. The main trait of the offered system is its competence to continue intensifying its cascades until the required accuracy is gained. A distinctive rapid training procedure is also covered for this case that offers the possibility to operate with non-stationary data streams in an attempt to provide online training of multiple parametric variables. A new training criterion is examined for handling non-stationary objects. Additionally, there is always an occasion to set up (increase) the inference order and the number of membership relations inside the...
The article is devoted to research and development of adaptive algorithms for neuro-fuzzy inference ...
In recent years, the use of hybrid soft computing methods has shown that in various applications the...
A neurofuzzy approach for a given set of input-output training data is proposed in two phases. First...
In the paper learning algorithm for adjusting weight coefficients of the Cascade Neo-Fuzzy Neural N...
Nowadays computational intelligence methods are widely spread in different tasks solving in Data Min...
This paper introduces an evolving neural fuzzy modeling approach constructed upon the neo-fuzzy neur...
In the paper a two-layer encoder is proposed. The nodes of encoder under consideration are neo-fuzzy...
The paper proposes a 2D-hybrid system of computational intelligence, which is based on the generaliz...
The paper proposes a 2D-hybrid system of computational intelligence, which is based on the generaliz...
In this research, evolving neuro-fuzzy systems, emphasizing a low computational power, high predicti...
Coordenação de Aperfeiçoamento de Pessoal de Nível Superior (CAPES)Conselho Nacional de Desenvolvime...
In the paper, a new flexible modification of neo- fuzzy neuron, neuro-fuzzy network based on these n...
This paper suggests an approach to develop a class of evolving neural fuzzy networks with adaptive f...
The article is devoted to research and development of adaptive algorithms for neuro-fuzzy inference ...
The article is devoted to research and development of adaptive algorithms for neuro-fuzzy inference ...
The article is devoted to research and development of adaptive algorithms for neuro-fuzzy inference ...
In recent years, the use of hybrid soft computing methods has shown that in various applications the...
A neurofuzzy approach for a given set of input-output training data is proposed in two phases. First...
In the paper learning algorithm for adjusting weight coefficients of the Cascade Neo-Fuzzy Neural N...
Nowadays computational intelligence methods are widely spread in different tasks solving in Data Min...
This paper introduces an evolving neural fuzzy modeling approach constructed upon the neo-fuzzy neur...
In the paper a two-layer encoder is proposed. The nodes of encoder under consideration are neo-fuzzy...
The paper proposes a 2D-hybrid system of computational intelligence, which is based on the generaliz...
The paper proposes a 2D-hybrid system of computational intelligence, which is based on the generaliz...
In this research, evolving neuro-fuzzy systems, emphasizing a low computational power, high predicti...
Coordenação de Aperfeiçoamento de Pessoal de Nível Superior (CAPES)Conselho Nacional de Desenvolvime...
In the paper, a new flexible modification of neo- fuzzy neuron, neuro-fuzzy network based on these n...
This paper suggests an approach to develop a class of evolving neural fuzzy networks with adaptive f...
The article is devoted to research and development of adaptive algorithms for neuro-fuzzy inference ...
The article is devoted to research and development of adaptive algorithms for neuro-fuzzy inference ...
The article is devoted to research and development of adaptive algorithms for neuro-fuzzy inference ...
In recent years, the use of hybrid soft computing methods has shown that in various applications the...
A neurofuzzy approach for a given set of input-output training data is proposed in two phases. First...