This paper proposes the use of fuzzification functions based on clustering of data based on their density to perform the granularization of the input space. The neurons formed in this layer are built through the density centers obtained with the input data of the model. In the second layer, the nullneurons aggregate the generated neurons in the first layer and allow the creation of if/then fuzzy rules. Even in the second layer, a regularization function is activated to determine the essential nullneurons. The concepts of extreme learning machine generate the weights used in the third layer, but with a regularizing factor. Finally, in the third layer, represented by an artificial neural network, it has a single neuron that the activation fun...
Learning from data streams is a contemporary and demanding issue because of the constantly increasin...
ABSTRACT. The proposed IAFC neural networks have both stability and plasticity because they use a co...
[[abstract]]Fuzzy modeling is the task of identifying the structure and parameters of a fuzzy if-the...
This paper presents a learning algorithm for fuzzy neural networks based on nullneurons able to gene...
This paper presents a novel learning algorithm for fuzzy logic neuron based on neural networks and f...
This paper proposes a training algorithm for fuzzy neural networks that can generate consistent and ...
The fuzzy neural networks are efficient hybrid structures to perform tasks of regression, patterns c...
Interpretability in intelligent models becomes a challenge in academic research and approaches that ...
Smart models are responsible for solving complex problems within the routines of people and companie...
This paper formulates a fuzzy logic neuron that uses n-uninorms to construct uni-nullneurons. A fuzz...
In this paper we address a new type of elementary neurofuzzy unit called nullneuron. A nullneuron is...
Rule extraction with neural networks has been a common research topic over the last decades. This ma...
We introduce a new category of fuzzy neural networks with multiple-output based on fuzzy clustering ...
Deep learning (DL) has achieved superior classification in many applications due to its capability o...
This paper presents a training algorithm for regularized fuzzy neural networks which is able to gene...
Learning from data streams is a contemporary and demanding issue because of the constantly increasin...
ABSTRACT. The proposed IAFC neural networks have both stability and plasticity because they use a co...
[[abstract]]Fuzzy modeling is the task of identifying the structure and parameters of a fuzzy if-the...
This paper presents a learning algorithm for fuzzy neural networks based on nullneurons able to gene...
This paper presents a novel learning algorithm for fuzzy logic neuron based on neural networks and f...
This paper proposes a training algorithm for fuzzy neural networks that can generate consistent and ...
The fuzzy neural networks are efficient hybrid structures to perform tasks of regression, patterns c...
Interpretability in intelligent models becomes a challenge in academic research and approaches that ...
Smart models are responsible for solving complex problems within the routines of people and companie...
This paper formulates a fuzzy logic neuron that uses n-uninorms to construct uni-nullneurons. A fuzz...
In this paper we address a new type of elementary neurofuzzy unit called nullneuron. A nullneuron is...
Rule extraction with neural networks has been a common research topic over the last decades. This ma...
We introduce a new category of fuzzy neural networks with multiple-output based on fuzzy clustering ...
Deep learning (DL) has achieved superior classification in many applications due to its capability o...
This paper presents a training algorithm for regularized fuzzy neural networks which is able to gene...
Learning from data streams is a contemporary and demanding issue because of the constantly increasin...
ABSTRACT. The proposed IAFC neural networks have both stability and plasticity because they use a co...
[[abstract]]Fuzzy modeling is the task of identifying the structure and parameters of a fuzzy if-the...