This paper presents a novel learning algorithm for fuzzy logic neuron based on neural networks and fuzzy systems able to generate accurate and transparent models. The learning algorithm is based on ideas from Extreme Learning Machine [36], to achieve a low time complexity, and regularization theory, resulting in sparse and accurate models. A compact set of incomplete fuzzy rules can be extracted from the resulting network topology. Experiments considering regression problems are detailed. Results suggest the proposed approach as a promising alternative for pattern recognition with a good accuracy and some level of interpretability
The fuzzy neural networks are efficient hybrid structures to perform tasks of regression, patterns c...
This paper proposes a neural network for building and optimizing fuzzy models. The network can be re...
The incorporation of prior knowledge into neural networks can improve neural network learning in sev...
This paper presents a learning algorithm for fuzzy neural networks based on nullneurons able to gene...
This paper proposes a training algorithm for fuzzy neural networks that can generate consistent and ...
This paper presents a learning algorithm for fuzzy neural networks based on unineurons able to gener...
Fuzzy neural networks are a connecting link between fuzzy logic and neurocomputing. The goal of this...
This paper presents a training algorithm for regularized fuzzy neural networks which is able to gene...
This paper formulates a fuzzy logic neuron that uses n-uninorms to construct uni-nullneurons. A fuzz...
The architecture and learning scheme of a novel fuzzy logic system implemented in the framework of a...
In our fuzzy neural networks fuzzy weights and fuzzy operations are used for training crisp and fuzz...
According to principles of fuzzy mathematics and neural networks, a new model on neural networks, by...
A new class of neural fuzzy network based on a general neuron model is introduced in this paper. The...
Neuro-fuzzy networks have been successfully applied to extract knowledge from data in the form of fu...
Neuro-fuzzy networks have been successfully applied to extract knowledge from data in the form of fu...
The fuzzy neural networks are efficient hybrid structures to perform tasks of regression, patterns c...
This paper proposes a neural network for building and optimizing fuzzy models. The network can be re...
The incorporation of prior knowledge into neural networks can improve neural network learning in sev...
This paper presents a learning algorithm for fuzzy neural networks based on nullneurons able to gene...
This paper proposes a training algorithm for fuzzy neural networks that can generate consistent and ...
This paper presents a learning algorithm for fuzzy neural networks based on unineurons able to gener...
Fuzzy neural networks are a connecting link between fuzzy logic and neurocomputing. The goal of this...
This paper presents a training algorithm for regularized fuzzy neural networks which is able to gene...
This paper formulates a fuzzy logic neuron that uses n-uninorms to construct uni-nullneurons. A fuzz...
The architecture and learning scheme of a novel fuzzy logic system implemented in the framework of a...
In our fuzzy neural networks fuzzy weights and fuzzy operations are used for training crisp and fuzz...
According to principles of fuzzy mathematics and neural networks, a new model on neural networks, by...
A new class of neural fuzzy network based on a general neuron model is introduced in this paper. The...
Neuro-fuzzy networks have been successfully applied to extract knowledge from data in the form of fu...
Neuro-fuzzy networks have been successfully applied to extract knowledge from data in the form of fu...
The fuzzy neural networks are efficient hybrid structures to perform tasks of regression, patterns c...
This paper proposes a neural network for building and optimizing fuzzy models. The network can be re...
The incorporation of prior knowledge into neural networks can improve neural network learning in sev...