Neuro-fuzzy networks have been successfully applied to extract knowledge from data in the form of fuzzy rules. However, one drawback with the neuro-fuzzy approach is that the fuzzy rules induced by the learning process are not necessarily understandable. The lack of readability is essentially due to the high dimensionality of the parameter space that leads to excessive flexibility in the modification of parameters during learning. In this paper, to obtain readable knowledge from data, we propose a new neuro-fuzzy model and its learning algorithm that works in a parameter space with reduced dimensionality. The dimensionality of the new parameter space is necessary and sufficient to generate human-understandable fuzzy rules, in the sense form...
The goal of this work is to propose a learning procedure for fuzzy systems. Fuzzy systems are able t...
A methodology for the development of linguistically interpretable fuzzy models from data is presente...
Fuzzy systems can be used for function approximation based on a set of linguistic rules. We present ...
Neuro-fuzzy networks have been successfully applied to extract knowledge from data in the form of fu...
In this paper we describe a neuro-fuzzy model to extract interpretable classification rules from exa...
This paper proposes a neural network for building and optimizing fuzzy models. The network can be re...
Neuro-fuzzy modeling allows a fuzzy system to be refined by neural training, thus avoiding lenghty t...
Neuro-fuzzy modeling allows a fuzzy system to be refined by neural training, thus avoiding lenghty t...
The incorporation of prior knowledge into neural networks can improve neural network learning in sev...
A new class of adaptive neural fuzzy networks for fuzzy modeling is introduced in this paper. It lea...
A neurofuzzy approach for a given set of input-output training data is proposed in two phases. First...
A new class of neural fuzzy network based on a general neuron model is introduced in this paper. The...
In this paper we propose an approach to fuzzy rule extraction, which casts into the so-called Knowle...
The research of neuro-fuzzy modeling is divided into two branches, the precise modeling, implemented...
The research of neuro-fuzzy modeling is divided into two branches, the precise modeling, implemented...
The goal of this work is to propose a learning procedure for fuzzy systems. Fuzzy systems are able t...
A methodology for the development of linguistically interpretable fuzzy models from data is presente...
Fuzzy systems can be used for function approximation based on a set of linguistic rules. We present ...
Neuro-fuzzy networks have been successfully applied to extract knowledge from data in the form of fu...
In this paper we describe a neuro-fuzzy model to extract interpretable classification rules from exa...
This paper proposes a neural network for building and optimizing fuzzy models. The network can be re...
Neuro-fuzzy modeling allows a fuzzy system to be refined by neural training, thus avoiding lenghty t...
Neuro-fuzzy modeling allows a fuzzy system to be refined by neural training, thus avoiding lenghty t...
The incorporation of prior knowledge into neural networks can improve neural network learning in sev...
A new class of adaptive neural fuzzy networks for fuzzy modeling is introduced in this paper. It lea...
A neurofuzzy approach for a given set of input-output training data is proposed in two phases. First...
A new class of neural fuzzy network based on a general neuron model is introduced in this paper. The...
In this paper we propose an approach to fuzzy rule extraction, which casts into the so-called Knowle...
The research of neuro-fuzzy modeling is divided into two branches, the precise modeling, implemented...
The research of neuro-fuzzy modeling is divided into two branches, the precise modeling, implemented...
The goal of this work is to propose a learning procedure for fuzzy systems. Fuzzy systems are able t...
A methodology for the development of linguistically interpretable fuzzy models from data is presente...
Fuzzy systems can be used for function approximation based on a set of linguistic rules. We present ...