In this paper we describe a neuro-fuzzy model to extract interpretable classification rules from examples. Such model is trained in a parameter subspace where a number of formal properties, which characterize understandable knowledge bases, are satisfied. To deal with the curse of dimensionality problem, which occurs when our model is used in high-dimensional classification tasks, an "A Priori Pruning" method is also proposed
Neuro-fuzzy systems is a popular hybridization in soft computing that abstracts a fuzzy model from g...
In previous papers, we presented an empirical methodology based on Neural Networks for obtaining fu...
We present NeuroLinear, a system for extracting oblique decision rules from neural networks that ha...
Neuro-fuzzy networks have been successfully applied to extract knowledge from data in the form of fu...
In this work we discuss an approach for deriving fuzzy classifier models directly from data. The aim...
The research of neuro-fuzzy modeling is divided into two branches, the precise modeling, implemented...
Abstract—Most methods of classification either ignore feature analysis or do it in a separate phase,...
In this paper we propose an approach to fuzzy rule extraction, which casts into the so-called Knowle...
A methodology for the development of linguistically interpretable fuzzy models from data is presente...
A staged approach to identify a compact fuzzy classification rule base from numerical data is presen...
A neurofuzzy system combines the positive attributes of a neural network and a fuzzy system by provi...
Neuro-fuzzy modeling allows a fuzzy system to be refined by neural training, thus avoiding lenghty t...
In previous works, we have presented two methodologies to obtain fuzzy rules in order to describe th...
Modelling has become an invaluable tool in many areas of research, particularly in the control commu...
Neurofuzzy systems have been developed as grey box modelling technique ideal for the task of system ...
Neuro-fuzzy systems is a popular hybridization in soft computing that abstracts a fuzzy model from g...
In previous papers, we presented an empirical methodology based on Neural Networks for obtaining fu...
We present NeuroLinear, a system for extracting oblique decision rules from neural networks that ha...
Neuro-fuzzy networks have been successfully applied to extract knowledge from data in the form of fu...
In this work we discuss an approach for deriving fuzzy classifier models directly from data. The aim...
The research of neuro-fuzzy modeling is divided into two branches, the precise modeling, implemented...
Abstract—Most methods of classification either ignore feature analysis or do it in a separate phase,...
In this paper we propose an approach to fuzzy rule extraction, which casts into the so-called Knowle...
A methodology for the development of linguistically interpretable fuzzy models from data is presente...
A staged approach to identify a compact fuzzy classification rule base from numerical data is presen...
A neurofuzzy system combines the positive attributes of a neural network and a fuzzy system by provi...
Neuro-fuzzy modeling allows a fuzzy system to be refined by neural training, thus avoiding lenghty t...
In previous works, we have presented two methodologies to obtain fuzzy rules in order to describe th...
Modelling has become an invaluable tool in many areas of research, particularly in the control commu...
Neurofuzzy systems have been developed as grey box modelling technique ideal for the task of system ...
Neuro-fuzzy systems is a popular hybridization in soft computing that abstracts a fuzzy model from g...
In previous papers, we presented an empirical methodology based on Neural Networks for obtaining fu...
We present NeuroLinear, a system for extracting oblique decision rules from neural networks that ha...