A method for extracting Zadeh–Mamdani fuzzy rules from a minimalist constructive neural network model is described. The network contains no embedded fuzzy logic elements. The rule extraction algorithm needs no modification of the neural network architecture. No modification of the network learning algorithm is required, nor is it necessary to retain any training examples. The algorithm is illustrated on two well known benchmark data sets and compared with a relevantMichael J. Watt
Hybrid Intelligent Systems that combine knowledge based and artificial neural network systems typica...
Fuzzy inference systems and neural networks both provide mathematical systems for approximating cont...
An algorithm is presented that uses evolutionary programming to construct fuzzy membership functions...
This paper proposes a neural network for building and optimizing fuzzy models. The network can be re...
In this paper we propose an approach to fuzzy rule extraction, which casts into the so-called Knowle...
In previous works, we have presented two methodologies to obtain fuzzy rules in order to describe th...
This paper discusses the question how the membership functions in a fuzzy rule based system can be e...
Abstract: In the conjugate effort of building shells for fuzzy rule-based systems with a homogenous ...
summary:The extraction of logical rules from data has been, for nearly fifteen years, a key applicat...
This paper explores different techniques for extracting propositional rules from linguistic rule neu...
Hybrid intelligent systems that combine knowledge based and artificial neural network systems typica...
In previous papers, we presented an empirical methodology based on Neural Networks for obtaining fu...
Artificial neural networks (ANN) have the ability to model input-output relationships from processin...
Title: Artificial neural networks for clustering and rule extraction Author: Jiří Iša Department: De...
This paper shows how knowledge, in the form of fuzzy rules, can be derived from a supervised learnin...
Hybrid Intelligent Systems that combine knowledge based and artificial neural network systems typica...
Fuzzy inference systems and neural networks both provide mathematical systems for approximating cont...
An algorithm is presented that uses evolutionary programming to construct fuzzy membership functions...
This paper proposes a neural network for building and optimizing fuzzy models. The network can be re...
In this paper we propose an approach to fuzzy rule extraction, which casts into the so-called Knowle...
In previous works, we have presented two methodologies to obtain fuzzy rules in order to describe th...
This paper discusses the question how the membership functions in a fuzzy rule based system can be e...
Abstract: In the conjugate effort of building shells for fuzzy rule-based systems with a homogenous ...
summary:The extraction of logical rules from data has been, for nearly fifteen years, a key applicat...
This paper explores different techniques for extracting propositional rules from linguistic rule neu...
Hybrid intelligent systems that combine knowledge based and artificial neural network systems typica...
In previous papers, we presented an empirical methodology based on Neural Networks for obtaining fu...
Artificial neural networks (ANN) have the ability to model input-output relationships from processin...
Title: Artificial neural networks for clustering and rule extraction Author: Jiří Iša Department: De...
This paper shows how knowledge, in the form of fuzzy rules, can be derived from a supervised learnin...
Hybrid Intelligent Systems that combine knowledge based and artificial neural network systems typica...
Fuzzy inference systems and neural networks both provide mathematical systems for approximating cont...
An algorithm is presented that uses evolutionary programming to construct fuzzy membership functions...