This thesis concentrates on learning and identification of fuzzy systems, and this thesis is composed about learning fuzzy systems from data for regression and function approximation by constructing complete, compact, and consistent fuzzy systems. Fuzzy systems are prevalent to solve pattern recognition problems and function approximation problems as a result of the good knowledge representation. With the development of fuzzy systems, a lot of sophisticated methods based on them try to completely solve pattern recognition problems and function approximation problems by constructing a great diversity of mathematical models. However, there exists a conflict between the degree of the interpretability and the accuracy of the approximation in ge...
One approach forsystem identification among many othersis the fuzzy identification approach. The adv...
A fuzzy system entirely characterizes one region of the input-output product space S=U×Vthrough a ...
[[abstract]]In this paper, a hybrid clustering and gradient descent approach is proposed for automat...
AbstractA practical problem in the identification of fuzzy systems from data, is the design and the ...
The modernization of the methods for identification of the state of objects under conditions of fuzz...
The modernization of the methods for identification of the state of objects under conditions of fuzz...
One of the most important aspects of fuzzy systems is that they are easily understandable and inter...
System identification techniques are essential for the knowledge of natural phenomena and processes ...
The most promising methods for identifying a fuzzy model are data clustering, cluster merging and su...
In this paper a new approach to data stream evolving fuzzy model identification is given. The struct...
Data mining and information retrieval are two difficult tasks for various reasons. First, as the vol...
We have observed that the support vector clustering method proposed by Asa Ben Hur, David Horn, Hava...
AbstractThe identification of a model is one of the key issues in the field of fuzzy system modeling...
Takagi-Sugeno Fuzzy Models within the framework of Orthonormal Basis Functions (OBF-TS Fuzzy Models)...
One of the most important aspects of fuzzy systems is that they are easily un-derstandable and inter...
One approach forsystem identification among many othersis the fuzzy identification approach. The adv...
A fuzzy system entirely characterizes one region of the input-output product space S=U×Vthrough a ...
[[abstract]]In this paper, a hybrid clustering and gradient descent approach is proposed for automat...
AbstractA practical problem in the identification of fuzzy systems from data, is the design and the ...
The modernization of the methods for identification of the state of objects under conditions of fuzz...
The modernization of the methods for identification of the state of objects under conditions of fuzz...
One of the most important aspects of fuzzy systems is that they are easily understandable and inter...
System identification techniques are essential for the knowledge of natural phenomena and processes ...
The most promising methods for identifying a fuzzy model are data clustering, cluster merging and su...
In this paper a new approach to data stream evolving fuzzy model identification is given. The struct...
Data mining and information retrieval are two difficult tasks for various reasons. First, as the vol...
We have observed that the support vector clustering method proposed by Asa Ben Hur, David Horn, Hava...
AbstractThe identification of a model is one of the key issues in the field of fuzzy system modeling...
Takagi-Sugeno Fuzzy Models within the framework of Orthonormal Basis Functions (OBF-TS Fuzzy Models)...
One of the most important aspects of fuzzy systems is that they are easily un-derstandable and inter...
One approach forsystem identification among many othersis the fuzzy identification approach. The adv...
A fuzzy system entirely characterizes one region of the input-output product space S=U×Vthrough a ...
[[abstract]]In this paper, a hybrid clustering and gradient descent approach is proposed for automat...