The author proposes an extension of genetic algorithm (GA) for solving fuzzy-valued optimization problems. In the proposed GA, values in the genotypes are not real numbers but fuzzy numbers. Evolutionary processes in GA are extended so that GA can handle genotype instances with fuzzy numbers. The proposed method is applied to evolving neural networks with fuzzy weights and biases. Experimental results showed that fuzzy neural networks evolved by the fuzzy GA could model hidden target fuzzy functions well despite the fact that no training data was explicitly provided
Genetic algorithms are computational techniques for search, optimization and machine learning that a...
Available from STL Prague, CZ / NTK - National Technical LibrarySIGLECZCzech Republi
Abstract:- This paper proposes the application of Genetic Learning as a procedure for the optimal de...
The author proposes an extension of genetic algorithm (GA) for solving fuzzy-valued optimization pro...
Evolution strategy (ES) is a well-known instance of evolutionary algorithms, and there have been man...
Evolutionary algorithms, and genetic algorithms in particular, are generally time consuming when loo...
Premature convergence is a classical problem in finding optimal solution in Genetic Algorithms (GAs)...
Abstract Novel neuro-fuzzy techniques are used to dynamically control parameter settings of genetic ...
[[abstract]]In this paper, a novel approach to adjust both the control points of B-spline membership...
Neuro-fuzzy system has been shown to provide a good performance on chromosome classification but doe...
Genetic algorithms are powerful and robust heuristic adaptation procedures suggested by biological e...
In recent years, the use of hybrid soft computing methods has shown that in various applications the...
Order fuzzy numbers are defined that make it possible to deal with fuzzy inputs quantitatively, exac...
[[abstract]]In this paper, we use the learning ability of neural networks to builda fuzzy inference ...
Summary. In recent years, the use of hybrid soft computing methods has shown that in various applica...
Genetic algorithms are computational techniques for search, optimization and machine learning that a...
Available from STL Prague, CZ / NTK - National Technical LibrarySIGLECZCzech Republi
Abstract:- This paper proposes the application of Genetic Learning as a procedure for the optimal de...
The author proposes an extension of genetic algorithm (GA) for solving fuzzy-valued optimization pro...
Evolution strategy (ES) is a well-known instance of evolutionary algorithms, and there have been man...
Evolutionary algorithms, and genetic algorithms in particular, are generally time consuming when loo...
Premature convergence is a classical problem in finding optimal solution in Genetic Algorithms (GAs)...
Abstract Novel neuro-fuzzy techniques are used to dynamically control parameter settings of genetic ...
[[abstract]]In this paper, a novel approach to adjust both the control points of B-spline membership...
Neuro-fuzzy system has been shown to provide a good performance on chromosome classification but doe...
Genetic algorithms are powerful and robust heuristic adaptation procedures suggested by biological e...
In recent years, the use of hybrid soft computing methods has shown that in various applications the...
Order fuzzy numbers are defined that make it possible to deal with fuzzy inputs quantitatively, exac...
[[abstract]]In this paper, we use the learning ability of neural networks to builda fuzzy inference ...
Summary. In recent years, the use of hybrid soft computing methods has shown that in various applica...
Genetic algorithms are computational techniques for search, optimization and machine learning that a...
Available from STL Prague, CZ / NTK - National Technical LibrarySIGLECZCzech Republi
Abstract:- This paper proposes the application of Genetic Learning as a procedure for the optimal de...