Evolution strategy (ES) is a well-known instance of evolutionary algorithms, and there have been many studies on ES. In this paper, the author proposes an extended ES for solving fuzzy-valued optimization problems. In the proposed ES, genotype values are not real numbers but fuzzy numbers. Evolutionary processes in the ES are extended so that it can handle genotype instances with fuzzy numbers. In this study, the proposed method is experimentally applied to the evolution of neural networks with fuzzy weights and biases. Results reveal that fuzzy neural networks evolved using the proposed ES with fuzzy genotype values can model hidden target fuzzy functions even though no training data are explicitly provided. Next, the proposed method is ev...
The main aim of this work is to optimize the parameters of the constrained membership function of th...
Summary. In recent years, the use of hybrid soft computing methods has shown that in various applica...
This paper presents a framework for studying the effectiveness of evolutionary strategies for genera...
The author proposes an extension of genetic algorithm (GA) for solving fuzzy-valued optimization pro...
The author proposes an extension of genetic algorithm (GA) for solving fuzzy-valued optimization pro...
[[abstract]]In this paper, a novel approach to adjust both the control points of B-spline membership...
This paper presents a framework for studying the effectiveness of evolutionary strategies for genera...
Research has been conducted on how to develop machine intelligence. Artificial Neural Networks (ANN)...
[[abstract]]In this paper, we use the learning ability of neural networks to builda fuzzy inference ...
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...
Recent work combining population based heuristics and flexible models such as fuzzy rules, neural ne...
Abstract Evolutionary optimization aims to tune the hyper-parameters during learning ...
This paper describes a method of determining the rates of crossover, mutation and training employed ...
This paper illustrated an evolutionary algorithm which learns classifiers, represented as sets of f...
The main aim of this work is to optimize the parameters of the constrained membership function of th...
Summary. In recent years, the use of hybrid soft computing methods has shown that in various applica...
This paper presents a framework for studying the effectiveness of evolutionary strategies for genera...
The author proposes an extension of genetic algorithm (GA) for solving fuzzy-valued optimization pro...
The author proposes an extension of genetic algorithm (GA) for solving fuzzy-valued optimization pro...
[[abstract]]In this paper, a novel approach to adjust both the control points of B-spline membership...
This paper presents a framework for studying the effectiveness of evolutionary strategies for genera...
Research has been conducted on how to develop machine intelligence. Artificial Neural Networks (ANN)...
[[abstract]]In this paper, we use the learning ability of neural networks to builda fuzzy inference ...
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...
Recent work combining population based heuristics and flexible models such as fuzzy rules, neural ne...
Abstract Evolutionary optimization aims to tune the hyper-parameters during learning ...
This paper describes a method of determining the rates of crossover, mutation and training employed ...
This paper illustrated an evolutionary algorithm which learns classifiers, represented as sets of f...
The main aim of this work is to optimize the parameters of the constrained membership function of th...
Summary. In recent years, the use of hybrid soft computing methods has shown that in various applica...
This paper presents a framework for studying the effectiveness of evolutionary strategies for genera...