This paper describes a method for searching near-optimal neural networks using Genetic Algorithms. The method uses an evolutionary search with the simultaneous selection of initial weights, transfer functions, architectures and learning rules. Experimental results have shown that the method is able to produce compact, efficient networks with satisfactory generalization power and shorter training times in comparison to other algorithms. 1
We present a general and systematic method for neural network design based on the genetic algorithm....
In this paper we investigate a hybrid model based on the Discrete Gradient method and an evolutionar...
In this research, neural network (NN) and genetic algorithm (GA) are used together to design optimal...
Abstract- Artificial Neural Networks have a number of properties which make them psuitable to solve ...
Neural networks and genetic algorithms are the two sophisticated machine learning techniques present...
Considering computational algorithms available in the literature, associated with supervised learnin...
It has been demonstrated that genetic algorithms (GAs) can help search the global (or near global) o...
Abstract. This work deals with methods for finding optimal neural network architectures to learn par...
Genetic algorithms are computational techniques for search, optimization and machine learning that a...
Recently, a hybrid methodology for combining genetic algorithms and local search algorithms has rece...
Given the NP-Hard nature of many optimization problems, it is often impractical to obtain optimal so...
Abstract: The artificial neural networks (ANN) have proven their efficiency in several applications:...
Considering computational algorithms available in the literature, associated with supervised learnin...
The authors present a technique for reducing the search-space of the genetic algorithm (GA) to impro...
A neural network may be considered as an adaptive system that progressively self-organizes in order ...
We present a general and systematic method for neural network design based on the genetic algorithm....
In this paper we investigate a hybrid model based on the Discrete Gradient method and an evolutionar...
In this research, neural network (NN) and genetic algorithm (GA) are used together to design optimal...
Abstract- Artificial Neural Networks have a number of properties which make them psuitable to solve ...
Neural networks and genetic algorithms are the two sophisticated machine learning techniques present...
Considering computational algorithms available in the literature, associated with supervised learnin...
It has been demonstrated that genetic algorithms (GAs) can help search the global (or near global) o...
Abstract. This work deals with methods for finding optimal neural network architectures to learn par...
Genetic algorithms are computational techniques for search, optimization and machine learning that a...
Recently, a hybrid methodology for combining genetic algorithms and local search algorithms has rece...
Given the NP-Hard nature of many optimization problems, it is often impractical to obtain optimal so...
Abstract: The artificial neural networks (ANN) have proven their efficiency in several applications:...
Considering computational algorithms available in the literature, associated with supervised learnin...
The authors present a technique for reducing the search-space of the genetic algorithm (GA) to impro...
A neural network may be considered as an adaptive system that progressively self-organizes in order ...
We present a general and systematic method for neural network design based on the genetic algorithm....
In this paper we investigate a hybrid model based on the Discrete Gradient method and an evolutionar...
In this research, neural network (NN) and genetic algorithm (GA) are used together to design optimal...