In this paper, a new weight-setting method is proposed to improve the training time and generalization accuracy of feed-forward neural networks. This method introduces a percentage-based hybrid Pattern training (PHP) scheme and aims to provide a solution to the problem dependency of other Genetic Algorithm based Neural Network weight-setting methods. A neural network is trained using neural network specific GA until a certain percentage of the training patterns is learnt. The weights thus obtained are used as the initial weights for backpropagation training, which is then applied to complete the network training. Further improvement to the method was looked into and the use of distributed GA in the weight-setting phase was investigated. The...
Considering computational algorithms available in the literature, associated with supervised learnin...
This article aims at studying the behavior of different types of crossover operators in the performa...
Considering computational algorithms available in the literature, associated with supervised learnin...
Various schemes for combining genetic algorithms and neural networks have been proposed in recent ye...
Abstract- Artificial Neural Networks have a number of properties which make them psuitable to solve ...
In this paper, we investigate the application of lateral symmetry to supervised learning using genet...
In neural networks, simultaneous determination of the optimum structure and weights is a challenge. ...
This paper presents my work on an implementation of an Artificial Neural Network trained with a Gene...
A hybrid algorithm combining Artificial Bee Colony (ABC) algorithm with Levenberq-Marquardt (LM) alg...
In this paper, a fresh method is offered regarding training of particular neural networks. This tech...
: This paper describes two algorithms based on cooperative evolution of internal hidden network repr...
Recent theoretical results support that decreasing the number of free parameters in a neural network...
Recent theoretical results support that decreasing the number of free parameters in a neural network...
Abstract: A new hybrid method for feed forward neural network training, which combines differential ...
In this study we investigated a hybrid model based on the Discrete Gradient method and an evolutiona...
Considering computational algorithms available in the literature, associated with supervised learnin...
This article aims at studying the behavior of different types of crossover operators in the performa...
Considering computational algorithms available in the literature, associated with supervised learnin...
Various schemes for combining genetic algorithms and neural networks have been proposed in recent ye...
Abstract- Artificial Neural Networks have a number of properties which make them psuitable to solve ...
In this paper, we investigate the application of lateral symmetry to supervised learning using genet...
In neural networks, simultaneous determination of the optimum structure and weights is a challenge. ...
This paper presents my work on an implementation of an Artificial Neural Network trained with a Gene...
A hybrid algorithm combining Artificial Bee Colony (ABC) algorithm with Levenberq-Marquardt (LM) alg...
In this paper, a fresh method is offered regarding training of particular neural networks. This tech...
: This paper describes two algorithms based on cooperative evolution of internal hidden network repr...
Recent theoretical results support that decreasing the number of free parameters in a neural network...
Recent theoretical results support that decreasing the number of free parameters in a neural network...
Abstract: A new hybrid method for feed forward neural network training, which combines differential ...
In this study we investigated a hybrid model based on the Discrete Gradient method and an evolutiona...
Considering computational algorithms available in the literature, associated with supervised learnin...
This article aims at studying the behavior of different types of crossover operators in the performa...
Considering computational algorithms available in the literature, associated with supervised learnin...