Abstract- Multilayer perceptron neural networks continue to be very useful in many fields. Unfortunately training these networks is still a major problem due to lack of convergence. This converge problem stems from the fact that the error curve has vast flat regions, making even higher-order algorithms move the network weights very slowly. In an ongoing series of papers including this one we propose a new class of training algorithms which is a promising solution to this non-convergence problem. These algorithms, called the Glide Algorithms, are based on the simple idea of changing the weights quickly in flat regions. This paper presents a streamlined version of the basic Glide Algorithm and a new version that incorporates Levenberg-Marquar...
In this paper we define on-line algorithms for neural-network training, based on the construction of...
Batch training algorithms with a different learning rate for each weight are investigated. The adapt...
WOS: 000348408100004This paper presents a novel weight updating algorithm for training of multilayer...
Abstract- Multilayer perceptron neural networks continue to be very useful in many fields. Unfortuna...
Abstract — Lack of reliable convergence of training algorithms due to flat regions in the quadratic ...
In this work, two modifications on Levenberg-Marquardt algorithm for feedforward neural networks are...
The speed of convergence while training is an important consideration in the use of neural nets. The...
Since the discovery of the back-propagation method, many modified and new algorithms have been propo...
Since the presentation of the backpropagation algorithm, a vast variety of improvements of the techn...
This thesis addresses the issue of applying a "globally" convergent optimization scheme to the train...
The multilayer perceptron network has become one of the most used in the solution of a wide variety ...
In this paper, the authors propose a new training algorithm which does not only rely upon the traini...
A comparative analysis of four multilayer perceptron learning algorithms is exposed in this work: th...
Till today, it has been a great challenge in optimizing the training time in neural networks. This p...
Till today, it has been a great challenge in optimizing the training time in neural networks. This p...
In this paper we define on-line algorithms for neural-network training, based on the construction of...
Batch training algorithms with a different learning rate for each weight are investigated. The adapt...
WOS: 000348408100004This paper presents a novel weight updating algorithm for training of multilayer...
Abstract- Multilayer perceptron neural networks continue to be very useful in many fields. Unfortuna...
Abstract — Lack of reliable convergence of training algorithms due to flat regions in the quadratic ...
In this work, two modifications on Levenberg-Marquardt algorithm for feedforward neural networks are...
The speed of convergence while training is an important consideration in the use of neural nets. The...
Since the discovery of the back-propagation method, many modified and new algorithms have been propo...
Since the presentation of the backpropagation algorithm, a vast variety of improvements of the techn...
This thesis addresses the issue of applying a "globally" convergent optimization scheme to the train...
The multilayer perceptron network has become one of the most used in the solution of a wide variety ...
In this paper, the authors propose a new training algorithm which does not only rely upon the traini...
A comparative analysis of four multilayer perceptron learning algorithms is exposed in this work: th...
Till today, it has been a great challenge in optimizing the training time in neural networks. This p...
Till today, it has been a great challenge in optimizing the training time in neural networks. This p...
In this paper we define on-line algorithms for neural-network training, based on the construction of...
Batch training algorithms with a different learning rate for each weight are investigated. The adapt...
WOS: 000348408100004This paper presents a novel weight updating algorithm for training of multilayer...