JOURNAL ARTICLE

Improving back-propagation learning using auxiliary neural networks

Luigi FortunaSalvatore GrazianiM. Lo PrestiGiovanni Muscato

Year: 1992 Journal:   International Journal of Control Vol: 55 (4)Pages: 793-807   Publisher: Taylor & Francis

Abstract

AbstractMulti-layered perceptrons with the back-propagation learning algorithm represent an emerging tool in non-linear systems modelling and control. One of the main drawbacks of the traditional back-propagation algorithm is its slow rate of convergence. A new method to improve the speed of the learning phase, involving the use of a suitable number of additional neural networks, is proposed. The auxiliary networks work concurrently to the principal network without slowing down the procedure. In this paper, it is shown how to choose the structure of the auxiliary networks and how these have to be trained. Several examples confirm the suitability of the proposed procedure

Keywords:
Artificial neural network Perceptron Backpropagation Computer science Convergence (economics) Artificial intelligence Algorithm

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18
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2.75
FWCI (Field Weighted Citation Impact)
9
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0.89
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Citation History

Topics

Neural Networks and Applications
Physical Sciences →  Computer Science →  Artificial Intelligence
Control Systems and Identification
Physical Sciences →  Engineering →  Control and Systems Engineering
Fuzzy Logic and Control Systems
Physical Sciences →  Computer Science →  Artificial Intelligence
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