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Original Articles

Parallel recursive prediction error algorithm for training layered neural networks

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Pages 1215-1228 | Received 17 Oct 1989, Published online: 27 Mar 2007
 

Abstract

A new recursive prediction error algorithm is derived for the training of feedforward layered neural networks. The algorithm enables the weights in each neuron of the network to be updated in an efficient parallel manner and has better convergence properties than the classical back propagation algorithm. The relationship between this new parallel algorithm and other existing learning algorithms is discussed. Examples taken from the fields of communication channel equalization and nonlinear systems modelling are used to demonstrate the superior performance of the new algorithm compared with the back propagation routine.

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