In this paper, a modified learning algorithm for the multilayer neural network with the multi-valued neurons (MLMVN) is presented. The MLMVN, which is a member of complex-valued neural networks family, has already demonstrated a number of important advantages over other techniques. A modified learning algorithm for this network is based on the introduction of an acceleration step, performing by means of the complex QR decomposition and on the new approach to calculation of the output neurons errors: they are calculated as the differences between the corresponding desired outputs and actual values of the weighted sums. These modifications significantly improve the existing derivative-free backpropagation learning algorithm for theMLMVNin terms of learning speed.Amodified learning algorithm requires two orders of magnitude lower number of training epochs and less time for its convergence when compared with the existing learning algorithm. Good performance is confirmed not only by the much quicker convergence of the learning algorithm, but also by the compatible or even higher classification/prediction accuracy, which is obtained by testing over some benchmarks (Mackey–Glass and Jenkins–Box time series) and over some satellite spectral data examined in a comparison test.

A modified learning algorithm for the multilayer neural networkwith multi-valued neurons based on the complex QRdecomposition / I. Aizenberg; A. Luchetta; S. Manetti. - In: SOFT COMPUTING. - ISSN 1432-7643. - STAMPA. - 16:(2012), pp. 563-575. [10.1007/s00500-011-0755-7]

A modified learning algorithm for the multilayer neural networkwith multi-valued neurons based on the complex QRdecomposition

LUCHETTA, ANTONIO;MANETTI, STEFANO
2012

Abstract

In this paper, a modified learning algorithm for the multilayer neural network with the multi-valued neurons (MLMVN) is presented. The MLMVN, which is a member of complex-valued neural networks family, has already demonstrated a number of important advantages over other techniques. A modified learning algorithm for this network is based on the introduction of an acceleration step, performing by means of the complex QR decomposition and on the new approach to calculation of the output neurons errors: they are calculated as the differences between the corresponding desired outputs and actual values of the weighted sums. These modifications significantly improve the existing derivative-free backpropagation learning algorithm for theMLMVNin terms of learning speed.Amodified learning algorithm requires two orders of magnitude lower number of training epochs and less time for its convergence when compared with the existing learning algorithm. Good performance is confirmed not only by the much quicker convergence of the learning algorithm, but also by the compatible or even higher classification/prediction accuracy, which is obtained by testing over some benchmarks (Mackey–Glass and Jenkins–Box time series) and over some satellite spectral data examined in a comparison test.
2012
16
563
575
I. Aizenberg; A. Luchetta; S. Manetti
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/559094
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