DocumentCode :
2199130
Title :
On learning feedforward neural networks with noise injection into inputs
Author :
Seghouane, Abd-Krim ; Moudden, Yassir ; Fleury, Gilles
Author_Institution :
Service des Mesures, Ecole Superieure d´´Electr., Gif-sur-Yvette, France
fYear :
2002
fDate :
2002
Firstpage :
149
Lastpage :
158
Abstract :
Injecting noise to the inputs during the training of feedforward neural networks (FNN) can improve their generalization performance remarkably. Reported works justify this fact arguing that noise injection is equivalent to a smoothing regularization with the input noise variance playing the role of the regularization parameter. The success of this approach depends on the appropriate choice of the input noise variance. However, it is often not known a priori if the degree of smoothness imposed on the FNN mapping is consistent with the unknown function to be approximated. In order to have a better control over this smoothing effect, a cost function putting in balance the smoothed fitting induced by the noise injection and the precision of approximation, is proposed. The second term, which aims at penalizing the undesirable effect of input noise injection or controlling the deviation of the random perturbed cost, was obtained by expressing a certain distance between the original cost function and its random perturbed version. In fact, this term can be derived in general for parametrical. models that satisfy the Lipschitz property. An example is included to illustrate the effectiveness of learning with this proposed cost function when noise injection is used.
Keywords :
feedforward neural nets; function approximation; generalisation (artificial intelligence); learning (artificial intelligence); smoothing methods; FNN; Lipschitz property; cost function; deviation control; feedforward neural networks; generalization performance; input noise injection; input noise variance; learning; random perturbed cost; smoothing regularization; training; unknown function approximation; Approximation algorithms; Cost function; Electronic mail; Feedforward neural networks; Function approximation; Fuzzy control; Neural networks; Neurons; Pattern classification; Smoothing methods;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Neural Networks for Signal Processing, 2002. Proceedings of the 2002 12th IEEE Workshop on
Print_ISBN :
0-7803-7616-1
Type :
conf
DOI :
10.1109/NNSP.2002.1030026
Filename :
1030026
Link To Document :
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