Improving the Performance of Feedforward Neural Networks by Noise Injection into Hidden Neurons.

This source preferred by Hammadi Nait-Charif

Authors: Nait-Charif, H. and Ito, H.

http://www.springerlink.com/content/n3158x673113k072/

Journal: Journal of Intelligent and Robotic Systems

Volume: 21

Pages: 103-115

ISSN: 0921-0296

DOI: 10.1023/A:1007965819848

The generalization ability of feedforward neural networks (NNs) depends on the size of training set and the feature of the training patterns. Theoretically the best classification property is obtained if all possible patterns are used to train the network, which is practically impossible. In this paper a new noise injection technique is proposed, that is noise injection into the hidden neurons at the summation level. Assuming that the test patterns are drawn from the same population used to generate the training set, we show that noise injection into hidden neurons is equivalent to training with noisy input patterns (i.e., larger training set). The simulation results indicate that the networks trained with the proposed technique and the networks trained with noisy input patterns have almost the same generalization and fault tolerance abilities. The learning time required by the proposed method is considerably less than that required by the training with noisy input patterns, and it is almost the same as that required by the standard backpropagation using normal input patterns.

This data was imported from DBLP:

Authors: Nait-Charif, H. and Ito, H.

Journal: J. Intell. Robotic Syst.

Volume: 21

Pages: 103-115

The data on this page was last updated at 05:19 on October 21, 2020.