Regularization and Complexity Control in Feed-forward Networks
Proceedings International Conference on Artificial Neural Networks ICANN'95 |
Published by EC2 et Cie
In this paper we consider four alternative approaches to complexity control in feed-forward networks based respectively on architecture selection, regularization, early stopping, and training with noise. We show that there are close similarities between these approaches and we argue that, for most practical applications, the technique of regularization should be the method of choice.