Improving Bayesian Regularization of ANN via Pre-training with Early-Stopping

作者:Z. S. H. Chan, H. W. Ngan, A. B. Rad

摘要

We propose a simple method that enhances the performance of Bayesian Regularization of Artificial Neural Network (ANN) through pre-training of initial network with the Early-Stopping algorithm. The proposed method is applied to the regularization of Feed-forward Neural Networks to regress three benchmark data series. Significant reduction in both the cross-validation error and the number of training over standard Bayesian Regularisation is achieved.

论文关键词:Artificial neural networks, Bayesian regularization, Early stopping algorithm

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论文官网地址:https://doi.org/10.1023/A:1026271406135