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Understanding Why Neural Networks Generalize Well Through GSNR of Parameters

Authors :
Liu, Jinlong
Jiang, Guoqing
Bai, Yunzhi
Chen, Ting
Wang, Huayan
Publication Year :
2020

Abstract

As deep neural networks (DNNs) achieve tremendous success across many application domains, researchers tried to explore in many aspects on why they generalize well. In this paper, we provide a novel perspective on these issues using the gradient signal to noise ratio (GSNR) of parameters during training process of DNNs. The GSNR of a parameter is defined as the ratio between its gradient's squared mean and variance, over the data distribution. Based on several approximations, we establish a quantitative relationship between model parameters' GSNR and the generalization gap. This relationship indicates that larger GSNR during training process leads to better generalization performance. Moreover, we show that, different from that of shallow models (e.g. logistic regression, support vector machines), the gradient descent optimization dynamics of DNNs naturally produces large GSNR during training, which is probably the key to DNNs' remarkable generalization ability.<br />Comment: 14 pages, 8 figures, ICLR2020 accepted as spotlight presentation

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2001.07384
Document Type :
Working Paper