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Towards Understanding the Importance of Shortcut Connections in Residual Networks

Authors :
Liu, Tianyi
Chen, Minshuo
Zhou, Mo
Du, Simon S.
Zhou, Enlu
Zhao, Tuo
Publication Year :
2019

Abstract

Residual Network (ResNet) is undoubtedly a milestone in deep learning. ResNet is equipped with shortcut connections between layers, and exhibits efficient training using simple first order algorithms. Despite of the great empirical success, the reason behind is far from being well understood. In this paper, we study a two-layer non-overlapping convolutional ResNet. Training such a network requires solving a non-convex optimization problem with a spurious local optimum. We show, however, that gradient descent combined with proper normalization, avoids being trapped by the spurious local optimum, and converges to a global optimum in polynomial time, when the weight of the first layer is initialized at 0, and that of the second layer is initialized arbitrarily in a ball. Numerical experiments are provided to support our theory.<br />Comment: Thirty-third Conference on Neural Information Processing Systems, 2019

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1909.04653
Document Type :
Working Paper