Litcius/Paper detail

Convolutional Neural Networks With Dynamic Regularization

Yi Wang, Zhen-Peng Bian, Junhui Hou, Lap‐Pui Chau

2020IEEE Transactions on Neural Networks and Learning Systems37 citationsDOI

Abstract

Regularization is commonly used for alleviating overfitting in machine learning. For convolutional neural networks (CNNs), regularization methods, such as DropBlock and Shake-Shake, have illustrated the improvement in the generalization performance. However, these methods lack a self-adaptive ability throughout training. That is, the regularization strength is fixed to a predefined schedule, and manual adjustments are required to adapt to various network architectures. In this article, we propose a dynamic regularization method for CNNs. Specifically, we model the regularization strength as a function of the training loss. According to the change of the training loss, our method can dynamically adjust the regularization strength in the training procedure, thereby balancing the underfitting and overfitting of CNNs. With dynamic regularization, a large-scale model is automatically regularized by the strong perturbation, and vice versa. Experimental results show that the proposed method can improve the generalization capability on off-the-shelf network architectures and outperform state-of-the-art regularization methods.

Topics & Concepts

Convolutional neural networkComputer scienceRegularization (linguistics)Artificial intelligenceNeural Networks and ApplicationsAdvanced Neural Network ApplicationsMachine Learning and ELM