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Improving Generalization of Deep Neural Networks by Leveraging Margin Distribution

Published 6 years agoVersion 3arXiv:1812.10761

Authors

Shen-Huan Lyu, Lu Wang, Zhi-Hua Zhou

Categories

cs.LGstat.ML

Abstract

Recent research has used margin theory to analyze the generalization performance for deep neural networks (DNNs). The existed results are almost based on the spectrally-normalized minimum margin. However, optimizing the minimum margin ignores a mass of information about the entire margin distribution, which is crucial to generalization performance. In this paper, we prove a generalization upper bound dominated by the statistics of the entire margin distribution. Compared with the minimum margin bounds, our bound highlights an important measure for controlling the complexity, which is the ratio of the margin standard deviation to the expected margin. We utilize a convex margin distribution loss function on the deep neural networks to validate our theoretical results by optimizing the margin ratio. Experiments and visualizations confirm the effectiveness of our approach and the correlation between generalization gap and margin ratio.

Improving Generalization of Deep Neural Networks by Leveraging Margin Distribution

6 years ago
v3
3 authors

Categories

cs.LGstat.ML

Abstract

Recent research has used margin theory to analyze the generalization performance for deep neural networks (DNNs). The existed results are almost based on the spectrally-normalized minimum margin. However, optimizing the minimum margin ignores a mass of information about the entire margin distribution, which is crucial to generalization performance. In this paper, we prove a generalization upper bound dominated by the statistics of the entire margin distribution. Compared with the minimum margin bounds, our bound highlights an important measure for controlling the complexity, which is the ratio of the margin standard deviation to the expected margin. We utilize a convex margin distribution loss function on the deep neural networks to validate our theoretical results by optimizing the margin ratio. Experiments and visualizations confirm the effectiveness of our approach and the correlation between generalization gap and margin ratio.

Authors

Shen-Huan Lyu, Lu Wang, Zhi-Hua Zhou

arXiv ID: 1812.10761
Published Dec 27, 2018

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