一种基于归一统计空间的深度网络初始化方法

IF 1.2 4区 数学 Q2 MATHEMATICS, APPLIED
Hongfei Yang, Xiaofeng Ding, R. Chan, Huai-Bin Hui, Yaxin Peng, T. Zeng
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引用次数: 6

摘要

训练深度神经网络可能很困难。对于经典的神经网络,Xavier和Yoshua提出的初始化方法(后来由He、Zhang、Ren和Sun推广)可以促进稳定训练。然而,随着最近新层类型的发展,我们发现上述初始化方法可能无法成功训练。在这两种方法的基础上,我们将通过研究网络的参数空间提出一种新的初始化方法。我们的原则是以一致的方式对不同层的参数增长施加约束。为此,我们在参数空间中引入一个范数,并用这个范数来度量参数的增长。我们的新方法适用于广泛的层类型,特别是具有参数共享权矩阵的层。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A new initialization method based on normed statistical spaces in deep networks
Training deep neural networks can be difficult. For classical neural networks, the initialization method by Xavier and Yoshua which is later generalized by He, Zhang, Ren and Sun can facilitate stable training. However, with the recent development of new layer types, we find that the above mentioned initialization methods may fail to lead to successful training. Based on these two methods, we will propose a new initialization by studying the parameter space of a network. Our principal is to put constrains on the growth of parameters in different layers in a consistent way. In order to do so, we introduce a norm to the parameter space and use this norm to measure the growth of parameters. Our new method is suitable for a wide range of layer types, especially for layers with parameter-sharing weight matrices.
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来源期刊
Inverse Problems and Imaging
Inverse Problems and Imaging 数学-物理:数学物理
CiteScore
2.50
自引率
0.00%
发文量
55
审稿时长
>12 weeks
期刊介绍: Inverse Problems and Imaging publishes research articles of the highest quality that employ innovative mathematical and modeling techniques to study inverse and imaging problems arising in engineering and other sciences. Every published paper has a strong mathematical orientation employing methods from such areas as control theory, discrete mathematics, differential geometry, harmonic analysis, functional analysis, integral geometry, mathematical physics, numerical analysis, optimization, partial differential equations, and stochastic and statistical methods. The field of applications includes medical and other imaging, nondestructive testing, geophysical prospection and remote sensing as well as image analysis and image processing. This journal is committed to recording important new results in its field and will maintain the highest standards of innovation and quality. To be published in this journal, a paper must be correct, novel, nontrivial and of interest to a substantial number of researchers and readers.
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