作者
Pratik Prabhanjan Brahma, Dapeng Wu, Yiyuan She
发表日期
2015/12/7
期刊
IEEE transactions on neural networks and learning systems
卷号
27
期号
10
页码范围
1997-2008
出版商
IEEE
简介
Deep hierarchical representations of the data have been found out to provide better informative features for several machine learning applications. In addition, multilayer neural networks surprisingly tend to achieve better performance when they are subject to an unsupervised pretraining. The booming of deep learning motivates researchers to identify the factors that contribute to its success. One possible reason identified is the flattening of manifold-shaped data in higher layers of neural networks. However, it is not clear how to measure the flattening of such manifold-shaped data and what amount of flattening a deep neural network can achieve. For the first time, this paper provides quantitative evidence to validate the flattening hypothesis. To achieve this, we propose a few quantities for measuring manifold entanglement under certain assumptions and conduct experiments with both synthetic and real-world data …
引用总数
20162017201820192020202120222023202451628342233332815
学术搜索中的文章
PP Brahma, D Wu, Y She - IEEE transactions on neural networks and learning …, 2015