Understanding the class separation process of convolutional neural networks
Yiqi Yang,
Xingyu Lian,
Weihao Liu
et al.
Abstract:Extensive research shows that deep neural networks (DNNs) capture better feature representations than the previous handcrafted feature engineering, which leads to a significant performance improvement. However, it raises the question of how does the neural network spontaneously learn the intermediate representation, during the training process, to correctly separate the test data set into different categories? In this paper, based on the existing research work, we continue to take a small step towards understa… Show more
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