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Deep Neural Networks with Random Gaussian Weights: A Universal Classification Strategy?

Publication ,  Journal Article
Giryes, R; Sapiro, G; Bronstein, AM
Published in: IEEE Transactions on Signal Processing
July 1, 2016

Three important properties of a classification machinery are i) the system preserves the core information of the input data; ii) the training examples convey information about unseen data; and iii) the system is able to treat differently points from different classes. In this paper, we show that these fundamental properties are satisfied by the architecture of deep neural networks. We formally prove that these networks with random Gaussian weights perform a distance-preserving embedding of the data, with a special treatment for in-class and out-of-class data. Similar points at the input of the network are likely to have a similar output. The theoretical analysis of deep networks here presented exploits tools used in the compressed sensing and dictionary learning literature, thereby making a formal connection between these important topics. The derived results allow drawing conclusions on the metric learning properties of the network and their relation to its structure, as well as providing bounds on the required size of the training set such that the training examples would represent faithfully the unseen data. The results are validated with state-of-the-art trained networks.

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Published In

IEEE Transactions on Signal Processing

DOI

EISSN

1941-0476

ISSN

1053-587X

Publication Date

July 1, 2016

Volume

64

Issue

13

Start / End Page

3444 / 3457

Related Subject Headings

  • Networking & Telecommunications
 

Citation

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Giryes, R., Sapiro, G., & Bronstein, A. M. (2016). Deep Neural Networks with Random Gaussian Weights: A Universal Classification Strategy? IEEE Transactions on Signal Processing, 64(13), 3444–3457. https://doi.org/10.1109/TSP.2016.2546221
Giryes, R., G. Sapiro, and A. M. Bronstein. “Deep Neural Networks with Random Gaussian Weights: A Universal Classification Strategy?IEEE Transactions on Signal Processing 64, no. 13 (July 1, 2016): 3444–57. https://doi.org/10.1109/TSP.2016.2546221.
Giryes R, Sapiro G, Bronstein AM. Deep Neural Networks with Random Gaussian Weights: A Universal Classification Strategy? IEEE Transactions on Signal Processing. 2016 Jul 1;64(13):3444–57.
Giryes, R., et al. “Deep Neural Networks with Random Gaussian Weights: A Universal Classification Strategy?IEEE Transactions on Signal Processing, vol. 64, no. 13, July 2016, pp. 3444–57. Scopus, doi:10.1109/TSP.2016.2546221.
Giryes R, Sapiro G, Bronstein AM. Deep Neural Networks with Random Gaussian Weights: A Universal Classification Strategy? IEEE Transactions on Signal Processing. 2016 Jul 1;64(13):3444–3457.

Published In

IEEE Transactions on Signal Processing

DOI

EISSN

1941-0476

ISSN

1053-587X

Publication Date

July 1, 2016

Volume

64

Issue

13

Start / End Page

3444 / 3457

Related Subject Headings

  • Networking & Telecommunications