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Provable bounds for learning some deep representations

Publication ,  Journal Article
Arora, S; Bhaskara, A; Ge, R; Ma, T
Published in: 31st International Conference on Machine Learning, ICML 2014
January 1, 2014

2014 We give algorithms with provable guarantees that learn a class of deep nets in the generative model view popularized by Hinton and others. Our generative model is an n node multilayer network that has degree at most nγ for some γ < 1 and each edge has a random edge weight in [-1,1]. Our algorithm learns almost all networks in this class with polynomial running time. The sample complexity is quadratic or cubic depending upon the details of the model. The algorithm uses layerwise learning. It is based upon a novel idea of observing correlations among features and using these to infer the underlying edge structure via a global graph recovery procedure. The analysis of the algorithm reveals interesting structure of neural nets with random edge weights.

Duke Scholars

Published In

31st International Conference on Machine Learning, ICML 2014

Publication Date

January 1, 2014

Volume

1

Start / End Page

883 / 891
 

Citation

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Arora, S., Bhaskara, A., Ge, R., & Ma, T. (2014). Provable bounds for learning some deep representations. 31st International Conference on Machine Learning, ICML 2014, 1, 883–891.
Arora, S., A. Bhaskara, R. Ge, and T. Ma. “Provable bounds for learning some deep representations.” 31st International Conference on Machine Learning, ICML 2014 1 (January 1, 2014): 883–91.
Arora S, Bhaskara A, Ge R, Ma T. Provable bounds for learning some deep representations. 31st International Conference on Machine Learning, ICML 2014. 2014 Jan 1;1:883–91.
Arora, S., et al. “Provable bounds for learning some deep representations.” 31st International Conference on Machine Learning, ICML 2014, vol. 1, Jan. 2014, pp. 883–91.
Arora S, Bhaskara A, Ge R, Ma T. Provable bounds for learning some deep representations. 31st International Conference on Machine Learning, ICML 2014. 2014 Jan 1;1:883–891.

Published In

31st International Conference on Machine Learning, ICML 2014

Publication Date

January 1, 2014

Volume

1

Start / End Page

883 / 891