Article ID Journal Published Year Pages File Type
4946652 Neural Networks 2017 32 Pages PDF
Abstract
We study expressive power of shallow and deep neural networks with piece-wise linear activation functions. We establish new rigorous upper and lower bounds for the network complexity in the setting of approximations in Sobolev spaces. In particular, we prove that deep ReLU networks more efficiently approximate smooth functions than shallow networks. In the case of approximations of 1D Lipschitz functions we describe adaptive depth-6 network architectures more efficient than the standard shallow architecture.
Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
Authors
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