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Provable approximation properties for deep neural networks

24 September 2015
Uri Shaham
A. Cloninger
Ronald R. Coifman
ArXiv (abs)PDFHTML
Abstract

We discuss approximation of functions using deep neural nets. Given a function fff on a ddd-dimensional manifold Γ⊂Rm\Gamma \subset \mathbb{R}^mΓ⊂Rm, we construct a sparsely-connected depth-4 neural network and bound its error in approximating fff. The size of the network depends on dimension and curvature of the manifold Γ\GammaΓ, the complexity of fff, in terms of its wavelet description, and only weakly on the ambient dimension mmm. Essentially, our network computes wavelet functions, which are computed from Rectified Linear Units (ReLU)

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