2021
DOI: 10.48550/arxiv.2107.00896
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Theory of Deep Convolutional Neural Networks III: Approximating Radial Functions

Abstract: We consider a family of deep neural networks consisting of two groups of convolutional layers, a downsampling operator, and a fully connected layer. The network structure depends on two structural parameters which determine the numbers of convolutional layers and the width of the fully connected layer. We establish an approximation theory with explicit approximation rates when the approximated function takes a composite form f • Q with a feature polynomial Q and a univariate function f . In particular, we prov… Show more

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