arXiv:1912.02302 [math.NA]AbstractReferencesReviewsResources
Analysis of Deep Neural Networks with Quasi-optimal polynomial approximation rates
Published 2019-12-04Version 1
We show the existence of a deep neural network capable of approximating a wide class of high-dimensional approximations. The construction of the proposed neural network is based on a quasi-optimal polynomial approximation. We show that this network achieves an error rate that is sub-exponential in the number of polynomial functions, $M$, used in the polynomial approximation. The complexity of the network which achieves this sub-exponential rate is shown to be algebraic in $M$.
Comments: 13 pages submitted to MSML 2020
Subjects: 65D15
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