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On the validity of kernel approximations for orthogonally-initialized neural networks
Published 13 Apr 2021 in cs.LG and cs.NE | (2104.05878v1)
Abstract: In this note we extend kernel function approximation results for neural networks with Gaussian-distributed weights to single-layer networks initialized using Haar-distributed random orthogonal matrices (with possible rescaling). This is accomplished using recent results from random matrix theory.
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