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On the relationship between multivariate splines and infinitely-wide neural networks

Authors :
Bach, Francis
Publication Year :
2023

Abstract

We consider multivariate splines and show that they have a random feature expansion as infinitely wide neural networks with one-hidden layer and a homogeneous activation function which is the power of the rectified linear unit. We show that the associated function space is a Sobolev space on a Euclidean ball, with an explicit bound on the norms of derivatives. This link provides a new random feature expansion for multivariate splines that allow efficient algorithms. This random feature expansion is numerically better behaved than usual random Fourier features, both in theory and practice. In particular, in dimension one, we compare the associated leverage scores to compare the two random expansions and show a better scaling for the neural network expansion.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2302.03459
Document Type :
Working Paper