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Gaussian random field approximation via Stein's method with applications to wide random neural networks

28 June 2023
Krishnakumar Balasubramanian
L. Goldstein
Nathan Ross
Adil Salim
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Abstract

We derive upper bounds on the Wasserstein distance (W1W_1W1​), with respect to sup⁡\supsup-norm, between any continuous Rd\mathbb{R}^dRd valued random field indexed by the nnn-sphere and the Gaussian, based on Stein's method. We develop a novel Gaussian smoothing technique that allows us to transfer a bound in a smoother metric to the W1W_1W1​ distance. The smoothing is based on covariance functions constructed using powers of Laplacian operators, designed so that the associated Gaussian process has a tractable Cameron-Martin or Reproducing Kernel Hilbert Space. This feature enables us to move beyond one dimensional interval-based index sets that were previously considered in the literature. Specializing our general result, we obtain the first bounds on the Gaussian random field approximation of wide random neural networks of any depth and Lipschitz activation functions at the random field level. Our bounds are explicitly expressed in terms of the widths of the network and moments of the random weights. We also obtain tighter bounds when the activation function has three bounded derivatives.

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