There is a growing interest on large-width asymptotic properties of Gaussian neural networks (NNs), namely NNs whose weights are initialized according to Gaussian distributions. A well-established result is that, as the width goes to infinity, a Gaussian NN converges in distribution to a Gaussian stochastic process, which provides an asymptotic or qualitative Gaussian approximation of the NN. In this paper, we introduce some non-asymptotic or quantitative Gaussian approximations of Gaussian NNs, quantifying the approximation error with respect to some popular distances for (probability) distributions, e.g. the $1$-Wasserstein distance, the total variation distance and the Kolmogorov-Smirnov distance. Our results rely on the use of second-order Gaussian Poincar\'e inequalities, which provide tight estimates of the approximation error, with optimal rates. This is a novel application of second-order Gaussian Poincar\'e inequalities, which are well-known in the probabilistic literature for being a powerful tool to obtain Gaussian approximations of general functionals of Gaussian stochastic processes. A generalization of our results to deep Gaussian NNs is discussed.
翻译:通过二阶Poincaré不等式对高斯神经网络进行非渐进逼近
翻译后的摘要:
本文对高斯神经网络进行非渐进(quantitative)高斯逼近方法进行了研究。该方法可以通过一些流行的概率距离(如$1$-Wasserstein距离、总变差距离和Kolmogorov-Smirnov距离)量化逼近误差。我们的研究利用了高斯Poincaré不等式的二阶(second-order)版本,该不等式是一种强大的工具,可以对高斯随机过程的一般性函数进行高斯逼近。我们的结果可以提供最优的逼近速率和紧密的误差估计。同时,我们还讨论了将这些结果推广到深高斯神经网络的情况。