404

Approximation capabilities of neural networks on unbounded domains

Neural Networks (NN), 2019
Abstract

We prove universal approximation theorems of neural networks in Lp(R×[0,1]n)L^{p}(\mathbb{R} \times [0, 1]^n), under the conditions that p(1,)p \in (1, \infty) and that the activiation function belongs to a monotone sigmoid, relu, elu, softplus or leaky relu. Our results generalize corresponding universal approximation theorems on [0,1]n.[0,1]^n.

View on arXiv
Comments on this paper