NeurIPS2020

Rational neural networks

Nicolas Boullé, Yuji Nakatsukasa, Alex Townsend

被引用 1 次

摘要

We show that suitably regular functions can be approximated in the C1\mathcal{C}^1-norm both with rational functions and rational neural networks, including approximation rates with respect to width and depth of the network, and degree of the rational functions. As consequence of our results, we further obtain C1\mathcal{C}^1-approximation results for rational neural networks with the EQL÷\text{EQL}^\div and ParFam architecture, both of which are important in particular in the context of symbolic regression for physical law learning.