Depth Separation with Multilayer Mean-Field Networks
Abstract
Depth separation -- why a deeper network is more powerful than a shallower one -- has been a major problem in deep learning theory. Previous results often focus on representation power. For example, arXiv:1904.06984 constructed a function that is easy to approximate using a 3-layer network but not approximable by any 2-layer network. In this paper, we show that this separation is in fact algorithmic: one can learn the function constructed by arXiv:1904.06984 using an overparameterized network with polynomially many neurons efficiently. Our result relies on a new way of extending the mean-field limit to multilayer networks, and a decomposition of loss that factors out the error introduced by the discretization of infinite-width mean-field networks.
Cite
@article{arxiv.2304.01063,
title = {Depth Separation with Multilayer Mean-Field Networks},
author = {Yunwei Ren and Mo Zhou and Rong Ge},
journal= {arXiv preprint arXiv:2304.01063},
year = {2023}
}
Comments
ICLR 2023