arXiv Analytics

Sign in

arXiv:2303.05924 [math.AP]AbstractReferencesReviewsResources

Variational formulations of ODE-Net as a mean-field optimal control problem and existence results

Noboru Isobe, Mizuho Okumura

Published 2023-03-09, updated 2023-04-06Version 2

This paper presents a mathematical analysis of ODE-Net, a continuum model of deep neural networks (DNNs). In recent years, Machine Learning researchers have introduced ideas of replacing the deep structure of DNNs with ODEs as a continuum limit. These studies regard the "learning" of ODE-Net as the minimization of a "loss" constrained by a parametric ODE. Although the existence of a minimizer for this minimization problem needs to be assumed, only a few studies have investigated its existence analytically in detail. In the present paper, the existence of a minimizer is discussed based on a formulation of ODE-Net as a measure-theoretic mean-field optimal control problem. The existence result is proved when a neural network, which describes a vector field of ODE-Net, is linear with respect to learnable parameters. The proof employs the measure-theoretic formulation combined with the direct method of Calculus of Variations. Secondly, an idealized minimization problem is proposed to remove the above linearity assumption. Such a problem is inspired by a kinetic regularization associated with the Benamou--Brenier formula and universal approximation theorems for neural networks. The proofs of these existence results use variational methods, differential equations, and mean-field optimal control theory. They will stand for a new analytic way to investigate the learning process of deep neural networks.

Related articles: Most relevant | Search more
arXiv:2308.16272 [math.AP] (Published 2023-08-30)
A numerical approach for the fractional Laplacian via deep neural networks
arXiv:1905.09076 [math.AP] (Published 2019-05-22)
Selection dynamics for deep neural networks
arXiv:0801.3809 [math.AP] (Published 2008-01-24)
An existence result for the sandpile problem on flat tables with walls