Analysis of learning a flow-based generative model from limited sample complexity
Abstract
We study the problem of training a flow-based generative model, parametrized by a two-layer autoencoder, to sample from a high-dimensional Gaussian mixture. We provide a sharp end-to-end analysis of the problem. First, we provide a tight closed-form characterization of the learnt velocity field, when parametrized by a shallow denoising auto-encoder trained on a finite number of samples from the target distribution. Building on this analysis, we provide a sharp description of the corresponding generative flow, which pushes the base Gaussian density forward to an approximation of the target density. In particular, we provide closed-form formulae for the distance between the mean of the generated mixture and the mean of the target mixture, which we show decays as . Finally, this rate is shown to be in fact Bayes-optimal.
Cite
@article{arxiv.2310.03575,
title = {Analysis of learning a flow-based generative model from limited sample complexity},
author = {Hugo Cui and Florent Krzakala and Eric Vanden-Eijnden and Lenka Zdeborová},
journal= {arXiv preprint arXiv:2310.03575},
year = {2024}
}