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Main Authors: Lee, Jeyong, Kwon, Hyeok Kyu, Chae, Minwoo
Format: Preprint
Published: 2022
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Online Access:https://arxiv.org/abs/2202.02890
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author Lee, Jeyong
Kwon, Hyeok Kyu
Chae, Minwoo
author_facet Lee, Jeyong
Kwon, Hyeok Kyu
Chae, Minwoo
contents It is common in nonparametric estimation problems to impose a certain low-dimensional structure on the unknown parameter to avoid the curse of dimensionality. This paper considers a nonparametric distribution estimation problem with a structural assumption under which the target distribution is allowed to be singular with respect to the Lebesgue measure. In particular, we investigate the use of generative adversarial networks (GANs) for estimating the unknown distribution and obtain a convergence rate with respect to the $L^1$-Wasserstein metric. The convergence rate depends only on the underlying structure and noise level. More interestingly, under the same structural assumption, the convergence rate of GAN is strictly faster than the known rate of VAE in the literature. We also obtain a lower bound for the minimax optimal rate, which is conjectured to be sharp at least in some special cases. Although our upper and lower bounds for the minimax optimal rate do not match, the difference is not significant.
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institution arXiv
publishDate 2022
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spellingShingle Rates of convergence for nonparametric estimation of singular distributions using generative adversarial networks
Lee, Jeyong
Kwon, Hyeok Kyu
Chae, Minwoo
Statistics Theory
It is common in nonparametric estimation problems to impose a certain low-dimensional structure on the unknown parameter to avoid the curse of dimensionality. This paper considers a nonparametric distribution estimation problem with a structural assumption under which the target distribution is allowed to be singular with respect to the Lebesgue measure. In particular, we investigate the use of generative adversarial networks (GANs) for estimating the unknown distribution and obtain a convergence rate with respect to the $L^1$-Wasserstein metric. The convergence rate depends only on the underlying structure and noise level. More interestingly, under the same structural assumption, the convergence rate of GAN is strictly faster than the known rate of VAE in the literature. We also obtain a lower bound for the minimax optimal rate, which is conjectured to be sharp at least in some special cases. Although our upper and lower bounds for the minimax optimal rate do not match, the difference is not significant.
title Rates of convergence for nonparametric estimation of singular distributions using generative adversarial networks
topic Statistics Theory
url https://arxiv.org/abs/2202.02890