Copula-Based Normalizing Flows
Abstract
Normalizing flows, which learn a distribution by transforming the data to samples from a Gaussian base distribution, have proven powerful density approximations. But their expressive power is limited by this choice of the base distribution. We, therefore, propose to generalize the base distribution to a more elaborate copula distribution to capture the properties of the target distribution more accurately. In a first empirical analysis, we demonstrate that this replacement can dramatically improve the vanilla normalizing flows in terms of flexibility, stability, and effectivity for heavy-tailed data. Our results suggest that the improvements are related to an increased local Lipschitz-stability of the learned flow.
Cite
Text
Laszkiewicz et al. "Copula-Based Normalizing Flows." ICML 2021 Workshops: INNF, 2021.Markdown
[Laszkiewicz et al. "Copula-Based Normalizing Flows." ICML 2021 Workshops: INNF, 2021.](https://mlanthology.org/icmlw/2021/laszkiewicz2021icmlw-copulabased/)BibTeX
@inproceedings{laszkiewicz2021icmlw-copulabased,
title = {{Copula-Based Normalizing Flows}},
author = {Laszkiewicz, Mike and Lederer, Johannes and Fischer, Asja},
booktitle = {ICML 2021 Workshops: INNF},
year = {2021},
url = {https://mlanthology.org/icmlw/2021/laszkiewicz2021icmlw-copulabased/}
}