Marginal Tail-Adaptive Normalizing Flows

06/21/2022
by   Mike Laszkiewicz, et al.
0

Learning the tail behavior of a distribution is a notoriously difficult problem. By definition, the number of samples from the tail is small, and deep generative models, such as normalizing flows, tend to concentrate on learning the body of the distribution. In this paper, we focus on improving the ability of normalizing flows to correctly capture the tail behavior and, thus, form more accurate models. We prove that the marginal tailedness of an autoregressive flow can be controlled via the tailedness of the marginals of its base distribution. This theoretical insight leads us to a novel type of flows based on flexible base distributions and data-driven linear layers. An empirical analysis shows that the proposed method improves on the accuracy – especially on the tails of the distribution – and is able to generate heavy-tailed data. We demonstrate its application on a weather and climate example, in which capturing the tail behavior is essential.

READ FULL TEXT

page 2

page 16

page 26

research
05/02/2022

COMET Flows: Towards Generative Modeling of Multivariate Extremes and Tail Dependence

Normalizing flows, a popular class of deep generative models, often fail...
research
07/07/2019

Copula & Marginal Flows: Disentangling the Marginal from its Joint

Deep generative networks such as GANs and normalizing flows flourish in ...
research
05/16/2022

Fat-Tailed Variational Inference with Anisotropic Tail Adaptive Flows

While fat-tailed densities commonly arise as posterior and marginal dist...
research
05/22/2023

On Learning the Tail Quantiles of Driving Behavior Distributions via Quantile Regression and Flows

Towards safe autonomous driving (AD), we consider the problem of learnin...
research
07/15/2021

Copula-Based Normalizing Flows

Normalizing flows, which learn a distribution by transforming the data t...
research
12/07/2019

Mastering the body and tail shape of a distribution

The normal distribution and its perturbation has left an immense mark on...
research
06/15/2023

A Heavy-Tailed Algebra for Probabilistic Programming

Despite the successes of probabilistic models based on passing noise thr...

Please sign up or login with your details

Forgot password? Click here to reset