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Density Deconvolution with Normalizing Flows

Published 5 years agoVersion 2arXiv:2006.09396

Authors

Tim Dockhorn, James A. Ritchie, Yaoliang Yu, Iain Murray

Categories

stat.MLcs.LG

Abstract

Density deconvolution is the task of estimating a probability density function given only noise-corrupted samples. We can fit a Gaussian mixture model to the underlying density by maximum likelihood if the noise is normally distributed, but would like to exploit the superior density estimation performance of normalizing flows and allow for arbitrary noise distributions. Since both adjustments lead to an intractable likelihood, we resort to amortized variational inference. We demonstrate some problems involved in this approach, however, experiments on real data demonstrate that flows can already out-perform Gaussian mixtures for density deconvolution.

Density Deconvolution with Normalizing Flows

5 years ago
v2
4 authors

Categories

stat.MLcs.LG

Abstract

Density deconvolution is the task of estimating a probability density function given only noise-corrupted samples. We can fit a Gaussian mixture model to the underlying density by maximum likelihood if the noise is normally distributed, but would like to exploit the superior density estimation performance of normalizing flows and allow for arbitrary noise distributions. Since both adjustments lead to an intractable likelihood, we resort to amortized variational inference. We demonstrate some problems involved in this approach, however, experiments on real data demonstrate that flows can already out-perform Gaussian mixtures for density deconvolution.

Authors

Tim Dockhorn, James A. Ritchie, Yaoliang Yu et al. (+1 more)

arXiv ID: 2006.09396
Published Jun 16, 2020

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