Copulas as High Dimensional Generative Models: Vine Copula Autoencoders

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Serval ID
serval:BIB_606AA27EDB59
Type
Inproceedings: an article in a conference proceedings.
Collection
Publications
Institution
Title
Copulas as High Dimensional Generative Models: Vine Copula Autoencoders
Title of the conference
Advances in Neural Information Processing Systems
Author(s)
Tagasovska Natasa, Ackerer Damien, Vatter Thibault
Publication state
Published
Issued date
2019
Pages
6525-6537
Language
english
Abstract
We introduce the vine copula autoencoder (VCAE), a flexible generative model
for high-dimensional distributions built in a straightforward three-step procedure.
First, an autoencoder (AE) compresses the data into a lower dimensional representation. Second, the multivariate distribution of the encoded data is estimated with
vine copulas. Third, a generative model is obtained by combining the estimated
distribution with the decoder part of the AE. As such, the proposed approach
can transform any already trained AE into a flexible generative model at a low
computational cost. This is an advantage over existing generative models such as
adversarial networks and variational AEs which can be difficult to train and can
impose strong assumptions on the latent space. Experiments on MNIST, Street
View House Numbers and Large-Scale CelebFaces Attributes datasets show that
VCAEs can achieve competitive results to standard baselines.
Create date
19/03/2020 16:07
Last modification date
30/09/2020 7:09
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