Exponentially Tilted Gaussian Prior for Variational Autoencoder
- URL: http://arxiv.org/abs/2111.15646v1
- Date: Tue, 30 Nov 2021 18:28:19 GMT
- Title: Exponentially Tilted Gaussian Prior for Variational Autoencoder
- Authors: Griffin Floto and Stefan Kremer and Mihai Nica
- Abstract summary: Recent studies show that probabilistic generative models can perform poorly on this task.
We propose the exponentially tilted Gaussian prior distribution for the Variational Autoencoder (VAE)
We show that our model produces high quality image samples which are more crisp than that of a standard Gaussian VAE.
- Score: 3.52359746858894
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: An important propertyfor deep neural networks to possess is the ability to
perform robust out of distribution detection (OOD) on previously unseen data.
This property is essential for safety purposes when deploying models for real
world applications. Recent studies show that probabilistic generative models
can perform poorly on this task, which is surprising given that they seek to
estimate the likelihood of training data. To alleviate this issue, we propose
the exponentially tilted Gaussian prior distribution for the Variational
Autoencoder (VAE). With this prior, we are able to achieve state-of-the art
results using just the negative log likelihood that the VAE naturally assigns,
while being orders of magnitude faster than some competitive methods. We also
show that our model produces high quality image samples which are more crisp
than that of a standard Gaussian VAE. The new prior distribution has a very
simple implementation which uses a Kullback Leibler divergence that compares
the difference between a latent vector's length, and the radius of a sphere.
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