WiSE-VAE: Wide Sample Estimator VAE

02/16/2019
by   Shuyu Lin, et al.
1

Variational Auto-encoders (VAEs) have been very successful as methods for forming compressed latent representations of complex, often high-dimensional, data. In this paper, we derive an alternative variational lower bound from the one common in VAEs, which aims to minimize aggregate information loss. Using our lower bound as the objective function for an auto-encoder enables us to place a prior on the bulk statistics, corresponding to an aggregate posterior of all latent codes, as opposed to a single code posterior as in the original VAE. This alternative form of prior constraint allows individual posteriors more flexibility to preserve necessary information for good reconstruction quality. We further derive an analytic approximation to our lower bound, leading to our proposed model - WiSE-VAE. Through various examples, we demonstrate that WiSE-VAE can reach excellent reconstruction quality in comparison to other state-of-the-art VAE models, while still retaining the ability to learn a smooth, compact representation.

READ FULL TEXT

page 2

page 7

page 8

research
05/31/2019

On the Necessity and Effectiveness of Learning the Prior of Variational Auto-Encoder

Using powerful posterior distributions is a popular approach to achievin...
research
01/28/2021

VAE^2: Preventing Posterior Collapse of Variational Video Predictions in the Wild

Predicting future frames of video sequences is challenging due to the co...
research
02/28/2017

Towards Deeper Understanding of Variational Autoencoding Models

We propose a new family of optimization criteria for variational auto-en...
research
11/27/2019

Flatsomatic: A Method for Compression of Somatic Mutation Profiles in Cancer

In this study, we present Flatsomatic - a Variational Auto Encoder (VAE)...
research
12/06/2018

Disentangling Disentanglement

We develop a generalised notion of disentanglement in Variational Auto-E...
research
05/25/2023

Bi-fidelity Variational Auto-encoder for Uncertainty Quantification

Quantifying the uncertainty of quantities of interest (QoIs) from physic...
research
07/23/2019

Noise Contrastive Variational Autoencoders

We take steps towards understanding the "posterior collapse (PC)" diffic...

Please sign up or login with your details

Forgot password? Click here to reset