Ladder Variational Autoencoders
Abstract
Variational autoencoders are powerful models for unsupervised learning. However deep models with several layers of dependent stochastic variables are difficult to train which limits the improvements obtained using these highly expressive models. We propose a new inference model, the Ladder Variational Autoencoder, that recursively corrects the generative distribution by a data dependent approximate likelihood in a process resembling the recently proposed Ladder Network. We show that this model provides state of the art predictive log-likelihood and tighter log-likelihood lower bound compared to the purely bottom-up inference in layered Variational Autoencoders and other generative models. We provide a detailed analysis of the learned hierarchical latent representation and show that our new inference model is qualitatively different and utilizes a deeper more distributed hierarchy of latent variables. Finally, we observe that batch-normalization and deterministic warm-up (gradually turning on the KL-term) are crucial for training variational models with many stochastic layers.
Cite
Text
Sønderby et al. "Ladder Variational Autoencoders." Neural Information Processing Systems, 2016.Markdown
[Sønderby et al. "Ladder Variational Autoencoders." Neural Information Processing Systems, 2016.](https://mlanthology.org/neurips/2016/snderby2016neurips-ladder/)BibTeX
@inproceedings{snderby2016neurips-ladder,
title = {{Ladder Variational Autoencoders}},
author = {Sønderby, Casper Kaae and Raiko, Tapani and Maaløe, Lars and Sønderby, Søren Kaae and Winther, Ole},
booktitle = {Neural Information Processing Systems},
year = {2016},
pages = {3738-3746},
url = {https://mlanthology.org/neurips/2016/snderby2016neurips-ladder/}
}