Understanding disentangling in $\beta$-VAE
Abstract
We present new intuitions and theoretical assessments of the emergence of disentangled representation in variational autoencoders. Taking a rate-distortion theory perspective, we show the circumstances under which representations aligned with the underlying generative factors of variation of data emerge when optimising the modified ELBO bound in -VAE, as training progresses. From these insights, we propose a modification to the training regime of -VAE, that progressively increases the information capacity of the latent code during training. This modification facilitates the robust learning of disentangled representations in -VAE, without the previous trade-off in reconstruction accuracy.
Keywords
Cite
@article{arxiv.1804.03599,
title = {Understanding disentangling in $\beta$-VAE},
author = {Christopher P. Burgess and Irina Higgins and Arka Pal and Loic Matthey and Nick Watters and Guillaume Desjardins and Alexander Lerchner},
journal= {arXiv preprint arXiv:1804.03599},
year = {2018}
}
Comments
Presented at the 2017 NIPS Workshop on Learning Disentangled Representations