REBAR: Low-Variance, Unbiased Gradient Estimates for Discrete Latent Variable Models
Abstract
Learning in models with discrete latent variables is challenging due to high variance gradient estimators. Generally, approaches have relied on control variates to reduce the variance of the REINFORCE estimator. Recent work \citep{jang2016categorical, maddison2016concrete} has taken a different approach, introducing a continuous relaxation of discrete variables to produce low-variance, but biased, gradient estimates. In this work, we combine the two approaches through a novel control variate that produces low-variance, \emph{unbiased} gradient estimates. Then, we introduce a modification to the continuous relaxation and show that the tightness of the relaxation can be adapted online, removing it as a hyperparameter. We show state-of-the-art variance reduction on several benchmark generative modeling tasks, generally leading to faster convergence to a better final log-likelihood.
Cite
Text
Tucker et al. "REBAR: Low-Variance, Unbiased Gradient Estimates for Discrete Latent Variable Models." Neural Information Processing Systems, 2017.Markdown
[Tucker et al. "REBAR: Low-Variance, Unbiased Gradient Estimates for Discrete Latent Variable Models." Neural Information Processing Systems, 2017.](https://mlanthology.org/neurips/2017/tucker2017neurips-rebar/)BibTeX
@inproceedings{tucker2017neurips-rebar,
title = {{REBAR: Low-Variance, Unbiased Gradient Estimates for Discrete Latent Variable Models}},
author = {Tucker, George and Mnih, Andriy and Maddison, Chris J and Lawson, John and Sohl-Dickstein, Jascha},
booktitle = {Neural Information Processing Systems},
year = {2017},
pages = {2627-2636},
url = {https://mlanthology.org/neurips/2017/tucker2017neurips-rebar/}
}