GO Gradient for Expectation-Based Objectives
Abstract
Within many machine learning algorithms, a fundamental problem concerns efficient calculation of an unbiased gradient wrt parameters $\boldsymbol{\gamma}$ for expectation-based objectives $\mathbb{E}_{q_{\boldsymbol{\gamma}} (\boldsymbol{y})} [f (\boldsymbol{y}) ]$. Most existing methods either ($i$) suffer from high variance, seeking help from (often) complicated variance-reduction techniques; or ($ii$) they only apply to reparameterizable continuous random variables and employ a reparameterization trick. To address these limitations, we propose a General and One-sample (GO) gradient that ($i$) applies to many distributions associated with non-reparameterizable continuous {\em or} discrete random variables, and ($ii$) has the same low-variance as the reparameterization trick. We find that the GO gradient often works well in practice based on only one Monte Carlo sample (although one can of course use more samples if desired). Alongside the GO gradient, we develop a means of propagating the chain rule through distributions, yielding statistical back-propagation, coupling neural networks to common random variables.
Cite
Text
Cong et al. "GO Gradient for Expectation-Based Objectives." International Conference on Learning Representations, 2019.Markdown
[Cong et al. "GO Gradient for Expectation-Based Objectives." International Conference on Learning Representations, 2019.](https://mlanthology.org/iclr/2019/cong2019iclr-go/)BibTeX
@inproceedings{cong2019iclr-go,
title = {{GO Gradient for Expectation-Based Objectives}},
author = {Cong, Yulai and Zhao, Miaoyun and Bai, Ke and Carin, Lawrence},
booktitle = {International Conference on Learning Representations},
year = {2019},
url = {https://mlanthology.org/iclr/2019/cong2019iclr-go/}
}