Differentiable Antithetic Sampling for Variance Reduction in Stochastic Variational Inference
Machine Learning
2019-08-15 v2 Machine Learning
Abstract
Stochastic optimization techniques are standard in variational inference algorithms. These methods estimate gradients by approximating expectations with independent Monte Carlo samples. In this paper, we explore a technique that uses correlated, but more representative , samples to reduce estimator variance. Specifically, we show how to generate antithetic samples that match sample moments with the true moments of an underlying importance distribution. Combining a differentiable antithetic sampler with modern stochastic variational inference, we showcase the effectiveness of this approach for learning a deep generative model.
Cite
@article{arxiv.1810.02555,
title = {Differentiable Antithetic Sampling for Variance Reduction in Stochastic Variational Inference},
author = {Mike Wu and Noah Goodman and Stefano Ermon},
journal= {arXiv preprint arXiv:1810.02555},
year = {2019}
}
Comments
8 pages with 7 pages appendix; AISTATS 2019