Automatic structured variational inference
Abstract
Stochastic variational inference offers an attractive option as a default method for differentiable probabilistic programming. However, the performance of the variational approach depends on the choice of an appropriate variational family. Here, we introduce automatic structured variational inference (ASVI), a fully automated method for constructing structured variational families, inspired by the closed-form update in conjugate Bayesian models. These convex-update families incorporate the forward pass of the input probabilistic program and can therefore capture complex statistical dependencies. Convex-update families have the same space and time complexity as the input probabilistic program and are therefore tractable for a very large family of models including both continuous and discrete variables. We validate our automatic variational method on a wide range of low- and high-dimensional inference problems. We find that ASVI provides a clear improvement in performance when compared with other popular approaches such as the mean-field approach and inverse autoregressive flows. We provide an open source implementation of ASVI in TensorFlow Probability.
Keywords
Cite
@article{arxiv.2002.00643,
title = {Automatic structured variational inference},
author = {Luca Ambrogioni and Kate Lin and Emily Fertig and Sharad Vikram and Max Hinne and Dave Moore and Marcel van Gerven},
journal= {arXiv preprint arXiv:2002.00643},
year = {2021}
}