Asymptotic Consistency of $\alpha$-R\'enyi-Approximate Posteriors

Abstract

We study the asymptotic consistency properties of $\alpha$-R\'enyi approximate posteriors, a class of variational Bayesian methods that approximate an intractable Bayesian posterior with a member of a tractable family of distributions, the member chosen to minimize the $\alpha$-R\'enyi divergence from the true posterior. Unique to our work is that we consider settings with $\alpha > 1$, resulting in approximations that upperbound the log-likelihood, and consequently have wider spread than traditional variational approaches that minimize the Kullback-Liebler (KL) divergence from the posterior. Our primary result identifies sufficient conditions under which consistency holds, centering around the existence of a `good' sequence of distributions in the approximating family that possesses, among other properties, the right rate of convergence to a limit distribution. We further characterize the good sequence by demonstrating that a sequence of distributions that converges too quickly cannot be a good sequence. We also extend our analysis to the setting where $\alpha$ equals one, corresponding to the minimizer of the reverse KL divergence, and to models with local latent variables. We also illustrate the existence of a good sequence with a number of examples. Our results complement a growing body of work focused on the frequentist properties of variational Bayesian methods.

Cite

Text

Jaiswal et al. "Asymptotic Consistency of $\alpha$-R\'enyi-Approximate Posteriors." Journal of Machine Learning Research, 2020.

Markdown

[Jaiswal et al. "Asymptotic Consistency of $\alpha$-R\'enyi-Approximate Posteriors." Journal of Machine Learning Research, 2020.](https://mlanthology.org/jmlr/2020/jaiswal2020jmlr-asymptotic/)

BibTeX

@article{jaiswal2020jmlr-asymptotic,
  title     = {{Asymptotic Consistency of $\alpha$-R\'enyi-Approximate Posteriors}},
  author    = {Jaiswal, Prateek and Rao, Vinayak and Honnappa, Harsha},
  journal   = {Journal of Machine Learning Research},
  year      = {2020},
  pages     = {1-42},
  volume    = {21},
  url       = {https://mlanthology.org/jmlr/2020/jaiswal2020jmlr-asymptotic/}
}