Wide Bayesian Neural Networks Have a Simple Weight Posterior: Theory and Accelerated Sampling

Abstract

We introduce repriorisation, a data-dependent reparameterisation which transforms a Bayesian neural network (BNN) posterior to a distribution whose KL divergence to the BNN prior vanishes as layer widths grow. The repriorisation map acts directly on parameters, and its analytic simplicity complements the known neural network Gaussian process (NNGP) behaviour of wide BNNs in function space. Exploiting the repriorisation, we develop a Markov chain Monte Carlo (MCMC) posterior sampling algorithm which mixes faster the wider the BNN. This contrasts with the typically poor performance of MCMC in high dimensions. We observe up to 50x higher effective sample size relative to no reparametrisation for both fully-connected and residual networks. Improvements are achieved at all widths, with the margin between reparametrised and standard BNNs growing with layer width.

Cite

Text

Hron et al. "Wide Bayesian Neural Networks Have a Simple Weight Posterior: Theory and Accelerated Sampling." International Conference on Machine Learning, 2022.

Markdown

[Hron et al. "Wide Bayesian Neural Networks Have a Simple Weight Posterior: Theory and Accelerated Sampling." International Conference on Machine Learning, 2022.](https://mlanthology.org/icml/2022/hron2022icml-wide/)

BibTeX

@inproceedings{hron2022icml-wide,
  title     = {{Wide Bayesian Neural Networks Have a Simple Weight Posterior: Theory and Accelerated Sampling}},
  author    = {Hron, Jiri and Novak, Roman and Pennington, Jeffrey and Sohl-Dickstein, Jascha},
  booktitle = {International Conference on Machine Learning},
  year      = {2022},
  pages     = {8926-8945},
  volume    = {162},
  url       = {https://mlanthology.org/icml/2022/hron2022icml-wide/}
}