Liberty or Depth: Deep Bayesian Neural Nets Do Not Need Complex Weight Posterior Approximations

Author(s): Sebastian Farquhar, Lewis Smith, Yarin Gal
Venue: Advances In Neural Information Processing Systems.
Year: 2020

Paper: https://papers.nips.cc/paper/2020/hash/2dfe1946b3003933b7f8ddd71f24dbb1-Abstract.html

Abstract

We challenge the longstanding assumption that the mean-field approximation for variational inference in Bayesian neural networks is severely restrictive, and show this is not the case in deep networks. We prove several results indicating that deep mean-field variational weight posteriors can induce similar distributions in function-space to those induced by shallower networks with complex weight posteriors. We validate our theoretical contributions empirically, both through examination of the weight posterior using Hamiltonian Monte Carlo in small models and by comparing diagonal- to structured-covariance in large settings. Since complex variational posteriors are often expensive and cumbersome to implement, our results suggest that using mean-field variational inference in a deeper model is both a practical and theoretically justified alternative to structured approximations.

Additional information

Blog post

Twitter thread

40min presentation