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Most Influential UAI 2022 Paper · 2026-03 edition

Data Augmentation in Bayesian Neural Networks and The Cold Posterior Effect

Seth Nabarro, Stoil Ganev, Adri� Garriga-Alonso, Vincent Fortuin, Mark van der Wilk, Laurence Aitchison

Venue
Conference on Uncertainty in Artificial Intelligence (UAI) 2022
Recognition
Most Influential UAI 2022 Paper (Rank No. 8)
Edition
2026-03
Impact factor
3
Certificate ID
0d9988ef56b3976b

Abstract

Bayesian neural networks that incorporate data augmentation implicitly use a “randomly perturbed log-likelihood [which] does not have a clean interpretation as a valid likelihood function” (Izmailov et al. 2021). Here, we provide several approaches to developing principled Bayesian neural networks incorporating data augmentation. We introduce a “finite orbit” setting which allows valid likelihoods to be computed exactly, and for the more usual “full orbit” setting we derive multi-sample bounds tighter than those used previously. These models cast light on the origin of the cold posterior effect. In particular, we find that the cold posterior effect persists even in these principled models incorporating data augmentation. This suggests that the cold posterior effect cannot be dismissed as an artifact of data augmentation using incorrect likelihoods.

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