Tackling covariate shift with node-based Bayesian neural networks

Trung Trinh, Markus Heinonen, Luigi Acerbi, Samuel Kaski

Research output: Chapter in Book/Report/Conference proceedingConference contributionpeer-review

Abstract

Bayesian neural networks (BNNs) promise improved generalization under covariate shift by providing principled probabilistic representations of epistemic uncertainty. However, weight-based BNNs often struggle with high computational complexity of large-scale architectures and datasets. Node-based BNNs have recently been introduced as scalable alternatives, which induce epistemic uncertainty by multiplying each hidden node with latent random variables, while learning a point-estimate of the weights. In this paper, we interpret these latent noise variables as implicit representations of simple and domain-agnostic data perturbations during training, producing BNNs that perform well under covariate shift due to input corruptions. We observe that the diversity of the implicit corruptions depends on the entropy of the latent variables, and propose a straightforward approach to increase the entropy of these variables during training. We evaluate the method on out-of-distribution image classification benchmarks, and show improved uncertainty estimation of node-based BNNs under covariate shift due to input perturbations. As a side effect, the method also provides robustness against noisy training labels.
Original languageEnglish
Title of host publicationProceedings of the 39th International Conference on Machine Learning
PublisherJournal of Machine Learning Research
Pages21751-21775
Number of pages25
Publication statusPublished - 17 Jul 2022
EventInternational Conference on Machine Learning -
Duration: 17 Jul 202223 Jul 2022

Conference

ConferenceInternational Conference on Machine Learning
Period17/07/2223/07/22

Keywords

  • Machine learning

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