Reproducible Model Selection Using Bagged Posteriors
Jonathan H. Huggins, Jeffrey W. Miller

TL;DR
This paper introduces BayesBag, a bagging approach for Bayesian model selection that enhances stability and reproducibility, especially under model misspecification, by averaging posterior probabilities over bootstrapped datasets.
Contribution
The paper proposes BayesBag, a novel method that improves Bayesian model selection stability and reproducibility under misspecification through posterior averaging.
Findings
BayesBag increases reproducibility in model selection.
It reliably identifies optimal models under misspecification.
Under correct models, BayesBag is slightly more conservative.
Abstract
Bayesian model selection is premised on the assumption that the data are generated from one of the postulated models. However, in many applications, all of these models are incorrect (that is, there is misspecification). When the models are misspecified, two or more models can provide a nearly equally good fit to the data, in which case Bayesian model selection can be highly unstable, potentially leading to self-contradictory findings. To remedy this instability, we propose to use bagging on the posterior distribution ("BayesBag") -- that is, to average the posterior model probabilities over many bootstrapped datasets. We provide theoretical results characterizing the asymptotic behavior of the posterior and the bagged posterior in the (misspecified) model selection setting. We empirically assess the BayesBag approach on synthetic and real-world data in (i) feature selection for linear…
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