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On Local Posterior Structure in Deep Ensembles

On Local Posterior Structure in Deep Ensembles

来源:Arxiv_logoArxiv
英文摘要

Bayesian Neural Networks (BNNs) often improve model calibration and predictive uncertainty quantification compared to point estimators such as maximum-a-posteriori (MAP). Similarly, deep ensembles (DEs) are also known to improve calibration, and therefore, it is natural to hypothesize that deep ensembles of BNNs (DE-BNNs) should provide even further improvements. In this work, we systematically investigate this across a number of datasets, neural network architectures, and BNN approximation methods and surprisingly find that when the ensembles grow large enough, DEs consistently outperform DE-BNNs on in-distribution data. To shine light on this observation, we conduct several sensitivity and ablation studies. Moreover, we show that even though DE-BNNs outperform DEs on out-of-distribution metrics, this comes at the cost of decreased in-distribution performance. As a final contribution, we open-source the large pool of trained models to facilitate further research on this topic.

Mikkel N. Schmidt、Michael Riis Andersen、Mikkel Jordahn、Jonas Vestergaard Jensen

计算技术、计算机技术

Mikkel N. Schmidt,Michael Riis Andersen,Mikkel Jordahn,Jonas Vestergaard Jensen.On Local Posterior Structure in Deep Ensembles[EB/OL].(2025-03-17)[2025-06-19].https://arxiv.org/abs/2503.13296.点此复制

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