Looking at the posterior: accuracy and uncertainty of neural-network predictions
Journal article, 2023

Bayesian inference can quantify uncertainty in the predictions of neural networks using posterior distributions for model parameters and network output. By looking at these posterior distributions, one can separate the origin of uncertainty into aleatoric and epistemic contributions. One goal of uncertainty quantification is to inform on prediction accuracy. Here we show that prediction accuracy depends on both epistemic and aleatoric uncertainty in an intricate fashion that cannot be understood in terms of marginalized uncertainty distributions alone. How the accuracy relates to epistemic and aleatoric uncertainties depends not only on the model architecture, but also on the properties of the dataset. We discuss the significance of these results for active learning and introduce a novel acquisition function that outperforms common uncertainty-based methods. To arrive at our results, we approximated the posteriors using deep ensembles, for fully-connected, convolutional and attention-based neural networks.

bayesian inference

deep learning

active learning

neural networks

uncertainty quantification

Author

Hampus Linander

University of Gothenburg

Chalmers, Mathematical Sciences, Algebra and geometry

Oleksandr Balabanov

Stockholm University

Henry Yang

University of Gothenburg

Bernhard Mehlig

University of Gothenburg

Machine Learning: Science and Technology

26322153 (eISSN)

Vol. 4 4 045032

Subject Categories

Communication Systems

Computer Vision and Robotics (Autonomous Systems)

DOI

10.1088/2632-2153/ad0ab4

More information

Latest update

1/25/2024