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Discretization-Induced Dirichlet Posterior for Robust Uncertainty Quantification on Regression

  • Paris-Saclay University
  • ENSTA ParisTech
  • University of Oxford

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Résumé

Uncertainty quantification is critical for deploying deep neural networks (DNNs) in real-world applications. An Auxiliary Uncertainty Estimator (AuxUE) is one of the most effective means to estimate the uncertainty of the main task prediction without modifying the main task model. To be considered robust, an AuxUE must be capable of maintaining its performance and triggering higher uncertainties while encountering Out-of-Distribution (OOD) inputs, i.e., to provide robust aleatoric and epistemic uncertainty. However, for vision regression tasks, current AuxUE designs are mainly adopted for aleatoric uncertainty estimates, and AuxUE robustness has not been explored. In this work, we propose a generalized AuxUE scheme for more robust uncertainty quantification on regression tasks. Concretely, to achieve a more robust aleatoric uncertainty estimation, different distribution assumptions are considered for heteroscedastic noise, and Laplace distribution is finally chosen to approximate the prediction error. For epistemic uncertainty, we propose a novel solution named Discretization-Induced Dirichlet pOsterior (DIDO), which models the Dirichlet posterior on the discretized prediction error. Extensive experiments on age estimation, monocular depth estimation, and super-resolution tasks show that our proposed method can provide robust uncertainty estimates in the face of noisy inputs and that it can be scalable to both image-level and pixel-wise tasks.

langue originaleAnglais
titreTechnical Tracks 14
rédacteurs en chefMichael Wooldridge, Jennifer Dy, Sriraam Natarajan
EditeurAssociation for the Advancement of Artificial Intelligence
Pages6835-6843
Nombre de pages9
Edition7
ISBN (Electronique)1577358872, 1577358872, 1577358872, 1577358872, 1577358872, 1577358872, 1577358872, 1577358872, 1577358872, 1577358872, 1577358872, 1577358872, 1577358872, 1577358872, 1577358872, 1577358872, 1577358872, 1577358872, 1577358872, 1577358872, 1577358872, 9781577358879, 9781577358879, 9781577358879, 9781577358879, 9781577358879, 9781577358879, 9781577358879, 9781577358879, 9781577358879, 9781577358879, 9781577358879, 9781577358879, 9781577358879, 9781577358879, 9781577358879, 9781577358879, 9781577358879, 9781577358879, 9781577358879, 9781577358879, 9781577358879
Les DOIs
étatPublié - 25 mars 2024
Modification externeOui
Evénement38th AAAI Conference on Artificial Intelligence, AAAI 2024 - Vancouver, Canada
Durée: 20 févr. 202427 févr. 2024

Série de publications

NomProceedings of the AAAI Conference on Artificial Intelligence
nombre7
Volume38
ISSN (imprimé)2159-5399
ISSN (Electronique)2374-3468

Une conférence

Une conférence38th AAAI Conference on Artificial Intelligence, AAAI 2024
Pays/TerritoireCanada
La villeVancouver
période20/02/2427/02/24

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