GERASIMOU, SIMOS orcid.org/0000-0002-2706-5272, Toumpa, Alexia, Sosa Marco, Adriel et al. (1 more author) (Accepted: 2025) Uncertainty Quantification for Deep Regression using Contextualised Normalizing Flows. In: Thirty-ninth Annual Conference on Neural Information Processing Systems. (In Press)
Abstract
Quantifying uncertainty in deep regression models is important both for understanding the confidence of the model and for safe decision-making in high-risk domains. Existing approaches that yield prediction intervals overlook distributional information, neglecting the effect of multimodal or asymmetric distributions on decision-making. Similarly, full or approximated Bayesian methods, while yielding the predictive posterior density, demand major modifications to the model architecture and retraining. We introduce MCNF, a novel post hoc uncertainty quantification method that produces both prediction intervals and the full conditioned predictive distribution. MCNF operates on top of the underlying trained predictive model; thus, no predictive model retraining is needed. We provide experimental evidence that the MCNF-based uncertainty estimate is well calibrated, is competitive with state-of-the-art uncertainty quantification methods, and provides richer information for downstream decision-making tasks.
Metadata
| Item Type: | Proceedings Paper |
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| Authors/Creators: |
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| Copyright, Publisher and Additional Information: | This is an author-produced version of the published paper. Uploaded in accordance with the University’s Research Publications and Open Access policy. |
| Dates: |
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| Institution: | The University of York |
| Academic Units: | The University of York > Faculty of Sciences (York) > Computer Science (York) |
| Date Deposited: | 27 Oct 2025 15:00 |
| Last Modified: | 27 Oct 2025 15:00 |
| Status: | In Press |
| Open Archives Initiative ID (OAI ID): | oai:eprints.whiterose.ac.uk:233678 |

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