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: | 06 May 2026 05:04 |
| Status: | In Press |
| Open Archives Initiative ID (OAI ID): | oai:eprints.whiterose.ac.uk:233678 |

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