Reviews: Single-Model Uncertainties for Deep Learning
–Neural Information Processing Systems
The paper presents an approach for estimating aleatoric uncertainty which leverages the pinball loss in quantile regression, and orthonormal certificates for measuring epistemic uncertainty. Although the pinball loss has been used in prior work, its randomized version for simultaneously optimizing for all quantiles is novel. In addition the novelty of the OC approach for the filtering task is significant. Overall the value of the proposed methods is convincingly demonstrated on a variety of datasets. The reviewers and AC have carefully examined the author feedback and feel that the feedback adequately addresses the concerns raised in the reviewers.
Neural Information Processing Systems
Jan-24-2025, 18:19:43 GMT
- Technology: