One Step Closer to Unbiased Aleatoric Uncertainty Estimation

12citations
arXiv:2312.10469
12
citations
#725
in AAAI 2024
of 2289 papers
7
Top Authors
4
Data Points

Abstract

Neural networks are powerful tools in various applications, and quantifying their uncertainty is crucial for reliable decision-making. In the deep learning field, the uncertainties are usually categorized into aleatoric (data) and epistemic (model) uncertainty. In this paper, we point out that the existing popular variance attenuation method highly overestimates aleatoric uncertainty. To address this issue, we propose a new estimation method by actively de-noising the observed data. By conducting a broad range of experiments, we demonstrate that our proposed approach provides a much closer approximation to the actual data uncertainty than the standard method.

Citation History

Jan 27, 2026
11
Feb 13, 2026
12+1
Feb 13, 2026
12
Feb 13, 2026
12