ResearchTrend.AI
  • Papers
  • Communities
  • Events
  • Blog
  • Pricing
Papers
Communities
Social Events
Terms and Conditions
Pricing
Parameter LabParameter LabTwitterGitHubLinkedInBlueskyYoutube

© 2025 ResearchTrend.AI, All rights reserved.

  1. Home
  2. Papers
  3. 2106.05515
13
12

Understanding the Under-Coverage Bias in Uncertainty Estimation

10 June 2021
Yu Bai
Song Mei
Huan Wang
Caiming Xiong
    UQCV
ArXivPDFHTML
Abstract

Estimating the data uncertainty in regression tasks is often done by learning a quantile function or a prediction interval of the true label conditioned on the input. It is frequently observed that quantile regression -- a vanilla algorithm for learning quantiles with asymptotic guarantees -- tends to \emph{under-cover} than the desired coverage level in reality. While various fixes have been proposed, a more fundamental understanding of why this under-coverage bias happens in the first place remains elusive. In this paper, we present a rigorous theoretical study on the coverage of uncertainty estimation algorithms in learning quantiles. We prove that quantile regression suffers from an inherent under-coverage bias, in a vanilla setting where we learn a realizable linear quantile function and there is more data than parameters. More quantitatively, for α>0.5\alpha>0.5α>0.5 and small d/nd/nd/n, the α\alphaα-quantile learned by quantile regression roughly achieves coverage α−(α−1/2)⋅d/n\alpha - (\alpha-1/2)\cdot d/nα−(α−1/2)⋅d/n regardless of the noise distribution, where ddd is the input dimension and nnn is the number of training data. Our theory reveals that this under-coverage bias stems from a certain high-dimensional parameter estimation error that is not implied by existing theories on quantile regression. Experiments on simulated and real data verify our theory and further illustrate the effect of various factors such as sample size and model capacity on the under-coverage bias in more practical setups.

View on arXiv
Comments on this paper