English

Second-Order Uncertainty Quantification: Variance-Based Measures

Machine Learning 2024-01-02 v1 Machine Learning

Abstract

Uncertainty quantification is a critical aspect of machine learning models, providing important insights into the reliability of predictions and aiding the decision-making process in real-world applications. This paper proposes a novel way to use variance-based measures to quantify uncertainty on the basis of second-order distributions in classification problems. A distinctive feature of the measures is the ability to reason about uncertainties on a class-based level, which is useful in situations where nuanced decision-making is required. Recalling some properties from the literature, we highlight that the variance-based measures satisfy important (axiomatic) properties. In addition to this axiomatic approach, we present empirical results showing the measures to be effective and competitive to commonly used entropy-based measures.

Keywords

Cite

@article{arxiv.2401.00276,
  title  = {Second-Order Uncertainty Quantification: Variance-Based Measures},
  author = {Yusuf Sale and Paul Hofman and Lisa Wimmer and Eyke Hüllermeier and Thomas Nagler},
  journal= {arXiv preprint arXiv:2401.00276},
  year   = {2024}
}

Comments

22 pages, 10 figures