English

Useful Confidence Measures: Beyond the Max Score

Machine Learning 2022-10-26 v1

Abstract

An important component in deploying machine learning (ML) in safety-critic applications is having a reliable measure of confidence in the ML model's predictions. For a classifier ff producing a probability vector f(x)f(x) over the candidate classes, the confidence is typically taken to be maxif(x)i\max_i f(x)_i. This approach is potentially limited, as it disregards the rest of the probability vector. In this work, we derive several confidence measures that depend on information beyond the maximum score, such as margin-based and entropy-based measures, and empirically evaluate their usefulness, focusing on NLP tasks with distribution shifts and Transformer-based models. We show that when models are evaluated on the out-of-distribution data ``out of the box'', using only the maximum score to inform the confidence measure is highly suboptimal. In the post-processing regime (where the scores of ff can be improved using additional in-distribution held-out data), this remains true, albeit less significant. Overall, our results suggest that entropy-based confidence is a surprisingly useful measure.

Keywords

Cite

@article{arxiv.2210.14070,
  title  = {Useful Confidence Measures: Beyond the Max Score},
  author = {Gal Yona and Amir Feder and Itay Laish},
  journal= {arXiv preprint arXiv:2210.14070},
  year   = {2022}
}

Comments

Short paper; appeared in the Workshop on Distribution Shifts @ NeurIPS 2022

R2 v1 2026-06-28T04:28:21.461Z