English

Recalibrating binary probabilistic classifiers

Machine Learning 2026-02-02 v3 Risk Management

Abstract

Recalibration of binary probabilistic classifiers to a target prior probability is an important task in areas like credit risk management. However, recalibration of a classifier learned on a training dataset to a target on a test dataset in general is not a well-defined problem because there might be more than one way to transform the original posterior probabilities such that the target is matched. In this paper, methods for recalibration are analysed from a distribution shift perspective. Distribution shift assumptions linked to the area under the curve (AUC) of a probabilistic classifier are found to be useful for the design of meaningful recalibration methods. Two new methods called parametric covariate shift with posterior drift (CSPD) and ROC-based quasi moment matching (QMM) are proposed and tested together with some other methods in an example setting. The outcomes of the test suggest that the QMM methods discussed in the paper can provide appropriately conservative results in evaluations with concave functions like for instance risk weights functions for credit risk.

Keywords

Cite

@article{arxiv.2505.19068,
  title  = {Recalibrating binary probabilistic classifiers},
  author = {Dirk Tasche},
  journal= {arXiv preprint arXiv:2505.19068},
  year   = {2026}
}

Comments

17 pages, presented at workshop Learning to Quantify 2025 (LQ 2025), https://lq-2025.github.io/