English

Binary Classifier Calibration: Bayesian Non-Parametric Approach

Machine Learning 2014-01-14 v1 Machine Learning

Abstract

A set of probabilistic predictions is well calibrated if the events that are predicted to occur with probability p do in fact occur about p fraction of the time. Well calibrated predictions are particularly important when machine learning models are used in decision analysis. This paper presents two new non-parametric methods for calibrating outputs of binary classification models: a method based on the Bayes optimal selection and a method based on the Bayesian model averaging. The advantage of these methods is that they are independent of the algorithm used to learn a predictive model, and they can be applied in a post-processing step, after the model is learned. This makes them applicable to a wide variety of machine learning models and methods. These calibration methods, as well as other methods, are tested on a variety of datasets in terms of both discrimination and calibration performance. The results show the methods either outperform or are comparable in performance to the state-of-the-art calibration methods.

Keywords

Cite

@article{arxiv.1401.2955,
  title  = {Binary Classifier Calibration: Bayesian Non-Parametric Approach},
  author = {Mahdi Pakdaman Naeini and Gregory F. Cooper and Milos Hauskrecht},
  journal= {arXiv preprint arXiv:1401.2955},
  year   = {2014}
}
R2 v1 2026-06-22T02:44:20.191Z