Evaluating Model Calibration in Classification
Abstract
Probabilistic classifiers output a probability distribution on target classes rather than just a class prediction. Besides providing a clear separation of prediction and decision making, the main advantage of probabilistic models is their ability to represent uncertainty about predictions. In safety-critical applications, it is pivotal for a model to possess an adequate sense of uncertainty, which for probabilistic classifiers translates into outputting probability distributions that are consistent with the empirical frequencies observed from realized outcomes. A classifier with such a property is called calibrated. In this work, we develop a general theoretical calibration evaluation framework grounded in probability theory, and point out subtleties present in model calibration evaluation that lead to refined interpretations of existing evaluation techniques. Lastly, we propose new ways to quantify and visualize miscalibration in probabilistic classification, including novel multidimensional reliability diagrams.
Cite
Text
Vaicenavicius et al. "Evaluating Model Calibration in Classification." Artificial Intelligence and Statistics, 2019.Markdown
[Vaicenavicius et al. "Evaluating Model Calibration in Classification." Artificial Intelligence and Statistics, 2019.](https://mlanthology.org/aistats/2019/vaicenavicius2019aistats-evaluating/)BibTeX
@inproceedings{vaicenavicius2019aistats-evaluating,
title = {{Evaluating Model Calibration in Classification}},
author = {Vaicenavicius, Juozas and Widmann, David and Andersson, Carl and Lindsten, Fredrik and Roll, Jacob and Schön, Thomas},
booktitle = {Artificial Intelligence and Statistics},
year = {2019},
pages = {3459-3467},
volume = {89},
url = {https://mlanthology.org/aistats/2019/vaicenavicius2019aistats-evaluating/}
}