title | software | abstract | layout | series | publisher | issn | id | month | tex_title | firstpage | lastpage | page | order | cycles | bibtex_author | author | date | address | container-title | volume | genre | issued | extras | |||||||||||||||||||||
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Classifier Calibration with ROC-Regularized Isotonic Regression |
Calibration of machine learning classifiers is necessary to obtain reliable and interpretable predictions, bridging the gap between model outputs and actual probabilities. One prominent technique, isotonic regression (IR), aims at calibrating binary classifiers by minimizing the cross entropy with respect to monotone transformations. IR acts as an adaptive binning procedure that is able to achieve a calibration error of zero but leaves open the issue of the effect on performance. We first prove that IR preserves the convex hull of the ROC curve—an essential performance metric for binary classifiers. This ensures that a classifier is calibrated while controlling for over-fitting of the calibration set. We then present a novel generalization of isotonic regression to accommodate classifiers with |
inproceedings |
Proceedings of Machine Learning Research |
PMLR |
2640-3498 |
berta24a |
0 |
Classifier Calibration with {ROC}-Regularized Isotonic Regression |
1972 |
1980 |
1972-1980 |
1972 |
false |
Berta, Eug\`{e}ne and Bach, Francis and Jordan, Michael |
|
2024-04-18 |
Proceedings of The 27th International Conference on Artificial Intelligence and Statistics |
238 |
inproceedings |
|