Extending Temperature Scaling with Homogenizing Maps
Authors
Paper Information
-
Journal:
Journal of Machine Learning Research -
Added to Tracker:
Sep 08, 2025
Abstract
As machine learning models continue to grow more complex, poor calibration significantly limits the reliability of their predictions. Temperature scaling learns a single temperature parameter to scale the output logits, and despite its simplicity, remains one of the most effective post-hoc recalibration methods. We identify one of temperature scaling's defining attributes, that it increases the uncertainty of the predictions in a manner that we term homogenization, and propose to learn the optimal recalibration mapping from a larger class of functions that satisfies this property. We demonstrate the advantage of our method over temperature scaling in both calibration and out-of-distribution detection. Additionally, we extend our methodology and experimental evaluation to recalibration in the Bayesian setting.
Author Details
Christopher Qian
AuthorFeng Liang
AuthorJason Adams
AuthorCitation Information
APA Format
Christopher Qian
,
Feng Liang
&
Jason Adams
.
Extending Temperature Scaling with Homogenizing Maps.
Journal of Machine Learning Research
.
BibTeX Format
@article{paper494,
title = { Extending Temperature Scaling with Homogenizing Maps },
author = {
Christopher Qian
and Feng Liang
and Jason Adams
},
journal = { Journal of Machine Learning Research },
url = { https://www.jmlr.org/papers/v26/24-0700.html }
}