JMLR

Extending Temperature Scaling with Homogenizing Maps

Authors
Christopher Qian Feng Liang Jason Adams
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
Author
Feng Liang
Author
Jason Adams
Author
Citation 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 }
}