Auditing $f$-Differential Privacy in One Run

Abstract

Empirical auditing has emerged as a means of catching some of the flaws in the implementation of privacy-preserving algorithms. Existing auditing mechanisms, however, are either computationally inefficient – requiring multiple runs of the machine learning algorithms or suboptimal in calculating an empirical privacy. In this work, we present a tight and efficient auditing procedure and analysis that can effectively assess the privacy of mechanisms. Our approach is efficient; Similar to the recent work of Steinke, Nasr and Jagielski (2023), our auditing procedure leverages the randomness of examples in the input dataset and requires only a single run of the target mechanism. And it is more accurate; we provide a novel analysis that enables us to achieve tight empirical privacy estimates by using the hypothesized $f$-DP curve of the mechanism, which provides a more accurate measure of privacy than the traditional $\epsilon,\delta$ differential privacy parameters. We use our auditing procure and analysis to obtain empirical privacy, demonstrating that our auditing procedure delivers tighter privacy estimates.

Cite

Text

Mahloujifar et al. "Auditing $f$-Differential Privacy in One Run." Proceedings of the 42nd International Conference on Machine Learning, 2025.

Markdown

[Mahloujifar et al. "Auditing $f$-Differential Privacy in One Run." Proceedings of the 42nd International Conference on Machine Learning, 2025.](https://mlanthology.org/icml/2025/mahloujifar2025icml-auditing/)

BibTeX

@inproceedings{mahloujifar2025icml-auditing,
  title     = {{Auditing $f$-Differential Privacy in One Run}},
  author    = {Mahloujifar, Saeed and Melis, Luca and Chaudhuri, Kamalika},
  booktitle = {Proceedings of the 42nd International Conference on Machine Learning},
  year      = {2025},
  pages     = {42615-42641},
  volume    = {267},
  url       = {https://mlanthology.org/icml/2025/mahloujifar2025icml-auditing/}
}