Online Sensitivity Optimization in Differentially Private Learning

Abstract

Training differentially private machine learning models requires constraining an individual's contribution to the optimization process. This is achieved by clipping the 2-norm of their gradient at a predetermined threshold prior to averaging and batch sanitization. This selection adversely influences optimization in two opposing ways: it either exacerbates the bias due to excessive clipping at lower values, or augments sanitization noise at higher values. The choice significantly hinges on factors such as the dataset, model architecture, and even varies within the same optimization, demanding meticulous tuning usually accomplished through a grid search. In order to circumvent the privacy expenses incurred in hyperparameter tuning, we present a novel approach to dynamically optimize the clipping threshold. We treat this threshold as an additional learnable parameter, establishing a clean relationship between the threshold and the cost function. This allows us to optimize the former with gradient descent, with minimal repercussions on the overall privacy analysis. Our method is thoroughly assessed against alternative fixed and adaptive strategies across diverse datasets, tasks, model dimensions, and privacy levels. Our results indicate that it performs comparably or better in the evaluated scenarios, given the same privacy requirements.

Cite

Text

Galli et al. "Online Sensitivity Optimization in Differentially Private Learning." AAAI Conference on Artificial Intelligence, 2024. doi:10.1609/AAAI.V38I11.29099

Markdown

[Galli et al. "Online Sensitivity Optimization in Differentially Private Learning." AAAI Conference on Artificial Intelligence, 2024.](https://mlanthology.org/aaai/2024/galli2024aaai-online/) doi:10.1609/AAAI.V38I11.29099

BibTeX

@inproceedings{galli2024aaai-online,
  title     = {{Online Sensitivity Optimization in Differentially Private Learning}},
  author    = {Galli, Filippo and Palamidessi, Catuscia and Cucinotta, Tommaso},
  booktitle = {AAAI Conference on Artificial Intelligence},
  year      = {2024},
  pages     = {12109-12117},
  doi       = {10.1609/AAAI.V38I11.29099},
  url       = {https://mlanthology.org/aaai/2024/galli2024aaai-online/}
}