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README.md |
Hyperparameter Tuning with Renyi Differential Privacy
Nicolas Papernot and Thomas Steinke
This repository contains the code used to reproduce some of the experiments in our ICLR 2022 paper on hyperparameter tuning with differential privacy.
You can reproduce Figure 7 in the paper by running figure7.py
. It loads by
default values used to plot the figure contained in the paper, and we also
included a dictionary lr_acc.json
containing the accuracy of a large number of
ML models trained with different learning rates. If you'd like to try our
approach to fine-tune your own parameters, you will have to modify the code that
interacts with this dictionary (lr_acc
in the code from figure7.py
).
Citing this work
If you use this repository for academic research, you are highly encouraged (though not required) to cite our paper:
@inproceedings{
papernot2022hyperparameter,
title={Hyperparameter Tuning with Renyi Differential Privacy},
author={Nicolas Papernot and Thomas Steinke},
booktitle={International Conference on Learning Representations},
year={2022},
url={https://openreview.net/forum?id=-70L8lpp9DF}
}