Skip to content

Implementation of local differential privacy mechanisms in Python language.

License

Notifications You must be signed in to change notification settings

hharcolezi/ldp-protocols-mobility-cdrs

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 
 
 
 
 
 
 

Repository files navigation

Update

We have released a package named Multi-Freq-LDPy for Multiple Frequency Estimation Under Local Differential Privacy in Python.

Content

This repository is organized per paper (experiments and protocols) and is regularly updated. Please refer to the papers folder.

Keywords

differential privacy, local differential privacy, longitudinal studies, multidimensional data, big data privacy, human mobility, privacy-preserving machine learning.

Environment

I mainly used Python3 with numpy, pandas, and numba libaries. Although not tested, the codes should run with any recent versions. The versions I use are listed below:

  • Python 3.8.8
  • Numpy 1.19.5
  • Pandas 1.2.4
  • Numba 0.53.1

Contact

For any questions about the experiments, please contact Héber H. Arcolezi: heber.hwang-arcolezi [at] inria.fr