Skip to content

Navigation Menu

Sign in
Appearance settings

Search code, repositories, users, issues, pull requests...

Provide feedback

We read every piece of feedback, and take your input very seriously.

Saved searches

Use saved searches to filter your results more quickly

Appearance settings

owenmx/distributedMachineLearning

Open more actions menu
 
 

Repository files navigation

Distributed Privacy-Preserving Empirical Risk Minimization

This work combines differential privacy and multi-party computation protocol to achieve distributed machine learning. Based on the paper "Distributed Learning without Distress: Privacy-Preserving Empirical Risk Minimization" (http://papers.nips.cc/paper/7871-distributed-learning-without-distress-privacy-preserving-empirical-risk-minimization) that has been accepted at NIPS 2018.

The code contains privacy preserving implementation of L2 Regularized Logistic Regression and Linear Regression models.

Run python model_wrapper.py

About

This work combines differential privacy and multi-party computation protocol to achieve distributed machine learning.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

 
 
 

Contributors

Languages

  • C 83.9%
  • Python 15.7%
  • Makefile 0.4%
Morty Proxy This is a proxified and sanitized view of the page, visit original site.