Secure-ML

Private linear regression algorithm

Secure Linear Regression in the Semi-Honest Two-Party Setting.

Secure Linear Regression in the Semi-Honest Two-Party Setting.

GitHub

38 stars
1 watching
10 forks
Language: C++
last commit: about 5 years ago
linear-regressionprivacy-preserving-machine-learningsecure-mlsecure-multi-party-computation

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