Title :
Privacy-Preserving Ridge Regression on Hundreds of Millions of Records
Author :
Nikolaenko, V. ; Weinsberg, U. ; Ioannidis, Sotiris ; Joye, M. ; Boneh, Dan ; Taft, N.
Abstract :
Ridge regression is an algorithm that takes as input a large number of data points and finds the best-fit linear curve through these points. The algorithm is a building block for many machine-learning operations. We present a system for privacy-preserving ridge regression. The system outputs the best-fit curve in the clear, but exposes no other information about the input data. Our approach combines both homomorphic encryption and Yao garbled circuits, where each is used in a different part of the algorithm to obtain the best performance. We implement the complete system and experiment with it on real data-sets, and show that it significantly outperforms pure implementations based only on homomorphic encryption or Yao circuits.
Keywords :
cryptography; data privacy; learning (artificial intelligence); Yao garbled circuits; best-fit linear curve; homomorphic encryption; machine learning operation; privacy-preserving ridge regression; Data models; Encryption; Integrated circuit modeling; Prediction algorithms; Protocols; Vectors;
Conference_Titel :
Security and Privacy (SP), 2013 IEEE Symposium on
Conference_Location :
Berkeley, CA
Print_ISBN :
978-1-4673-6166-8
Electronic_ISBN :
1081-6011