arxiv.org
Partially Encrypted Machine Learning using Functional Encryption
May 2019 • Théo Ryffel, Edouard Dufour-Sans, Romain Gay, Francis Bach, David Pointcheval
Machine learning on encrypted data has received a lot of attention thanks to recent breakthroughs in homomorphic encryption and secure multi-party computation. It allows outsourcing computation to untrusted servers without sacrificing privacy of sensitive data. We propose a practical framework to perform partially encrypted and privacy-preserving predictions which combines adversarial training and functional encryption. We first present a new functional encryption scheme to efficiently compute quadratic functions …