Back to Search Start Over

A generic framework for privacy preserving deep learning

Authors :
Ryffel, Theo
Trask, Andrew
Dahl, Morten
Wagner, Bobby
Mancuso, Jason
Rueckert, Daniel
Passerat-Palmbach, Jonathan
Publication Year :
2018
Publisher :
arXiv, 2018.

Abstract

We detail a new framework for privacy preserving deep learning and discuss its assets. The framework puts a premium on ownership and secure processing of data and introduces a valuable representation based on chains of commands and tensors. This abstraction allows one to implement complex privacy preserving constructs such as Federated Learning, Secure Multiparty Computation, and Differential Privacy while still exposing a familiar deep learning API to the end-user. We report early results on the Boston Housing and Pima Indian Diabetes datasets. While the privacy features apart from Differential Privacy do not impact the prediction accuracy, the current implementation of the framework introduces a significant overhead in performance, which will be addressed at a later stage of the development. We believe this work is an important milestone introducing the first reliable, general framework for privacy preserving deep learning.<br />Comment: PPML 2018, 5 pages

Details

Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....76800cd648302e3bd222d7e539d46b87
Full Text :
https://doi.org/10.48550/arxiv.1811.04017