Privacy-Preserving Deep Learning via Additively Homomorphic Encryption
National Institute of Information and Communications Technology · Kobe University
Abstract
We present a privacy-preserving deep learning system in which many learning participants perform neural network-based deep learning over a combined dataset of all, without revealing the participants' local data to a central server. To that end, we revisit the previous work by Shokri and Shmatikov (ACM CCS 2015) and show that, with their method, local data information may be leaked to an honest-but-curious server. We then fix that problem by building an enhanced system with the following properties: 1) no information is leaked to the server and 2) accuracy is kept intact, compared with that of the ordinary deep learning system also over the combined dataset. Our system bridges deep learning and cryptography: we…
Citation impact
- FWCI
- 50.15
- Percentile
- 100%
- References
- 28
Authors
5- LTLe Trieu PhongCorresponding
National Institute of Information and Communications Technology
- YAYoshinori Aono
National Institute of Information and Communications Technology
- THTakuya Hayashi
Kobe University, National Institute of Information and Communications Technology
- LWLihua Wang
National Institute of Information and Communications Technology
- SMShiho Moriai
National Institute of Information and Communications Technology
Topics & keywords
- Homomorphic encryption
- Computer science
- Deep learning
- Encryption
- Asynchronous communication
- Overhead (engineering)
- Artificial intelligence
- Cryptography