Title
BAYHENN: Combining Bayesian Deep Learning and Homomorphic Encryption for Secure DNN Inference.
Abstract
Recently, deep learning as a service (DLaaS) has emerged as a promising way to facilitate the employment of deep neural networks (DNNs) for various purposes. However, using DLaaS also causes potential privacy leakage from both clients and cloud servers. This privacy issue has fueled the research interests on the privacy-preserving inference of DNN models in the cloud service. In this paper, we present a practical solution named BAYHENN for secure DNN inference. It can protect both the client's privacy and server's privacy at the same time. The key strategy of our solution is to combine homomorphic encryption and Bayesian neural networks. Specifically, we use homomorphic encryption to protect a client's raw data and use Bayesian neural networks to protect the DNN weights in a cloud server. To verify the effectiveness of our solution, we conduct experiments on MNIST and a real-life clinical dataset. Our solution achieves consistent latency decreases on both tasks. In particular, our method can outperform the best existing method (GAZELLE) by about 5x, in terms of end-to-end latency.
Year
DOI
Venue
2019
10.24963/ijcai.2019/671
IJCAI
Field
DocType
Volume
Homomorphic encryption,MNIST database,Computer science,Inference,Latency (engineering),Raw data,Theoretical computer science,Artificial intelligence,Deep learning,Machine learning,Cloud computing,Bayesian probability
Journal
abs/1906.00639
Citations 
PageRank 
References 
4
0.46
0
Authors
3
Name
Order
Citations
PageRank
Peichen Xie1101.30
Bingzhe Wu2186.41
Guangyu Sun31920111.55