Title
SecureLR: Secure Logistic Regression Model via a Hybrid Cryptographic Protocol.
Abstract
Machine learning applications are intensively utilized in various science fields, and increasingly the biomedical and healthcare sector. Applying predictive modeling to biomedical data introduces privacy and security concerns requiring additional protection to prevent accidental disclosure or leakage of sensitive patient information. Significant advancements in secure computing methods have emerged in recent years, however, many of which require substantial computational and/or communication overheads, which might hinder their adoption in biomedical applications. In this work, we propose SecureLR, a novel framework allowing researchers to leverage both the computational and storage capacity of Public Cloud Servers to conduct learning and predictions on biomedical data without compromising data security or efficiency. Our model builds upon homomorphic encryption methodologies with hardware-based security reinforcement through Software Guard Extensions (SGX), and our implementation demonstrates a practical hybrid cryptographic solution to address important concerns in conducting machine learning with public clouds.
Year
DOI
Venue
2019
10.1109/TCBB.2018.2833463
IEEE/ACM transactions on computational biology and bioinformatics
Keywords
Field
DocType
Logistics,Encryption,Computational modeling,Biological system modeling,Privacy
Homomorphic encryption,Data security,Cryptographic protocol,Cryptography,Computer security,Computer science,Encryption,Software,Artificial intelligence,Guard (information security),Machine learning,Overhead (business)
Journal
Volume
Issue
ISSN
16
1
1557-9964
Citations 
PageRank 
References 
0
0.34
0
Authors
10
Name
Order
Citations
PageRank
Jiang Yichen101.35
Jenny Hamer200.34
Chenghong Wang3549.71
Xiaoqian Jiang471872.47
Miran Kim518311.46
Yong Soo Song6947.76
Yuhou Xia791.28
Noman Mohammed851530.93
Md Nazmus Sadat941.41
Shuang Wang1031632.08