Title
Privacy-preserving federated learning based on multi-key homomorphic encryption
Abstract
With the advance of machine learning and the Internet of Things (IoT), security and privacy have become critical concerns in mobile services and networks. Transferring data to a central unit violates the privacy of sensitive data. Federated learning mitigates this need to transfer local data by sharing model updates only. However, privacy leakage remains an issue. This paper proposes xMK-CKKS, an improved version of the MK-CKKS multi-key homomorphic encryption protocol, to design a novel privacy-preserving federated learning scheme. In this scheme, model updates are encrypted via an aggregated public key before sharing with a server for aggregation. For decryption, a collaboration among all participating devices is required. Our scheme prevents privacy leakage from publicly shared model updates in federated learning and is resistant to collusion between k < N - 1 participating devices and the server. The evaluation demonstrates that the scheme outperforms other innovations in communication and computational cost while preserving model accuracy.
Year
DOI
Venue
2022
10.1002/int.22818
INTERNATIONAL JOURNAL OF INTELLIGENT SYSTEMS
Keywords
DocType
Volume
federated learning, IoT, multi-key homomorphic encryption, privacy protection, smart healthcare
Journal
37
Issue
ISSN
Citations 
9
0884-8173
0
PageRank 
References 
Authors
0.34
0
4
Name
Order
Citations
PageRank
Jing Ma111.04
Si-Ahmed Naas200.34
Stephan Sigg300.34
Xixiang Lyu400.34