A homomorphic-encryption-based vertical federated learning scheme for rick management
Author(s) -
Wei Ou,
Jianhuan Zeng,
Zijun Guo,
Wanqin Yan,
Dingwan Liu,
Stelios Fuentes
Publication year - 2020
Publication title -
computer science and information systems
Language(s) - English
Resource type - Journals
eISSN - 2406-1018
pISSN - 1820-0214
DOI - 10.2298/csis190923022o
Subject(s) - computer science , homomorphic encryption , encryption , scheme (mathematics) , information privacy , big data , raw data , artificial intelligence , computer security , machine learning , data mining , mathematical analysis , mathematics , programming language
With continuous improvements of computing power, great progresses in algorithms and massive growth of data, artificial intelligence technologies have entered the third rapid development era. However, With the great improvements in artificial intelligence and the arrival of the era of big data, contradictions between data sharing and user data privacy have become increasingly prominent. Federated learning is a technology that can ensure the user privacy and train a better model from different data providers. In this paper, we design a vertical federated learning system for the for Bayesian machine learning with the homomorphic encryption. During the training progress, raw data are leaving locally, and encrypted model information is exchanged. The model trained by this system is comparable (up to 90%) to those models trained by a single union server under the consideration of privacy. This system can be widely used in risk control, medical, financial, education and other fields. It is of great significance to solve data islands problem and protect users’ privacy.
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