Challenges and future directions of secure federated learning: a survey

被引:0
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作者
Kaiyue Zhang
Xuan Song
Chenhan Zhang
Shui Yu
机构
[1] Southern University of Science and Technology,Department of Computer Science and Engineering
[2] University of Technology Sydney,Faculty of Engineering and Information Technology
[3] Southern University of Science and Technology,SUSTech
[4] Southern University of Science and Technology,UTokyo Joint Research Center on Super Smart City, Department of Computer Science and Engineering
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federated learning; privacy protection; security;
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摘要
Federated learning came into being with the increasing concern of privacy security, as people’s sensitive information is being exposed under the era of big data. It is an algorithm that does not collect users’ raw data, but aggregates model parameters from each client and therefore protects user’s privacy. Nonetheless, due to the inherent distributed nature of federated learning, it is more vulnerable under attacks since users may upload malicious data to break down the federated learning server. In addition, some recent studies have shown that attackers can recover information merely from parameters. Hence, there is still lots of room to improve the current federated learning frameworks. In this survey, we give a brief review of the state-of-the-art federated learning techniques and detailedly discuss the improvement of federated learning. Several open issues and existing solutions in federated learning are discussed. We also point out the future research directions of federated learning.
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