作者
Bo Cui, Tianyu Mei
发表日期
2023/12/4
图书
Proceedings of the 39th Annual Computer Security Applications Conference
页码范围
636-646
简介
The demand for effective, safe, and privacy-preserving machine learning methods has increased due to the rapid growth of large pre-trained models in recent years. In large-scale AI applications, federated learning (FL) has emerged as a cutting-edge method for addressing privacy and data silos issues. However, FL systems are vulnerable to poisoning attacks, and centralized master-slave architectures have reliability, fairness, and security limitations. We propose a secure and efficient decentralized FL framework called ABFL to address these challenges. The framework tightly integrates FL with blockchain technology to strengthen data ownership guarantees and significantly lessen the negative impact of malicious nodes on the global model. Using historical data stored on the blockchain, ABFL enables model update prediction and identifies malicious nodes by verifying consistency. In addition, we present a …
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B Cui, T Mei - Proceedings of the 39th Annual Computer Security …, 2023