SecureFL: SGX和TrustZone的隐私保护联邦学习

E. Kuznetsov, Yitao Chen, Ming Zhao
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引用次数: 12

摘要

联邦学习允许一大群边缘工作者在不泄露本地数据的情况下协作训练共享模型。它已经成为在异构环境中进行深度学习的强大工具。通过将训练数据保存在每个设备的本地,可以保护用户隐私。然而,联合学习仍然需要员工分享他们的权重,这可能会在协作期间泄露私人信息。本文介绍了一个提供联邦学习端到端安全性的实用框架SecureFL。SecureFL集成了广泛可用的可信执行环境(TEE),以防止隐私泄露。SecureFL还使用精心设计的分区和聚合技术,以确保在云和边缘工作者上的TEE效率。SecureFL在保护联邦学习的端到端过程方面既实用又高效,考虑到隐私方面的好处,它提供了合理的开销。本文对SecureFL进行了全面的安全性分析和性能评估,结果表明,考虑到它提供的大量隐私好处,开销是合理的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SecureFL: Privacy Preserving Federated Learning with SGX and TrustZone
Federated learning allows a large group of edge workers to collaboratively train a shared model without revealing their local data. It has become a powerful tool for deep learning in heterogeneous environments. User privacy is preserved by keeping the training data local to each device. However, federated learning still requires workers to share their weights, which can leak private information during collaboration. This paper introduces SecureFL, a practical framework that provides end-to-end security of federated learning. SecureFL integrates widely available Trusted Execution Environments (TEE) to protect against privacy leaks. SecureFL also uses carefully designed partitioning and aggregation techniques to ensure TEE efficiency on both the cloud and edge workers. SecureFL is both practical and efficient in securing the end-to-end process of federated learning, providing reasonable overhead given the privacy benefits. The paper provides thorough security analysis and performance evaluation of SecureFL, which show that the overhead is reasonable considering the substantial privacy benefits that it provides.
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