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首页> 外文期刊>IEEE Network >Keep Your Data Locally: Federated-Learning-Based Data Privacy Preservation in Edge Computing
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Keep Your Data Locally: Federated-Learning-Based Data Privacy Preservation in Edge Computing

机译:在本地保留您的数据:边缘计算中基于联合学习的数据隐私保存

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摘要

Recently, edge computing has attracted significant interest due to its ability to extend cloud computing utilities and services to the network edge with low response times and communication costs. In general, edge computing requires mobile users to upload their raw data to a centralized data server for further processing. However, these data usually contain sensitive information about mobile users that the users do not want to reveal, such as sexual orientation, political stance, health status, and service access history. The transmission of user data increases the leakage risk of data privacy since many extra devices can get access to these data. In this article, we attempt to keep the data of edge devices and end users on their local storage to resist the leakage of user privacy. To this end, we integrate federated learning and edge computing to propose P2FEC, a privacy-preserving framework that can construct a unified deep learning model across multiple users or devices without uploading their data to a centralized server. Furthermore, we use membership inference attacks as a case study for the privacy analysis of edge computing. The experiments show that the model constructed by our framework can achieve similar prediction performance and stricter protection of data privacy, compared to the model trained by standard edge computing.
机译:最近,由于其能够将云计算实用程序和服务扩展到网络边缘的能力以及低响应时间和通信成本,因此,边缘计算引起了显着的兴趣。通常,边缘计算需要移动用户将其原始数据上传到集中数据服务器以进行进一步处理。然而,这些数据通常包含有关移动用户的敏感信息,用户不希望揭示,例如性取向,政治立场,健康状况和服务访问历史。用户数据的传输增加了数据隐私的泄漏风险,因为许多额外的设备可以访问这些数据。在本文中,我们试图将边缘设备和最终用户的数据保留在本地存储上以抵制用户隐私的泄漏。为此,我们将联合学习和边缘计算集成到提出P2FEC,隐私保留框架,可以在不将其数据上载到集中式服务器的情况下构建统一的深度学习模型。此外,我们使用会员推论攻击作为边缘计算的隐私分析的案例研究。实验表明,与标准边缘计算训练的模型相比,我们的框架构建的模型可以实现类似的预测性能和更严格的数据隐私保护。

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