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Toward Secure and Privacy-Preserving Distributed Deep Learning in Fog-Cloud Computing

机译:在雾云计算中的安全和隐私保留分布式深度学习

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摘要

Fog-cloud computing promises many new vertical service areas beyond simple data communication, storing, and processing. Among them, distributed deep learning (DDL) across fog-cloud computing environment is one of the most popular applications due to its high efficiency and scalability. Compared with the centralized deep learning, DDL can provide better privacy protection with training only on sharing parameters. Nevertheless, when DDL meets fog-cloud computing, it still faces two major security challenges: 1) how to protect users' privacy from being leaked to other internal participants in the training process and 2) how to guarantee users' identities from being forged by external adversaries. To combat them, several approaches have been proposed via various technologies. Nevertheless, those approaches suffer from drawbacks in terms of security, efficiency, and functionality, and cannot guarantee the legitimacy of participants' identities during training. In this article, we propose a secure and privacy-preserving DDL (SPDDL) for fog-cloud computing. Compared with the state-of-the-art works, our proposal achieves a better tradeoff between security, efficiency, and functionality. In addition, our SPDDL can guarantee the unforgeability of users' identities against external adversaries. Extensive experimental results indicate the practical feasibility and high efficiency of our SPDDL.
机译:雾云计算承诺许多新的垂直服务区域,超出简单的数据通信,存储和处理。其中,由于其高效率和可扩展性,雾云计算环境的分布式深度学习(DDL)是最流行的应用之一。与集中深度学习相比,DDL只能在共享参数上提供更好的隐私保护。尽管如此,当DDL符合雾云计算时,它仍然面临两个主要的安全挑战:1)如何保护用户的隐私泄露于培训过程中的其他内部参与者,以及2)如何保证用户的身份被伪造外部对手。为了解决它们,通过各种技术提出了几种方法。然而,这些方法在安全,效率和功能方面遭受了缺点,无法保证参与者在培训期间的合法性。在本文中,我们为雾云计算提出了一种安全和隐私保留的DDL(SPDDL)。与最先进的作品相比,我们的提案实现了安全,效率和功能之间的更好的权衡。此外,我们的SPDDL可以保证用户身份对外部对手的不可认可。广泛的实验结果表明我们的SPDDL的实用可行性和高效率。

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