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PADL: Privacy-Aware and Asynchronous Deep Learning for IoT Applications

机译:PADL:IOT应用程序的隐私感知和异步深度学习

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摘要

As a promising data-driven technology, deep learning has been widely employed in a variety of Internet-of-Things (IoT) applications. Examples include automated navigation, telemedicine, and smart home. To protect the data privacy of deep-learning-based IoT applications, a few privacy-preserving approaches have also been exploited, designed, and implemented in various scenarios. However, state-of-the-art works are still defective in accuracy, efficiency, and functionality. In this article, we propose the privacy-aware and asynchronous deep-learning-assisted IoT applications (PADL), a privacy-aware and asynchronous deep learning framework that enables multiple data collecting sites to collaboratively train deep neural networks (DNNs), while keeping the confidentiality of private data to each other. Specifically, we first design a layerwise importance propagation (LIP) algorithm to quantify the importance of the model's weights held by each site. Then, we present the customized perturbation mechanism, a precise combination of the LIP algorithm and differential privacy mechanism, which helps to make optimal tradeoffs between the availability and privacy of local models. Furthermore, to fully use the computing resources of all sites, for the first time, we propose an advanced asynchronous optimization (AAO) protocol to perform global updates without waiting. Theoretical analysis shows that the PADL is robust to extreme collusion even with only one reliable site while supporting lock-free optimization. Finally, extensive experiments conducted on real-world data sets using TensorFlow library show that the PADL outperforms the existing systems in terms of efficiency and prediction accuracy.
机译:作为一个有前途的数据驱动技术,深度学习已广泛用于各种互联网(物联网)应用程序。示例包括自动导航,远程医疗和智能家居。为保护基于深度学习的IOT应用程序的数据隐私,还在各种情况下被利用,设计和实现了一些隐私保留方法。然而,最先进的作品仍然是准确性,效率和功能的缺陷。在本文中,我们提出了隐私感知和异步深度学习的IOT应用程序(PADL),隐私感知和异步深度学习框架,使多个数据收集站点能够协作培训深度神经网络(DNN),同时保持彼此私有数据的机密性。具体地,我们首先设计一个层状重要的传播(LIP)算法,以量化每个站点所持的模型权重的重要性。然后,我们介绍了定制的扰动机制,精确组合了唇算法和差异隐私机制,这有助于在本地模型的可用性和隐私之间进行最佳权衡。此外,为了充分利用所有站点的计算资源,首次提出高级异步优化(AAO)协议,以在不等待的情况下执行全局更新。理论分析表明,即使只有一个可靠的网站,PAD1也很健壮于极端勾结,同时支持无锁无锁优化。最后,使用TensoRFlow库对现实世界数据集进行的广泛实验表明PADL在效率和预测准确性方面优于现有系统。

著录项

  • 来源
    《Internet of Things Journal, IEEE》 |2020年第8期|6955-6969|共15页
  • 作者单位

    Univ Elect Sci & Technol China Sch Comp Sci & Engn Chengdu 611731 Peoples R China|Peng Cheng Lab Cyberspace Secur Res Ctr Shenzhen 518000 Peoples R China;

    Univ Elect Sci & Technol China Sch Comp Sci & Engn Chengdu 611731 Peoples R China|Peng Cheng Lab Cyberspace Secur Res Ctr Shenzhen 518000 Peoples R China;

    Univ Elect Sci & Technol China Sch Comp Sci & Engn Chengdu 611731 Peoples R China|Peng Cheng Lab Cyberspace Secur Res Ctr Shenzhen 518000 Peoples R China;

    Univ Elect Sci & Technol China Sch Comp Sci & Engn Chengdu 611731 Peoples R China|Peng Cheng Lab Cyberspace Secur Res Ctr Shenzhen 518000 Peoples R China;

    Nanjing Univ Aeronaut & Astronaut Coll Comp Sci & Technol Nanjing 210000 Peoples R China;

    Univ New Brunswick Fac Comp Sci Fredericton NB E3B 5A3 Canada;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Differential privacy; Internet of Things; Data models; Deep learning; Privacy; Optimization; Servers; Deep learning; differential privacy; Internet of Things (IoT); privacy;

    机译:差异隐私;事物互联网;数据模型;深入学习;隐私;优化;服务器;深度学习;差异隐私;事物互联网(物联网);隐私;

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