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PriPro: Towards Effective Privacy Protection on Edge-Cloud System running DNN Inference

机译:Pripro:对运行DNN推理的边缘云系统的有效隐私保护

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The huge computation demand for deep learning models and limited computation resources on the edge devices calls for the cooperation between the edge device and cloud service. On a typical edge-cloud system accommodating DNN inference, a deep model is split into two partial models running on the edge device and the cloud service, respectively. The two partial models collaborate closely to satisfy the DNN inference requested by the user. However, user’s privacy is vulnerable when transferring the intermediate results generated by the partial model at edge device to cloud service. Existing research works rely on metrics that are either impractical or insufficient to measure the effectiveness of privacy protection methods in the above scenario, especially from a single input aspect. In this paper, we first thoroughly analyze the state-of-the-art methods and drawbacks of existing methods from the aspects of both evaluation metrics and proposed techniques. Then, we propose a new metric system, including privacy accuracy (PA) and privacy index (PI), that can accurately measure the effectiveness of privacy protection methods. Furthermore, we propose PriPro, a privacy protection method that can dynamically inject noise to the intermediate results at various layers regarding the input features through the self-attention mechanism. The experiment results demonstrate our method outperforms existing methods for protecting user privacy on deep models such as AlexNet, VGG, and ResNet.
机译:深度学习模型的巨大计算需求和边缘设备上的有限计算资源调用边缘设备和云服务之间的合作。在适应DNN推断的典型边缘云系统上,分别将深度模型分成在边缘设备和云服务上运行的两个部分模型。两个部分模型紧密合作,满足用户请求的DNN推理。但是,用户的隐私在将边缘设备处的部分模型生成的中间结果传输到云服务时易受攻击。现有的研究工作依赖于衡量上述场景中隐私保护方法的有效性,特别是从单个输入方面进行了不切实际或不足的度量。在本文中,我们首先彻底分析了来自评估度量和提出技术的方面的现有方法的最先进的方法和缺点。然后,我们提出了一个新的公制系统,包括隐私准确性(PA)和隐私指数(PI),可以准确测量隐私保护方法的有效性。此外,我们提出Pripro,一种隐私保护方法,可以通过自我注意机制将噪声动态地向中间结果进行动态注入噪声。实验结果表明我们的方法优于保护用户隐私的现有方法,例如AlexNet,VGG和Reset等深层模型。

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