为物联网设备提供更好隐私的基于云的机器学习:正在进行中

H. Jeong, Hyeon-Jae Lee, Soo-Mook Moon
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引用次数: 5

摘要

最近,基于云的机器学习(ML)服务越来越受欢迎。客户端将输入数据发送到云,云使用其强大的服务器执行基于神经网络(NN)的机器学习算法,并将结果返回给客户端。在这种情况下,服务器很容易收集到用户的敏感数据,从而引发隐私问题,使用户不愿意使用服务。本文提出了一种新的机器学习服务方法,可以减少隐私问题,从而使服务更安全。其基本思想是,客户端不发送原始输入数据,而是发送从神经网络早期阶段获得的部分处理的特征数据,服务器继续执行神经网络的其余部分。由于从特征数据中对原始数据进行反向工程并不简单,特别是当特征数据是从神经网络的后期获得时,可以减少隐私问题。另一方面,客户机上的部分处理可能会影响性能,因为在客户机上执行的计算更多。我们评估了性能影响,同时也考虑了网络速度。我们还试图设计一个隐私度量来评估部分处理的特征数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cloud-based machine learning for IoT devices with better privacy: work-in-progress
Recently, cloud-based machine learning (ML) services are getting popular. A client sends input data to a cloud, which performs ML algorithms based on neural networks (NN) using its powerful server, and returns the result back to the client. In this scenario, the server can easily collect the users' sensitive data, raising the privacy issues and making users reluctant to use the services. This paper proposes a new approach to ML services that can reduce the privacy concern, thus making the services safer. The basic idea is that instead of sending the raw input data, the client sends the partially-processed feature data obtained from the early stage of the NN, and the server continues to execute the rest of the NN. Since it is not simple to reverse-engineer the original data from the feature data, especially when the feature data is obtained from the later stage of NN, the privacy issue can be reduced. On the other hand, partial processing at the client can affect the performance, as more computations are performed at the client. We evaluated the performance impact, considering the network speed as well. We are also trying to devise a privacy metric to evaluate the partially-processed feature data.
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