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Increasing user controllability on device specific privacy in the Internet of Things

机译:提升物联网中设备特定隐私的用户可控性

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With recent advancements in information technology more and more devices are integrated in the Internet of Things. These devices gather significant amount of private information pertinent to a user and while, in some cases it helps in improving the life style of an individual, in others it raises major privacy concerns. This trade-off between utility and privacy is highly dependent upon the devices in consideration and as the utility of the generated data increases, the privacy of an individual decreases. In this paper, we formulate a utility-privacy trade-off that enables a user to make appliance specific decisions as to how much data can be shared. This is achieved by parametrizing the degree of privacy allowed for each device and enabling the user to configure the parameter of each device. We use the smart metering application as the test case scenario for the proposed approach. We evaluate its performance using simulations conducted on the ECO data set. Our results indicate that, the proposed approach is successful in identifying appliances with an accuracy of 81.8% and a precision of 70.1%. In addition, it is demonstrated that device specific changes of the configuration parameters allow the degree of privacy achieved for the particular device and the utility to be well controlled, thus demonstrating the effectiveness of the proposed approach. Moreover, it is shown that, as expected, devices with higher power consumption contribute more to the overall privacy and utility achieved. A comparative study is also conducted and the proposed approach is shown to outperform the existing ElecPrivacy approach by producing a trace that is harder to identify, as reported after testing the Weiss' and Baranski's algorithm, both of which are well known Non-Intrusive Load Monitoring algorithms. Finally, it is demonstrated that the addition of noise, which is an integral part of the propose approach, can greatly improve performance.
机译:随着信息技术的最新发展,越来越多的设备集成在物联网中。这些设备收集了大量与用户有关的私人信息,而在某些情况下,它有助于改善个人的生活方式,而在另一些情况下,则引起了很大的隐私问题。效用与隐私之间的这种权衡高度取决于所考虑的设备,并且随着所生成数据的实用性的增加,个人的隐私也会降低。在本文中,我们制定了效用-隐私权衡的折衷方案,使用户可以针对设备可以共享多少数据做出特定的决定。这可以通过参数化每个设备允许的隐私程度并允许用户配置每个设备的参数来实现。我们将智能计量应用程序用作所提出方法的测试案例。我们使用对ECO数据集进行的模拟评估其性能。我们的结果表明,所提出的方法可以成功地识别设备,其准确度为81.8%,准确度为70.1%。另外,证明了配置参数的设备特定改变允许很好地控制针对特定设备和实用程序实现的隐私度,从而证明了所提出的方法的有效性。而且,表明,正如预期的那样,具有较高功耗的设备对实现的总体隐私和实用性做出了更大的贡献。测试Weiss和Baranski算法后,据报道,这两种方法都是众所周知的非侵入式负载监测,并且进行了比较研究,并且所建议的方法通过产生难以识别的迹线表现出优于现有的ElecPrivacy方法。算法。最后,证明了噪声的增加是提议方法不可或缺的一部分,可以大大提高性能。

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