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Local Differential Privacy Protection of High-Dimensional Perceptual Data by the Refined Bayes Network

机译:改进的贝叶斯网络对高维感知数据的本地差分隐私保护

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摘要

Although the Crowd-Sensing perception system brings great data value to people through the release and analysis of high-dimensional perception data, it causes great hidden danger to the privacy of participants in the meantime. Currently, various privacy protection methods based on differential privacy have been proposed, but most of them cannot simultaneously solve the complex attribute association problem between high-dimensional perception data and the privacy threat problems from untrustworthy servers. To address this problem, we put forward a local privacy protection based on Bayes network for high-dimensional perceptual data in this paper. This mechanism realizes the local data protection of the users at the very beginning, eliminates the possibility of other parties directly accessing the user’s original data, and fundamentally protects the user’s data privacy. During this process, after receiving the data of the user’s local privacy protection, the perception server recognizes the dimensional correlation of the high-dimensional data based on the Bayes network, divides the high-dimensional data attribute set into multiple relatively independent low-dimensional attribute sets, and then sequentially synthesizes the new dataset. It can effectively retain the attribute dimension correlation of the original perception data, and ensure that the synthetic dataset and the original dataset have as similar statistical characteristics as possible. To verify its effectiveness, we conduct a multitude of simulation experiments. Results have shown that the synthetic data of this mechanism under the effective local privacy protection has relatively high data utility.
机译:尽管人群感知感知系统通过发布和分析高维感知数据为人们带来了巨大的数据价值,但同时也给参与者的隐私带来了巨大的隐患。当前,已经提出了各种基于差异隐私的隐私保护方法,但是大多数不能同时解决高维感知数据与来自不可信服务器的隐私威胁问题之间的复杂属性关联问题。针对这一问题,本文针对高维感知数据提出了一种基于贝叶斯网络的局部隐私保护方法。此机制从一开始就实现了对用户的本地数据保护,消除了其他方直接访问用户原始数据的可能性,并从根本上保护了用户的数据隐私。在此过程中,感知服务器接收到用户的本地隐私保护数据后,基于贝叶斯网络识别高维数据的维数相关性,将高维数据属性集划分为多个相对独立的低维属性设置,然后顺序合成新数据集。它可以有效地保留原始感知数据的属性维度相关性,并确保合成数据集和原始数据集具有尽可能相似的统计特征。为了验证其有效性,我们进行了大量的模拟实验。结果表明,该机制在有效的本地隐私保护下的综合数据具有较高的数据实用性。

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