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Differentially Private Real-Time Data Publishing over Infinite Trajectory Streams

机译:无限轨迹流上的差分专用实时数据发布

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Recent emerging mobile and wearable technologies make it easy to collect personal spatiotemporal data such as activity trajectories in daily life. Publishing real-time statistics over trajectory streams produced by crowds of people is expected to be valuable for both academia and business, answering questions such as “How many people are in Kyoto Station now?” However, analyzing these raw data will entail risks of compromising individual privacy. ε-Differential Privacy has emerged as a well-known standard for private statistics publishing because of its guarantee of being rigorous and mathematically provable. However, since user trajectories will be generated infinitely, it is difficult to protect every trajectory under ε-differential privacy. On the other hand, in real life, not all users require the same level of privacy. To this end, we propose a flexible privacy model of l-trajectory privacy to ensure every desired length of trajectory under protection of ε-differential privacy. We also design an algorithmic framework to publish l -trajectory private data in real time . Experiments using four real-life datasets show that our proposed algorithms are effective and efficient.
机译:最新出现的移动和可穿戴技术使收集个人时空数据(例如日常生活中的活动轨迹)变得容易。预计发布关于人群产生的轨迹流的实时统计信息对于学术界和企业都将是有价值的,回答诸如“现在京都站有多少人?但是,分析这些原始数据将带来损害个人隐私的风险。 ε-差分隐私已成为私人统计信息发布的众所周知的标准,因为它保证了其严格性和数学上的可证明性。但是,由于将无限地生成用户轨迹,因此难以在ε-差分隐私下保护每个轨迹。另一方面,在现实生活中,并非所有用户都需要相同级别的隐私。为此,我们提出了一种i-轨迹隐私的灵活隐私模型,以确保在ε-差分隐私保护下每个期望的轨迹长度。我们还设计了一种算法框架来实时发布 l轨迹私人数据。使用四个实际数据集进行的实验表明,我们提出的算法是有效且高效的。

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