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Differentially Private Multi-dimensional Time Series Release for Traffic Monitoring

机译:差分专用多维时间序列发布,用于流量监控

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Sharing real-time traffic data can be of great value to understanding many important phenomena, such as congestion patterns or popular places. To this end, private user data must be aggregated and shared continuously over time with data privacy guarantee. However, releasing time series data with standard differential privacy mechanism can lead to high perturbation error due to the correlation between time stamps. In addition, data sparsity in the spatial domain imposes another challenge to user privacy as well as utility. To address the challenges, we propose a real-time framework that guarantees differential privacy for individual users and releases accurate data for research purposes. We present two estimation algorithms designed to utilize domain knowledge in order to mitigate the effect of perturbation error. Evaluations with simulated traffic data show our solutions outperform existing methods in both utility and computation efficiency, enabling real-time data sharing with strong privacy guarantee.
机译:共享实时交通数据对于了解许多重要现象(例如交通拥堵模式或流行场所)具有重要价值。为此,必须在保证数据隐私的前提下,不断地汇总和共享私人用户数据。但是,由于时间戳之间的相关性,使用标准的差分隐私机制发布时间序列数据可能会导致较高的摄动误差。另外,空间域中的数据稀疏性对用户隐私以及实用性提出了另一个挑战。为了应对这些挑战,我们提出了一个实时框架,该框架可以保证个人用户的隐私差异,并出于研究目的发布准确的数据。我们提出了两种估计算法,旨在利用领域知识来减轻扰动误差的影响。对模拟交通数据的评估表明,我们的解决方案在效用和计算效率方面均优于现有方法,从而能够在保证隐私的同时实现实时数据共享。

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