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Personalized Trajectory Privacy Protection Method Based on User-Requirement

机译:基于用户需求的个性化轨迹隐私保护方法

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摘要

Trajectory data often provides useful information that can be utilized in real-life applications, such as traffic planning and location-based advertising. Because people's trajectory information can result in serious personal privacy leakage, trajectory privacy protection methods are employed. However, existing methods assume and use the same privacy requirements for all trajectories, which affect privacy protection efficiency and data utilization. This paper proposes a trajectory privacy protection method based on user requirement. By dividing different time intervals, it sets different privacy protection parameters for different trajectories to provide more detailed privacy protection. The proposed method utilizes the divided time intervals and privacy protection requirements to form a privacy requirement matrix, to construct an anonymous trajectory equivalence class and undirected graph. Then, trajectories are processed to form anonymous sets. Euclidean distance is also replaced with Manhattan distance in calculating the distance of the trajectories, which would improve the privacy protection and data utility and narrow the gap between the theoretical privacy protection and the actual protective effects. Comparative experiments demonstrate that the proposed method outperforms other similar methods in regards to both privacy protection and data utilization.
机译:轨迹数据通常提供可以在现实生活中使用的有用信息,例如交通规划和基于位置的广告。由于人们的轨迹信息可能导致严重的个人隐私泄漏,所雇用轨迹隐私保护方法。但是,现有方法假设和使用所有轨迹的相同隐私要求,这会影响隐私保护效率和数据利用率。本文提出了一种基于用户需求的轨迹隐私保护方法。通过划分不同的时间间隔,它为不同的轨迹设置了不同的隐私保护参数,以提供更详细的隐私保护。所提出的方法利用划分的时间间隔和隐私保护要求来形成隐私要求矩阵,以构造匿名轨迹等价类和无向图。然后,处理轨迹以形成匿名集。欧几里德距离也取代了曼哈顿距离计算轨迹的距离,这将改善隐私保护和数据效用,并缩小理论隐私保护与实际保护效果之间的差距。比较实验表明,所提出的方法优于隐私保护和数据利用方面的其他类似方法。

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