差分隐私的实时轨迹数据发布方法

Fengyun Li, Jinhua Yang, Lifang Xue, Dawei Sun
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引用次数: 2

摘要

随着定位技术和基于位置的服务应用的日益普及,大量的用户轨迹数据被收集。发布轨迹流的实时统计数据在智能交通系统、城市道路规划和道路拥堵检测等领域具有重要意义。由于轨迹数据本身包含了丰富的用户隐私信息,隐私泄露问题加剧了数据发布的风险。为了实现用户轨迹数据的个性化、统一的隐私保护,引入了基于数据摄动的差分隐私模型,提出了一种隐私保护算法。该算法包含动态隐私预算分配、隐私逼近和隐私发布三个模块。在实验中,使用实际数据集验证了所提方法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-Time Trajectory Data Publishing Method with Differential Privacy
With the increasing popularity of location technologies and location-based service applications, a large number of user's trajectory data have been collected. Publishing the real-time statistics data of trajectory streams can be useful in many fields such as intelligent transportation system, urban road planning and road congestion detection. As the trajectory data itself contains a wealth of user's privacy information, the privacy leakage problem has aggravated the risk of data publishing. In order to realize the personalized and uniform privacy preserving of user's trajectory data, the differential privacy model based on data perturbation is introduced, and a privacy preserving algorithm is proposed. The algorithm contains three modules of dynamic privacy budget allocation, privacy approximation and privacy publishing. In the experiment, the performances of the proposed method are verified by using real-life datasets.
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