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Risk-Aware Individual Trajectory Data Publishing With Differential Privacy

机译:风险感知个人轨迹数据发布,差异隐私

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摘要

Large-scale spatiotemporal data mining has created valuable insights into managing key areas of society and the economy. It has encouraged data owners to release/publish trajectory datasets. However, the ill-informed publication of such valuable datasets may lead to serious privacy implications for individuals. Moreover, as a major goal of data protection, balancing privacy and utility remains a challenging problem due to the diversity of spatiotemporal data. However, the user dimension was not considered for traditional frameworks, which limits the application at the global level as opposed to the user level. Many researchers overcome this issue by assuming that a user in the dataset generates only one trajectory. Actually, a user always generates multiple and repetitive trajectories during observation. Only considering one trajectory for one user may cause insufficient privacy protection at the trajectory level alone, as a user’s privacy can be manifested in many trajectories collectively. In addition, it demonstrates strong user correlation when using multiple and repetitive trajectories. If not considered, additional information will be lost, and the utility will be decreased. In this article, we propose a novel privacy-preserved trajectory data publishing method, i.e., IDF-OPT, which can reduce global least-information loss and guarantee strong individual privacy. Comprehensive experiments based on an actual trajectory publishing benchmark demonstrate that the proposed method maintains high practicability in trajectory data mining.
机译:大规模的时空数据挖掘已经为管理社会和经济的关键领域创造了有价值的见解。它鼓励数据所有者释放/发布轨迹数据集。但是,对此类有价值的数据集的知情出版可能会导致个人的严重隐私含义。此外,由于数据保护的主要目标,由于空间数据的多样性,平衡隐私和效用仍然是一个具有挑战性的问题。但是,传统框架未考虑用户维度,这将应用于全局级别,而不是用户级别。许多研究人员通过假设数据集中的用户仅生成一个轨迹来克服此问题。实际上,用户始终在观察期间生成多个和重复轨迹。只考虑一个用户的一个轨迹,只有在轨迹级别的轨迹保护中才能造成不足的隐私保护,因为用户的隐私可以集体在许多轨迹中表现出。此外,在使用多个和重复轨迹时,它表明了强大的用户相关性。如果不考虑,其他信息将会丢失,并且该实用程序将减少。在本文中,我们提出了一种新的隐私保留的轨迹数据发布方法,即IDF-opt,可以减少全球最少信息损失,并保证强大的个人隐私。基于实际轨迹出版基准的综合实验表明,该方法在轨迹数据挖掘中保持了高实用性。

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