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Novel trajectory privacy-preserving method based on clustering using differential privacy

机译:基于鉴别使用差分隐私的新型轨迹隐私保留方法

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With the development of location-aware technology, a large amount of location data of users is collected by the trajectory database. If these trajectory data are directly used for data mining without being processed, it will pose a threat to the user's personal privacy. At the moment, differential privacy is favored by experts and scholars because of its strict mathematical rigor, but how to apply differential privacy technology to trajectory clustering analysis is a difficult problem. To solve the problems in which existing trajectory privacy-preserving models have poor data availability or difficulty to resist complex privacy attacks, we devise novel trajectory privacy-preserving method based on clustering using differential privacy. More specifically, Laplacian noise is added to the count of trajectory location in the cluster to resist the continuous query attack. Then, radius-constrained Laplacian noise is added to the trajectory location data in the cluster to avoid too much noise affecting the clustering effect. According to the noise location data and the count of noise location, the noise clustering center in the cluster is obtained. Finally, it is considered that the attacker can associate the user trajectory with other information to form secret reasoning attack, and secret reasoning attack model is proposed. And we use the differential privacy technology to give corresponding resistance. Experimental results using the open data show that the proposed algorithm can not only effectively protect the private information of the trajectory data, but also ensure the data availability in cluster analysis. And compared with other algorithms, our algorithm has good effect on some evaluation indicators. (C) 2020 Elsevier Ltd. All rights reserved.
机译:随着位置感知技术的开发,轨迹数据库收集了大量用户的位置数据。如果这些轨迹数据直接用于数据挖掘而不进行处理,则会对用户的个人隐私构成威胁。目前,专家和学者们的差异隐私是受到严格的数学严格的影响,但如何将差异隐私技术应用于轨迹聚类分析是一个难题。为了解决现有轨迹保护模型具有较差的数据可用性或难以抵御复杂隐私攻击的问题,我们使用差异隐私设计基于聚类的新型轨迹隐私保留方法。更具体地,拉普拉斯噪声被添加到群集中的轨迹位置的计数,以抵抗连续查询攻击。然后,将RADIUS受约束的拉普拉斯噪声添加到群集中的轨迹位置数据中,以避免影响聚类效果的太多噪声。根据噪声位置数据和噪声位置的计数,获得集群中的噪声聚类中心。最后,认为攻击者可以将用户轨迹与其他信息相关联以形成秘密推理攻击,并且提出了秘密推理攻击模型。我们使用差别隐私技术来提供相应的阻力。使用开放数据的实验结果表明,所提出的算法不仅可以有效保护轨迹数据的私人信息,还可以确保集群分析中的数据可用性。与其他算法相比,我们的算法对一些评估指标具有良好影响。 (c)2020 elestvier有限公司保留所有权利。

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