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Preserving Privacy in Semantic-Rich Trajectories of Human Mobility

机译:在人类移动的语义丰富的轨迹中保护隐私

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摘要

The increasing abundance of data about the trajectories of personal movement is opening up new opportunities for analyzing and mining human mobility, but new risks emerge since it opens new ways of intruding into personal privacy. Representing the personal movements as sequences of places visited by a person during her/his movements - semantic trajectory - poses even greater privacy threats w.r.t. raw geometric location data. In this paper we propose a privacy model defining the attack model of semantic trajectory linking, together with a privacy notion, called c-safety. This method provides an upper bound to the probability of inferring that a given person, observed in a sequence of non-sensitive places, has also stopped in any sensitive location. Coherently with the privacy model, we propose an algorithm for transforming any dataset of semantic trajectories into a c-safe one. We report a study on a real-life GPS trajectory dataset to show how our algorithm preserves interesting quality/utility measures of the original trajectories, such as sequential pattern mining results.
机译:有关个人运动轨迹的数据越来越多,这为分析和挖掘人类活动性提供了新的机会,但是由于它打开了侵入个人隐私的新方式,因此出现了新的风险。将个人运动表示为一个人在他/他的运动期间访问过的地方的顺序-语义轨迹-构成了更大的隐私威胁。原始几何位置数据。在本文中,我们提出了一个隐私模型,该模型定义了语义轨迹链接的攻击模型,以及一个称为c-safety的隐私概念。该方法为推断在一系列非敏感位置观察到的给定人也已停在任何敏感位置的可能性提供了上限。与隐私模型相一致,我们提出了一种用于将语义轨迹的任何数据集转换为c-safe的算法。我们报告了对真实GPS轨迹数据集的研究,以显示我们的算法如何保留原始轨迹的有趣质量/效用度量,例如顺序模式挖掘结果。

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