利用社会网络重新识别位置历史的时间感知多分辨率方法

Takuto Ohka, Shun Matsumoto, Masatsugu Ichino, H. Yoshiura
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引用次数: 0

摘要

从匿名位置历史记录中识别人有两个重要目的。例如,澄清使用位置历史记录的隐私风险,以及寻找谁在何时何地去过的证据。虽然与社交网络账户链接是一种很好的识别方法,但以前的方法需要有关社交关系的信息,并且对目标数据集的数量有限制。此外,他们对时间信息的利用有限。我们提出了克服这些问题的模型,通过使用时间和距离的组合来估计人们的相似性和差异性。我们提出的方法使用这些模型以及链接双方的多分辨率模型,即位置历史和社交网络帐户。使用真实数据的评估证明了我们的方法的有效性,即使只将一个假名化和模糊的位置历史链接到10,000个社交网络帐户中的一个,而没有任何有关社交关系的信息。
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Time-aware multi-resolutional approach to re-identifying location histories by using social networks
Identifying people from anonymous location histories is important for two purposes. i.e. to clarify privacy risks in using the location histories and to find evidence of who went where and when. Although linking with social network accounts is an excellent approach for such identification, previous methods need information about social relationships and have a limitation on the number of target data sets. Moreover, they make limited use of time information. We present models that overcome these problems by estimating the sameness and difference of people by using combinations of time and distance. Our proposed method uses these models along with multi-resolution models for both sides of linking, i.e. location histories and social network accounts. Evaluation using real data demonstrated the effectiveness of our method even when linking only one pseudonymized and obfuscated location history to 1 of 10,000 social network accounts without any information about social relationships.
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