Fuzzy trajectory linking

Huayu Wu, Mingqiang Xue, Jianneng Cao, Panagiotis Karras, W. Ng, Kee Kiat Koo
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引用次数: 5

Abstract

Today, people can access various services with smart carry-on devices, e.g., surf the web with smart phones, make payments with credit cards, or ride a bus with commuting cards. In addition to the offered convenience, the access of such services can reveal their traveled trajectory to service providers. Very often, a user who has signed up for multiple services may expose her trajectory to more than one service providers. This state of affairs raises a privacy concern, but also an opportunity. On one hand, several colluding service providers, or a government agency that collects information from such service providers, may identify and reconstruct users' trajectories to an extent that can be threatening to personal privacy. On the other hand, the processing of such rich data may allow for the development of better services for the common good. In this paper, we take a neutral standpoint and investigate the potential for trajectories accumulated from different sources to be linked so as to reconstruct a larger trajectory of a single person. We develop a methodology, called fuzzy trajectory linking (FTL) that achieves this goal, and two instantiations thereof, one based on hypothesis testing and one on Naïve-Bayes. We provide a theoretical analysis for factors that affect FTL and use two real datasets to demonstrate that our algorithms effectively achieve their goals.
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模糊轨迹连接
今天,人们可以通过智能随身设备获得各种服务,例如,用智能手机上网,用信用卡支付,或者用通勤卡乘坐公共汽车。除了提供便利之外,这些服务的访问还可以向服务提供商显示其行进轨迹。通常,注册了多个服务的用户可能会将其轨迹暴露给多个服务提供商。这种状况引发了人们对隐私的担忧,但也带来了机遇。一方面,几个串通的服务提供商或从这些服务提供商收集信息的政府机构可能会识别和重建用户的轨迹,从而可能威胁到个人隐私。另一方面,处理如此丰富的数据可以为共同利益开发更好的服务。在本文中,我们采取中立的立场,研究从不同来源积累的轨迹连接起来的可能性,从而重建一个更大的单个人的轨迹。我们开发了一种方法,称为模糊轨迹链接(FTL),以实现这一目标,以及两个实例,一个基于假设检验,一个基于Naïve-Bayes。我们对影响超光速的因素进行了理论分析,并使用两个真实数据集来证明我们的算法有效地实现了目标。
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