MooD: MObility Data Privacy as Orphan Disease: Experimentation and Deployment Paper

Besma Khalfoun, Mohamed Maouche, Sonia Ben Mokhtar, S. Bouchenak
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引用次数: 3

Abstract

With the increasing development of handheld devices, Location Based Services (LBSs) became very popular in facilitating users' daily life with a broad range of applications (e.g. traffic monitoring, geo-located search, geo-gaming). However, several studies have shown that the collected mobility data may reveal sensitive information about end-users such as their home and workplaces, their gender, political, religious or sexual preferences. To overcome these threats, many Location Privacy Protection Mechanisms (LPPMs) were proposed in the literature. While the existing LPPMs try to protect most of the users in mobility datasets, there is usually a subset of users who are not protected by any of the existing LPPMs. By analogy to medical research, there are orphan diseases, for which the medical community is still looking for a remedy. In this paper, we present MooD, a fine-grained multi-LPPM user-centric solution whose main objective is to find a treatment to mobile users' orphan disease by protecting them from re-identification attacks. Our experiments are conducted on four real world datasets. The results show that MooD outperforms its competitors, and the amount of user mobility data it is able to protect is in the range between 97.5% to 100% on the various datasets.
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作为孤儿病的移动数据隐私:实验和部署论文
随着手持设备的日益发展,基于位置的服务(lbs)在方便用户日常生活方面变得非常流行,其应用范围广泛(例如交通监控、地理定位搜索、地理游戏)。然而,几项研究表明,收集到的移动数据可能会泄露有关最终用户的敏感信息,如他们的家庭和工作场所、性别、政治、宗教或性偏好。为了克服这些威胁,文献中提出了许多位置隐私保护机制(LPPMs)。虽然现有的lppm试图保护移动数据集中的大多数用户,但通常有一部分用户不受任何现有lppm的保护。与医学研究类似,有一些孤儿病,医学界仍在寻找治疗方法。在本文中,我们提出了MooD,这是一个以用户为中心的细粒度多lppm解决方案,其主要目标是通过保护移动用户免受重新识别攻击来找到治疗孤儿病的方法。我们的实验是在四个真实世界的数据集上进行的。结果表明,MooD优于其竞争对手,在各种数据集上,它能够保护的用户移动数据量在97.5%到100%之间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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