马赛克:量化移动网络中的隐私泄露

Ning-xia Xia, H. Song, Yong Liao, Marios Iliofotou, A. Nucci, Zhi-Li Zhang, A. Kuzmanovic
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引用次数: 60

摘要

随着在线社交网络(OSN)和移动设备的普及,保护用户隐私成为一个巨大的挑战。以往的研究主要集中在OSN服务上,我们呼吁关注移动网络数据的隐私泄露问题。这种担忧是由两个因素引起的。首先,OSN的广泛使用留下了可识别的数字足迹,可以追溯到现实世界中的用户。其次,用户与其移动设备之间的关联使得将流量与其所有者联系起来变得更加容易。这些对用户隐私构成严重威胁,因为它们使攻击者能够将大量数据流量归因于网络用户的真实身份,包括那些没有身份泄露的数据流量。为了证明其可行性,我们开发了镶嵌方法。通过对来自蜂窝服务提供商(CSP)的流量应用细分,我们发现高达50%的流量可归因于用户名称。除了显示用户身份外,被称为“马赛克”的重建档案还将用户的政治观点、浏览习惯和最喜欢的应用程序等个人信息联系起来。最后,我们讨论了防止和减轻敏感用户信息泄露的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mosaic: quantifying privacy leakage in mobile networks
With the proliferation of online social networking (OSN) and mobile devices, preserving user privacy has become a great challenge. While prior studies have directly focused on OSN services, we call attention to the privacy leakage in mobile network data. This concern is motivated by two factors. First, the prevalence of OSN usage leaves identifiable digital footprints that can be traced back to users in the real-world. Second, the association between users and their mobile devices makes it easier to associate traffic to its owners. These pose a serious threat to user privacy as they enable an adversary to attribute significant portions of data traffic including the ones with NO identity leaks to network users' true identities. To demonstrate its feasibility, we develop the Tessellation methodology. By applying Tessellation on traffic from a cellular service provider (CSP), we show that up to 50% of the traffic can be attributed to the names of users. In addition to revealing the user identity, the reconstructed profile, dubbed as "mosaic," associates personal information such as political views, browsing habits, and favorite apps to the users. We conclude by discussing approaches for preventing and mitigating the alarming leakage of sensitive user information.
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