Attacks and Defenses in Location-Based Social Networks: A Heuristic Number Theory Approach

Jiawen Peng, Yan Meng, Minhui Xue, Xiaojun Hei, K. Ross
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引用次数: 11

Abstract

The rapid growth of location-based social network (LBSN) applications -- such as WeChat, Momo, and Yik Yak -- has in essence facilitated the promotion of anonymously sharing instant messages and open discussions. These services breed a unique anonymous atmosphere for users to discover their geographic neighborhoods and then initiate private communications. In this paper, we demonstrate how such location-based features of WeChat can be exploited to determine the user's location with sufficient accuracy in any city from any location in the world. Guided by the number theory, we design and implement two generic localization attack algorithms to track anonymous users' locations that can be potentially adapted to any other LBSN services. We evaluated the performance of the proposed algorithms using Matlab simulation experiments and also deployed real-world experiments for validating our methodology. Our results show that WeChat, and other LBSN services as such, have a potential location privacy leakage problem. Finally, k-anonymity based countermeasures are proposed to mitigate the localization attacks without significantly compromising the quality-of-service of LBSN applications. We expect our research to bring this serious privacy pertinent issue into the spotlight and hopefully motivate better privacy-preserving LBSN designs.
基于位置的社交网络中的攻击与防御:一种启发式数论方法
微信、陌陌、Yik Yak等基于位置的社交网络(LBSN)应用程序的快速发展,从本质上促进了匿名分享即时消息和公开讨论的推广。这些服务为用户提供了一种独特的匿名氛围,使用户可以发现他们的地理邻居,然后发起私人通信。在本文中,我们展示了如何利用微信的这种基于位置的功能,从世界上的任何位置以足够的精度确定用户在任何城市的位置。在数论的指导下,我们设计并实现了两种通用的定位攻击算法来跟踪匿名用户的位置,这些算法可以潜在地适应任何其他LBSN服务。我们使用Matlab仿真实验评估了所提出算法的性能,并部署了真实世界的实验来验证我们的方法。我们的研究结果表明,微信和其他LBSN服务存在潜在的位置隐私泄露问题。最后,在不影响LBSN应用服务质量的前提下,提出了基于k-匿名的策略来缓解定位攻击。我们希望我们的研究能将这个严重的隐私相关问题带到聚光灯下,并希望能激发更好的保护隐私的LBSN设计。
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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