It's the way you check-in: identifying users in location-based social networks

L. Rossi, Mirco Musolesi
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引用次数: 80

Abstract

In recent years, the rapid spread of smartphones has led to the increasing popularity of Location-Based Social Networks (LBSNs). Although a number of research studies and articles in the press have shown the dangers of exposing personal location data, the inherent nature of LBSNs encourages users to publish information about their current location (i.e., their check-ins). The same is true for the majority of the most popular social networking websites, which offer the possibility of associating the current location of users to their posts and photos. Moreover, some LBSNs, such as Foursquare, let users tag their friends in their check-ins, thus potentially releasing location information of individuals that have no control over the published data. This raises additional privacy concerns for the management of location information in LBSNs. In this paper we propose and evaluate a series of techniques for the identification of users from their check-in data. More specifically, we first present two strategies according to which users are characterized by the spatio-temporal trajectory emerging from their check-ins over time and the frequency of visit to specific locations, respectively. In addition to these approaches, we also propose a hybrid strategy that is able to exploit both types of information. It is worth noting that these techniques can be applied to a more general class of problems where locations and social links of individuals are available in a given dataset. We evaluate our techniques by means of three real-world LBSNs datasets, demonstrating that a very limited amount of data points is sufficient to identify a user with a high degree of accuracy. For instance, we show that in some datasets we are able to classify more than 80% of the users correctly.
这是你签到的方式:在基于位置的社交网络中识别用户
近年来,智能手机的迅速普及使得基于位置的社交网络(LBSNs)越来越受欢迎。虽然媒体上的一些研究和文章已经表明了暴露个人位置数据的危险,但LBSNs的固有性质鼓励用户发布有关他们当前位置的信息(即他们的签到)。大多数最受欢迎的社交网站也是如此,这些网站提供了将用户当前位置与他们的帖子和照片联系起来的可能性。此外,一些LBSNs,如Foursquare,允许用户在签到时标记他们的朋友,因此可能会泄露个人的位置信息,而这些个人无法控制已发布的数据。这为lbsn中位置信息的管理带来了额外的隐私问题。在本文中,我们提出并评估了一系列从用户签入数据中识别用户的技术。更具体地说,我们首先提出了两种策略,根据这两种策略,用户分别根据他们随时间签到的时空轨迹和访问特定地点的频率来特征。除了这些方法之外,我们还提出了一种能够利用这两种类型信息的混合策略。值得注意的是,这些技术可以应用于更一般的问题,在这些问题中,个人的位置和社会联系在给定的数据集中是可用的。我们通过三个真实世界的LBSNs数据集来评估我们的技术,证明非常有限的数据点足以以高度的准确性识别用户。例如,我们表明,在一些数据集中,我们能够正确分类超过80%的用户。
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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