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You are where you have been: Sybil detection via geo-location analysis in OSNs

机译:您是您已成为的位置:通过儿子的地理定位分析检测Sybil检测

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Online Social Networks (OSNs) are facing an increasing threat of sybil attacks. Sybil detection is regarded as one of major challenges for OSN security. The existing sybil detection proposals that leverage graph theory or exploit the unique clickstream patterns are either based on unrealistic assumptions or limited to the service providers. In this study, we introduce a novel sybil detection approach by exploiting the fundamental mobility patterns that separate real users from sybil ones. The proposed approach is motivated as follows. On the one hand, OSNs including Yelp and Dianping allow us to obtain the users' mobility trajectories based on their online reviews and the locations of their visited shops/restaurants. On the other side, a real user's mobility is generally predictable and confined to a limited neighborhood while the sybils' mobility is forged based on the paid review missions. To exploit the mobility differences between the real and sybil users, we introduce an entropy based definition to capture users' mobility patterns. Then we design a new sybil detection model by incorporating the newly defined location entropy based metrics into other traditional feature sets. The proposed sybil detection model can significantly improve the performance of sybil detections, which is well demonstrated by extensive evaluations based on the data set from Dianping.
机译:在线社交网络(OSNS)面临着越来越大的Sybil攻击威胁。 Sybil检测被认为是OSN安全性的主要挑战之一。利用图形理论或利用唯一点击流模式的现有Sybil检测建议是基于不现实的假设或限于服务提供商。在这项研究中,我们通过利用来自Sybil Syner的基本移动模式来介绍一种新的Sybil检测方法。所提出的方法是如下的动机。一方面,奥斯人在内的eLEL和Dianping允许我们根据他们的在线评论和访问商店/餐馆的位置获得用户的移动轨迹。另一方面,真正的用户的移动性通常是可预测的并且仅限于有限的邻域,而基于付费审查任务伪造的Sybils的移动性。为了利用真实和Sybil用户之间的移动性差异,我们引入了基于熵的定义来捕获用户的移动模式。然后,我们通过将基于新定义的位置熵基于其他传统特征集结合到其他传统特征集来设计新的Sybil检测模型。所提出的Sybil检测模型可以显着提高Sybil检测的性能,这是通过基于Dianping的数据集的广泛评估来展示的。

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