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Hybrid graph-based Sybil detection with user behavior patterns

机译:基于混合图的Sybil检测与用户行为模式

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Online social networks (OSNs) are known to be vulnerable to Sybil Attack, where attackers leverage the openness to create multiple fake identities for launching many malicious activities. In this paper, we define a weighted-strong-social (WSS) graph that integrates the OSN structure and user behavior patterns and propose a novel hybrid graph-based sybil detection approach. The hybrid approach estimates the trustworthiness of users and user pairs based on user behaviors that can be obtained locally and add them to the OSN structure to construct a WSS graph for sybil detection. The evaluation results show that the AUC of the hybrid approach is 0.954, which is significantly higher than that of previous sybil detection methods.
机译:已知在线社交网络(OSNS)易受SYBIL攻击的影响,攻击者利用开放性来创建多个虚假身份,以便启动许多恶意活动。 在本文中,我们定义了一种加权强 - 社交(WSS)图,其集成了OSN结构和用户行为模式,并提出了一种基于混合图的Sybil检测方法。 混合方法估计用户和用户对基于可以在本地获得的用户行为的可信度,并将其添加到OSN结构以构建用于Sybil检测的WSS图。 评价结果表明,混合方法的AUC为0.954,其显着高于先前的Sybil检测方法。

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