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Exploiting Trust and Distrust Information to Combat Sybil Attack in Online Social Networks

机译:利用信任和不信任信息来对抗在线社交网络中的Sybil攻击

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Due to open and anonymous nature, online social networks are particularly vulnerable to the Sybil attack, in which a malicious user can fabricate many dummy identities to attack the systems. Recently, there is a flurry of interests to leverage social network structure for Sybil defense. However, most of graph-based approaches pay little attention to the distrust information, which is an important factor for uncovering more Sybils. In this paper, we propose an unified ranking mechanism by leveraging trust and distrust in social networks against such kind of attacks based on a variant of the PageRank-like model. Specifically, we first use existing topological anti-Sybil algorithms as a subroutine to produce reliable Sybil seeds. To enhance the robustness of these approaches against target attacks, we then also introduce an effective similarity-based graph pruning technique utilizing local structure similarity. Experiments show that our approach outperforms existing competitive methods for Sybil detection in social networks.
机译:由于开放和匿名性质,在线社交网络特别容易受到Sybil攻击的攻击,在这种攻击中,恶意用户可以伪造许多虚拟身份来攻击系统。最近,有很多兴趣可以利用社交网络结构来进行Sybil防御。但是,大多数基于图的方法很少关注不信任信息,这是发现更多Sybils的重要因素。在本文中,我们基于类PageRank模型的变体,通过利用社交网络中的信任和不信任抵御此类攻击,提出了一种统一的排名机制。具体来说,我们首先使用现有的拓扑反Sybil算法作为子例程来生成可靠的Sybil种子。为了增强这些方法针对目标攻击的鲁棒性,我们还介绍了一种有效的基于局部相似度的基于相似度的图修剪技术。实验表明,我们的方法在社交网络中的Sybil检测性能优于现有的竞争方法。

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