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GANG: Detecting Fraudulent Users in Online Social Networks via Guilt-by-Association on Directed Graphs

机译:GANG:通过有向图上的按罪恶感检测在线社交网络中的欺诈用户

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Detecting fraudulent users in online social networks is a fundamental and urgent research problem as adversaries can use them to perform various malicious activities. Global social structure based methods, which are known as guilt-by-association, have been shown to be promising at detecting fraudulent users. However, existing guilt-by-association methods either assume symmetric (i.e., undirected) social links, which oversimplifies the asymmetric (i.e., directed) social structure of real-world online social networks, or only leverage labeled fraudulent users or labeled normal users (but not both) in the training dataset, which limits detection accuracies. In this work, we propose GANG, a guilt-by-association method on directed graphs, to detect fraudulent users in OSNs. GANG is based on a novel pairwise Markov Random Field that we design to capture the unique characteristics of the fraudulent-user-detection problem in directed OSNs. In the basic version of GANG, given a training dataset, we leverage Loopy Belief Propagation (LBP) to estimate the posterior probability distribution for each user and uses it to predict a user's label. However, the basic version is not scalable enough and not guaranteed to converge because it relies on LBP. Therefore, we further optimize GANG and our optimized version can be represented as a concise matrix form, with which we are able to derive conditions for convergence. We compare GANG with various existing guilt-by-association methods on a large-scale Twitter dataset and a large-scale Sina Weibo dataset with labeled fraudulent and normal users. Our results demonstrate that GANG substantially outperforms existing methods, and that the optimized version of GANG is significantly more efficient than the basic version.
机译:检测在线社交网络中的欺诈用户是一个基本而紧迫的研究问题,因为攻击者可以使用它们执行各种恶意活动。事实证明,基于全球社会结构的方法被称为“有罪内gui”,在检测欺诈用户方面很有前途。但是,现有的按罪恶感关联方法要么采用对称(即无方向)的社交链接,要么过分简化了现实世界在线社交网络的非对称(即有向)社交结构,或者仅利用标记为欺诈的用户或标记为普通用户( (但不是全部)在训练数据集中,这会限制检测的准确性。在这项工作中,我们提出了GANG,一种对有向图的内关联方法,以检测OSN中的欺诈用户。 GANG基于新颖的成对马尔可夫随机场,我们设计该场以捕获定向OSN中欺诈性用户检测问题的独特特征。在GANG的基本版本中,给定训练数据集,我们利用Loopy Belief Propagation(LBP)估算每个用户的后验概率分布,并使用它预测用户的标签。但是,由于基本版本依赖LBP,因此其可伸缩性不足,无法保证收敛。因此,我们进一步优化了GANG,我们的优化版本可以表示为简明的矩阵形式,利用它我们可以得出收敛的条件。我们将GANG与大规模的Twitter数据集和带有标签欺诈和正常用户的大规模Sina Weibo数据集上各种现有的内关联法进行了比较。我们的结果表明,GANG的性能明显优于现有方法,并且GANG的优化版本比基本版本的效率要高得多。

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