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Fraudulent User Detection on Rating Networks Based on Expanded Balance Theory and GCNs

机译:基于扩展平衡理论和GCN的评级网络欺诈用户检测

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Rating platforms provide users with useful information on products or other users. However, fake ratings are sometimes generated by fraudulent users. In this paper, we tackle the task of fraudulent user detection on rating platforms. We propose an end-to-end framework based on Graph Convolutional Networks (GCNs) and expanded balance theory, which properly incorporates both the signs and directions of edges. Experimental results on four real-world datasets show that the proposed framework performs better, or even best, in most settings. In particular, this framework shows remarkable stability in inductive settings, which is associated with the detection of new fraudulent users on rating platforms. Furthermore, using expanded balance theory, we provide new insight into the behavior of users in rating networks, that fraudulent users form a faction to deal with the negative ratings from other users. The owner of a rating platform can detect fraudulent users earlier and constantly provide users with more credible information by using the proposed framework.
机译:评级平台为用户提供有关产品或其他用户的有用信息。但是,伪造的评级有时是由欺诈用户生成的。在本文中,我们解决了在评级平台上进行欺诈性用户检测的任务。我们提出了一个基于图卷积网络(GCN)和扩展平衡理论的端到端框架,该框架适当地结合了边缘的符号和方向。在四个真实世界的数据集上的实验结果表明,所提出的框架在大多数情况下都能表现得更好甚至更好。特别是,此框架在归纳设置中显示出显着的稳定性,这与在评级平台上检测到新的欺诈性用户相关。此外,使用扩展的平衡理论,我们提供了对评级网络中用户行为的新见解,即欺诈性用户组成了一个派系来处理其他用户的负面评级。评级平台的所有者可以使用建议的框架更早地发现欺诈用户,并不断向用户提供更可信的信息。

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