Detecting abnormal nodes from attributed networks is of great importance in many real applications, such as financial fraud detection and cyber security. This task is challenging due to both the complex interactions between the anomalous nodes with other counterparts and their inconsistency in terms of attributes. This paper proposes a self-supervised learning framework that jointly optimizes a multi-view contrastive learning-based module and an attribute reconstruction-based module to more accurately detect anomalies on attributed networks. Specifically, two contrastive learning views are firstly established, which allow the model to better encode rich local and global information related to the abnormality. Motivated by the attribute consistency principle between neighboring nodes, a masked autoencoder-based reconstruction module is also introduced to identify the nodes which have large reconstruction errors, then are regarded as anomalies. Finally, the two complementary modules are integrated for more accurately detecting the anomalous nodes. Extensive experiments conducted on five benchmark datasets show our model outperforms current state-of-the-art models.
翻译:在许多实际应用程序中,例如金融欺诈探测和网络安全中,检测来自归属网络的异常节点非常重要。由于异常节点与其他对应方之间的复杂互动及其属性上的不一致,这一任务具有挑战性。本文件提出一个自我监督的学习框架,共同优化一个多视角对比学习模块和一个基于属性的重建模块,以更准确地检测归属网络上的异常。具体地说,首先建立了两种对比式学习观点,使模型能够更好地编码与异常有关的丰富的本地和全球信息。受相邻节点之间属性一致性原则的驱动,还引入了一个隐藏式自动编码器重建模块,以确定存在重大重建错误的节点,然后被视为异常点。最后,将两个互补模块整合在一起,以更准确地检测归属网络上的异常点。在五个基准数据集上进行的广泛实验显示,我们的模型比当前最先进的模型要强。