Graph anomaly detection on attributed networks has become a prevalent research topic due to its broad applications in many influential domains. In real-world scenarios, nodes and edges in attributed networks usually display distinct heterogeneity, i.e. attributes of different types of nodes show great variety, different types of relations represent diverse meanings. Anomalies usually perform differently from the majority in various perspectives of heterogeneity in these networks. However, existing graph anomaly detection approaches do not leverage heterogeneity in attributed networks, which is highly related to anomaly detection. In light of this problem, we propose AHEAD: a heterogeneity-aware unsupervised graph anomaly detection approach based on the encoder-decoder framework. Specifically, for the encoder, we design three levels of attention, i.e. attribute level, node type level, and edge level attentions to capture the heterogeneity of network structure, node properties and information of a single node, respectively. In the decoder, we exploit structure, attribute, and node type reconstruction terms to obtain an anomaly score for each node. Extensive experiments show the superiority of AHEAD on several real-world heterogeneous information networks compared with the state-of-arts in the unsupervised setting. Further experiments verify the effectiveness and robustness of our triple attention, model backbone, and decoder in general.
翻译:由于在众多有影响力的领域应用了这些网络,因此在可归网络上测出图异常现象已成为一个普遍的研究课题。在现实世界的假设情景中,可归网络的节点和边缘通常表现出不同的异质性,即不同类型节点的属性表现出差异,不同类型的关系具有不同的含义。异常现象通常在这些网络中的各种异质性观点中与大多数不同。然而,现有的图态异常现象检测方法并不影响可归网络的异质性,这与异常点的检测密切相关。鉴于这一问题,我们提议AHEAD:基于编码脱coder-decoder框架的超异质性、可见度和可见度的图形异常检测方法。具体地说,对于编码者,我们设计了三种层次的关注,即属性水平、节点类型水平和边缘水平,以捕捉网络结构的异性、节点模型和单一节点的信息。在解码中,我们利用了结构、属性和节点重建术语,以获得每个不加密的图表异常程度的图表探测方法,以获得每个不易变的模型的精确性数据网络的精确度,从而显示我们总体的磁度测试。