Cross-domain graph anomaly detection (CD-GAD) describes the problem of detecting anomalous nodes in an unlabelled target graph using auxiliary, related source graphs with labelled anomalous and normal nodes. Although it presents a promising approach to address the notoriously high false positive issue in anomaly detection, little work has been done in this line of research. There are numerous domain adaptation methods in the literature, but it is difficult to adapt them for GAD due to the unknown distributions of the anomalies and the complex node relations embedded in graph data. To this end, we introduce a novel domain adaptation approach, namely Anomaly-aware Contrastive alignmenT (ACT), for GAD. ACT is designed to jointly optimise: (i) unsupervised contrastive learning of normal representations of nodes in the target graph, and (ii) anomaly-aware one-class alignment that aligns these contrastive node representations and the representations of labelled normal nodes in the source graph, while enforcing significant deviation of the representations of the normal nodes from the labelled anomalous nodes in the source graph. In doing so, ACT effectively transfers anomaly-informed knowledge from the source graph to learn the complex node relations of the normal class for GAD on the target graph without any specification of the anomaly distributions. Extensive experiments on eight CD-GAD settings demonstrate that our approach ACT achieves substantially improved detection performance over 10 state-of-the-art GAD methods. Code is available at https://github.com/QZ-WANG/ACT.
翻译:跨部图异常现象探测(CD-GAD)描述了在未贴标签的目标图中检测异常现象节点的问题。为此,我们为GAD采用了一种新的域域适应方法,即使用带有标签异常现象和正常节点的辅助源图(ACT)。尽管ACT是一种很有希望的方法,以解决异常现象探测中臭名高的虚伪正面问题,但在研究方面没有做多少工作。文献中有许多域图调适方法,但由于异常现象分布不明,且图中含有复杂的节点关系,因此很难将其调整为GAD。为此,我们为GAD采用了一种新的域适应方法,即使用贴有标签的反常相对调的源图(AACT)。ACT旨在联合优化:(一) 不受超常反常反常对比地学习目标图中的节点的正常表达方式,以及(二) 异常反常的一等调和源图中的正常节点的表达方式。在源图图中,从标定的反常态点调调的GAMA-GA-GA-GAD-G-在正常的图表中,在正常的分布图中没有任何的平反常态分配。