Graph-level anomaly detection has become a critical topic in diverse areas, such as financial fraud detection and detecting anomalous activities in social networks. While most research has focused on anomaly detection for visual data such as images, where high detection accuracies have been obtained, existing deep learning approaches for graphs currently show considerably worse performance. This paper raises the bar on graph-level anomaly detection, i.e., the task of detecting abnormal graphs in a set of graphs. By drawing on ideas from self-supervised learning and transformation learning, we present a new deep learning approach that significantly improves existing deep one-class approaches by fixing some of their known problems, including hypersphere collapse and performance flip. Experiments on nine real-world data sets involving nine techniques reveal that our method achieves an average performance improvement of 11.8% AUC compared to the best existing approach.
翻译:图表层面异常现象的探测已成为不同领域的一个关键主题,例如金融欺诈的探测和社交网络中的异常活动。虽然大多数研究侧重于图像等视觉数据的异常现象的探测,例如获得高检测孔隙的图像,但目前对图表的深层学习方法显示的性能要差得多。本文在图表层面的异常现象检测中提出了条条线,即在一组图表中检测异常图的工作。我们借鉴了自我监督的学习和转型学习中的想法,提出了一种新的深层次学习方法,通过解决一些已知的问题,包括超视距崩溃和性能翻转,大大改进了现有的深层单级方法。九套真实世界数据集实验涉及九种技术,表明我们的方法与现有最佳方法相比,平均提高了11.8%的ACUC。