Multi-representations Space Separation based Graph-level Anomaly-aware Detection

Fu Lin, Haonan Gong, Mingkang Li, Zitong Wang, Yue Zhang, Xuexiong Luo
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Abstract

Graph structure patterns are widely used to model different area data recently. How to detect anomalous graph information on these graph data has become a popular research problem. The objective of this research is centered on the particular issue that how to detect abnormal graphs within a graph set. The previous works have observed that abnormal graphs mainly show node-level and graph-level anomalies, but these methods equally treat two anomaly forms above in the evaluation of abnormal graphs, which is contrary to the fact that different types of abnormal graph data have different degrees in terms of node-level and graph-level anomalies. Furthermore, abnormal graphs that have subtle differences from normal graphs are easily escaped detection by the existing methods. Thus, we propose a multi-representations space separation based graph-level anomaly-aware detection framework in this paper. To consider the different importance of node-level and graph-level anomalies, we design an anomaly-aware module to learn the specific weight between them in the abnormal graph evaluation process. In addition, we learn strictly separate normal and abnormal graph representation spaces by four types of weighted graph representations against each other including anchor normal graphs, anchor abnormal graphs, training normal graphs, and training abnormal graphs. Based on the distance error between the graph representations of the test graph and both normal and abnormal graph representation spaces, we can accurately determine whether the test graph is anomalous. Our approach has been extensively evaluated against baseline methods using ten public graph datasets, and the results demonstrate its effectiveness. The code for our method is publicly available on https://github.com/whb605/MssGAD.git
基于多表示空间分离的图级异常感知检测
近年来,图形结构模式被广泛应用于不同区域数据的建模。如何从这些图数据中检测出异常图信息已成为一个热门的研究问题。本文的研究重点是如何在图集中检测异常图。以往的研究发现,异常图主要表现为节点级异常和图级异常,但这些方法在异常图的评价中同样对待上述两种异常形式,这与不同类型的异常图数据在节点级和图级异常上存在程度不同的情况正好相反。此外,与正态图有细微差别的异常图很容易被现有方法所忽略。因此,本文提出了一种基于多表示空间分离的图级异常感知检测框架。考虑到节点级和图级异常的重要性不同,我们设计了异常感知模块来学习异常图评估过程中节点级和图级异常之间的权重。此外,我们通过锚点法图、锚点异常图、训练法图和训练异常图四种加权图表示来严格分离正非正常图表示空间。基于测试图的图表示与正常和异常图表示空间之间的距离误差,我们可以准确地判断测试图是否异常。我们的方法已经使用10个公共图数据集对基线方法进行了广泛的评估,结果证明了它的有效性。我们方法的代码可以在https://github.com/whb605/MssGAD.git上公开获得
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