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Rethinking Graph Neural Networks for Anomaly Detection

About

Graph Neural Networks (GNNs) are widely applied for graph anomaly detection. As one of the key components for GNN design is to select a tailored spectral filter, we take the first step towards analyzing anomalies via the lens of the graph spectrum. Our crucial observation is the existence of anomalies will lead to the `right-shift' phenomenon, that is, the spectral energy distribution concentrates less on low frequencies and more on high frequencies. This fact motivates us to propose the Beta Wavelet Graph Neural Network (BWGNN). Indeed, BWGNN has spectral and spatial localized band-pass filters to better handle the `right-shift' phenomenon in anomalies. We demonstrate the effectiveness of BWGNN on four large-scale anomaly detection datasets. Our code and data are released at https://github.com/squareRoot3/Rethinking-Anomaly-Detection

Jianheng Tang, Jiajin Li, Ziqi Gao, Jia Li• 2022

Related benchmarks

TaskDatasetResultRank
Graph Anomaly DetectionREDDIT
AUPRC369
44
Graph Anomaly DetectionBlogCatalog
AUPRC0.3739
43
Graph Anomaly DetectionCora
AUROC0.626
40
Graph Anomaly DetectionAMAZON
AUROC50.01
35
Graph Anomaly DetectionReddit (test)
AUROC0.6368
32
Graph Anomaly DetectionFacebook (test)
AUROC0.6774
32
Graph Anomaly DetectionAmazon (test)
AUROC69.75
32
Graph Anomaly DetectionBLOGCATALOG (test)
AUROC68.74
32
Graph Anomaly DetectionACM (test)
AUROC70.37
32
Graph Anomaly DetectionWeibo (test)
AUROC61.28
32
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