Publication | Open Access
Alleviating Structural Distribution Shift in Graph Anomaly Detection
55
Citations
42
References
2023
Year
Unknown Venue
Anomaly DetectionMachine LearningEngineeringStructural Distribution ShiftNetwork AnalysisGraph Signal ProcessingGraph Anomaly DetectionData ScienceData MiningPattern RecognitionStatisticsSocial Network AnalysisOutlier DetectionKnowledge DiscoveryGraph Neural NetworksNetwork ScienceGraph TheoryBusinessNovelty DetectionGraph AnalysisGraph Neural Network
Graph anomaly detection (GAD) is a challenging binary classification problem due to its different structural distribution between anomalies and normal nodes --- abnormal nodes are a minority, therefore holding high heterophily and low homophily compared to normal nodes. Furthermore, due to various time factors and the annotation preferences of human experts, the heterophily and homophily can change across training and testing data, which is called structural distribution shift (SDS) in this paper. The mainstream methods are built on graph neural networks (GNNs), benefiting the classification of normals from aggregating homophilous neighbors, yet ignoring the SDS issue for anomalies and suffering from poor generalization.
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