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Raising the Bar in Graph-level Anomaly Detection

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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.

Chen Qiu, Marius Kloft, Stephan Mandt, Maja Rudolph• 2022

Related benchmarks

TaskDatasetResultRank
Graph Anomaly DetectionMUTAG
AUROC0.9219
36
Graph Anomaly DetectionNCI1
AUC75.75
33
Graph Anomaly DetectionENZYMES
AUC63.59
33
Graph Anomaly DetectionCOX2
AUC0.5981
33
Graph Anomaly DetectionIMDB-B
AUC65.27
33
Anomaly DetectionMUTAG
AUPRC33.87
30
Graph-level Anomaly DetectionMUTAG
FPR9539.2
27
Anomaly DetectionT-Group
AUPRC4.3
25
Graph-level Anomaly DetectionAIDS
FPR951.4
13
Graph-level Anomaly DetectionNCI1
FPR@9561.25
13
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