Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

One-Class Graph Neural Networks for Anomaly Detection in Attributed Networks

About

Nowadays, graph-structured data are increasingly used to model complex systems. Meanwhile, detecting anomalies from graph has become a vital research problem of pressing societal concerns. Anomaly detection is an unsupervised learning task of identifying rare data that differ from the majority. As one of the dominant anomaly detection algorithms, One Class Support Vector Machine has been widely used to detect outliers. However, those traditional anomaly detection methods lost their effectiveness in graph data. Since traditional anomaly detection methods are stable, robust and easy to use, it is vitally important to generalize them to graph data. In this work, we propose One Class Graph Neural Network (OCGNN), a one-class classification framework for graph anomaly detection. OCGNN is designed to combine the powerful representation ability of Graph Neural Networks along with the classical one-class objective. Compared with other baselines, OCGNN achieves significant improvements in extensive experiments.

Xuhong Wang, Baihong Jin, Ying Du, Ping Cui, Yupu Yang• 2020

Related benchmarks

TaskDatasetResultRank
Graph Anomaly DetectionREDDIT
AUPRC4
44
Graph Anomaly DetectionAMAZON
AUROC88.1
35
Graph Anomaly DetectionElliptic
AUROC54.09
15
Graph Anomaly DetectionPhoto
AUROC53.07
13
Graph Anomaly DetectionT-Finance
AUROC60.27
13
Graph Anomaly DetectionDGraph
AUROC0.5866
7
Showing 6 of 6 rows

Other info

Follow for update