A new benchmark for graph anomaly detection on million-scale graphs with rare anomalies and missing data shows that most models fail to scale or detect anomalies effectively under realistic conditions.
Proceedings of the NeurIPS 2021 Datasets and Benchmarks Track , year=
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GAD in the Wild: Benchmarking Graph Anomaly Detection under Realistic Deployment Challenges
A new benchmark for graph anomaly detection on million-scale graphs with rare anomalies and missing data shows that most models fail to scale or detect anomalies effectively under realistic conditions.