Rethinking Reconstruction-based Graph-Level Anomaly Detection: Limitations and a Simple Remedy

Neural Information Processing Systems 

Graph autoencoders (Graph-AEs) learn representations of given graphs by aiming to accurately reconstruct them. A notable application of Graph-AEs is graph-level anomaly detection (GLAD), whose objective is to identify graphs with anomalous topological structures and/or node features compared to the majority of the graph population.