Normal nodes tend to have strong connection/affinity with each other, while the homophily in abnormal nodes is significantly weaker. Leveraging this one-class homophily property, we introduce a novel unsupervised anomaly scoring measure, local node affinity, and propose Truncated Affinity Maximization (TAM) to learn tailored node representations that maximize the local affinity of normal nodes for accurate graph anomaly detection.
Graph anomaly detection methods are enhanced by novel outlier injection techniques, message passing analysis, and the utilization of hyperbolic neural networks.
Utilizing normal nodes enhances anomaly detection performance in a semi-supervised setting.
The author revisits node-level graph anomaly detection methods, focusing on outlier injection techniques, message passing impact, and hyperbolic neural networks to enhance performance.