CRoC: Context Refactoring Contrast for Graph Anomaly Detection with Limited Supervision
Siyue Xie, Da Sun Handason Tam, Wing Cheong Lau

TL;DR
CRoC introduces a contrastive learning framework for graph anomaly detection that refactors node contexts and leverages limited labels to improve GNN robustness and detection accuracy.
Contribution
This work presents a novel context refactoring contrast method that enhances GNNs for GAD by exploiting class imbalance and integrating heterogeneous relations with contrastive learning.
Findings
Up to 14% AUC improvement over baselines
Outperforms state-of-the-art GAD methods with limited labels
Effective on seven real-world datasets
Abstract
Graph Neural Networks (GNNs) are widely used as the engine for various graph-related tasks, with their effectiveness in analyzing graph-structured data. However, training robust GNNs often demands abundant labeled data, which is a critical bottleneck in real-world applications. This limitation severely impedes progress in Graph Anomaly Detection (GAD), where anomalies are inherently rare, costly to label, and may actively camouflage their patterns to evade detection. To address these problems, we propose Context Refactoring Contrast (CRoC), a simple yet effective framework that trains GNNs for GAD by jointly leveraging limited labeled and abundant unlabeled data. Different from previous works, CRoC exploits the class imbalance inherent in GAD to refactor the context of each node, which builds augmented graphs by recomposing the attributes of nodes while preserving their interaction…
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