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NeighborDiv: Training-free Zero-shot Generalist Graph Anomaly Detection via Neighbor Diversity

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Graph Anomaly Detection (GAD) is increasingly shifting to Generalist GAD (GGAD) for cross-domain "one-for-all" detection, but existing GGAD methods predominantly rely on the neighbor consistency principle, falling into the \textbf{Node-to-Neighbor Consistency Paradigm} for anomaly quantification. These methods suffer from complex training pipelines, heavy training data dependency, high computational costs, and unstable cross-domain generalization. To address these limitations, we propose NeighborDiv, a training-free generalist graph anomaly detection framework based on neighbor diversity. Departing from the dominant Node-to-Neighbor Consistency Paradigm, we shift the focus to the \textbf{Neighbor-to-Neighbor Diversity Paradigm}, and uncover that the internal structural dispersion of a node's neighbor set is a powerful, independently discriminative anomaly signal. We quantify neighbor diversity via the variance of inter-neighbor feature similarities, which captures how a node organizes its local graph environment, and operates independently of conventional node-to-neighbor consistency frameworks. Extensive experiments under two standard GGAD evaluation paradigms show NeighborDiv achieves state-of-the-art performance, with relative gains of 10.25% in average AUC and 17.78% in average AP over the second-best baseline under Single-Domain Independent Training (SDIT), and 6.89%/9.58% in AUC/AP under Unified Multi-Domain Training (UMDT), respectively. Notably, NeighborDiv yields zero performance volatility across all datasets, eliminating training-set dependency and establishing a lightweight and highly practical GGAD framework.

Kaifeng Wei, Teng Liu, Liang Dong, Xiubo Liang, Yuke Li• 2026

Related benchmarks

TaskDatasetResultRank
Graph Anomaly DetectionREDDIT
AUROC51.22
106
Graph Anomaly Detectionquestions
AUPRC4
59
Graph Anomaly DetectionT-Finance
AUC91.14
58
Graph Anomaly DetectionReddit (test)
AUPRC0.0356
51
Graph Anomaly DetectionCora--
50
Graph Anomaly DetectionYelpChi
AUROC61.52
49
Graph Anomaly DetectionCora
AUC0.6166
41
Graph Anomaly DetectionT-Finance (test)
AUPRC60.67
38
Graph Anomaly DetectionDisney
AUC72.46
21
Graph Anomaly Detectiontolokers
AUC56.24
14
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