Online Detection of Anomalies in Temporal Knowledge Graphs with Interpretability
Jiasheng Zhang, Rex Ying, Jie Shao

TL;DR
AnoT is an innovative method for interpretable, online anomaly detection in temporal knowledge graphs, using rule graph summarization to improve accuracy and handle semantic changes effectively.
Contribution
Introduces AnoT, a novel rule graph-based summarization approach enabling interpretable and adaptive online anomaly detection in TKGs.
Findings
Outperforms existing methods in accuracy on real-world datasets.
Provides interpretable evidence for anomaly detection.
Effectively adapts to knowledge updates and semantic drifts.
Abstract
Temporal knowledge graphs (TKGs) are valuable resources for capturing evolving relationships among entities, yet they are often plagued by noise, necessitating robust anomaly detection mechanisms. Existing dynamic graph anomaly detection approaches struggle to capture the rich semantics introduced by node and edge categories within TKGs, while TKG embedding methods lack interpretability, undermining the credibility of anomaly detection. Moreover, these methods falter in adapting to pattern changes and semantic drifts resulting from knowledge updates. To tackle these challenges, we introduce AnoT, an efficient TKG summarization method tailored for interpretable online anomaly detection in TKGs. AnoT begins by summarizing a TKG into a novel rule graph, enabling flexible inference of complex patterns in TKGs. When new knowledge emerges, AnoT maps it onto a node in the rule graph and…
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Taxonomy
TopicsArtificial Immune Systems Applications · Rough Sets and Fuzzy Logic · Advanced Graph Neural Networks
