Hierarchical Reference Sets for Robust Unsupervised Detection of Scattered and Clustered Outliers
arXiv cs.AI / 3/16/2026
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Key Points
- The paper proposes a novel hierarchical reference set approach that uses graph structures to enable unsupervised detection of both scattered and clustered outliers in IoT data.
- It leverages local and global reference sets derived from the graph to evaluate anomalies from multiple perspectives, helping to separate scattered outliers from clustered ones.
- The method is designed to avoid interference from clustered anomalies when identifying scattered outliers and to reflect and isolate clustered outlier groups through the graph.
- Extensive experiments, including comparisons, ablation studies, downstream clustering validation, and hyperparameter sensitivity analyses, demonstrate the approach's effectiveness.
- The authors provide source code at GitHub, enabling practitioners to apply the method to IoT anomaly detection and clustering tasks.
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