Conditional anomaly detection with soft harmonic functions
arXiv cs.LG / 4/24/2026
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Key Points
- The paper addresses conditional anomaly detection, focusing on finding data points whose response or class label is unusually abnormal.
- It proposes a new non-parametric method built on a soft harmonic solution to estimate label confidence and detect anomalous mislabeling.
- The approach introduces regularization to prevent false detections of isolated points and boundary cases near the support of the data distribution.
- Experiments on synthetic data and UCI ML datasets show improved detection of unusual labels versus multiple baseline methods.
- The method is also evaluated on an electronic health record dataset to identify atypical patient-management decisions in real-world settings.
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