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.

Abstract

In this paper, we consider the problem of conditional anomaly detection that aims to identify data instances with an unusual response or a class label. We develop a new non-parametric approach for conditional anomaly detection based on the soft harmonic solution, with which we estimate the confidence of the label to detect anomalous mislabeling. We further regularize the solution to avoid the detection of isolated examples and examples on the boundary of the distribution support. We demonstrate the efficacy of the proposed method on several synthetic and UCI ML datasets in detecting unusual labels when compared to several baseline approaches. We also evaluate the performance of our method on a real-world electronic health record dataset where we seek to identify unusual patient-management decisions.