MMM: A Unified Weakly-Supervised Anomaly Detection Framework for Multi-Distributional Data

  • Xu Tan
  • , Junqi Chen
  • , Jiawei Yang
  • , Jie Chen
  • , Susanto Rahardja

Research output: Contribution to journalArticlepeer-review

Abstract

Weakly-Supervised Anomaly Detection (WSAD) has garnered increasing research interest in recent years, as it enables superior detection performance while demanding only a small fraction of labeled data. However, existing WSAD methods face two major limitations. From the data aspect, they struggle to detect anomalies between normal clusters or collective anomalies due to overlooking the multi-distribution and complex manifolds of real-world data. From the label aspect, they fall short of detecting unknown anomalies because of the label-insufficiency and anomaly contamination. To address these issues, we propose MMM, a unified WSAD framework for multi-distributional data. The framework consists of three components: a Multi-distribution data modeler captures latent representations of complex data distributions, followed by a Multiform feature extractor that extracts multiple underlying features from the modeler, highlighting the characteristics of potential anomalies. Finally, a Multi-strategy anomaly score estimator converts these features into anomaly scores, with the aid of a novel training approach with three strategies that maximize the utility of both data and labels. Experimental results showed that MMM achieved superior performance and robustness compared to state-of-the-art WSAD methods, while providing interpretable results that facilitate practical anomaly analysis.

Original languageEnglish
Pages (from-to)442-456
Number of pages15
JournalIEEE Transactions on Knowledge and Data Engineering
Volume38
Issue number1
DOIs
StatePublished - 2026

Keywords

  • Anomaly detection
  • adjacency graph
  • label augmentation
  • multi-distribution
  • variational mixture model
  • weakly-supervised

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