4.5 Article

FRaC: a feature-modeling approach for semi-supervised and unsupervised anomaly detection

期刊

DATA MINING AND KNOWLEDGE DISCOVERY
卷 25, 期 1, 页码 109-133

出版社

SPRINGER
DOI: 10.1007/s10618-011-0234-x

关键词

Anomaly detection; Unsupervised learning

资金

  1. Eunice Kennedy Shriver National Institute of Child Health and Human Development [R01-HD-058880]
  2. NSF [IIS-0803409]

向作者/读者索取更多资源

Anomaly detection involves identifying rare data instances (anomalies) that come from a different class or distribution than the majority (which are simply called normal instances). Given a training set of only normal data, the semi-supervised anomaly detection task is to identify anomalies in the future. Good solutions to this task have applications in fraud and intrusion detection. The unsupervised anomaly detection task is different: Given unlabeled, mostly-normal data, identify the anomalies among them. Many real-world machine learning tasks, including many fraud and intrusion detection tasks, are unsupervised because it is impractical (or impossible) to verify all of the training data. We recently presented FRaC, a new approach for semi-supervised anomaly detection. FRaC is based on using normal instances to build an ensemble of feature models, and then identifying instances that disagree with those models as anomalous. In this paper, we investigate the behavior of FRaC experimentally and explain why FRaC is so successful. We also show that FRaC is a superior approach for the unsupervised as well as the semi-supervised anomaly detection task, compared to well-known state-of-the-art anomaly detection methods, LOF and one-class support vector machines, and to an existing feature-modeling approach.

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