Statistical anomaly detection typically focuses on finding individual point anomalies. Often the most interesting or unusual things in a data set are not odd individual points, but rather larger scale phenomena that only become apparent when groups of points are considered. In this paper, we propose generative models for detecting such group anomalies. We evaluate our methods on synthetic data as well as astronomical data from the Sloan Digital Sky Survey. The empirical results show that the proposed models are effective in detecting group anomalies. Copyright 2011 by the authors.
CITATION STYLE
Xiong, L., Póczos, B., Schneider, J., Connolly, A., & VanderPlas, J. (2011). Hierarchical probabilistic models for group anomaly detection. In Journal of Machine Learning Research (Vol. 15, pp. 789–797).
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