A Rank-SVM Approach to Anomaly Detection
Qian, Jing, Root, Jonathan, Saligrama, Venkatesh, Chen, Yuting
We propose a novel non-parametric adaptive anomaly detection algorithm for high dimensional data based on rank-SVM. Data points are first ranked based on scores derived from nearest neighbor graphs on n-point nominal data. We then train a rank-SVM using this ranked data. A test-point is declared as an anomaly at alpha-false alarm level if the predicted score is in the alpha-percentile. The resulting anomaly detector is shown to be asymptotically optimal and adaptive in that for any false alarm rate alpha, its decision region converges to the alpha-percentile level set of the unknown underlying density. In addition we illustrate through a number of synthetic and real-data experiments both the statistical performance and computational efficiency of our anomaly detector.
May-2-2014
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- North America > United States
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- Research Report (0.83)
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- Information Technology > Security & Privacy (0.46)
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