PIDForest: Anomaly Detection via Partial Identification
Gopalan, Parikshit, Sharan, Vatsal, Wieder, Udi
–Neural Information Processing Systems
We consider the problem of detecting anomalies in a large dataset. We propose a framework called Partial Identification which captures the intuition that anomalies are easy to distinguish from the overwhelming majority of points by relatively few attribute values. Formalizing this intuition, we propose a geometric anomaly measure for a point that we call PIDScore, which measures the minimum density of data points over all subcubes containing the point. We present PIDForest: a random forest based algorithm that finds anomalies based on this definition. We show that it performs favorably in comparison to several popular anomaly detection methods, across a broad range of benchmarks.
Neural Information Processing Systems
Mar-19-2020, 03:16:29 GMT
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