Publication | Closed Access
Interpreting and Unifying Outlier Scores
267
Citations
43
References
2011
Year
Unknown Venue
Anomaly DetectionVarious Outlier ModelsData ScienceData MiningEngineeringBiasOutlier DetectionKnowledge DiscoveryNovelty DetectionDifferent Outlier ModelsOutlier ScoresStatisticsEnsemble Algorithm
Outlier scores provided by different outlier models differ widely in their meaning, range, and contrast between different outlier models and, hence, are not easily comparable or interpretable. We propose a unification of outlier scores provided by various outlier models and a translation of the arbitrary “outlier factors” to values in the range [0, 1] interpretable as values describing the probability of a data object of being an outlier. As an application, we show that this unification facilitates enhanced ensembles for outlier detection.
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