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Dimensionality-Aware Outlier Detection

Alastair Anderberg, James Bailey, Ricardo J. G. B. Campello, Michael E. Houle, Henrique O. Marques, Miloš Radovanović, Arthur Zimek

2024Society for Industrial and Applied Mathematics eBooks11 citationsDOI

Abstract

We present a nonparametric method for outlier detection that takes full account of local variations in intrinsic dimensionality within the dataset. Using the theory of Local Intrinsic Dimensionality (LID), our ‘dimensionality-aware’ outlier detection method, DAO, is derived as an estimator of an asymptotic local expected density ratio involving the query point and a close neighbor drawn at random. The dimensionality-aware behavior of DAO is due to its use of local estimation of LID values in a theoretically-justified way. Through comprehensive experimentation on more than 800 synthetic and real datasets, we show that DAO significantly outperforms three popular and important benchmark outlier detection methods: Local Outlier Factor (LOF), Simplified LOF, and kNN.

Topics & Concepts

Anomaly detectionCurse of dimensionalityComputer sciencePattern recognition (psychology)Artificial intelligenceData miningAnomaly Detection Techniques and ApplicationsFault Detection and Control SystemsArtificial Immune Systems Applications
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