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Fast, exact, and parallel-friendly outlier detection algorithms with proximity graph in metric spaces

Daichi Amagata, Makoto Onizuka, Takahiro Hara

2022The VLDB Journal15 citationsDOIOpen Access PDF

Abstract

Abstract In many fields, e.g., data mining and machine learning, distance-based outlier detection (DOD) is widely employed to remove noises and find abnormal phenomena, because DOD is unsupervised, can be employed in any metric spaces, and does not have any assumptions of data distributions. Nowadays, data mining and machine learning applications face the challenge of dealing with large datasets, which requires efficient DOD algorithms. We address the DOD problem with two different definitions. Our new idea, which solves the problems, is to exploit an in-memory proximity graph. For each problem, we propose a new algorithm that exploits a proximity graph and analyze an appropriate type of proximity graph for the algorithm. Our empirical study using real datasets confirms that our DOD algorithms are significantly faster than state-of-the-art ones.

Topics & Concepts

ExploitComputer scienceGraphOutlierMetric (unit)Anomaly detectionAlgorithmGraph algorithmsMachine learningArtificial intelligenceData miningTheoretical computer scienceEngineeringOperations managementComputer securityAnomaly Detection Techniques and ApplicationsNetwork Security and Intrusion DetectionImbalanced Data Classification Techniques
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