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ZERO++: Harnessing the Power of Zero Appearances to Detect Anomalies in Large-Scale Data Sets
Author(s) -
Guansong Pang,
Kai Ming Ting,
David Albrecht,
Huidong Jin
Publication year - 2016
Publication title -
journal of artificial intelligence research
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.79
H-Index - 123
eISSN - 1943-5037
pISSN - 1076-9757
DOI - 10.1613/jair.5228
Subject(s) - linear subspace , categorical variable , subspace topology , zero (linguistics) , anomaly detection , range (aeronautics) , computer science , scale (ratio) , anomaly (physics) , pattern recognition (psychology) , mathematics , data mining , algorithm , artificial intelligence , machine learning , geography , linguistics , philosophy , materials science , physics , condensed matter physics , composite material , geometry , cartography
This paper introduces a new unsupervised anomaly detector called ZERO++ which employs the number of zero appearances in subspaces to detect anomalies in categorical data. It is unique in that it works in regions of subspaces that are not occupied by data; whereas existing methods work in regions occupied by data. ZERO++ examines only a small number of low dimensional subspaces to successfully identify anomalies. Unlike existing frequency-based algorithms, ZERO++ does not involve subspace pattern searching. We show that ZERO++ is better than or comparable with the state-of-the-art anomaly detection methods over a wide range of real-world categorical and numeric data sets; and it is efficient with linear time complexity and constant space complexity which make it a suitable candidate for large-scale data sets.

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