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Robust statistics / Local outlier factor / Anomaly detection / Outlier / Cluster analysis / BIRCH / Robust regression / K-medoids / K-means clustering / Statistics / Data mining / Data analysis
Date: 2012-01-19 01:28:41
Robust statistics
Local outlier factor
Anomaly detection
Outlier
Cluster analysis
BIRCH
Robust regression
K-medoids
K-means clustering
Statistics
Data mining
Data analysis

CURIO : A Fast Outlier and Outlier Cluster Detection Algorithm for Large Datasets∗ Aaron Ceglar, John F. Roddick and David M.W. Powers School of Informatics and Engineering, Flinders University, PO Box 2100, Adelaide,

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