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Statistics / Cluster analysis / Information science / Data analysis / Data mining / Geostatistics / Hierarchical clustering / K-means clustering / Document clustering / Biclustering / Consensus clustering / Determining the number of clusters in a data set
Date: 2008-01-18 10:31:22
Statistics
Cluster analysis
Information science
Data analysis
Data mining
Geostatistics
Hierarchical clustering
K-means clustering
Document clustering
Biclustering
Consensus clustering
Determining the number of clusters in a data set

V-Measure: A conditional entropy-based external cluster evaluation measure Andrew Rosenberg and Julia Hirschberg Department of Computer Science Columbia University New York, NY 10027

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