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Data mining / Geostatistics / Machine learning / Document clustering / Correlation clustering / K-means clustering / Non-negative matrix factorization / MinHash / Consensus clustering / Statistics / Cluster analysis / Multivariate statistics
Date: 2010-11-15 08:38:01
Data mining
Geostatistics
Machine learning
Document clustering
Correlation clustering
K-means clustering
Non-negative matrix factorization
MinHash
Consensus clustering
Statistics
Cluster analysis
Multivariate statistics

Scalable Clustering of News Search Results Srinivas Vadrevu, Choon Hui Teo, Suju Rajan, Kunal Punera, Byron Dom, Alex Smola, Yi Chang, Zhaohui Zheng Yahoo! Labs Sunnyvale, CA {svadrevu,choonhui,suju,kpunera,bdom,smola,yi

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