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Data analysis / Data mining / Multivariate statistics / Ross Quinlan / Cluster analysis / K-means clustering / K-nearest neighbor algorithm / Support vector machine / AdaBoost / Statistics / Machine learning / Computational statistics
Date: 2008-04-01 15:43:35
Data analysis
Data mining
Multivariate statistics
Ross Quinlan
Cluster analysis
K-means clustering
K-nearest neighbor algorithm
Support vector machine
AdaBoost
Statistics
Machine learning
Computational statistics

Knowl Inf Syst[removed]:1–37 DOI[removed]s10115[removed]SURVEY PAPER Top 10 algorithms in data mining Xindong Wu · Vipin Kumar · J. Ross Quinlan · Joydeep Ghosh · Qiang Yang ·

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