Transcription of Top 10 algorithms in data mining - UVM
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Knowl Inf Syst (2008) 14:1 37 DOI PAPERTop 10 algorithms in data miningXindong Wu Vipin Kumar J. Ross Quinlan Joydeep Ghosh Qiang Yang Hiroshi Motoda Geoffrey J. McLachlan Angus Ng Bing Liu Philip S. Yu Zhi-Hua Zhou Michael Steinbach David J. Hand Dan SteinbergReceived: 9 July 2007 / Revised: 28 September 2007 / Accepted: 8 October 2007 Published online: 4 December 2007 Springer-Verlag London Limited 2007 AbstractThis paper presents the top 10 data mining algorithms identified by the IEEEI nternational Conference on data mining (ICDM) in December 2006: ,k-Means, SVM,Apriori, EM, PageRank, AdaBoost,kNN, Naive Bayes, and CART. These top 10 algorithmsare among the most influential data mining algorithms in the research community. With eachalgorithm, we provide a description of the algorithm, discuss the impact of the algorithm, andreview current and further research on the algorithm.
2 X. Wu et al. clustering, statistical learning, association analysis, and link mining, which are all among the most important topics in data mining research and development.
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078-31: Efficient Construction of a “One, Data, Data Mining, Privacy Preserving Data Mining, A data mining, Key Performance Indicators, Six Sigma, and Data Mining, Key Performance Indicators, Six Sigma, and Data Mining Data, Introduction to Data Mining, Educational Data Mining and Learning Analytics, Siemens, Columbia University, Data Preparation for Data Mining