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http://dx.doi.org/10.5351/CKSS.2009.16.6.959

Dynamic Decision Tree for Data Mining  

Choi, Byong-Su (Department of Multimedia Engineering, Hansung University)
Cha, Woon-Ock (Department of Multimedia Engineering, Hansung University)
Publication Information
Communications for Statistical Applications and Methods / v.16, no.6, 2009 , pp. 959-969 More about this Journal
Abstract
Decision tree is a typical tool for data classification. This tool is implemented in DAVIS (Huh and Song, 2002). All the visualization tools and statistical clustering tools implemented in DAVIS can communicate with the decision tree. This paper presents methods to apply data visualization techniques to the decision tree using a real data set.
Keywords
Decision tree; cluster analysis; data visualization; DAVIS;
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