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Issue:A generalized net model of the process of decision tree construction

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Title of paper: A generalized net model of the process of decision tree construction
Author(s):
Veselina Bureva
Prof. Asen Zlatarov” University, 1 “Prof. Yakimov” Blvd, Burgas–8010, Bulgaria
vesito_ka@abv.bg
Panagiotis Chountas
School of Electronics & Computer Science, University of Westminster, 15 New Cavendish Street, London W1W 6UW
p.i.chountas@westminster.ac.uk
Krassimir Atanassov
Prof. Asen Zlatarov” University, 105 “Acad. G. Bonchev” Str., Sofia–1113, Bulgaria
Institute of Biophysics and Biomedical Engineering, Bulgarian Academy of Sciences
krat@bas.bg
Presented at: 13th IWGN, London, 29 October 2012
Published in: Conference proceedings, pages 1—7
Download:  PDF (43  Kb, Info)
Abstract: A generalized net is used to construct a model which describes the construction of a decision tree.
Keywords: Generalized net, Decision tree, Data mining.
AMS Classification: 68Q85, 62H30.
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