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A Bipolar Interpretation of Fuzzy Decision Trees

Tuan-Fang FanContact Information, Churn-Jung LiauContact Information and Duen-Ren LiuContact Information

(6)  Institute of Information Management, National Chiao-Tung University, Hsinchu, 300, Taiwan
(7)  Institute of Information Science, Academia Sinica, Taipei, 115, Taiwan
Summary
Decision tree construction is a popular approach in data mining and machine learning, and some variants of decision tree algorithms have been proposed to deal with different types of data. In this paper, we present a bipolar interpretation of fuzzy decision trees. With the interpretation, various types of decision trees can be represented in a unified form. The edges of a fuzzy decision tree are labeled by fuzzy decision logic formulas and the nodes are split according to the satisfaction of these formulas in the data records. We present a construction algorithm for general fuzzy decision trees and show its application to different types of training data.

Contact Information Tuan-Fang Fan
Email: tffan.iim92g@nctu.edu.tw

Contact Information Churn-Jung Liau
Email: liaucj@iis.sinica.edu.tw

Contact Information Duen-Ren Liu
Email: dliu@iim.nctu.edu.tw
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