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Effective Diagnostic Method Of Breast Cancer Data Using Decision Tree  

Jung, Yong-Gyu (을지대학교 의료IT마케팅학과)
Lee, Seung-Ho (을지대학교 의료산업학부 의료전산학전공)
Sung, Ho-Joong (을지대학교 임상병리학과)
Publication Information
The Journal of the Institute of Internet, Broadcasting and Communication / v.10, no.5, 2010 , pp. 57-62 More about this Journal
Abstract
Recently, decision tree techniques have been studied in terms of quick searching and extracting of massive data in medical fields. Although many different techniques have been developed such as CART, C4.5 and CHAID which are belong to a pie in Clermont decision tree classification algorithm, those methods can jeopardize remained data by the binary method during procedures. In brief, C4.5 method composes a decision tree by entropy levels. In contrast, CART method does by entropy matrix in categorical or continuous data. Therefore, we compared C4.5 and CART methods which were belong to a same pie using breast cancer data to evaluate their performance respectively. To convince data accuracy, we performed cross-validation of results in this paper.
Keywords
CART; C4.5; Breast; Cancer;
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