International Research Journal of Commerce , Arts and Science

 ( Online- ISSN 2319 - 9202 )     New DOI : 10.32804/CASIRJ

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FUZZY LOGIC BASED DECISION TREE IN CANCER CLASSIFICATION

    1 Author(s):  PARVESH KUMAR

Vol -  4, Issue- 1 ,         Page(s) : 104 - 110  (2013 ) DOI : https://doi.org/10.32804/CASIRJ

Abstract

Cancer detection is one of the important research topics in medical science. In bioinformatics age, gene expression data can be used for the cancer detection. Fuzzy sets are suitable for handling the issues related to understand ability of patterns, incomplete/noisy data. Classification is very important among techniques of data mining. Here in this paper we studied various classification algorithms like C4.5, CART, FDT over different cancer dataset. Accuracy is the main objective to estimate the performance of these algorithms over cancer datasets.

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