2012
DOI: 10.5121/ijist.2012.2608
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Extracting Useful Rules Through Improved Decision Tree Induction Using Information Entropy

Abstract: Classification is widely used technique in the data mining domain, where scalability and efficiency are the immediate problems in classification algorithms for large databases. We suggest improvements to the existing C4.5 decision tree algorithm. In this paper attribute oriented induction (AOI) and relevance analysis are incorporated with concept hierarchy's knowledge and HeightBalancePriority algorithm for construction of decision tree along with Multi level mining. The assignment of priorities to attributes … Show more

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