2012
DOI: 10.5120/8327-1820
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An Efficient Mining Algorithm for Determining Related Item Sets using Classification and Association Rules

Abstract: In the present days, data mining is the advanced research area because it is one of the important step in the knowledge discovery process. This paper presents an experimental study of finding the frequent item sets by classifying the data base transactions into classes by using Decision tree induction based classification and applying Frequent-Pattern (FP) growth on the classes. First, data base transactions are preprocessed by using the pre-processing techniques and those are classified into classes based on … Show more

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