A SURVEY ON FREQUENT ITEM SET MINING FOR LARGE TRANSACTIONAL DATA

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Divvela Srinivasa Rao, et. al.

Abstract

In the decision making process the Data Analytics plays an important role. The  Insights that are obtained from pattern analysis gives many benefits like cost cutting,  good revenue, and better competitive advantage. On the other hand the patterns of frequent itemsets that are hidden consume more time for extraction when data increases over time.  However less memory consumption is required for mining  the  patterns of frequent itemsets because of  heavy computation. Therefore, an algorithm required  must be efficient for mining the  patterns of the frequent itemsets that are hidden which takes less memory with short run time. This paper presents a review of different algorithms for finding Frequent Patterns so that a more efficient algorithm for finding frequent items sets can be developed.

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