A HYBRID ALGORITHM FOR MINING FREQUENT ITEMSETS IN TRANSACTIONAL DATABASES

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Ramah Sivakumar
Dr.J.G.R. Sathiaseelan

Abstract

Frequent pattern mining is one of the most notable areas under research. Mining frequent itemsets in transactional databases paves way for business improvements. In this paper, a hybrid algorithm called CanTree is proposed, which is based on the classic Apriori and FPGrowth. The proposed algorithm has been derived by improving the existing advantages of both the algorithms and avoiding the recursive generation of conditional pattern bases and sub conditional pattern trees which is the main disadvantage in FPGrowth. The proposed algorithm has been examined by comparing the results with the existing algorithms. The parameters taken for analyzing are time, and memory space. Four different real time datasets with varied sizes from the UCI and Frequent Itemset Mining Implementations Repository (fimi) were used for the experiments. The result shows that the proposed algorithm gives betterment in the mining process of frequent itemsets than the existing algorithms.

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