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TreeITL-Mine: Mining Frequent Itemsets Using Pattern Growth, Tid Intersection, and Prefix Tree
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TreeITL-Mine: Mining Frequent Itemsets Using Pattern Growth, Tid Intersection, and Prefix Tree
Raj P. Gopalan3 and Yudho Giri Sucahyo3 
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School of Computing, Curtin University of Technology, Kent St, 6102 Bentley, Western Australia |
Abstract
An important problem in data mining is the discovery of association rules that identify relationships among sets of items.
Finding frequent itemsets is computationally the most expensive step in association rules mining, and so most of the research
attention has been focused on it. In this paper, we present a more efficient algorithm for mining frequent itemsets. In designing
our algorithm, we have combined the ideas of pattern-growth, tid-intersection and prefix trees, with significant modifications.
We present performance comparisons of our algorithm against the fastest Apriori algorithm, and the recently developed H-Mine
algorithm. We have tested all the algorithms using several widely used test datasets. The performance results indicate that
our algorithm significantly reduces the processing time for mining frequent itemsets in dense data sets that contain relatively
long patterns.
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