A Technique for Estimating Updated Frequent Itemsets in ESC-Growth Algorithm

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Kreesuradej, Worapoj and Thurachon, Wannasiri (2019) A Technique for Estimating Updated Frequent Itemsets in ESC-Growth Algorithm In: 2019 20th IEEE/ACIS International Conference on Software Engineering, Artificial Intelligence, Networking and Parallel/Distributed Computing (SNPD), 2019-07-08, Toyama, Japan.

Abstract

In discovering association rules from a dynamic database, iteration through the frequent itemsets requires significant resources and computational time for construction of sub-trees, sub-tree traversal and generation of conditional pattern bases, and it is quite possible that no updated frequent itemsets may have been found at all, resulting in a waste of resources and computational time. We describe a technique for estimating the support count for the itemsets for the next iteration of discovery of the frequent itemsets by our ESC-Growth Algorithm. This technique reduces the need to construct a new sub-tree and next discovery step. If no frequent itemsets in the updated database have been found in the next iteration, ESC-Growth will not construct a new sub-tree and will stop discovering new frequent itemsets in that iteration, reducing the waste of resources and computational time. We measured execution time and sub-tree counts for FP-Growth, FUFP-tree, FPISC-Growth and ESCGrowth on the same synthetic dataset; we found that, at 5% minimum support threshold, ESC-Growth used only 40.3, 96.5, and 99.6% of the execution time required by FP-Growth, FUFPtree and FPISC-Growth, respectively.

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Conference or Workshop Item (Paper)

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ระบบ อัตโนมัติ

Date Deposited:

2021-09-09 23:53:44

Last Modified:

2021-09-20 22:11:36

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