Vertical Pattern Mining Algorithm for Multiple Support Thresholds
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Yes
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Abstract
Frequent pattern mining is an important task in discovering hidden items that co-occur (itemset) more than a predefined threshold in a database. Mining frequent itemsets has drawn attention although rarely occurring ones might have more interesting insights. In existing studies, to find these interesting patterns (rare itemsets), user defined single threshold should be set low enough but this results in generation of huge amount of redundant itemsets. We present Multiple Item Support-eclat; MIS-eclat algorithm, to mine frequent patterns including rare itemsets under multiple support thresholds (MIS) by utilizing a vertical representation of data. We compare MIS-eclat to our previous tree based algorithm, MISFP-growth28 and another recent algorithm, CFP-growth++22 in terms of execution time, memory usage and scalability on both sparse and dense databases. Experimental results reveal that MIS-eclat and MISFP-growth outperform CFP-growth++ in terms of execution time, memory usage and scalability.
Description
21st International Conference on Knowledge - Based and Intelligent Information and Engineering Systems, KES 2017; Saint Charles Campus of Aix-Marseille UniversityMarseille; France; 6 September 2017 through 8 September 2017
Keywords
Frequent pattern mining, Pattern growth tree, Vertical mining, Multiple support thresholds, Vertical mining, Frequent pattern mining, Pattern growth tree, Multiple support thresholds
Fields of Science
0202 electrical engineering, electronic engineering, information engineering, 02 engineering and technology
Citation
Darrab, S., and Ergenç, B. (2017). Vertical pattern mining algorithm for multiple support thresholds. Procedia Computer Science, 112, 417-426. doi:10.1016/j.procs.2017.08.051
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OpenCitations Citation Count
13
Volume
112
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Start Page
417
End Page
426
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CrossRef : 14
Scopus : 20
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20
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7
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937
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1179
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