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HUIL-TN & HUI-TN: Mining high utility itemsets based on pattern-growth

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  • Le Wang
  • Shui Wang

Abstract

In recent years, high utility itemsets (HUIs) mining has been an active research topic in data mining. In this study, we propose two efficient pattern-growth based HUI mining algorithms, called High Utility Itemset based on Length and Tail-Node tree (HUIL-TN) and High Utility Itemset based on Tail-Node tree (HUI-TN). These two algorithms avoid the time-consuming candidate generation stage and the need of scanning the original dataset multiple times for exact utility values. A novel tree structure, named tail-node tree (TN-tree) is proposed as a key element of our algorithms to maintain complete utililty-information of existing itemsets of a dataset. The performance of HUIL-TN and HUI-TN was evaluated against state-of-the-art reference methods on various datasets. Experimental results showed that our algorithms exceed or close to the best performance on all datasets in terms of running time, while other algorithms can only excel in certain types of dataset. Scalability tests were also performed and our algorithms obtained the flattest curves among all competitors.

Suggested Citation

  • Le Wang & Shui Wang, 2021. "HUIL-TN & HUI-TN: Mining high utility itemsets based on pattern-growth," PLOS ONE, Public Library of Science, vol. 16(3), pages 1-24, March.
  • Handle: RePEc:plo:pone00:0248349
    DOI: 10.1371/journal.pone.0248349
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