Algorithms for frequent itemset mining: a literature review

被引:0
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作者
Chin-Hoong Chee
Jafreezal Jaafar
Izzatdin Abdul Aziz
Mohd Hilmi Hasan
William Yeoh
机构
[1] Universiti Teknologi PETRONAS,Center for Research in Data Sciences
[2] Deakin University,Department of Information Systems and Business Analytics
来源
关键词
Data analytics; Data mining; Frequent Pattern Mining (FPM); Frequent itemset mining (FIM);
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中图分类号
学科分类号
摘要
Data Analytics plays an important role in the decision making process. Insights from such pattern analysis offer vast benefits, including increased revenue, cost cutting, and improved competitive advantage. However, the hidden patterns of the frequent itemsets become more time consuming to be mined when the amount of data increases over the time. Moreover, significant memory consumption is needed in mining the hidden patterns of the frequent itemsets due to a heavy computation by the algorithm. Therefore, an efficient algorithm is required to mine the hidden patterns of the frequent itemsets within a shorter run time and with less memory consumption while the volume of data increases over the time period. This paper reviews and presents a comparison of different algorithms for Frequent Pattern Mining (FPM) so that a more efficient FPM algorithm can be developed.
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页码:2603 / 2621
页数:18
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