Please use this identifier to cite or link to this item: http://umt-ir.umt.edu.my:8080/handle/123456789/5951
Title: Mining Association Rules
Other Titles: A Case Study On Benchmark Dense Data
Authors: Wan Aezwani, Wan Abu Bakar
Md. Yazid, Md. Saman
Zailani, Abdullah
Masita@Masila, Abd Jalil
Tutut, Herawan
Keywords: Apriori
Association rule mining (ARM)
Data mining
Fp growth
Frequent pattern mining (FPM)
Rapid miner
Issue Date: Sep-2016
Publisher: Indonesian Journal of Electrical Engineering and
Citation: Vol.3 Issue 3;546-553 p.
Abstract: Data mining is the process of discovering knowledge and previously unknown pattern from large amount of data. The association rule mining (ARM) has been in trend where a new pattern analysis can be discovered to project for an important prediction about any issues. Since the first introduction of frequent itemset mining, it has received a major attention among researchers and various efficient and sophisticated algorithms have been proposed to do frequent itemset mining. Among the best-known algorithms are Apriori and FP-Growth. In this paper, we explore these algorithms and comparing their results in generating association rules based on benchmark dense datasets. The datasets are taken from frequent itemset mining data repository. The two algorithms are implemented in Rapid Miner 5.3.007 and the performance results are shown as comparison. FP-Growth is found to be better algorithm when encountering the support-confidence framework. © 2016 Institute of Advanced Engineering and Science
URI: http://hdl.handle.net/123456789/5951
ISSN: 2502 4752
Appears in Collections:Journal Articles

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