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BIGMiner: a fast and scalable distributed frequent pattern miner for big data

Title
BIGMiner: a fast and scalable distributed frequent pattern miner for big data
Author(s)
Chon, Kang-WookKim, Min-Soo
DGIST Authors
Chon, Kang-WookKim, Min-Soo
Issued Date
2018-09
Type
Article
Article Type
Article
Author Keywords
Big dataDistributed algorithmFrequent pattern miningMapReduceScalable algorithm
ISSN
1386-7857
Abstract
Frequent itemset mining is widely used as a fundamental data mining technique. Recently, there have been proposed a number of MapReduce-based frequent itemset mining methods in order to overcome the limits on data size and speed of mining that sequential mining methods have. However, the existing MapReduce-based methods still do not have a good scalability due to high workload skewness, large intermediate data, and large network communication overhead. In this paper, we propose BIGMiner, a fast and scalable MapReduce-based frequent itemset mining method. BIGMiner generates equal-sized sub-databases called transaction chunks and performs support counting only based on transaction chunks and bitwise operations without generating and shuffling intermediate data. As a result, BIGMiner achieves very high scalability due to no workload skewness, no intermediate data, and small network communication overhead. Through extensive experiments using large-scale datasets of up to 6.5 billion transactions, we have shown that BIGMiner consistently and significantly outperforms the state-of-the-art methods without any memory problems. © 2018 Springer Science+Business Media, LLC, part of Springer Nature
URI
http://hdl.handle.net/20.500.11750/5910
DOI
10.1007/s10586-018-1812-0
Publisher
Springer New York LLC
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Department of Electrical Engineering and Computer Science InfoLab 1. Journal Articles

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