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  1. University of Information Technology
  2. International Conference on Advanced Information Technologies

Cloud Based Big Data Application of FP-Growth Algorithm and K-Means Clustering Algorithm Based on MapReduce Hadoop

http://hdl.handle.net/20.500.12678/0000006256
http://hdl.handle.net/20.500.12678/0000006256
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4b1a28f7-b125-4a60-9dce-a0c1523cfda5
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Cloud Cloud Based Big Data Application of FP-Growth Algorithm and K-Means Clustering Algorithm Based on MapReduce Hadoop.pdf (1.7 Mb)
© 2017 ICAIT
Publication type
Conference paper
Upload type
Publication
Title
Title Cloud Based Big Data Application of FP-Growth Algorithm and K-Means Clustering Algorithm Based on MapReduce Hadoop
Language en
Publication date 2017-02-02
Authors
Than Htike Aung
Nang Saing Moon Kham
Description
In current time large volumes of data are being produced by various modern applications at an ever increasing rate. These applications range from wireless sensors networks to social networks. The automatic analysis of such huge data volume is a challenging task since a large amount of interesting knowledge can be extracted. Association rule mining is an exploratory data analysis method able to discover interesting and hidden correlations among data. Since this data mining process is characterized by computationally intensive tasks, efficient distributed approaches are needed to increase its scalability. This paper proposes a cloud-based service, named parallel FP-growth, to efficiently mine association rules on a distributed computing model. It consists of a series of distributed MapReduce jobs run in the cloud. Each job performs a different step in the association rule mining process, followed by cloud-based parallel k-means clustering algorithm to produce similar groups These outputs are verify and filter by three conditional levels which results is useful rules.
As a case study, the proposed approach has been applied to the educational data scenario.
Conference papers
ICAIT 2017
1-2 November, 2017
1st International Conference on Advanced Information Technologies
Yangon, Myanmar
Cloud Computing and Big Data Analytics
https://www.uit.edu.mm/icait-2017/
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