Association rule mining through matrix manipulation using transaction patternbase

In data mining studies, mining of frequent patterns in transaction databases has been a popular area of research. Many approaches are being used to solve the problem of discovering association rules among items in large databases. We also consider the same problem. We present a new approach for solv...

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Main Authors: Ibrahim, Roliana, Kamal, Shahid, Din, Zia-ud
Format: Article
Published: Lifescience Global 2012
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Online Access:http://eprints.utm.my/id/eprint/31716/
http://www.lifescienceglobal.com/images/Journal_articles/JBASV8N1A30-Kamal.pdf
http://www.lifescienceglobal.com/images/Journal_articles/JBASV8N1A30-Kamal.pdf
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spelling my.utm.317162019-03-25T08:18:29Z http://eprints.utm.my/id/eprint/31716/ Association rule mining through matrix manipulation using transaction patternbase Ibrahim, Roliana Kamal, Shahid Din, Zia-ud QA75 Electronic computers. Computer science In data mining studies, mining of frequent patterns in transaction databases has been a popular area of research. Many approaches are being used to solve the problem of discovering association rules among items in large databases. We also consider the same problem. We present a new approach for solving this problem that is fundamentally different from the known techniques. In this study, we propose a transactional patternbase where transactions with same pattern are added as their frequency is increased. Thus subsequent scanning requires only scanning this compact dataset which increases efficiency of the respective methods. We have implemented this technique by using two-dimensional matrix instead of using FP-Growth method, as used by most of the algorithms. Empirical evaluation shows that this technique outperforms the database approach, implemented with FP-Growth, in many situations and performs exceptionally well when the repetition of transaction patterns is higher. We have implemented it using Visual Basic which has substantially reduced coding and computational cost. Success of this method will open new directions. Lifescience Global 2012 Article PeerReviewed Ibrahim, Roliana and Kamal, Shahid and Din, Zia-ud (2012) Association rule mining through matrix manipulation using transaction patternbase. Journal of Basic & Applied Sciences, 8 . pp. 187-195. ISSN 1814-8085 (Print) ; 1927-5129 (Electronic) http://www.lifescienceglobal.com/images/Journal_articles/JBASV8N1A30-Kamal.pdf http://www.lifescienceglobal.com/images/Journal_articles/JBASV8N1A30-Kamal.pdf
institution Universiti Teknologi Malaysia
building UTM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Malaysia
content_source UTM Institutional Repository
url_provider http://eprints.utm.my/
topic QA75 Electronic computers. Computer science
spellingShingle QA75 Electronic computers. Computer science
Ibrahim, Roliana
Kamal, Shahid
Din, Zia-ud
Association rule mining through matrix manipulation using transaction patternbase
description In data mining studies, mining of frequent patterns in transaction databases has been a popular area of research. Many approaches are being used to solve the problem of discovering association rules among items in large databases. We also consider the same problem. We present a new approach for solving this problem that is fundamentally different from the known techniques. In this study, we propose a transactional patternbase where transactions with same pattern are added as their frequency is increased. Thus subsequent scanning requires only scanning this compact dataset which increases efficiency of the respective methods. We have implemented this technique by using two-dimensional matrix instead of using FP-Growth method, as used by most of the algorithms. Empirical evaluation shows that this technique outperforms the database approach, implemented with FP-Growth, in many situations and performs exceptionally well when the repetition of transaction patterns is higher. We have implemented it using Visual Basic which has substantially reduced coding and computational cost. Success of this method will open new directions.
format Article
author Ibrahim, Roliana
Kamal, Shahid
Din, Zia-ud
author_facet Ibrahim, Roliana
Kamal, Shahid
Din, Zia-ud
author_sort Ibrahim, Roliana
title Association rule mining through matrix manipulation using transaction patternbase
title_short Association rule mining through matrix manipulation using transaction patternbase
title_full Association rule mining through matrix manipulation using transaction patternbase
title_fullStr Association rule mining through matrix manipulation using transaction patternbase
title_full_unstemmed Association rule mining through matrix manipulation using transaction patternbase
title_sort association rule mining through matrix manipulation using transaction patternbase
publisher Lifescience Global
publishDate 2012
url http://eprints.utm.my/id/eprint/31716/
http://www.lifescienceglobal.com/images/Journal_articles/JBASV8N1A30-Kamal.pdf
http://www.lifescienceglobal.com/images/Journal_articles/JBASV8N1A30-Kamal.pdf
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score 13.18916