Targeted ranking-based clustering using AHP K-means

K-Means can group similar objects features into specified number (K) of cluster centers region. Similarity is measured based on their closest distance of multiple features coordinate location. However, such distance measurement can be doubtful in satisfying certain clustering application as it does...

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主要な著者: Suhailan, Safei, Mohd Kamir, Yusof, Abdul Samad, Shibghatullah
フォーマット: 論文
言語:English
出版事項: International Center for Scientific Research and Studies 2015
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オンライン・アクセス:http://eprints.unisza.edu.my/6922/1/FH02-FIK-15-04680.jpg
http://eprints.unisza.edu.my/6922/
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spelling my-unisza-ir.69222022-09-13T05:40:14Z http://eprints.unisza.edu.my/6922/ Targeted ranking-based clustering using AHP K-means Suhailan, Safei Mohd Kamir, Yusof Abdul Samad, Shibghatullah QA75 Electronic computers. Computer science K-Means can group similar objects features into specified number (K) of cluster centers region. Similarity is measured based on their closest distance of multiple features coordinate location. However, such distance measurement can be doubtful in satisfying certain clustering application as it does not distinguish the meaning of object features representation. Ordinal feature for example may denote to certain ranking objects rather than just number representation. Thus, clustering result should also consider the existing rank label on these objects instead of distance measurement. New AHP K-Means technique is proposed to preserve rank order for each object in the clustering result. It transforms weighted multi-features objects by aggregating them as a single ranking objects using pair-wise comparing among the objects. These ranking objects are then processed by K-Means based on cluster centers that initially setup on fair distributed ranking scale. Based on experiment using weighted course marks of 92 students, the proposed technique shows that ranking-based clustering using AHP can give accurate ranked clustering result compared to normal weighted K-Means. International Center for Scientific Research and Studies 2015 Article PeerReviewed image en http://eprints.unisza.edu.my/6922/1/FH02-FIK-15-04680.jpg Suhailan, Safei and Mohd Kamir, Yusof and Abdul Samad, Shibghatullah (2015) Targeted ranking-based clustering using AHP K-means. International Journal of Advances in Soft Computing and its Applications, 7 (3). pp. 100-113. ISSN 20748523
institution Universiti Sultan Zainal Abidin
building UNISZA Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Sultan Zainal Abidin
content_source UNISZA Institutional Repository
url_provider https://eprints.unisza.edu.my/
language English
topic QA75 Electronic computers. Computer science
spellingShingle QA75 Electronic computers. Computer science
Suhailan, Safei
Mohd Kamir, Yusof
Abdul Samad, Shibghatullah
Targeted ranking-based clustering using AHP K-means
description K-Means can group similar objects features into specified number (K) of cluster centers region. Similarity is measured based on their closest distance of multiple features coordinate location. However, such distance measurement can be doubtful in satisfying certain clustering application as it does not distinguish the meaning of object features representation. Ordinal feature for example may denote to certain ranking objects rather than just number representation. Thus, clustering result should also consider the existing rank label on these objects instead of distance measurement. New AHP K-Means technique is proposed to preserve rank order for each object in the clustering result. It transforms weighted multi-features objects by aggregating them as a single ranking objects using pair-wise comparing among the objects. These ranking objects are then processed by K-Means based on cluster centers that initially setup on fair distributed ranking scale. Based on experiment using weighted course marks of 92 students, the proposed technique shows that ranking-based clustering using AHP can give accurate ranked clustering result compared to normal weighted K-Means.
format Article
author Suhailan, Safei
Mohd Kamir, Yusof
Abdul Samad, Shibghatullah
author_facet Suhailan, Safei
Mohd Kamir, Yusof
Abdul Samad, Shibghatullah
author_sort Suhailan, Safei
title Targeted ranking-based clustering using AHP K-means
title_short Targeted ranking-based clustering using AHP K-means
title_full Targeted ranking-based clustering using AHP K-means
title_fullStr Targeted ranking-based clustering using AHP K-means
title_full_unstemmed Targeted ranking-based clustering using AHP K-means
title_sort targeted ranking-based clustering using ahp k-means
publisher International Center for Scientific Research and Studies
publishDate 2015
url http://eprints.unisza.edu.my/6922/1/FH02-FIK-15-04680.jpg
http://eprints.unisza.edu.my/6922/
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