Influence angel cluster approach for data clustering

Clustering allows one to handle a large data set effectively. It is a technique for solving classification problems. There are two major challenges in clustering. First, identifying clusters in high-dimensional data sets is a difficult task because of the curse of dimensionality. Second, a new dissi...

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Main Authors: Aziz, Nazrina, Dong, Qian Wang
格式: Conference or Workshop Item
語言:English
出版: 2010
主題:
在線閱讀:https://repo.uum.edu.my/id/eprint/2208/1/Nazrina_Aziz_%26_Dong_Qian_Wang.pdf
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author Aziz, Nazrina
Dong, Qian Wang
author_facet Aziz, Nazrina
Dong, Qian Wang
author_sort Aziz, Nazrina
collection UUM
description Clustering allows one to handle a large data set effectively. It is a technique for solving classification problems. There are two major challenges in clustering. First, identifying clusters in high-dimensional data sets is a difficult task because of the curse of dimensionality. Second, a new dissimilarity measures is needed as some traditional distance functions cannot capture the pattern dissimilarity among the objects. This article interested in the latter challenge. Notice that data measures are very important steps in clustering. There are many types of data measurement that deal with continuous,categorical or mixed variables. This article proposed an alternative measurement, called Influence Angle Cluster Approach (iaca). The iaca was developed based on eigenstructure of the covariance matrix. The proposed measurement able to identify cluster of observation and it also has the ability to handle a data set with mixed variables. Apart from developing a cluster for a data set, this study also measure whether or not the proposed IACA have constructed either a strong or reasonable clustering structure by using silhouette index.
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spelling uum-22082011-02-20T08:50:15Z https://repo.uum.edu.my/id/eprint/2208/ Influence angel cluster approach for data clustering Aziz, Nazrina Dong, Qian Wang QA Mathematics Clustering allows one to handle a large data set effectively. It is a technique for solving classification problems. There are two major challenges in clustering. First, identifying clusters in high-dimensional data sets is a difficult task because of the curse of dimensionality. Second, a new dissimilarity measures is needed as some traditional distance functions cannot capture the pattern dissimilarity among the objects. This article interested in the latter challenge. Notice that data measures are very important steps in clustering. There are many types of data measurement that deal with continuous,categorical or mixed variables. This article proposed an alternative measurement, called Influence Angle Cluster Approach (iaca). The iaca was developed based on eigenstructure of the covariance matrix. The proposed measurement able to identify cluster of observation and it also has the ability to handle a data set with mixed variables. Apart from developing a cluster for a data set, this study also measure whether or not the proposed IACA have constructed either a strong or reasonable clustering structure by using silhouette index. 2010 Conference or Workshop Item NonPeerReviewed application/pdf en https://repo.uum.edu.my/id/eprint/2208/1/Nazrina_Aziz_%26_Dong_Qian_Wang.pdf Aziz, Nazrina and Dong, Qian Wang (2010) Influence angel cluster approach for data clustering. In: 2nd International Conference on Mathematical Sciences (ICMS2 2010), 30 November - 3 December 2010 , Putra World Trade Centre (PWTC) Kuala Lumpur, Malaysia . (Unpublished) http://pkukmweb.ukm.my/~ppsmfst/icms2/
spellingShingle QA Mathematics
Aziz, Nazrina
Dong, Qian Wang
Influence angel cluster approach for data clustering
title Influence angel cluster approach for data clustering
title_full Influence angel cluster approach for data clustering
title_fullStr Influence angel cluster approach for data clustering
title_full_unstemmed Influence angel cluster approach for data clustering
title_short Influence angel cluster approach for data clustering
title_sort influence angel cluster approach for data clustering
topic QA Mathematics
url https://repo.uum.edu.my/id/eprint/2208/1/Nazrina_Aziz_%26_Dong_Qian_Wang.pdf
work_keys_str_mv AT aziznazrina influenceangelclusterapproachfordataclustering
AT dongqianwang influenceangelclusterapproachfordataclustering