Performance analysis and discrimination procedure of two-group location model with some continuous and high-dimensional of binary variables

This research’s primary goal was to evaluate the performance analysis of the recently constructed smoothed location models (SLMs) for discrimination purposes by combining two kinds of multiple correspondence analysis (MCA) to handle high dimensionality problems arising from the binary variables. A p...

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Main Authors: Hashibah Hamid, Okwonu, Friday Zinzendoff, Nor Aishah Ahad, Hasliza Abdul Rahim
Format: Article
Language:English
Published: Penerbit Universiti Kebangsaan Malaysia 2022
Online Access:http://journalarticle.ukm.my/21214/
http://journalarticle.ukm.my/21214/1/SDB%2022.pdf
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author Hashibah Hamid,
Okwonu, Friday Zinzendoff
Nor Aishah Ahad,
Hasliza Abdul Rahim,
author_facet Hashibah Hamid,
Okwonu, Friday Zinzendoff
Nor Aishah Ahad,
Hasliza Abdul Rahim,
author_sort Hashibah Hamid,
building UKM Institutional Repository
collection Online Access
description This research’s primary goal was to evaluate the performance analysis of the recently constructed smoothed location models (SLMs) for discrimination purposes by combining two kinds of multiple correspondence analysis (MCA) to handle high dimensionality problems arising from the binary variables. A previous study of SLM, together with MCA as well as principal component analysis (PCA), displayed that the misclassification rate was still very high with respect to a large number of binary variables. Thus, two new SLMs are constructed in this paper to solve this particular problem. The first model results from the combination of SLM with Burt MCA (denoted as SLM+Burt), and the second one is with the joint correspondence analysis (denoted as SLM+JCA). The findings showed that both models performed well for all sample sizes (n) and all binary variables (b) under investigation, except n=60 and b=25 for the SLM+JCA model. Overall, the SLM+JCA model yields a greater performance in contrast to the SLM+Burt model. Moreover, the concept and procedures of the discrimination for the two-group classification conducted in this paper can be extended to multi-class classification as practitioners often deal with many groups and complexities of variables.
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spelling oai:generic.eprints.org:212142023-02-27T08:58:03Z http://journalarticle.ukm.my/21214/ Performance analysis and discrimination procedure of two-group location model with some continuous and high-dimensional of binary variables Hashibah Hamid, Okwonu, Friday Zinzendoff Nor Aishah Ahad, Hasliza Abdul Rahim, This research’s primary goal was to evaluate the performance analysis of the recently constructed smoothed location models (SLMs) for discrimination purposes by combining two kinds of multiple correspondence analysis (MCA) to handle high dimensionality problems arising from the binary variables. A previous study of SLM, together with MCA as well as principal component analysis (PCA), displayed that the misclassification rate was still very high with respect to a large number of binary variables. Thus, two new SLMs are constructed in this paper to solve this particular problem. The first model results from the combination of SLM with Burt MCA (denoted as SLM+Burt), and the second one is with the joint correspondence analysis (denoted as SLM+JCA). The findings showed that both models performed well for all sample sizes (n) and all binary variables (b) under investigation, except n=60 and b=25 for the SLM+JCA model. Overall, the SLM+JCA model yields a greater performance in contrast to the SLM+Burt model. Moreover, the concept and procedures of the discrimination for the two-group classification conducted in this paper can be extended to multi-class classification as practitioners often deal with many groups and complexities of variables. Penerbit Universiti Kebangsaan Malaysia 2022 Article PeerReviewed application/pdf en http://journalarticle.ukm.my/21214/1/SDB%2022.pdf Hashibah Hamid, and Okwonu, Friday Zinzendoff and Nor Aishah Ahad, and Hasliza Abdul Rahim, (2022) Performance analysis and discrimination procedure of two-group location model with some continuous and high-dimensional of binary variables. Sains Malaysiana, 51 (12). pp. 4153-4160. ISSN 0126-6039 http://www.ukm.my/jsm/index.html
spellingShingle Hashibah Hamid,
Okwonu, Friday Zinzendoff
Nor Aishah Ahad,
Hasliza Abdul Rahim,
Performance analysis and discrimination procedure of two-group location model with some continuous and high-dimensional of binary variables
title Performance analysis and discrimination procedure of two-group location model with some continuous and high-dimensional of binary variables
title_full Performance analysis and discrimination procedure of two-group location model with some continuous and high-dimensional of binary variables
title_fullStr Performance analysis and discrimination procedure of two-group location model with some continuous and high-dimensional of binary variables
title_full_unstemmed Performance analysis and discrimination procedure of two-group location model with some continuous and high-dimensional of binary variables
title_short Performance analysis and discrimination procedure of two-group location model with some continuous and high-dimensional of binary variables
title_sort performance analysis and discrimination procedure of two-group location model with some continuous and high-dimensional of binary variables
url http://journalarticle.ukm.my/21214/
http://journalarticle.ukm.my/21214/
http://journalarticle.ukm.my/21214/1/SDB%2022.pdf