Classification for large number of variables with two imbalanced groups

In the presence of group imbalance and large number of variables problems, traditional classification algorithms tend to be biased towards the majority group. Several approaches have been devoted to study such problems using linear and non-linear classification rules, but limited to group imbalance...

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主要作者: Ahmad Hakiim, Jamaluddin
格式: Thesis
語言:eng
eng
eng
eng
出版: 2020
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在線閱讀:https://etd.uum.edu.my/8600/1/DEPOSIT%20PERMISSION%20NOT%20ALLOW_s822665.pdf
https://etd.uum.edu.my/8600/2/s822665_01.pdf
https://etd.uum.edu.my/8600/3/s822665_02.pdf
https://etd.uum.edu.my/8600/4/s822665_references.docx
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spelling my-uum-etd.86002021-08-29T07:16:20Z Classification for large number of variables with two imbalanced groups 2020 Ahmad Hakiim, Jamaluddin Mahat, Nor Idayu Awang Had Salleh Graduate School of Arts & Sciences Awang Had Salleh Graduate School of Arts & Sciences QA Mathematics In the presence of group imbalance and large number of variables problems, traditional classification algorithms tend to be biased towards the majority group. Several approaches have been devoted to study such problems using linear and non-linear classification rules, but limited to group imbalance rather than the combination of both problems. This study proposed two algorithms of classification namely Algorithm 1 and Algorithm 2 which combine resampling, variable extraction, and classification procedure. The difference between the two algorithms is in terms of the order of resampling and variable extraction prior to the construction of linear discriminant analysis (LDA). Both simulated and real data sets were utilised to measure the performance of the proposed algorithms based on two evaluation indicators, sensitivity and specificity. Based on the findings, Algorithm 2 outperforms Algorithm 1 in classifying the minority group, while both proposed algorithms perform equally well in classifying the majority group. Both proposed algorithms outperform the conventional LDA on principal components (PCA-LDA) in classifying the minority group. Also, this study has proven that the conventional PCA-LDA and conventional LDA are biased towards the majority group. Hence, both algorithms are suggested to be the alternatives for imbalanced classification with large number of variables. Both algorithms are beneficial towards the practitioners of classification predictive modelling as well as statisticians in pattern recognition domain. 2020 Thesis https://etd.uum.edu.my/8600/ https://etd.uum.edu.my/8600/1/DEPOSIT%20PERMISSION%20NOT%20ALLOW_s822665.pdf text eng staffonly https://etd.uum.edu.my/8600/2/s822665_01.pdf text eng staffonly https://etd.uum.edu.my/8600/3/s822665_02.pdf text eng staffonly https://etd.uum.edu.my/8600/4/s822665_references.docx text eng public other masters Universiti Utara Malaysia
institution Universiti Utara Malaysia
collection UUM ETD
language eng
eng
eng
eng
advisor Mahat, Nor Idayu
topic QA Mathematics
spellingShingle QA Mathematics
Ahmad Hakiim, Jamaluddin
Classification for large number of variables with two imbalanced groups
description In the presence of group imbalance and large number of variables problems, traditional classification algorithms tend to be biased towards the majority group. Several approaches have been devoted to study such problems using linear and non-linear classification rules, but limited to group imbalance rather than the combination of both problems. This study proposed two algorithms of classification namely Algorithm 1 and Algorithm 2 which combine resampling, variable extraction, and classification procedure. The difference between the two algorithms is in terms of the order of resampling and variable extraction prior to the construction of linear discriminant analysis (LDA). Both simulated and real data sets were utilised to measure the performance of the proposed algorithms based on two evaluation indicators, sensitivity and specificity. Based on the findings, Algorithm 2 outperforms Algorithm 1 in classifying the minority group, while both proposed algorithms perform equally well in classifying the majority group. Both proposed algorithms outperform the conventional LDA on principal components (PCA-LDA) in classifying the minority group. Also, this study has proven that the conventional PCA-LDA and conventional LDA are biased towards the majority group. Hence, both algorithms are suggested to be the alternatives for imbalanced classification with large number of variables. Both algorithms are beneficial towards the practitioners of classification predictive modelling as well as statisticians in pattern recognition domain.
format Thesis
qualification_name other
qualification_level Master's degree
author Ahmad Hakiim, Jamaluddin
author_facet Ahmad Hakiim, Jamaluddin
author_sort Ahmad Hakiim, Jamaluddin
title Classification for large number of variables with two imbalanced groups
title_short Classification for large number of variables with two imbalanced groups
title_full Classification for large number of variables with two imbalanced groups
title_fullStr Classification for large number of variables with two imbalanced groups
title_full_unstemmed Classification for large number of variables with two imbalanced groups
title_sort classification for large number of variables with two imbalanced groups
granting_institution Universiti Utara Malaysia
granting_department Awang Had Salleh Graduate School of Arts & Sciences
publishDate 2020
url https://etd.uum.edu.my/8600/1/DEPOSIT%20PERMISSION%20NOT%20ALLOW_s822665.pdf
https://etd.uum.edu.my/8600/2/s822665_01.pdf
https://etd.uum.edu.my/8600/3/s822665_02.pdf
https://etd.uum.edu.my/8600/4/s822665_references.docx
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