Alternative method to develop new strategy in ordinal regression: a case study in dental

Clinical data usually contain numerous features with a small sample size, resulting in higher dimensionality and poor accuracy. This reduces the performance of classifier systems in high-dimensional data sets because irrelevant features contribute to poor classification accuracy and add extra diffic...

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Main Author: Lazin, Muhamamd Amirul Mat
Format: Thesis
Language:en
Published: 2025
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Online Access:http://eprints.usm.my/62831/1/MUHAMAMD%20AMIRUL%20BIN%20MAT%20LAZIN-TESIS%20P-SGM001021%28R%29-E.pdf
http://eprints.usm.my/62831/
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author Lazin, Muhamamd Amirul Mat
author_facet Lazin, Muhamamd Amirul Mat
author_sort Lazin, Muhamamd Amirul Mat
building Hamzah Sendut Library
collection Institutional Repository
content_provider Universiti Sains Malaysia
content_source USM Institutional Repository
continent Asia
country Malaysia
description Clinical data usually contain numerous features with a small sample size, resulting in higher dimensionality and poor accuracy. This reduces the performance of classifier systems in high-dimensional data sets because irrelevant features contribute to poor classification accuracy and add extra difficulties in finding potentially useful knowledge. The main objective is to develop an alternative model for ordinal regression through statistical methodology building. The methodology includes a computational study design and statistical techniques customised for dental science modelling. A combination of ordinal regression and bootstrap techniques in the developing an alternative model is the main key to the research focal point. Two case studies, tooth wear severity and tooth sensitivity, were used to test this technique, demonstrating its relevance to real-world dental data. All the fundamental programming was performed using R software. The results show that the alternative approach, especially with more bootstrap replications, offers improved model fitting and precision compared to traditional ordinal regression. This suggests its usefulness in improving the accuracy of health science research, especially in situations with small sample sizes. This study strengthens statistical methods in dental sciences by introducing a more robust alternative to ordinal regression, enabling researchers to obtain more accurate and reliable results even with limited datasets.
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spelling my.usm.eprints.62831 http://eprints.usm.my/62831/ Alternative method to develop new strategy in ordinal regression: a case study in dental Lazin, Muhamamd Amirul Mat R Medicine RA Public aspects of medicine Clinical data usually contain numerous features with a small sample size, resulting in higher dimensionality and poor accuracy. This reduces the performance of classifier systems in high-dimensional data sets because irrelevant features contribute to poor classification accuracy and add extra difficulties in finding potentially useful knowledge. The main objective is to develop an alternative model for ordinal regression through statistical methodology building. The methodology includes a computational study design and statistical techniques customised for dental science modelling. A combination of ordinal regression and bootstrap techniques in the developing an alternative model is the main key to the research focal point. Two case studies, tooth wear severity and tooth sensitivity, were used to test this technique, demonstrating its relevance to real-world dental data. All the fundamental programming was performed using R software. The results show that the alternative approach, especially with more bootstrap replications, offers improved model fitting and precision compared to traditional ordinal regression. This suggests its usefulness in improving the accuracy of health science research, especially in situations with small sample sizes. This study strengthens statistical methods in dental sciences by introducing a more robust alternative to ordinal regression, enabling researchers to obtain more accurate and reliable results even with limited datasets. 2025-03 Thesis NonPeerReviewed application/pdf en http://eprints.usm.my/62831/1/MUHAMAMD%20AMIRUL%20BIN%20MAT%20LAZIN-TESIS%20P-SGM001021%28R%29-E.pdf Lazin, Muhamamd Amirul Mat (2025) Alternative method to develop new strategy in ordinal regression: a case study in dental. Masters thesis, Universiti Sains Malaysia.
spellingShingle R Medicine
RA Public aspects of medicine
Lazin, Muhamamd Amirul Mat
Alternative method to develop new strategy in ordinal regression: a case study in dental
title Alternative method to develop new strategy in ordinal regression: a case study in dental
title_full Alternative method to develop new strategy in ordinal regression: a case study in dental
title_fullStr Alternative method to develop new strategy in ordinal regression: a case study in dental
title_full_unstemmed Alternative method to develop new strategy in ordinal regression: a case study in dental
title_short Alternative method to develop new strategy in ordinal regression: a case study in dental
title_sort alternative method to develop new strategy in ordinal regression: a case study in dental
topic R Medicine
RA Public aspects of medicine
url http://eprints.usm.my/62831/1/MUHAMAMD%20AMIRUL%20BIN%20MAT%20LAZIN-TESIS%20P-SGM001021%28R%29-E.pdf
http://eprints.usm.my/62831/
url_provider http://eprints.usm.my/