Modified logistic model for mortality rates in Malaysia

Rapid improvement and changes in mortality trends signify the growing percentage of older people in the population of a country. However, this remains challenging to study due to data limitations, particularly the lack of data for all ages and the sparseness characteristics in the data due to number...

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Main Author: Ah Khaliludin, Nur Idayu
Format: Thesis
Language:English
Published: 2021
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Online Access:http://eprints.utm.my/id/eprint/102443/1/NurIdayuAhKhaliludinPFS2021.pdf.pdf
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spelling my-utm-ep.1024432023-08-28T06:40:15Z Modified logistic model for mortality rates in Malaysia 2021 Ah Khaliludin, Nur Idayu QA Mathematics Rapid improvement and changes in mortality trends signify the growing percentage of older people in the population of a country. However, this remains challenging to study due to data limitations, particularly the lack of data for all ages and the sparseness characteristics in the data due to number of death compared to the living at older ages are small. Besides this, the current changes in the mortality curvature have caused the existing mortality models to be accurate at a certain age range only. This research improves an old-age mortality model namely Wilmoth model by combining it with Akima spline to produce smooth rate estimates at younger ages. This approach allows mortality estimates to be calculated for the oldest ages while accounting for uncertainty in the age and gender parameter estimates. This research also introduces a threshold age where the transition between Akima spline and the extended mortality model is optimal. The proposed model can also extrapolate the oldest age mortality rate beyond the available age. This research applies the proposed model to Malaysian mortality data from the years 2010 to 2016 and compares it with six other mortality models, namely Gompertz, Makeham, Beard, Kannisto, Wilmoth, and Heligman Pollard models. The comparison is done using root mean squared error and mean absolute percentage error via a cross-validation method as well as simulation study using bootstrap method. The results show that the proposed logistic model significantly improves Malaysian mortality estimation for all ages in terms of accuracy and prediction performance, as well as its ability to capture the important mortality features such as accident hump, mortality crossover, and deceleration of mortality at old ages. Moreover, the simulation study has also proved that the proposed model is unbiased and consistent. In summary, the proposed model better fits Malaysian mortality rates when compared to the other six mortality models. 2021 Thesis http://eprints.utm.my/id/eprint/102443/ http://eprints.utm.my/id/eprint/102443/1/NurIdayuAhKhaliludinPFS2021.pdf.pdf application/pdf en public http://dms.library.utm.my:8080/vital/access/manager/Repository/vital:146072 phd doctoral Universiti Teknologi Malaysia Faculty of Science
institution Universiti Teknologi Malaysia
collection UTM Institutional Repository
language English
topic QA Mathematics
spellingShingle QA Mathematics
Ah Khaliludin, Nur Idayu
Modified logistic model for mortality rates in Malaysia
description Rapid improvement and changes in mortality trends signify the growing percentage of older people in the population of a country. However, this remains challenging to study due to data limitations, particularly the lack of data for all ages and the sparseness characteristics in the data due to number of death compared to the living at older ages are small. Besides this, the current changes in the mortality curvature have caused the existing mortality models to be accurate at a certain age range only. This research improves an old-age mortality model namely Wilmoth model by combining it with Akima spline to produce smooth rate estimates at younger ages. This approach allows mortality estimates to be calculated for the oldest ages while accounting for uncertainty in the age and gender parameter estimates. This research also introduces a threshold age where the transition between Akima spline and the extended mortality model is optimal. The proposed model can also extrapolate the oldest age mortality rate beyond the available age. This research applies the proposed model to Malaysian mortality data from the years 2010 to 2016 and compares it with six other mortality models, namely Gompertz, Makeham, Beard, Kannisto, Wilmoth, and Heligman Pollard models. The comparison is done using root mean squared error and mean absolute percentage error via a cross-validation method as well as simulation study using bootstrap method. The results show that the proposed logistic model significantly improves Malaysian mortality estimation for all ages in terms of accuracy and prediction performance, as well as its ability to capture the important mortality features such as accident hump, mortality crossover, and deceleration of mortality at old ages. Moreover, the simulation study has also proved that the proposed model is unbiased and consistent. In summary, the proposed model better fits Malaysian mortality rates when compared to the other six mortality models.
format Thesis
qualification_name Doctor of Philosophy (PhD.)
qualification_level Doctorate
author Ah Khaliludin, Nur Idayu
author_facet Ah Khaliludin, Nur Idayu
author_sort Ah Khaliludin, Nur Idayu
title Modified logistic model for mortality rates in Malaysia
title_short Modified logistic model for mortality rates in Malaysia
title_full Modified logistic model for mortality rates in Malaysia
title_fullStr Modified logistic model for mortality rates in Malaysia
title_full_unstemmed Modified logistic model for mortality rates in Malaysia
title_sort modified logistic model for mortality rates in malaysia
granting_institution Universiti Teknologi Malaysia
granting_department Faculty of Science
publishDate 2021
url http://eprints.utm.my/id/eprint/102443/1/NurIdayuAhKhaliludinPFS2021.pdf.pdf
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