Potential impact fractions(PIF) for joint risk factors
An increase in the number of deaths due to various diseases such as Cardiovascular Diseases as well as Type II Diabetes have been of concern to many governments and individuals. However, due to a lack of research on the combined effects of five main harmful products: sugar, salt, fat, alcohol and sm...
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sg-ntu-dr.10356-1665002023-05-08T15:39:04Z Potential impact fractions(PIF) for joint risk factors Koay, Anson Say Ping Akshar Saxena Ku Cheng Yeaw School of Physical and Mathematical Sciences cyku@ntu.edu.sg, aksharsaxena@ntu.edu.sg Science::Mathematics An increase in the number of deaths due to various diseases such as Cardiovascular Diseases as well as Type II Diabetes have been of concern to many governments and individuals. However, due to a lack of research on the combined effects of five main harmful products: sugar, salt, fat, alcohol and smoking, it is difficult for one to understand how the different combinations of intake of these harmful products would increase our risk of diseases. As such, our project uses Copulas to help us have a better understanding of the combined effects of these harmful products so as to reduce our risk of succumbing to these diseases. We will be using the main copulas families: Gaussian, t-Copula, Archimedean copulas (Clayton,Gumbel and Frank copulas) as well as using functions in the R programming software to select the best copula family based on maximum likelihood estimation. Using hypothetical intervention values, we then compare the BIC of these copulas for each age group to obtain the best copula family for each age group. Bachelor of Science in Mathematical Sciences and Economics 2023-05-02T04:13:31Z 2023-05-02T04:13:31Z 2023 Final Year Project (FYP) Koay, A. S. P. (2023). Potential impact fractions(PIF) for joint risk factors. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/166500 https://hdl.handle.net/10356/166500 en application/pdf Nanyang Technological University |
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Science::Mathematics Koay, Anson Say Ping Potential impact fractions(PIF) for joint risk factors |
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An increase in the number of deaths due to various diseases such as Cardiovascular Diseases as well as Type II Diabetes have been of concern to many governments and individuals. However, due to a lack of research on the combined effects of five main harmful products: sugar, salt, fat, alcohol and smoking, it is difficult for one to understand how the different combinations of intake of these harmful products would increase our risk of diseases. As such, our project uses Copulas to help us have a better understanding of the combined effects of these harmful products so as to reduce our risk of succumbing to these diseases. We will be using
the main copulas families: Gaussian, t-Copula, Archimedean copulas (Clayton,Gumbel and Frank copulas) as well as using functions in the R programming software to select the best copula family based on maximum likelihood estimation. Using hypothetical intervention values, we then compare the BIC of these copulas for each age group to obtain the best copula family for each age group. |
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Akshar Saxena |
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Akshar Saxena Koay, Anson Say Ping |
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Final Year Project |
author |
Koay, Anson Say Ping |
author_sort |
Koay, Anson Say Ping |
title |
Potential impact fractions(PIF) for joint risk factors |
title_short |
Potential impact fractions(PIF) for joint risk factors |
title_full |
Potential impact fractions(PIF) for joint risk factors |
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Potential impact fractions(PIF) for joint risk factors |
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Potential impact fractions(PIF) for joint risk factors |
title_sort |
potential impact fractions(pif) for joint risk factors |
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Nanyang Technological University |
publishDate |
2023 |
url |
https://hdl.handle.net/10356/166500 |
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