Application of the affine stochastic model on Singapore mortality data.

In recent years, stochastic modeling has become a buzz word in the finance industry and the phenomenal advantages of stochastic models have attracted immense attention from researchers. Here, we fit Singapore's mortality rates to an affine stochastic state-space model. The model is fitted throu...

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Main Authors: Chia, Fu Yuan., Meng, Deshuo., Zou, Deshun.
Other Authors: Balasooriya, Uditha
Format: Final Year Project
Published: 2008
Subjects:
Online Access:http://hdl.handle.net/10356/10336
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Institution: Nanyang Technological University
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spelling sg-ntu-dr.10356-103362023-05-19T06:24:05Z Application of the affine stochastic model on Singapore mortality data. Chia, Fu Yuan. Meng, Deshuo. Zou, Deshun. Balasooriya, Uditha Nanyang Business School DRNTU::Business::Finance::Actuarial science In recent years, stochastic modeling has become a buzz word in the finance industry and the phenomenal advantages of stochastic models have attracted immense attention from researchers. Here, we fit Singapore's mortality rates to an affine stochastic state-space model. The model is fitted through maximum likelihood estimation process, which in our project relies on the assumption of white and normal innovations in the state-space model. Kalman Filter technique is adopted to facilitate the derivation of the maximum-likelihood estimators (MLE) and EM-algorithm with direct search technique is applied in finding the numeric estimates for the MLE. The affine stochastic state-space model allows us to capture two important features of mortality rates: time dependency and uncertainty of the future development. This model gives us more realistic premiums and reserves, and it quantifies the risk of the underlying mortality rates. We also examine the effects on profitability of insurance products that are linked to the development of the mortality rates. 2008-09-24T07:42:32Z 2008-09-24T07:42:32Z 2007 2007 Final Year Project (FYP) http://hdl.handle.net/10356/10336 Nanyang Technological University application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
topic DRNTU::Business::Finance::Actuarial science
spellingShingle DRNTU::Business::Finance::Actuarial science
Chia, Fu Yuan.
Meng, Deshuo.
Zou, Deshun.
Application of the affine stochastic model on Singapore mortality data.
description In recent years, stochastic modeling has become a buzz word in the finance industry and the phenomenal advantages of stochastic models have attracted immense attention from researchers. Here, we fit Singapore's mortality rates to an affine stochastic state-space model. The model is fitted through maximum likelihood estimation process, which in our project relies on the assumption of white and normal innovations in the state-space model. Kalman Filter technique is adopted to facilitate the derivation of the maximum-likelihood estimators (MLE) and EM-algorithm with direct search technique is applied in finding the numeric estimates for the MLE. The affine stochastic state-space model allows us to capture two important features of mortality rates: time dependency and uncertainty of the future development. This model gives us more realistic premiums and reserves, and it quantifies the risk of the underlying mortality rates. We also examine the effects on profitability of insurance products that are linked to the development of the mortality rates.
author2 Balasooriya, Uditha
author_facet Balasooriya, Uditha
Chia, Fu Yuan.
Meng, Deshuo.
Zou, Deshun.
format Final Year Project
author Chia, Fu Yuan.
Meng, Deshuo.
Zou, Deshun.
author_sort Chia, Fu Yuan.
title Application of the affine stochastic model on Singapore mortality data.
title_short Application of the affine stochastic model on Singapore mortality data.
title_full Application of the affine stochastic model on Singapore mortality data.
title_fullStr Application of the affine stochastic model on Singapore mortality data.
title_full_unstemmed Application of the affine stochastic model on Singapore mortality data.
title_sort application of the affine stochastic model on singapore mortality data.
publishDate 2008
url http://hdl.handle.net/10356/10336
_version_ 1770567092842528768