Archimedean copula in the computation of value-at-risk : an application to Singapore stock market.

The Value-at-Risk (VaR) is of central importance in modern financial risk management. Of the various methods that exist to compute the VaR, the most popular are historical simulation, the variance-covariance method. Gaussian Copula approach is preferred over the conventional method to compute VaR be...

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Main Authors: Wu, Daniel Yuelong., Mok, Shiao Wai., Sim, Jian Wei., Tan, Wei Qin.
Other Authors: Wu Yuan
Format: Final Year Project
Language:English
Published: 2010
Subjects:
Online Access:http://hdl.handle.net/10356/33745
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-337452023-05-19T05:44:57Z Archimedean copula in the computation of value-at-risk : an application to Singapore stock market. Wu, Daniel Yuelong. Mok, Shiao Wai. Sim, Jian Wei. Tan, Wei Qin. Wu Yuan Nanyang Business School DRNTU::Business::Finance::Risk management The Value-at-Risk (VaR) is of central importance in modern financial risk management. Of the various methods that exist to compute the VaR, the most popular are historical simulation, the variance-covariance method. Gaussian Copula approach is preferred over the conventional method to compute VaR because it shows a closer estimate to the actual VaR. However,Gaussian copula is ineffective in estimating VaR during extreme market conditions. In this study, we propose the use of Archimedean Copula instead of Gaussian Copula in estimating VaR under extreme market conditions. This hypothesis is drawn based on past studies showing that Archimedean Copula is able to take into account of upper or lower tail dependence unlike Gaussian Copula. The data analysis is based on historical stock data from two Singapore bluechip stocks namely Hong Leong Finance and Starhub in FY 2005-2007. The data will then undergo backtesting in extreme market conditions developed due to the subprime mortgage crisis in the U.S during FY 2008-2009. The findings show that Archimedean Copula gives a better estimate of VaR in terms of percentage change of portfolio return and the estimated distribution of returns for the portfolio in the extreme market condition. BUSINESS 2010-04-08T06:27:17Z 2010-04-08T06:27:17Z 2010 2010 Final Year Project (FYP) http://hdl.handle.net/10356/33745 en Nanyang Technological University 37 p. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic DRNTU::Business::Finance::Risk management
spellingShingle DRNTU::Business::Finance::Risk management
Wu, Daniel Yuelong.
Mok, Shiao Wai.
Sim, Jian Wei.
Tan, Wei Qin.
Archimedean copula in the computation of value-at-risk : an application to Singapore stock market.
description The Value-at-Risk (VaR) is of central importance in modern financial risk management. Of the various methods that exist to compute the VaR, the most popular are historical simulation, the variance-covariance method. Gaussian Copula approach is preferred over the conventional method to compute VaR because it shows a closer estimate to the actual VaR. However,Gaussian copula is ineffective in estimating VaR during extreme market conditions. In this study, we propose the use of Archimedean Copula instead of Gaussian Copula in estimating VaR under extreme market conditions. This hypothesis is drawn based on past studies showing that Archimedean Copula is able to take into account of upper or lower tail dependence unlike Gaussian Copula. The data analysis is based on historical stock data from two Singapore bluechip stocks namely Hong Leong Finance and Starhub in FY 2005-2007. The data will then undergo backtesting in extreme market conditions developed due to the subprime mortgage crisis in the U.S during FY 2008-2009. The findings show that Archimedean Copula gives a better estimate of VaR in terms of percentage change of portfolio return and the estimated distribution of returns for the portfolio in the extreme market condition.
author2 Wu Yuan
author_facet Wu Yuan
Wu, Daniel Yuelong.
Mok, Shiao Wai.
Sim, Jian Wei.
Tan, Wei Qin.
format Final Year Project
author Wu, Daniel Yuelong.
Mok, Shiao Wai.
Sim, Jian Wei.
Tan, Wei Qin.
author_sort Wu, Daniel Yuelong.
title Archimedean copula in the computation of value-at-risk : an application to Singapore stock market.
title_short Archimedean copula in the computation of value-at-risk : an application to Singapore stock market.
title_full Archimedean copula in the computation of value-at-risk : an application to Singapore stock market.
title_fullStr Archimedean copula in the computation of value-at-risk : an application to Singapore stock market.
title_full_unstemmed Archimedean copula in the computation of value-at-risk : an application to Singapore stock market.
title_sort archimedean copula in the computation of value-at-risk : an application to singapore stock market.
publishDate 2010
url http://hdl.handle.net/10356/33745
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