Assessing the performance of the VaR models on nonlinear portfolio

This paper aims to assess the performance of the VaR models on nonlinear portfolio. Historical Simulation, Monte-Carlo simulation and Delta-Gamma –normal model are implemented to estimate the daily VaR of a nonlinear portfolio consisting of two European Call options from 01/10/2012 to 13/09/2013. Th...

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Main Author: ZHU, Guantao
Format: Dissertation (University of Nottingham only)
Language:English
Published: 2013
Subjects:
Online Access:https://eprints.nottingham.ac.uk/26818/
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author ZHU, Guantao
author_facet ZHU, Guantao
author_sort ZHU, Guantao
building Nottingham Research Data Repository
collection Online Access
description This paper aims to assess the performance of the VaR models on nonlinear portfolio. Historical Simulation, Monte-Carlo simulation and Delta-Gamma –normal model are implemented to estimate the daily VaR of a nonlinear portfolio consisting of two European Call options from 01/10/2012 to 13/09/2013. The underlying assets are NDX-100 index and S&P 500 index. Rolling over method is applied with a 500-day window. Daily volatility of the underlying risk factor is estimated by the implied volatility. The value of option is estimated using the Black-Scholes model. The normality of the risk factors is tested using the QQ-plot. Testing results show the change of the price is not normal distributed for both the two indexes. Monte-Carlo simulation gives a lower VaR compared with the other two methods. Unconditional coverage test, independence test and conditional coverage test are utilized to test the accuracy of the VaR estimations produced by the VaR models. The results indicate that Monte-Carlo simulation has a better performance in this specific case. Historical simulation and Delta-gamma model fails to estimate the right VaR because of their particular assumptions and the way they estimate VaR.
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format Dissertation (University of Nottingham only)
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institution University of Nottingham Malaysia Campus
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language English
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publishDate 2013
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spelling nottingham-268182017-10-19T14:16:36Z https://eprints.nottingham.ac.uk/26818/ Assessing the performance of the VaR models on nonlinear portfolio ZHU, Guantao This paper aims to assess the performance of the VaR models on nonlinear portfolio. Historical Simulation, Monte-Carlo simulation and Delta-Gamma –normal model are implemented to estimate the daily VaR of a nonlinear portfolio consisting of two European Call options from 01/10/2012 to 13/09/2013. The underlying assets are NDX-100 index and S&P 500 index. Rolling over method is applied with a 500-day window. Daily volatility of the underlying risk factor is estimated by the implied volatility. The value of option is estimated using the Black-Scholes model. The normality of the risk factors is tested using the QQ-plot. Testing results show the change of the price is not normal distributed for both the two indexes. Monte-Carlo simulation gives a lower VaR compared with the other two methods. Unconditional coverage test, independence test and conditional coverage test are utilized to test the accuracy of the VaR estimations produced by the VaR models. The results indicate that Monte-Carlo simulation has a better performance in this specific case. Historical simulation and Delta-gamma model fails to estimate the right VaR because of their particular assumptions and the way they estimate VaR. 2013-09-20 Dissertation (University of Nottingham only) NonPeerReviewed application/pdf en https://eprints.nottingham.ac.uk/26818/1/ddddd_final.pdf ZHU, Guantao (2013) Assessing the performance of the VaR models on nonlinear portfolio. [Dissertation (University of Nottingham only)] (Unpublished) VaR Historical simulation Monte-Carlo simulation Delta-gamma nonlinear portfolio Back-testing
spellingShingle VaR
Historical simulation
Monte-Carlo simulation
Delta-gamma
nonlinear portfolio
Back-testing
ZHU, Guantao
Assessing the performance of the VaR models on nonlinear portfolio
title Assessing the performance of the VaR models on nonlinear portfolio
title_full Assessing the performance of the VaR models on nonlinear portfolio
title_fullStr Assessing the performance of the VaR models on nonlinear portfolio
title_full_unstemmed Assessing the performance of the VaR models on nonlinear portfolio
title_short Assessing the performance of the VaR models on nonlinear portfolio
title_sort assessing the performance of the var models on nonlinear portfolio
topic VaR
Historical simulation
Monte-Carlo simulation
Delta-gamma
nonlinear portfolio
Back-testing
url https://eprints.nottingham.ac.uk/26818/