An Empirical Study on Value-at-Risk and Backtesting VaR Models

In a risky financial environment, investors gradually realise the danger of potential risk and the importance of risk management. The theory of Value-at-Risk (VaR) has become popular along with the establishment of risk management system in the field of finance. This paper will start with introducin...

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Main Author: Zhao, Xinran
Format: Dissertation (University of Nottingham only)
Language:English
Published: 2014
Online Access:https://eprints.nottingham.ac.uk/27047/
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author Zhao, Xinran
author_facet Zhao, Xinran
author_sort Zhao, Xinran
building Nottingham Research Data Repository
collection Online Access
description In a risky financial environment, investors gradually realise the danger of potential risk and the importance of risk management. The theory of Value-at-Risk (VaR) has become popular along with the establishment of risk management system in the field of finance. This paper will start with introducing different types of risks existing in today’s market, which in general term can be categorised into business risk and financial risk. The latter is where VaR falls and what financial analysts try to minimise by performing VaR analysis. The concept of VaR and its measurement were explained in great detail. Three popular and representative approaches in estimating VaR, the Historical Simulation approach, Moving Average approach and GARCH approach, were introduced and applied as an empirical study. To test the accuracy of the VaR estimates, conditional and unconditional backtesting methods were established. At pre-determined level of confidence, models that produce reasonable and accurate results were accepted, while those failed to perform were rejected. Historical stock prices for ten major indices during January 2004 and December 2013 were obtained to calculate VaR forecasts and backtested to evaluate the accuracy of the models. The backtesting result shows that the forecasts at 99% level of confidence under all three approaches underestimate the risk, thereby allowing too many VaR breaks throughout the years. At 95% level of confidence, all three models performed better compared with themselves at 99%. However, Moving Average approach performed better than the Historical Simulation approach, while GARCH approach outperformed both of them and is a preferred choice according to our research.
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spelling nottingham-270472018-01-05T23:32:52Z https://eprints.nottingham.ac.uk/27047/ An Empirical Study on Value-at-Risk and Backtesting VaR Models Zhao, Xinran In a risky financial environment, investors gradually realise the danger of potential risk and the importance of risk management. The theory of Value-at-Risk (VaR) has become popular along with the establishment of risk management system in the field of finance. This paper will start with introducing different types of risks existing in today’s market, which in general term can be categorised into business risk and financial risk. The latter is where VaR falls and what financial analysts try to minimise by performing VaR analysis. The concept of VaR and its measurement were explained in great detail. Three popular and representative approaches in estimating VaR, the Historical Simulation approach, Moving Average approach and GARCH approach, were introduced and applied as an empirical study. To test the accuracy of the VaR estimates, conditional and unconditional backtesting methods were established. At pre-determined level of confidence, models that produce reasonable and accurate results were accepted, while those failed to perform were rejected. Historical stock prices for ten major indices during January 2004 and December 2013 were obtained to calculate VaR forecasts and backtested to evaluate the accuracy of the models. The backtesting result shows that the forecasts at 99% level of confidence under all three approaches underestimate the risk, thereby allowing too many VaR breaks throughout the years. At 95% level of confidence, all three models performed better compared with themselves at 99%. However, Moving Average approach performed better than the Historical Simulation approach, while GARCH approach outperformed both of them and is a preferred choice according to our research. 2014-03-01 Dissertation (University of Nottingham only) NonPeerReviewed application/pdf en https://eprints.nottingham.ac.uk/27047/1/Dissertation.pdf Zhao, Xinran (2014) An Empirical Study on Value-at-Risk and Backtesting VaR Models. [Dissertation (University of Nottingham only)] (Unpublished)
spellingShingle Zhao, Xinran
An Empirical Study on Value-at-Risk and Backtesting VaR Models
title An Empirical Study on Value-at-Risk and Backtesting VaR Models
title_full An Empirical Study on Value-at-Risk and Backtesting VaR Models
title_fullStr An Empirical Study on Value-at-Risk and Backtesting VaR Models
title_full_unstemmed An Empirical Study on Value-at-Risk and Backtesting VaR Models
title_short An Empirical Study on Value-at-Risk and Backtesting VaR Models
title_sort empirical study on value-at-risk and backtesting var models
url https://eprints.nottingham.ac.uk/27047/