Volatility forecasting and value-at-risk estimation in emerging markets: the case of the stock market index portfolio in South Africa

Accurate modelling of volatility is important as it relates to the forecasting of Value-at-Risk (VaR). The RiskMetrics model to forecast volatility is the benchmark in the financial sector. In an important regulatory innovation, the Basel Committee has proposed the use of an internal method for mode...

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Main Authors: Lumengo Bonga-Bonga, George Mutema
Format: Article
Language:English
Published: AOSIS 2011-04-01
Series:South African Journal of Economic and Management Sciences
Online Access:https://sajems.org/index.php/sajems/article/view/184
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spelling doaj-3b14431de3f741c5acef8acfef5aae3f2020-11-25T01:11:00ZengAOSISSouth African Journal of Economic and Management Sciences1015-88122222-34362011-04-0112440141110.4102/sajems.v12i4.18443Volatility forecasting and value-at-risk estimation in emerging markets: the case of the stock market index portfolio in South AfricaLumengo Bonga-Bonga0George Mutema1University of JohannesburgUniversity of JohannesburgAccurate modelling of volatility is important as it relates to the forecasting of Value-at-Risk (VaR). The RiskMetrics model to forecast volatility is the benchmark in the financial sector. In an important regulatory innovation, the Basel Committee has proposed the use of an internal method for modelling VaR instead of the strict use of the benchmark model. The aim of this paper is to evaluate the performance of RiskMetrics in comparison to other models of volatility forecasting, such as some family classes of the Generalised Auto Regressive Conditional Heteroscedasticity models, in forecasting the VaR in emerging markets. This paper makes use of the stock market index portfolio, the All-Share Index, as a case study to evaluate the market risk in emerging markets. The paper underlines the importance of asymmetric behaviour for VaR forecasting in emerging markets’ economies.https://sajems.org/index.php/sajems/article/view/184
collection DOAJ
language English
format Article
sources DOAJ
author Lumengo Bonga-Bonga
George Mutema
spellingShingle Lumengo Bonga-Bonga
George Mutema
Volatility forecasting and value-at-risk estimation in emerging markets: the case of the stock market index portfolio in South Africa
South African Journal of Economic and Management Sciences
author_facet Lumengo Bonga-Bonga
George Mutema
author_sort Lumengo Bonga-Bonga
title Volatility forecasting and value-at-risk estimation in emerging markets: the case of the stock market index portfolio in South Africa
title_short Volatility forecasting and value-at-risk estimation in emerging markets: the case of the stock market index portfolio in South Africa
title_full Volatility forecasting and value-at-risk estimation in emerging markets: the case of the stock market index portfolio in South Africa
title_fullStr Volatility forecasting and value-at-risk estimation in emerging markets: the case of the stock market index portfolio in South Africa
title_full_unstemmed Volatility forecasting and value-at-risk estimation in emerging markets: the case of the stock market index portfolio in South Africa
title_sort volatility forecasting and value-at-risk estimation in emerging markets: the case of the stock market index portfolio in south africa
publisher AOSIS
series South African Journal of Economic and Management Sciences
issn 1015-8812
2222-3436
publishDate 2011-04-01
description Accurate modelling of volatility is important as it relates to the forecasting of Value-at-Risk (VaR). The RiskMetrics model to forecast volatility is the benchmark in the financial sector. In an important regulatory innovation, the Basel Committee has proposed the use of an internal method for modelling VaR instead of the strict use of the benchmark model. The aim of this paper is to evaluate the performance of RiskMetrics in comparison to other models of volatility forecasting, such as some family classes of the Generalised Auto Regressive Conditional Heteroscedasticity models, in forecasting the VaR in emerging markets. This paper makes use of the stock market index portfolio, the All-Share Index, as a case study to evaluate the market risk in emerging markets. The paper underlines the importance of asymmetric behaviour for VaR forecasting in emerging markets’ economies.
url https://sajems.org/index.php/sajems/article/view/184
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AT georgemutema volatilityforecastingandvalueatriskestimationinemergingmarketsthecaseofthestockmarketindexportfolioinsouthafrica
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