Research Article
BibTex RIS Cite
Year 2023, Volume: 10 Issue: 3, 158 - 169, 30.09.2023
https://doi.org/10.17261/Pressacademia.2023.1814

Abstract

References

  • Abad, P., Benito, S. & Lopez C. (2014) A comprehensive review of Value at Risk methodologies. The Spanish Review of Financial Economics 12, 15-32.
  • Adcock, C., Eling, M. & Loperfido, N. (2012). Skewed distributions in finance and actuarial science: a review. The European Journal of Finance, 4, 1-29.
  • Angelidis, T., Benos, A. & Degiannakis, S. (2007). A robust VaR model under different time periods and weighting schemes. Review of Quantitative Finance and Accounting, 28, 187-201.
  • Artzner, P., Delbaen, F., Eber, J. & Heath, D. (1997). Thinking coherently. Risk, 10(11), 68-71.
  • Artzner, P., Delbaen, F., Eber, J. & Heath, D. (1999). Coherent measures of risk. Mathematical Finance, 9, 203-228.
  • Bali, T. G. & Theodossiou, P. (2008). Risk measurement performance of alternative distribution functions. The Journal of Risk and Insurance 75, 411-437.
  • Bali, T. G. & Weinbaum, D. (2007). A conditional extreme value volatility estimator based on high-frequency returns. Journal of Economic Dynamics and Control, 31, 361-397.
  • Bali, T., Mo, H. & Tang, Y. (2008). The role of autoregressive conditional skewness and kurtosis in the estimation of conditional VAR. Journal of Banking and Finance, 32, 269-282.
  • Bali, T. & Theodossiou, P. (2007). A conditional-sgt-var approach with alternative GARCH models. Annals of Operations Research, 151(1), 241-267.
  • Balkema, A. A. & de Haan, L. (1974). Residual lifetime at great age. Annals of Probability, 2, 792-804.
  • Campbell, S. (2005), A review of backtesting and backtesting procedures. Finance and Economics Discussion Series. Washington, DC: Federal Reserve Board.
  • Chen, C., Gerlach, R., Lin, E. & Lee, W. (2011). Bayesian forecasting for financial risk management, pre and post the global financial crisis. Journal of Forecasting, 31(8), 661-687.
  • Christoffersen, P. (1998). Evaluating interval forecasts. International Economic Review, 39, 841-862.
  • Down, K. (2002), Measuring market risk, John Wiley and Sons, Chichester.
  • DuMouchel, W. (1983). Estimating the stable index in order to measure tail thickness: a critique. Annals of Statistics, 11(3), 1019-1031.
  • Embrechts, P., Kluppelberg, C. & Mikosch, T. (1997). Modelling extremal events for insurance and finance, Springer, Berlin.
  • Engle, R. & Manganelli, S. (2004). Caviar: Conditional autoregressive value at risk by regression quantiles. Journal of Business and Economic Statistics, 22, 367-381.
  • Gilli, M. & Kezi, E. (2006). An application of extreme value theory for measuring financial risk. Computational Economics, 27(2), 207-228.
  • Giot, P. & Laurent, S. (2003). Value-at-risk for long and short trading positions. Journal of Applied Econometrics, 18, 641-663.
  • Giot, P. & Laurent, S. (2004). Modelling daily value-at-risk using realized volatility and arch type models. Journal of Empirical Finance, 11, 379-398.
  • Glosten, L. R., Jagannathan, R. & Runkle, D. E. (1993). On the relation between the expected value and the volatility of the nominal excess return on stocks. The Journal of Finance, 5, 1779-1801.
  • Gonzalez-Rivera, G., Lee, T. & Mishra, S. (2004). Forecasting volatility: a reality check based on option pricing, utility function, value-at-risk, and predictive likelihood. International Journal of Forecasting, 20, 629-645.
  • Haas, M., Mittnik, S. & Paolella, M. (2004). Mixed normal conditional heteroskedasticity. Journal of Financial Econometrics, 2, 211-250.
  • Huang, Y. & Lin, B. (2004). Value-at-risk analysis for Taiwan stock index futures: fat tails and conditional asymmetries in return innovations. Review of Quantitative Finance and Accounting, 22, 79-95.
  • McNeil, A. & Frey, R. (2000). Estimation of tail-related risk measures for heteroscedastic financial time series: An extreme value approach. Journal of Empirical Finance, 7, 271-300.
  • McNeil, A., Frey, R. & Embrechts, P. (2005). Quantitative risk management: Concepts, techniques, and tools. Princeton Series in Finance. Princeton University Press.
  • Mittnik, S. & Paolella, M. (2000). Conditional density and value-at-risk prediction of Asian currency exchange rates. Journal of Forecasting, 19, 313-333.
  • Nelson, D. (1991). Conditional heteroskedasticity in asset returns: a new approach. Econometrica, 59, 347-370.
  • Niguez, T.-M. (2008). Volatility and VaR forecasting in the Madrid stock exchange. Spanish Economic Review, 10, 169-196.
  • Pickands, J. (1975). Statistical inference using extreme order statistics. Annals of Statistics, 3, 119-131.
  • Smith, R. (1989). Extreme value analysis of environmental time series: An application to trend detection in ground-level ozone. Statistical Science, 4, 367-393.
  • Zakoian, J. M. (1994). Threshold heteroskedastic models. Journal of Economic Dynamics and Control, 18 (5), 931-955.
  • Zhang, Y. & Nadarajah, S. (2018). A review of backtesting for value at risk. Communications in Statistics Theory and Methods, 47 (15) ,3616-3639

COMPARISON OF THE ACCURACY OF MODELS IN FORECASTING VAR AND ES THROUGH TIME

Year 2023, Volume: 10 Issue: 3, 158 - 169, 30.09.2023
https://doi.org/10.17261/Pressacademia.2023.1814

Abstract

Purpose- Identify the best model/method to accurately forecast the Value-at-Risk (VaR) and the Expected Shortfall (ES) of position.
Methodology- The dynamic of each retained return series was estimated with one of retained GARCH-type model combined with one of retained probability distributions (normal, fat-tailed, and skewed) in each retained sub-periods (window). In each window (sub-period), the 1-day ahead VaR and ES were forecasted by using the best selected GARCH-type model. More than 4000 1-day ahead VaR and ES were forecasted with each retained model/method. Based on 252-day rolling-window, forecasted VaR and ES with each retained model/method were backtested around 3750 times.
Findings- Our results revealed that the best fitting GARCH-specifications combined with skewed Student or GED distribution enable to accurately forecast VaR more often. However, the best methods based on the best fitting GARCH-specifications combined with the best fitting probability distribution do not improve the frequency of acceptance of the null hypothesis stating the accuracy of the method. The accuracy of models tends to deteriorate during crises periods.
Conclusion- Modeling and forecasting the dynamic of retained series with skewed probability distributions (skwed student or wked GED) improve the forecasting accuracy of a parametric or semi parametric model. A performan model in sample may not perform well out sample. Forecasted VaR should be complemented with Stressed VaR or ES.

References

  • Abad, P., Benito, S. & Lopez C. (2014) A comprehensive review of Value at Risk methodologies. The Spanish Review of Financial Economics 12, 15-32.
  • Adcock, C., Eling, M. & Loperfido, N. (2012). Skewed distributions in finance and actuarial science: a review. The European Journal of Finance, 4, 1-29.
  • Angelidis, T., Benos, A. & Degiannakis, S. (2007). A robust VaR model under different time periods and weighting schemes. Review of Quantitative Finance and Accounting, 28, 187-201.
  • Artzner, P., Delbaen, F., Eber, J. & Heath, D. (1997). Thinking coherently. Risk, 10(11), 68-71.
  • Artzner, P., Delbaen, F., Eber, J. & Heath, D. (1999). Coherent measures of risk. Mathematical Finance, 9, 203-228.
  • Bali, T. G. & Theodossiou, P. (2008). Risk measurement performance of alternative distribution functions. The Journal of Risk and Insurance 75, 411-437.
  • Bali, T. G. & Weinbaum, D. (2007). A conditional extreme value volatility estimator based on high-frequency returns. Journal of Economic Dynamics and Control, 31, 361-397.
  • Bali, T., Mo, H. & Tang, Y. (2008). The role of autoregressive conditional skewness and kurtosis in the estimation of conditional VAR. Journal of Banking and Finance, 32, 269-282.
  • Bali, T. & Theodossiou, P. (2007). A conditional-sgt-var approach with alternative GARCH models. Annals of Operations Research, 151(1), 241-267.
  • Balkema, A. A. & de Haan, L. (1974). Residual lifetime at great age. Annals of Probability, 2, 792-804.
  • Campbell, S. (2005), A review of backtesting and backtesting procedures. Finance and Economics Discussion Series. Washington, DC: Federal Reserve Board.
  • Chen, C., Gerlach, R., Lin, E. & Lee, W. (2011). Bayesian forecasting for financial risk management, pre and post the global financial crisis. Journal of Forecasting, 31(8), 661-687.
  • Christoffersen, P. (1998). Evaluating interval forecasts. International Economic Review, 39, 841-862.
  • Down, K. (2002), Measuring market risk, John Wiley and Sons, Chichester.
  • DuMouchel, W. (1983). Estimating the stable index in order to measure tail thickness: a critique. Annals of Statistics, 11(3), 1019-1031.
  • Embrechts, P., Kluppelberg, C. & Mikosch, T. (1997). Modelling extremal events for insurance and finance, Springer, Berlin.
  • Engle, R. & Manganelli, S. (2004). Caviar: Conditional autoregressive value at risk by regression quantiles. Journal of Business and Economic Statistics, 22, 367-381.
  • Gilli, M. & Kezi, E. (2006). An application of extreme value theory for measuring financial risk. Computational Economics, 27(2), 207-228.
  • Giot, P. & Laurent, S. (2003). Value-at-risk for long and short trading positions. Journal of Applied Econometrics, 18, 641-663.
  • Giot, P. & Laurent, S. (2004). Modelling daily value-at-risk using realized volatility and arch type models. Journal of Empirical Finance, 11, 379-398.
  • Glosten, L. R., Jagannathan, R. & Runkle, D. E. (1993). On the relation between the expected value and the volatility of the nominal excess return on stocks. The Journal of Finance, 5, 1779-1801.
  • Gonzalez-Rivera, G., Lee, T. & Mishra, S. (2004). Forecasting volatility: a reality check based on option pricing, utility function, value-at-risk, and predictive likelihood. International Journal of Forecasting, 20, 629-645.
  • Haas, M., Mittnik, S. & Paolella, M. (2004). Mixed normal conditional heteroskedasticity. Journal of Financial Econometrics, 2, 211-250.
  • Huang, Y. & Lin, B. (2004). Value-at-risk analysis for Taiwan stock index futures: fat tails and conditional asymmetries in return innovations. Review of Quantitative Finance and Accounting, 22, 79-95.
  • McNeil, A. & Frey, R. (2000). Estimation of tail-related risk measures for heteroscedastic financial time series: An extreme value approach. Journal of Empirical Finance, 7, 271-300.
  • McNeil, A., Frey, R. & Embrechts, P. (2005). Quantitative risk management: Concepts, techniques, and tools. Princeton Series in Finance. Princeton University Press.
  • Mittnik, S. & Paolella, M. (2000). Conditional density and value-at-risk prediction of Asian currency exchange rates. Journal of Forecasting, 19, 313-333.
  • Nelson, D. (1991). Conditional heteroskedasticity in asset returns: a new approach. Econometrica, 59, 347-370.
  • Niguez, T.-M. (2008). Volatility and VaR forecasting in the Madrid stock exchange. Spanish Economic Review, 10, 169-196.
  • Pickands, J. (1975). Statistical inference using extreme order statistics. Annals of Statistics, 3, 119-131.
  • Smith, R. (1989). Extreme value analysis of environmental time series: An application to trend detection in ground-level ozone. Statistical Science, 4, 367-393.
  • Zakoian, J. M. (1994). Threshold heteroskedastic models. Journal of Economic Dynamics and Control, 18 (5), 931-955.
  • Zhang, Y. & Nadarajah, S. (2018). A review of backtesting for value at risk. Communications in Statistics Theory and Methods, 47 (15) ,3616-3639
There are 33 citations in total.

Details

Primary Language English
Subjects Finance, Business Administration
Journal Section Articles
Authors

Sukriye Tuysuz 0000-0001-8391-6521

Publication Date September 30, 2023
Published in Issue Year 2023 Volume: 10 Issue: 3

Cite

APA Tuysuz, S. (2023). COMPARISON OF THE ACCURACY OF MODELS IN FORECASTING VAR AND ES THROUGH TIME. Journal of Economics Finance and Accounting, 10(3), 158-169. https://doi.org/10.17261/Pressacademia.2023.1814

Journal of Economics, Finance and Accounting (JEFA) is a scientific, academic, double blind peer-reviewed, quarterly and open-access online journal. The journal publishes four issues a year. The issuing months are March, June, September and December. The publication languages of the Journal are English and Turkish. JEFA aims to provide a research source for all practitioners, policy makers, professionals and researchers working in the area of economics, finance, accounting and auditing. The editor in chief of JEFA invites all manuscripts that cover theoretical and/or applied researches on topics related to the interest areas of the Journal. JEFA publishes academic research studies only. JEFA charges no submission or publication fee.

Ethics Policy - JEFA applies the standards of Committee on Publication Ethics (COPE). JEFA is committed to the academic community ensuring ethics and quality of manuscripts in publications. Plagiarism is strictly forbidden and the manuscripts found to be plagiarized will not be accepted or if published will be removed from the publication. Authors must certify that their manuscripts are their original work. Plagiarism, duplicate, data fabrication and redundant publications are forbidden. The manuscripts are subject to plagiarism check by iThenticate or similar. All manuscript submissions must provide a similarity report (up to 15% excluding quotes, bibliography, abstract and method).

Open Access - All research articles published in PressAcademia Journals are fully open access; immediately freely available to read, download and share. Articles are published under the terms of a Creative Commons license which permits use, distribution and reproduction in any medium, provided the original work is properly cited. Open access is a property of individual works, not necessarily journals or publishers. Community standards, rather than copyright law, will continue to provide the mechanism for enforcement of proper attribution and responsible use of the published work, as they do now.