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The use of GARCH models in VaR estimation
Authors:Timotheos Angelidis   Alexandros Benos  Stavros Degiannakis
Affiliation:

aDepartment of Banking and Financial Management, University of Piraeus, 80, Karaoli & Dimitriou Street, Piraeus GR-185 34, Greece

bDepartment of Statistics, Athens University of Economics and Business, 76, Patision Street, Athens GR-104 34, Greece

Abstract:We evaluate the performance of an extensive family of ARCH models in modeling the daily Value-at-Risk (VaR) of perfectly diversified portfolios in five stock indices, using a number of distributional assumptions and sample sizes. We find, first, that leptokurtic distributions are able to produce better one-step-ahead VaR forecasts; second, the choice of sample size is important for the accuracy of the forecast, whereas the specification of the conditional mean is indifferent. Finally, the ARCH structure producing the most accurate forecasts is different for every portfolio and specific to each equity index.
Keywords:Value at Risk   GARCH estimation   Backtesting   Volatility forecasting   Quantile loss function
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