2021
DOI: 10.20535/srit.2308-8893.2021.1.12
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Quintile regression based approach for dynamical VaR and CVaR forecasting using metalog distribution

Abstract: The paper proposes a new method of dynamic VaR and CVaR (ES) risk measures forecasting. Quantile linear GARCH model is chosen as the main forecasting model for time series quantiles. To build a forecast, the values of quantiles are approximated by the metalog distribution, which makes it possible to use analytical formulas to evaluate risk measures. The method of VaR and CVaR forecasting is formulated as a step-by-step algorithm. At the first stage, an initial model is built to obtain variance estimates. The p… Show more

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