EWS-GARCH: New Regime Switching Approach to Forecast Value-at-Risk Cover Image

EWS-GARCH: New Regime Switching Approach to Forecast Value-at-Risk
EWS-GARCH: New Regime Switching Approach to Forecast Value-at-Risk

Author(s): Marcin Chlebus
Subject(s): Methodology and research technology, Financial Markets
Published by: Wydawnictwa Uniwersytetu Warszawskiego
Keywords: value-at-risk, state of turbulence; GARCH; tail distributions; market risk;

Summary/Abstract: In the study, the two-step EWS-GARCH models to forecast Value-at-Risk is presented. The EWS-GARCH allows different distributions of returns or Value-at-Risk forecasting models to be used in Value-at-Risk forecasting depending on a forecasted state of the financial time series. In the study EWS-GARCH with GARCH(1,1) and GARCH(1,1), with the amendment to the empirical distribution of random errors as a Value-at-Risk model in a state of tranquillity and empirical tail, exponential or Pareto distributions used to forecast Value-at-Risk in a state of turbulence were considered. The evaluation of Value-at-Risk forecasts was based on the Value-at-Risk forecasts and the analysis of loss functions. Obtained results indicate that EWS-GARCH models may improve the quality of Value-at-Risk forecasts generated using the benchmark models. However, the choice of best assumptions for the EWS-GARCH model should depend on the goals of the Value-at-Risk forecasting model. The final selection may depend on an expected level of adequacy, conservatism and costs of the model.

  • Issue Year: 3/2017
  • Issue No: 50
  • Page Range: 1-25
  • Page Count: 25
  • Language: English