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Forecasting risk with Markov-switching GARCH models:A large-scale performance study

David ArdiaDepartment of Finance, Insurance and Real Estate, Laval University, Québec City, CanadaKeven BluteauInstitute of Financial Analysis, University of Neuchâtel, Neuchâtel, SwitzerlandKris BoudtSchool of Business and Economics, Vrije Universiteit Amsterdam, The NetherlandsLeopoldo CataniaDepartment of Economics and Business Economics, Aarhus University and CREATES, Denmark
2018en
ABI

Аннотация

We perform a large-scale empirical study in order to compare the forecasting performances of single-regime and Markov-switching GARCH (MSGARCH) models from a risk management perspective. We find that MSGARCH models yield more accurate Value-at-Risk, expected shortfall, and left-tail distribution forecasts than their single-regime counterparts for daily, weekly, and ten-day equity log-returns. Also, our results indicate that accounting for parameter uncertainty improves the left-tail predictions, independently of the inclusion of the Markov-switching mechanism.

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