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Bayesian Tail Risk Forecasting using Realised GARCH

Author

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  • Contino, Christian
  • Gerlach, Richard

Abstract

A Realised Volatility GARCH model is developed within a Bayesian framework for the purpose of forecasting Value at Risk and Conditional Value at Risk. Student-t and Skewed Student-t return distributions are combined with Gaussian and Student-t distributions in the measurement equation in a GARCH framework to forecast tail risk in eight international equity index markets over a four year period. Three Realised Volatility proxies are considered within this framework. Realised Volatility GARCH models show a marked improvement compared to ordinary GARCH for both Value at Risk and Conditional Value at Risk forecasting. This improvement is consistent across a variety of data, volatility model speci_cations and distributions, and demonstrates that Realised Volatility is superior when producing volatility forecasts. Realised Volatility models implementing a Skewed Student-t distribution for returns in the GARCH equation are favoured.

Suggested Citation

  • Contino, Christian & Gerlach, Richard, 2014. "Bayesian Tail Risk Forecasting using Realised GARCH," Working Papers 2014-05, University of Sydney Business School, Discipline of Business Analytics.
  • Handle: RePEc:syb:wpbsba:2123/12060
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    Cited by:

    1. Richard Gerlach & Chao Wang, 2016. "Bayesian Semi-parametric Realized-CARE Models for Tail Risk Forecasting Incorporating Realized Measures," Papers 1612.08488, arXiv.org.

    More about this item

    Keywords

    Realised Volatility; Value-at-Risk; CVaR; High-Frequency Data; Expected Shortfall; Risk Management; GARCH;
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