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The Information Content of High-Frequency Data for Estimating Equity Return Models and Forecasting Risk


Dobrislav Dobrev


Federal Reserve Board

Pawel Szerszen


Federal Reserve Board

August 25, 2010


Abstract:     
We demonstrate that the parameters controlling skewness and kurtosis in popular equity return models estimated at daily frequency can be obtained almost as precisely as if volatility is observable by simply incorporating the strong information content of realized volatility measures extracted from high-frequency data. For this purpose, we introduce asymptotically exact volatility measurement equations in state space form and propose a Bayesian estimation approach. Our highly efficient estimates lead in turn to substantial gains for forecasting various risk measures at horizons ranging from a few days to a few months ahead when taking also into account parameter uncertainty. As a practical rule of thumb, we find that two years of high frequency data often suffice to obtain the same level of precision as twenty years of daily data, thereby making our approach particularly useful in finance applications where only short data samples are available or economically meaningful to use. Moreover, we find that compared to model inference without high-frequency data, our approach largely eliminates underestimation of risk during bad times or overestimation of risk during good times. We assess the attainable improvements in VaR forecast accuracy on simulated data and provide an empirical illustration on stock returns during the financial crisis of 2007-2008.

Number of Pages in PDF File: 43

Keywords: Equity return models, Parameter uncertainty, Bayesian estimation, MCMC, High-frequency data, Jump-robust volatility measures, Value at Risk, Forecasting

JEL Classification: C11, C13, C14, C15, C22, C53, C80, G17

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Date posted: March 24, 2011  

Suggested Citation

Dobrev, Dobrislav and Szerszen, Pawel, The Information Content of High-Frequency Data for Estimating Equity Return Models and Forecasting Risk (August 25, 2010). Available at SSRN: http://ssrn.com/abstract=1788351 or http://dx.doi.org/10.2139/ssrn.1788351

Contact Information

Dobrislav Dobrev
Federal Reserve Board ( email )
20th Street and Constitution Avenue NW
Washington, DC 20551
United States
Pawel Szerszen (Contact Author)
Federal Reserve Board ( email )
20th Street and Constitution Avenue NW
Washington, DC 20551
United States
HOME PAGE: http://www.federalreserve.gov/research/staff/szerszenpawelj.htm
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