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Do High-Frequency Measures of Volatility Improve...
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Do High-Frequency Measures of Volatility Improve Forecasts of Return Distributions?

Abstract

Many finance questions require a full characterization of the distribution of returns. We propose a bivariate model of returns and realized volatility (RV), and explore which features of that time-series model contribute to superior density forecasts over horizons of 1 to 60 days out of sample. This term structure of density forecasts is used to investigate the importance of: the intraday information embodied in the daily RV estimates; the functional form for log(RV) dynamics; the timing of information availability; and the assumed distributions of both return and log(RV) innovations. We find that a joint model of returns and volatility that features two components for log(RV) provides a good fit to S&P 500 and IBM data, and is a significant improvement over an EGARCH model estimated from daily returns.

Authors

Maheu JM; McCurdy TH

Publication date

January 1, 2008

DOI

10.2139/ssrn.1260279

Preprint server

SSRN Electronic Journal
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