The Volatility of Realized Volatility |
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Authors: | Fulvio Corsi Christian Pigorsch Uta Pigorsch |
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Affiliation: | 1. University of Lugano and Swiss Finance Institute , Lugano, Switzerland;2. Department of Economics , University of Bonn , Bonn, Germany;3. Department of Economics , University of Mannheim , Mannheim, Germany |
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Abstract: | In recent years, with the availability of high-frequency financial market data modeling realized volatility has become a new and innovative research direction. The construction of “observable” or realized volatility series from intra-day transaction data and the use of standard time-series techniques has lead to promising strategies for modeling and predicting (daily) volatility. In this article, we show that the residuals of commonly used time-series models for realized volatility and logarithmic realized variance exhibit non-Gaussianity and volatility clustering. We propose extensions to explicitly account for these properties and assess their relevance for modeling and forecasting realized volatility. In an empirical application for S&P 500 index futures we show that allowing for time-varying volatility of realized volatility and logarithmic realized variance substantially improves the fit as well as predictive performance. Furthermore, the distributional assumption for residuals plays a crucial role in density forecasting. |
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Keywords: | Density forecasting Finance HAR-GARCH Normal inverse Gaussian distribution Realized quarticity Realized volatility |
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