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Realized Volatility Risk

  • David E. Allen

    (School of Accounting, Finance and Economics, Edith Cowan University)

  • Michael McAleer

    (Econometric Institute, Erasmus School of Economics, Erasmus University Rotterdam and Tinbergen Institute)

  • Marcel Scharth

    (VU University Amsterdam and Tinbergen Institute)

In this paper we document that realized variation measures constructed from high-frequency returns reveal a large degree of volatility risk in stock and index returns, where we characterize volatility risk by the extent to which forecasting errors in realized volatility are substantive. Even though returns standardized by ex post quadratic variation measures are nearly gaussian, this unpredictability brings considerably more uncertainty to the empirically relevant ex ante distribution of returns. Carefully modeling this volatility risk is fundamental. We propose a dually asymmetric realized volatility (DARV) model, which incorporates the important fact that realized volatility series are systematically more volatile in high volatility periods. Returns in this framework display time varying volatility, skewness and kurtosis. We provide a detailed account of the empirical advantages of the model using data on the S&P 500 index and eight other indexes and stocks.

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File URL: http://www.cirje.e.u-tokyo.ac.jp/research/dp/2009/2009cf693.pdf
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Paper provided by CIRJE, Faculty of Economics, University of Tokyo in its series CIRJE F-Series with number CIRJE-F-693.

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Length: 39pages
Date of creation: Dec 2009
Date of revision:
Handle: RePEc:tky:fseres:2009cf693
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