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Predicting Volatility: Getting the Most out of Return Data Sampled at Different Frequencies

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  • Eric Ghysels
  • Pedro Santa-Clara
  • Rossen Valkanov

Abstract

We consider various MIDAS (Mixed Data Sampling) regression models to predict volatility. The models differ in the specification of regressors (squared returns, absolute returns, realized volatility, realized power, and return ranges), in the use of daily or intra-daily (5-minute) data, and in the length of the past history included in the forecasts. The MIDAS framework allows us to compare models across all these dimensions in a very tightly parameterized fashion. Using equity return data, we find that daily realized power (involving 5-minute absolute returns) is the best predictor of future volatility (measured by increments in quadratic variation) and outperforms model based on realized volatility (i.e. past increments in quadratic variation). Surprisingly, the direct use of high-frequency (5-minute) data does not improve volatility predictions. Finally, daily lags of one to two months are sufficient to capture the persistence in volatility. These findings hold both in- and out-of-sample. Nous utilisons les régressions MIDAS (Mixed Data Sampling) dans le contexte de prévision de volatilité mesurée par incréments de la variation quadratique. Nous trouvons que la 'realized power' (Barndorff-Nielsen and Shephard) est le meilleur régresseur pour prévoir la variation quadratique future.

Suggested Citation

  • Eric Ghysels & Pedro Santa-Clara & Rossen Valkanov, 2004. "Predicting Volatility: Getting the Most out of Return Data Sampled at Different Frequencies," CIRANO Working Papers 2004s-19, CIRANO.
  • Handle: RePEc:cir:cirwor:2004s-19
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    References listed on IDEAS

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    More about this item

    Keywords

    realized variance; power variation; MIDAS regression; variance réalisée; 'power variation'; régression MIDAS;
    All these keywords.

    JEL classification:

    • G1 - Financial Economics - - General Financial Markets

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