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Asymmetric effects and long memory in the volatility of Dow Jones stocks

Author

Listed:
  • Marcel Scharth

    (Department of Economics - PUC-Rio)

  • Marcelo Cunha Medeiros

    (Department of Economics PUC-Rio)

Abstract
Does volatility reflect a continuous reaction to past shocks or changes in the markets induce shifts in the volatility dynamics? In this paper, we provide empirical evidence that cumulated price variations convey meaningful information about multiple regimes in the realized volatility of stocks, where large falls (rises) in prices are linked to persistent regimes of high (low) variance in stock returns. Incorporating past cumulated daily returns as a explanatory variable in a flexible and systematic nonlinear framework, we estimate that falls of different magnitudes over less than two months are associated with volatility levels 20% and 60% higher than the average of periods with stable or rising prices. We show that this effect accounts for large empirical values of long memory parameter estimates. Finally, we analyze that the proposed model significantly improves out of sample performance in relation to standard methods. This result is more pronounced in periods of high volatility.

Suggested Citation

  • Marcel Scharth & Marcelo Cunha Medeiros, 2006. "Asymmetric effects and long memory in the volatility of Dow Jones stocks," Textos para discussão 532, Department of Economics PUC-Rio (Brazil).
  • Handle: RePEc:rio:texdis:532
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    Keywords

    Realized volatility; long memory; nonlinear models; asymmetric effects; regime switching; regression trees; smooth transition; value-at-risk; forecasting; empirical finance.;
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