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FIEGARCH, modulus asymmetric FILog-GARCH and trend-stationary dual long memory time series

Author

Listed:
  • Yuanhua Feng

    (Paderborn University)

  • Thomas Gries

    (Paderborn University)

  • Sebastian Letmathe

    (Paderborn University)

Abstract

A novel long memory volatility model MAFILog-GARCH (modulus asymmetric FILog-GARCH) is introduced, which is closely related to the FIEGARCH, but has some advantages. A general dual long memory FARIMA with those models as error processes is defined. Moreover, a trend-stationary dual long memory model is pro- posed. The FIEGARCH and MAFILog-GARCH are first applied to returns of eight top US firms. It is found that their practical performances are comparable. Both are superior to the FIGARCH and FILog-GARCH. Further application provides evidence of trend-stationary dual long memory time series in different fields.

Suggested Citation

  • Yuanhua Feng & Thomas Gries & Sebastian Letmathe, 2023. "FIEGARCH, modulus asymmetric FILog-GARCH and trend-stationary dual long memory time series," Working Papers CIE 156, Paderborn University, CIE Center for International Economics.
  • Handle: RePEc:pdn:ciepap:156
    as

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    File URL: http://groups.uni-paderborn.de/wp-wiwi/RePEc/pdf/ciepap/WP156.pdf
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    References listed on IDEAS

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    Keywords

    Modulus asymmetric FILog-GARCH; FIEGARCH; dual long memory; trend-stationary dual long memory; implementation in R;
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