Forecasting Stock Index Futures Price Volatility: Linear vs. Nonlinear Models
The study examines the relative ability of various models to forecast daily stock index futures volatility. The forecasting models that are employed range from naïve models to the relatively complex ARCH-class models. It is found that among linear models of stock index futures volatility, the autoregressive model ranks first using the RMSE and MAPE criteria. We also examine three nonlinear models. These models are GARCH-M, EGARCH, and ESTAR. We find that nonlinear GARCH models dominate linear models utilizing the RMSE and the MAPE error statistics and EGARCH appears to be the best model for forecasting stock index futures price volatility. Copyright 2002 by the Eastern Finance Association.
Year of publication: |
2002
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Authors: | Najand, Mohammad |
Published in: |
The Financial Review. - Eastern Finance Association - EFA. - Vol. 37.2002, 1, p. 93-104
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Publisher: |
Eastern Finance Association - EFA |
Saved in:
Saved in favorites
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