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Multimodality in GARCH regression models
Authors:Jurgen A. Doornik  Marius Ooms  
Affiliation:aNuffield College, University of Oxford, Department of Econometrics, Oxford OX1 1NF, UK;bDepartment of Econometrics, VU University Amsterdam, The Netherlands
Abstract:It is shown empirically that mixed autoregressive moving average regression models with generalized autoregressive conditional heteroskedasticity (Reg-ARMA-GARCH models) can have multimodality in the likelihood that is caused by a dummy variable in the conditional mean. Maximum likelihood estimates at the local and global modes are investigated and turn out to be qualitatively different, leading to different model-based forecast intervals. In the simpler GARCH(p,q) regression model, we derive analytical conditions for bimodality of the corresponding likelihood. In that case, the likelihood is symmetrical around a local minimum. We propose a solution to avoid this bimodality.
Keywords:ARIMA models   Dummy variable   Forecasting practice   GARCH models   Inflation forecasting   Intervention analysis   Multimodality   Outliers
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