Multimodality in GARCH regression models
Doornik, J.A.
, Ooms, M.
Pages 432-448
AbstractIt 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