Student-t and Quasi-Maximum Likelihood
Posted: Sat Jul 11, 2009 4:59 am
Hi guys,
I'd like to ask a question about error distribution when estimate GARCH model.
If I have an exchange rate return series and it's error term appears fat tails, I decide to estimate GARCH model under the assumption of Non-normality and Student-t distribution, but some literatures apply quasi-maximum likelihood (QML) to estimate the models with the same assumption. From my understanding, the QML can be computed by select the Heteroskedasticity Consistent Covariance option, but this option is only available if I choose conditional normal as the error distribution. The eviews' help also said that I should use this option if I suspect the residuals are not conditional normally distributed. Therefore, I'm confused about the Student-t and Heteroskedasticity Consistent Covariance option in eview. Could anyone help me with this? Thanks
I'd like to ask a question about error distribution when estimate GARCH model.
If I have an exchange rate return series and it's error term appears fat tails, I decide to estimate GARCH model under the assumption of Non-normality and Student-t distribution, but some literatures apply quasi-maximum likelihood (QML) to estimate the models with the same assumption. From my understanding, the QML can be computed by select the Heteroskedasticity Consistent Covariance option, but this option is only available if I choose conditional normal as the error distribution. The eviews' help also said that I should use this option if I suspect the residuals are not conditional normally distributed. Therefore, I'm confused about the Student-t and Heteroskedasticity Consistent Covariance option in eview. Could anyone help me with this? Thanks