Abstract:
This paper proposes a new model for autoregressive conditional
heteroscedasticity and kurtosis. Via a time-varying degrees
of freedom parameter, the conditional variance and conditional
kurtosis are permitted to evolve separately. The model uses
only the standard Student's t density and consequently can be
estimated simply using maximum likelihood. The method is applied
to a set of four daily financial asset return series comprising
US and UK stocks and bonds, and significant evidence in favour
of the presence of autoregressive conditional kurtosis is
observed. Various extensions to the basic model are examined,
and show that conditional kurtosis appears to be positively
but not significantly related to returns, and that the response
of kurtosis to good and bad news is not significantly asymmetric.
A multivariate model for conditional heteroscedasticity and
conditional kurtosis, which can provide useful information
on the co-movements between the higher moments of series, is
also proposed.