tvgarch - Time Varying GARCH Modelling
Simulation, estimation and inference for univariate and
multivariate TV(s)-GARCH(p,q,r)-X models, where s indicates the
number and shape of the transition functions, p is the ARCH
order, q is the GARCH order, r is the asymmetry order, and 'X'
indicates that covariates can be included; see Campos-Martins
and Sucarrat (2024) <doi:10.18637/jss.v108.i09>. In the
multivariate case, variances are estimated equation by equation
and dynamic conditional correlations are allowed. The TV
long-term component of the variance as in the multiplicative
TV-GARCH model of Amado and Terasvirta (2013)
<doi:10.1016/j.jeconom.2013.03.006> introduces non-stationarity
whereas the GARCH-X short-term component describes conditional
heteroscedasticity. Maximisation by parts leads to consistent
and asymptotically normal estimates.