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tvgarch (version 2.4.3)

Time Varying GARCH Modelling

Description

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) . 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) introduces non-stationarity whereas the GARCH-X short-term component describes conditional heteroscedasticity. Maximisation by parts leads to consistent and asymptotically normal estimates.

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Version

Install

install.packages('tvgarch')

Monthly Downloads

198

Version

2.4.3

License

GPL (>= 2)

Maintainer

Susana Campos-Martins

Last Published

September 1st, 2025

Functions in tvgarch (2.4.3)

mtvgarch

Estimate a multivariate TV-GARCH-X model
tvgarchTest

Test of a multiplicative time-varying GARCH model
tvgarchSim

Simulate from a univariate TV-GARCH-X model
coef.mtvgarch

Extraction functions for multivariate 'mtvgarch' objects
mtvgarchSim

Simulate from a multivariate TV-GARCH-X model
tvgarch-package

Time Varying GARCH Modelling
tvgarch

Estimate a TV-GARCH-X model
dccObj

Auxiliary functions
combos

Compute all combinations of a hierarchy of models of n variables, and enumerate the combinations of the elements of a vector.
coef.tvgarch

Extraction functions (S3 methods) for univarate 'tvgarch' objects
coef.tvgarchTest

Extraction functions for univarate 'tvgarchTest' objects
tvgarchObj

Auxiliary functions