View source: R/parameterReforms.R
reform_constrained_pars | R Documentation |
reform_constrained_pars
reforms constrained parameter vector
into the form that corresponds to unconstrained parameter vectors.
reform_constrained_pars(
p,
M,
d,
params,
weight_function = c("relative_dens", "logistic", "mlogit", "exponential", "threshold",
"exogenous"),
weightfun_pars = NULL,
cond_dist = c("Gaussian", "Student", "ind_Student", "ind_skewed_t"),
identification = c("reduced_form", "recursive", "heteroskedasticity",
"non-Gaussianity"),
AR_constraints = NULL,
mean_constraints = NULL,
weight_constraints = NULL,
B_constraints = NULL,
other_constraints = NULL,
change_na = FALSE
)
p |
a positive integer specifying the autoregressive order |
M |
a positive integer specifying the number of regimes |
params |
a real valued vector specifying the parameter values.
Should have the form
For models with...
Above, |
weight_function |
What type of transition weights
See the vignette for more details about the weight functions. |
weightfun_pars |
|
cond_dist |
specifies the conditional distribution of the model as |
identification |
is it reduced form model or an identified structural model; if the latter, how is it identified (see the vignette or the references for details)?
|
AR_constraints |
a size |
mean_constraints |
Restrict the mean parameters of some regimes to be identical? Provide a list of numeric vectors
such that each numeric vector contains the regimes that should share the common mean parameters. For instance, if
|
weight_constraints |
a list of two elements, |
B_constraints |
a |
other_constraints |
A list containing internally used additional type of constraints (see the options below).
|
change_na |
change NA parameter values of constrained models to -9.999? |
Returns "regular model" parameter vector corresponding to the constraints.
No argument checks!
Kheifets I.L., Saikkonen P.J. 2020. Stationarity and ergodicity of Vector STAR models. Econometric Reviews, 39:4, 407-414.
Lütkepohl H. 2005. New Introduction to Multiple Time Series Analysis, Springer.
Lanne M., Virolainen S. 2025. A Gaussian smooth transition vector autoregressive model: An application to the macroeconomic effects of severe weather shocks. Unpublished working paper, available as arXiv:2403.14216.
Virolainen S. 2025. Identification by non-Gaussianity in structural threshold and smooth transition vector autoregressive models. Unpublished working paper, available as arXiv:2404.19707.
@keywords internal
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