| get_boldA_eigens_par | R Documentation |
get_boldA_eigens_par calculates absolute values of the eigenvalues of
the "bold A" matrices containing the AR coefficients for each regime.
get_boldA_eigens_par(
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"),
parametrization = c("intercept", "mean"),
identification = c("reduced_form", "recursive", "heteroskedasticity",
"non-Gaussianity"),
AR_constraints = NULL,
mean_constraints = NULL,
weight_constraints = NULL,
B_constraints = NULL
)
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 |
parametrization |
|
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 |
Returns a matrix with d*p rows and M columns - one column for each regime.
The mth column contains the absolute values (or modulus) of the eigenvalues of the "bold A" matrix containing
the AR coefficients corresponding to regime m.
Lütkepohl H. 2005. New Introduction to Multiple Time Series Analysis, Springer.
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