pick_regime | R Documentation |
\upsilon_{m}
= (\phi_{m,0},
\phi_{m}
,\sigma_{m},\nu_{m})
pick_regime
picks the regime-parameters from the given parameter vector.
pick_regime(
p,
M,
d,
params,
m,
model = c("GMVAR", "StMVAR", "G-StMVAR"),
constraints = NULL,
same_means = NULL,
weight_constraints = NULL,
structural_pars = NULL,
with_df = TRUE
)
p |
a positive integer specifying the autoregressive order of the model. |
M |
|
d |
number of time series in the system, i.e. the dimension. |
params |
a real valued vector specifying the parameter values.
Above, In the GMVAR model, The notation is similar to the cited literature. |
m |
which component? |
model |
is "GMVAR", "StMVAR", or "G-StMVAR" model considered? In the G-StMVAR model, the first |
constraints |
a size |
same_means |
Restrict the mean parameters of some regimes to be the same? 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 numeric vector of length |
structural_pars |
If
See Virolainen (forthcoming) for the conditions required to identify the shocks and for the B-matrix as well (it is |
with_df |
should the degrees of freedom parameter (if any) be included? |
Note that in some cases, a numeric vector of length zero is returned (see section Return)
a length pd^2+d+d(d+1)/2
vector containing
\upsilon_{m}
= (\phi_{m,0},
\phi_{m}
,\sigma_{m})
, where
\phi_{m}
= (vec(A_{m,1}),...,vec(A_{m,1})
and \sigma_{m} = vech(\Omega_{m})
.
a length pd^2+d+d(d+1)/2 + 1
vector containing
(\upsilon_{m}
,\nu_{m}
), where \nu_{m}
is dropped if with_df == FALSE
.
Same as GMVAR for GMVAR type regimes and same as StMVAR for StMVAR type regimes.
a length pd^2 + d
vector (\phi_{m,0},
\phi_{m}
)
.
a length pd^2 + d + 1
vector (\phi_{m,0},
\phi_{m}
,\nu_{m})
,
where \nu_{m}
is dropped if with_df == FALSE
.
Same as GMVAR for GMVAR type regimes and same as StMVAR for StMVAR type regimes.
As above, but without \phi_{m}
.
As above, but without \phi_{m,0}
(which are \mu_m
in this case).
As above. Note that lambda parameters are not returned in any specification.
As above. Note that alpha parameters are not returned in any specification.
Note that if both, AR and mean constraints are employed, a lenght zero numeric vector is returned for
structural GMVAR type regimes (or structural StMVAR type regimes if with_df=FALSE
).
No argument checks!
Kalliovirta L., Meitz M. and Saikkonen P. 2016. Gaussian mixture vector autoregression. Journal of Econometrics, 192, 485-498.
Virolainen S. (forthcoming). A statistically identified structural vector autoregression with endogenously switching volatility regime. Journal of Business & Economic Statistics.
Virolainen S. 2022. Gaussian and Student's t mixture vector autoregressive model with application to the asymmetric effects of monetary policy shocks in the Euro area. Unpublished working paper, available as arXiv:2109.13648.
@keywords internal
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