in_paramspace {gmvarkit}R Documentation

Determine whether the parameter vector lies in the parameter space

Description

in_paramspace checks whether the given parameter vector lies in the parameter space. Does NOT test the identification conditions!

Usage

in_paramspace(
  p,
  M,
  d,
  params,
  model = c("GMVAR", "StMVAR", "G-StMVAR"),
  constraints = NULL,
  same_means = NULL,
  weight_constraints = NULL,
  structural_pars = NULL,
  stat_tol = 0.001,
  posdef_tol = 1e-08,
  df_tol = 1e-08
)

Arguments

p

a positive integer specifying the autoregressive order of the model.

M
For GMVAR and StMVAR models:

a positive integer specifying the number of mixture components.

For G-StMVAR models:

a size (2x1) integer vector specifying the number of GMVAR type components M1 in the first element and StMVAR type components M2 in the second element. The total number of mixture components is M=M1+M2.

d

the number of time series in the system.

params

a real valued vector specifying the parameter values.

For unconstrained models:

Should be size ((M(pd2+d+d(d+1)/2+2)M11)x1)((M(pd^2+d+d(d+1)/2+2)-M1-1)x1) and have the form θ\theta= = (υ\upsilon1_{1}, ...,υ\upsilonM_{M}, α1,...,αM1,\alpha_{1},...,\alpha_{M-1},ν\nu)), where

  • υ\upsilonm_{m} =(ϕm,0, = (\phi_{m,0},ϕ\phim_{m},σm),\sigma_{m})

  • ϕ\phim_{m}=(vec(Am,1),...,vec(Am,p) = (vec(A_{m,1}),...,vec(A_{m,p})

  • and σm=vech(Ωm)\sigma_{m} = vech(\Omega_{m}), m=1,...,M,

  • ν\nu=(νM1+1,...,νM)=(\nu_{M1+1},...,\nu_{M})

  • M1M1 is the number of GMVAR type regimes.

For constrained models:

Should be size ((M(d+d(d+1)/2+2)+qM11)x1)((M(d+d(d+1)/2+2)+q-M1-1)x1) and have the form θ\theta=(ϕ1,0,...,ϕM,0, = (\phi_{1,0},...,\phi_{M,0},ψ\psi, σ1,...,σM,α1,...,αM1,\sigma_{1},...,\sigma_{M},\alpha_{1},...,\alpha_{M-1},ν\nu), where

  • ψ\psi (qx1)(qx1) satisfies (ϕ\phi1_{1},...,,..., ϕ\phiM)=_{M}) = CψC \psi where CC is a (Mpd2xq)(Mpd^2xq) constraint matrix.

For same_means models:

Should have the form θ\theta=( = (μ\mu,ψ\psi, σ1,...,σM,α1,...,αM1,\sigma_{1},...,\sigma_{M},\alpha_{1},...,\alpha_{M-1},ν\nu)), where

  • μ\mu=(μ1,...,μg)= (\mu_{1},...,\mu_{g}) where μi\mu_{i} is the mean parameter for group ii and gg is the number of groups.

  • If AR constraints are employed, ψ\psi is as for constrained models, and if AR constraints are not employed, ψ\psi= = (ϕ\phi1_{1},...,,...,ϕ\phiM)_{M}).

For models with weight_constraints:

Drop α1,...,αM1\alpha_1,...,\alpha_{M-1} from the parameter vector.

For structural models:

Reduced form models can be directly used as recursively identified structural models. If the structural model is identified by conditional heteroskedasticity, the parameter vector should have the form θ\theta=(ϕ1,0,...,ϕM,0, = (\phi_{1,0},...,\phi_{M,0},ϕ\phi1,...,_{1},...,ϕ\phiM,vec(W),_{M}, vec(W),λ\lambda2,...,_{2},...,λ\lambdaM,α1,...,αM1,_{M},\alpha_{1},...,\alpha_{M-1},ν\nu)), where

  • λ\lambdam=(λm1,...,λmd)_{m}=(\lambda_{m1},...,\lambda_{md}) contains the eigenvalues of the mmth mixture component.

If AR parameters are constrained:

Replace ϕ\phi1_{1},...,,..., ϕ\phiM_{M} with ψ\psi (qx1)(qx1) that satisfies (ϕ\phi1_{1},...,,..., ϕ\phiM)=_{M}) = CψC \psi, as above.

If same_means:

Replace (ϕ1,0,...,ϕM,0)(\phi_{1,0},...,\phi_{M,0}) with (μ1,...,μg)(\mu_{1},...,\mu_{g}), as above.

If WW is constrained:

Remove the zeros from vec(W)vec(W) and make sure the other entries satisfy the sign constraints.

If λmi\lambda_{mi} are constrained via C_lambda:

Replace λ\lambda2,...,_{2},..., λ\lambdaM_{M} with γ\gamma (rx1)(rx1) that satisfies (λ\lambda2_{2} ,...,,..., λ\lambdaM)=_{M}) = CλγC_{\lambda} \gamma where CλC_{\lambda} is a (d(M1)xr)(d(M-1) x r) constraint matrix.

If λmi\lambda_{mi} are constrained via fixed_lambdas:

Drop λ\lambda2,...,_{2},..., λ\lambdaM_{M} from the parameter vector.

Above, ϕm,0\phi_{m,0} is the intercept parameter, Am,iA_{m,i} denotes the iith coefficient matrix of the mmth mixture component, Ωm\Omega_{m} denotes the error term covariance matrix of the mm:th mixture component, and αm\alpha_{m} is the mixing weight parameter. The WW and λmi\lambda_{mi} are structural parameters replacing the error term covariance matrices (see Virolainen, 2022). If M=1M=1, αm\alpha_{m} and λmi\lambda_{mi} are dropped. If parametrization=="mean", just replace each ϕm,0\phi_{m,0} with regimewise mean μm\mu_{m}. vec()vec() is vectorization operator that stacks columns of a given matrix into a vector. vech()vech() stacks columns of a given matrix from the principal diagonal downwards (including elements on the diagonal) into a vector.

In the GMVAR model, M1=MM1=M and ν\nu is dropped from the parameter vector. In the StMVAR model, M1=0M1=0. In the G-StMVAR model, the first M1 regimes are GMVAR type and the rest M2 regimes are StMVAR type. In StMVAR and G-StMVAR models, the degrees of freedom parameters in ν\nu should be strictly larger than two.

The notation is similar to the cited literature.

model

is "GMVAR", "StMVAR", or "G-StMVAR" model considered? In the G-StMVAR model, the first M1 components are GMVAR type and the rest M2 components are StMVAR type.

constraints

a size (Mpd2xq)(Mpd^2 x q) constraint matrix CC specifying general linear constraints to the autoregressive parameters. We consider constraints of form (ϕ\phi1_{1},...,,...,ϕ\phiM)=_{M}) = CψC \psi, where ϕ\phim_{m}=(vec(Am,1),...,vec(Am,p)(pd2x1),m=1,...,M = (vec(A_{m,1}),...,vec(A_{m,p}) (pd^2 x 1), m=1,...,M, contains the coefficient matrices and ψ\psi (qx1)(q x 1) contains the related parameters. For example, to restrict the AR-parameters to be the same for all regimes, set CC= [I:...:I]' (Mpd2xpd2)(Mpd^2 x pd^2) where I = diag(p*d^2). Ignore (or set to NULL) if linear constraints should not be employed.

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 M=3, the argument list(1, 2:3) restricts the mean parameters of the second and third regime to be the same but the first regime has freely estimated (unconditional) mean. Ignore or set to NULL if mean parameters should not be restricted to be the same among any regimes. This constraint is available only for mean parametrized models; that is, when parametrization="mean".

weight_constraints

a numeric vector of length M1M-1 specifying fixed parameter values for the mixing weight parameters αm, m=1,...,M1\alpha_m, \ m=1,...,M-1. Each element should be strictly between zero and one, and the sum of all the elements should be strictly less than one.

structural_pars

If NULL a reduced form model is considered. Reduced models can be used directly as recursively identified structural models. For a structural model identified by conditional heteroskedasticity, should be a list containing at least the first one of the following elements:

  • W - a (dxd)(dxd) matrix with its entries imposing constraints on WW: NA indicating that the element is unconstrained, a positive value indicating strict positive sign constraint, a negative value indicating strict negative sign constraint, and zero indicating that the element is constrained to zero.

  • C_lambda - a (d(M1)xr)(d(M-1) x r) constraint matrix that satisfies (λ\lambda2_{2},...,,..., λ\lambdaM)=_{M}) = CλγC_{\lambda} \gamma where γ\gamma is the new (rx1)(r x 1) parameter subject to which the model is estimated (similarly to AR parameter constraints). The entries of C_lambda must be either positive or zero. Ignore (or set to NULL) if the eigenvalues λmi\lambda_{mi} should not be constrained.

  • fixed_lambdas - a length d(M1)d(M-1) numeric vector (λ\lambda2_{2},...,,..., λ\lambdaM)_{M}) with elements strictly larger than zero specifying the fixed parameter values for the parameters λmi\lambda_{mi} should be constrained to. This constraint is alternative C_lambda. Ignore (or set to NULL) if the eigenvalues λmi\lambda_{mi} should not be constrained.

See Virolainen (forthcoming) for the conditions required to identify the shocks and for the B-matrix as well (it is WW times a time-varying diagonal matrix with positive diagonal entries).

stat_tol

numerical tolerance for stationarity of the AR parameters: if the "bold A" matrix of any regime has eigenvalues larger that 1 - stat_tol the model is classified as non-stationary. Note that if the tolerance is too small, numerical evaluation of the log-likelihood might fail and cause error.

posdef_tol

numerical tolerance for positive definiteness of the error term covariance matrices: if the error term covariance matrix of any regime has eigenvalues smaller than this, the model is classified as not satisfying positive definiteness assumption. Note that if the tolerance is too small, numerical evaluation of the log-likelihood might fail and cause error.

df_tol

the parameter vector is considered to be outside the parameter space if all degrees of freedom parameters are not larger than 2 + df_tol.

Value

Returns TRUE if the given parameter vector lies in the parameter space and FALSE otherwise.

References

@keywords internal

Examples

# GMVAR(1,1), d=2 model:
params11 <- c(1.07, 127.71, 0.99, 0.00, -0.01, 0.99, 4.05,
  2.22, 8.87)
in_paramspace(p=1, M=1, d=2, params=params11)

# GMVAR(2,2), d=2 model:
params22 <- c(1.39, -0.77, 1.31, 0.14, 0.09, 1.29, -0.39,
 -0.07, -0.11, -0.28, 0.92, -0.03, 4.84, 1.01, 5.93, 1.25,
  0.08, -0.04, 1.27, -0.27, -0.07, 0.03, -0.31, 5.85, 3.57,
  9.84, 0.74)
in_paramspace(p=2, M=2, d=2, params=params22)

# GMVAR(2,2), d=2 model with AR-parameters restricted to be
# the same for both regimes:
C_mat <- rbind(diag(2*2^2), diag(2*2^2))
params22c <- c(1.03, 2.36, 1.79, 3.00, 1.25, 0.06,0.04,
 1.34, -0.29, -0.08, -0.05, -0.36, 0.93, -0.15, 5.20,
 5.88, 3.56, 9.80, 0.37)
in_paramspace(p=2, M=2, d=2, params=params22c, constraints=C_mat)

# Structural GMVAR(2, 2), d=2 model identified with sign-constraints:
params22s <- c(1.03, 2.36, 1.79, 3, 1.25, 0.06, 0.04, 1.34, -0.29,
 -0.08, -0.05, -0.36, 1.2, 0.05, 0.05, 1.3, -0.3, -0.1, -0.05, -0.4,
  0.89, 0.72, -0.37, 2.16, 7.16, 1.3, 0.37)
W_22 <- matrix(c(1, 1, -1, 1), nrow=2, byrow=FALSE)
in_paramspace(p=2, M=2, d=2, params=params22s,
  structural_pars=list(W=W_22))

[Package gmvarkit version 2.1.2 Index]