| HMmdl | R Documentation |
This function estimates a Hidden Markov model with k regimes.
HMmdl(Y, k, Z = NULL, control = list())
Y |
a |
k |
integer determining the number of regimes to use in estimation. Must be greater than or equal to |
Z |
an otpional |
control |
List with model options including:
|
List of class HMmdl (S3 object) with model attributes including:
y: a (T x q) matrix of observations.
fitted: a (T x q) matrix of fitted values.
resid: a (T x q) matrix of residuals.
mu: a (k x q) matrix of estimated means of each process.
beta: if q=1, this is a ((1 + qz) x k) matrix of estimated coefficients. If q>1, this is a list containing k separate ((1 + qz) x q) matrix of estimated coefficients for each regime.
betaZ: a (qz x q) matrix of estimated exogenous regressor coefficients.
intercept: a (k x q) matrix of estimated intercept of each process. If Z is Null, this is the same as mu.
stdev: If q=1, this is a (k x 1) matrix with estimated standard. If q>1, this is a List with k (q x q) matrices with estimated standard deviation on the diagonal.
sigma: If q=1, this is a (k x 1) matrix with variances. If q>1, this is a List with k (q x q) estimated covariance matrix.
theta: vector containing: mu and vech(sigma).
theta_mu_ind: vector indicating location of mean with 1 and 0 otherwise.
theta_sig_ind: vector indicating location of variance and covariances with 1 and 0 otherwise.
theta_var_ind: vector indicating location of variances with 1 and 0 otherwise.
theta_P_ind: vector indicating location of transition matrix elements with 1 and 0 otherwise.
n: number of observations (same as T).
q: number of series.
k: number of regimes in estimated model.
P: a (k x k) transition matrix.
pinf: a (k x 1) vector with limiting probabilities of each regime.
St: a (T x k) vector with smoothed probabilities of each regime at each time t.
deltath: double with maximum absolute difference in vector theta between last iteration.
iterations: number of EM iterations performed to achieve convergence (if less than maxit).
theta_0: vector of initial values used.
init_used: number of different initial values used to get a finite solution. See description of input maxit_converge.
msmu: Boolean. If TRUE model was estimated with switch in mean. If FALSE model was estimated with constant mean.
msvar: Boolean. If TRUE model was estimated with switch in variance. If FALSE model was estimated with constant variance.
control: List with model options used.
logLike: log-likelihood.
AIC: Akaike information criterion.
BIC: Bayesian (Schwarz) information criterion.
Hess: Hessian matrix. Approximated using hessian and only returned if getSE=TRUE.
info_mat: Information matrix. Computed as the inverse of -Hess. If matrix is not PD then nearest PD matrix is obtained using nearest_spd. Only returned if getSE=TRUE.
nearPD_used: Boolean determining whether nearPD function was used on info_mat if TRUE or not if FALSE. Only returned if getSE=TRUE.
theta_se: standard errors of parameters in theta. Only returned if getSE=TRUE.
trace: List with Lists of estimation output for each initial value used due to use_diff_init > 1.
Dempster, A. P., N. M. Laird, and D. B. Rubin. 1977. “Maximum Likelihood from Incomplete Data via the EM Algorithm.” Journal of the Royal Statistical Society. Series B 39 (1): 1–38..
Hamilton, James D. 1990. “Analysis of time series subject to changes in regime.” Journal of econometrics, 45 (1-2): 39–70.
Krolzig, Hans-Martin. 1997. “The markov-switching vector autoregressive model.”. Springer.
Nmdl
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