Calculates estimates of confidence intervals for the parameters of a
   model fitted by hmm.discnp.  Uses a method based quantiles
   of estimates produced by simulation (or “parametric
   bootstrapping”).
squantCI(object, seed = NULL, alpha = 0.05, nsim=100, verbose = TRUE)An object of class hmm.discnp as returned by hmm().
Integer scalar serving as a seed for the random number generator.
  If left NULL the seed itself is chosen randomly from the
  set of integers between 1 and \(10^5\).
Positive real number strictly between 0 and 1.  A set of
  100*(1-alpha)% confidence intervals will be produced.
A positive integer. The number of simulations upon which the confidence interval estimates will be based.
Logical scalar; if TRUE, iteration counts will be
  printed out during each of the simulation and model-fitting
  stages.
A 2-by-npar matrix (where npar is the number of
   “independent” parameters in the model) whose columns
   form the estimated confidence intervals.  The column labels
   indicate the parameters to which each column pertains, in a
   reasonably perspicuous manner.  The row labels indicate the
   relevant quantiles in percentages.
This matrix has an attribute seed (the random number
   generation seed that was used) so that the calculations can
   be reproduced.
This function is currently applicable only to models fitted to
  univariate data.  The confidence intervals calculated are for the
  “raw” parameters (entries of tpm with the
  last column dropped --- since the rows sum to 1, and the
  entries of Rho with the last row dropped --- since
  the columns sum to 1.
scovmat() link{rhmm}() link{hmm)}()
# NOT RUN {
y   <- list(lindLandFlows$deciles,ftLiardFlows$deciles)
fit <- hmm(y,K=3)
CIs <- squantCI(fit,nsim=100)
# }
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