pmatrix.msm(x, t=1, t1=0, covariates="mean",
ci=c("none","normal","bootstrap"), cl=0.95, B=1000,
...)
msm
.x
with piecewise-constant intensities fitted
using the pci
option to msm
. The probabilities will be computed on the interval [t1,"mean"
, denoting the means of the covariates in
the data (this is the default),
the number 0
, indicating that all the"normal"
, then calculate a confidence interval for
the transition probabilities by simulating B
random vectors
from the asymptotic multivariate normal distribution implied by the
maximum likelihood estimates (and cMatrixExp
to
control the method of computing the matrix exponential. Or if ci="normal"
or ci="bootstrap"
, pmatrix.msm
returns a list with
components estimates
and ci
, where estimates
is
the matrix of estimated transition probabilities, and ci
is a
list of two matrices containing the upper and lower confidence
limits.
For non-homogeneous processes, where covariates and hence the
transition intensity matrix $Q$ are piecewise-constant in time,
the transition probability matrix is calculated as
a product of matrices over a series of intervals, as explained in
pmatrix.piecewise.msm
.
The pmatrix.piecewise.msm
function is only necessary for models fitted using a
time-dependent covariate in the covariates
argument to
msm
. For time-inhomogeneous models fitted using "pci",
pmatrix.msm
can be used, with arguments t
and t1
,
to calculate transition probabilities over any time period.
qmatrix.msm
, pmatrix.piecewise.msm
, boot.msm