vcov.kppm | R Documentation |
Returns the variance-covariance matrix of the estimates of the parameters of a fitted cluster point process model.
## S3 method for class 'kppm'
vcov(object, ...,
what=c("vcov", "corr", "fisher"),
fast = NULL, rmax = NULL, eps.rmax = 0.01,
verbose = TRUE)
object |
A fitted cluster point process model (an object of class
|
... |
Ignored. |
what |
Character string (partially-matched)
that specifies what matrix is returned.
Options are |
fast |
Logical specifying whether tapering (using sparse matrices from Matrix) should be used to speed up calculations. Warning: This is expected to underestimate the true asymptotic variances/covariances. |
rmax |
Optional. The dependence range. Not usually specified by the
user. Only used when |
eps.rmax |
Numeric. A small positive number which is used to determine |
verbose |
Logical value indicating whether to print progress reports during very long calculations. |
This function computes the asymptotic variance-covariance
matrix of the estimates of the canonical (regression) parameters in the
cluster point process model object
. It is a method for the
generic function vcov
.
The result is an n * n
matrix where n =
length(coef(model))
.
To calculate a confidence interval for a regression parameter,
use confint
as shown in the examples.
A square matrix.
Abdollah Jalilian and Rasmus Waagepetersen. Ported to spatstat by \adrian and \ege.
Waagepetersen, R. (2007) Estimating functions for inhomogeneous spatial point processes with incomplete covariate data. Biometrika 95, 351–363.
kppm
,
vcov
,
vcov.ppm
fit <- kppm(redwood ~ x + y)
vcov(fit)
vcov(fit, what="corr")
# confidence interval
confint(fit)
# cross-check the confidence interval by hand:
sd <- sqrt(diag(vcov(fit)))
t(coef(fit) + 1.96 * outer(sd, c(lower=-1, upper=1)))
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