markvario(X, correction = c("isotropic", "Ripley", "translate"),
r = NULL, method = "density", ..., normalise=FALSE)"ppp" or something acceptable to
as.ppp. It must have marks which are numeric."isotropic", "Ripley" or "translate".
It specifies the edge correction(s) to be applied."density",
"loess",
"sm" and "smrep".TRUE, normalise the variogram by
dividing it by the estimated mark variance."fv" (see fv.object).
Essentially a data frame containing numeric columns"iso" and/or "trans",
according to the selected edge corrections. These columns contain
estimates of the function $\gamma(r)$
obtained by the edge corrections named.The mark variogram of a marked point process is analogous, but not equivalent, to the variogram of a random field in geostatistics. See Waelder and Stoyan (1996).
Waelder, O. and Stoyan, D. (1996) On variograms in point process statistics. Biometrical Journal 38 (1996) 895-905.
markcorr for numeric marks. Mark connection function markconnect and
multitype K-functions Kcross, Kdot
for factor-valued marks.
# Longleaf Pine data
# marks represent tree diameter
data(longleaf)
# Subset of this large pattern
swcorner <- owin(c(0,100),c(0,100))
sub <- longleaf[ , swcorner]
# mark correlation function
mv <- markvario(sub)
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