For a marked point pattern,
estimate the inhomogeneous version of the multitype \(K\) function
which counts the expected number of points of subset \(J\)
within a given distance from a typical point in subset I
,
adjusted for spatially varying intensity.
Kmulti.inhom(X, I, J, lambdaI=NULL, lambdaJ=NULL,
…,
r=NULL, breaks=NULL,
correction=c("border", "isotropic", "Ripley", "translate"),
lambdaIJ=NULL,
sigma=NULL, varcov=NULL,
lambdaX=NULL, update=TRUE, leaveoneout=TRUE)
The observed point pattern, from which an estimate of the inhomogeneous multitype \(K\) function \(K_{IJ}(r)\) will be computed. It must be a marked point pattern. See under Details.
Subset index specifying the points of X
from which distances are measured. See Details.
Subset index specifying the points in X
to which
distances are measured. See Details.
Optional.
Values of the estimated intensity of the sub-process X[I]
.
Either a pixel image (object of class "im"
),
a numeric vector containing the intensity values
at each of the points in X[I]
,
a fitted point process model
(object of class "ppm"
or "kppm"
or "dppm"
),
or a function(x,y)
which
can be evaluated to give the intensity value at any location,
Optional.
Values of the estimated intensity of the sub-process X[J]
.
Either a pixel image (object of class "im"
),
a numeric vector containing the intensity values
at each of the points in X[J]
,
a fitted point process model
(object of class "ppm"
or "kppm"
or "dppm"
),
or a function(x,y)
which
can be evaluated to give the intensity value at any location.
Ignored.
Optional. Numeric vector. The values of the argument \(r\) at which the multitype \(K\) function \(K_{IJ}(r)\) should be evaluated. There is a sensible default. First-time users are strongly advised not to specify this argument. See below for important conditions on \(r\).
This argument is for internal use only.
A character vector containing any selection of the
options "border"
, "bord.modif"
,
"isotropic"
, "Ripley"
, "translate"
,
"none"
or "best"
.
It specifies the edge correction(s) to be applied.
Alternatively correction="all"
selects all options.
Optional. A matrix containing estimates of
the product of the intensities lambdaI
and lambdaJ
for each pair of points, the first point belonging to subset
I
and the second point to subset J
.
Optional arguments passed to density.ppp
to control the smoothing bandwidth, when lambda
is
estimated by kernel smoothing.
Optional. Values of the intensity for all points of X
.
Either a pixel image (object of class "im"
),
a numeric vector containing the intensity values
at each of the points in X
,
a fitted point process model
(object of class "ppm"
or "kppm"
or "dppm"
),
or a function(x,y)
which
can be evaluated to give the intensity value at any location.
If present, this argument overrides both lambdaI
and
lambdaJ
.
Logical value indicating what to do when
lambdaI
, lambdaJ
or lambdaX
is a fitted point process model
(class "ppm"
, "kppm"
or "dppm"
).
If update=TRUE
(the default),
the model will first be refitted to the data X
(using update.ppm
or update.kppm
)
before the fitted intensity is computed.
If update=FALSE
, the fitted intensity of the
model will be computed without re-fitting it to X
.
Logical value (passed to density.ppp
or
fitted.ppm
) specifying whether to use a
leave-one-out rule when calculating the intensity.
An object of class "fv"
(see fv.object
).
Essentially a data frame containing numeric columns
the values of the argument \(r\) at which the function \(K_{IJ}(r)\) has been estimated
the theoretical value of \(K_{IJ}(r)\) for a marked Poisson process, namely \(\pi r^2\)
The function Kmulti.inhom
is the counterpart, for spatially-inhomogeneous marked point patterns,
of the multitype \(K\) function Kmulti
.
Suppose \(X\) is a marked point process, with marks of any kind. Suppose \(X_I\), \(X_J\) are two sub-processes, possibly overlapping. Typically \(X_I\) would consist of those points of \(X\) whose marks lie in a specified range of mark values, and similarly for \(X_J\). Suppose that \(\lambda_I(u)\), \(\lambda_J(u)\) are the spatially-varying intensity functions of \(X_I\) and \(X_J\) respectively. Consider all the pairs of points \((u,v)\) in the point process \(X\) such that the first point \(u\) belongs to \(X_I\), the second point \(v\) belongs to \(X_J\), and the distance between \(u\) and \(v\) is less than a specified distance \(r\). Give this pair \((u,v)\) the numerical weight \(1/(\lambda_I(u)\lambda_J(u))\). Calculate the sum of these weights over all pairs of points as described. This sum (after appropriate edge-correction and normalisation) is the estimated inhomogeneous multitype \(K\) function.
The argument X
must be a point pattern (object of class
"ppp"
) or any data that are acceptable to as.ppp
.
The arguments I
and J
specify two subsets of the
point pattern. They may be any type of subset indices, for example,
logical vectors of length equal to npoints(X)
,
or integer vectors with entries in the range 1 to
npoints(X)
, or negative integer vectors.
Alternatively, I
and J
may be functions
that will be applied to the point pattern X
to obtain
index vectors. If I
is a function, then evaluating
I(X)
should yield a valid subset index. This option
is useful when generating simulation envelopes using
envelope
.
The argument lambdaI
supplies the values
of the intensity of the sub-process identified by index I
.
It may be either
(object of class "im"
) which
gives the values of the intensity of X[I]
at all locations in the window containing X
;
containing the values of the
intensity of X[I]
evaluated only
at the data points of X[I]
. The length of this vector
must equal the number of points in X[I]
.
of the form function(x,y)
which can be evaluated to give values of the intensity at
any locations.
(object of class "ppm"
, "kppm"
or "dppm"
)
whose fitted trend can be used as the fitted intensity.
(If update=TRUE
the model will first be refitted to the
data X
before the trend is computed.)
if lambdaI
is omitted then it will be estimated
using a leave-one-out kernel smoother.
If lambdaI
is omitted, then it will be estimated using
a `leave-one-out' kernel smoother, as described in Baddeley,
Moller
and Waagepetersen (2000). The estimate of lambdaI
for a given
point is computed by removing the point from the
point pattern, applying kernel smoothing to the remaining points using
density.ppp
, and evaluating the smoothed intensity
at the point in question. The smoothing kernel bandwidth is controlled
by the arguments sigma
and varcov
, which are passed to
density.ppp
along with any extra arguments.
Similarly lambdaJ
supplies the values
of the intensity of the sub-process identified by index J
.
Alternatively if the argument lambdaX
is given, then it specifies
the intensity values for all points of X
, and the
arguments lambdaI
, lambdaJ
will be ignored.
The argument r
is the vector of values for the
distance \(r\) at which \(K_{IJ}(r)\) should be evaluated.
It is also used to determine the breakpoints
(in the sense of hist
)
for the computation of histograms of distances.
First-time users would be strongly advised not to specify r
.
However, if it is specified, r
must satisfy r[1] = 0
,
and max(r)
must be larger than the radius of the largest disc
contained in the window.
Biases due to edge effects are
treated in the same manner as in Kinhom
.
The edge corrections implemented here are
the border method or ``reduced sample'' estimator (see Ripley, 1988). This is the least efficient (statistically) and the fastest to compute. It can be computed for a window of arbitrary shape.
Ripley's isotropic correction (see Ripley, 1988; Ohser, 1983). This is currently implemented only for rectangular windows.
Translation correction (Ohser, 1983). Implemented for all window geometries.
The pair correlation function pcf
can also be applied to the
result of Kmulti.inhom
.
Baddeley, A., Moller, J. and Waagepetersen, R. (2000) Non- and semiparametric estimation of interaction in inhomogeneous point patterns. Statistica Neerlandica 54, 329--350.
# NOT RUN {
# Finnish Pines data: marked by diameter and height
plot(finpines, which.marks="height")
II <- (marks(finpines)$height <= 2)
JJ <- (marks(finpines)$height > 3)
K <- Kmulti.inhom(finpines, II, JJ)
plot(K)
# functions determining subsets
f1 <- function(X) { marks(X)$height <= 2 }
f2 <- function(X) { marks(X)$height > 3 }
K <- Kmulti.inhom(finpines, f1, f2)
# }
Run the code above in your browser using DataLab