fitted.ppm {spatstat} | R Documentation |
Given a point process model fitted to a point pattern, compute the fitted conditional intensity of the model at the points of the pattern, or at the points of the quadrature scheme used to fit the model.
## S3 method for class 'ppm': fitted(object, ..., type="lambda", dataonly=FALSE, check=TRUE, repair=TRUE)
object |
The fitted point process model (an object of class "ppm" )
|
... |
Ignored. |
type |
String (partially matched) indicating whether the fitted value is the
conditional intensity ("lambda" ) or the trend
("trend" ).
|
dataonly |
Logical. If TRUE , then values will only be computed
at the points of the data point pattern. If FALSE , then
values will be computed at all the points of the quadrature scheme
used to fit the model, including the points of the data point pattern.
|
check |
Logical value indicating whether to check the internal format
of object . If there is any possibility that this object
has been restored from a dump file, or has otherwise lost track of
the environment where it was originally computed, set
check=TRUE .
|
repair |
Logical value indicating whether to repair the internal format
of object , if it is found to be damaged.
|
The argument object
must be a fitted point process model
(object of class "ppm"
). Such objects are produced by the
model-fitting algorithm ppm
).
This function evaluates the conditional intensity
lambdahat(u,x)
or spatial trend bhat(u) of the fitted point process
model for certain locations u,
where x
is the original point pattern dataset to which
the model was fitted.
The locations u at which the fitted conditional intensity/trend
is evaluated, are the points of the
quadrature scheme used to fit the model in ppm
.
They include the data points (the points of the original point pattern
dataset x
) and other ``dummy'' points
in the window of observation.
Use predict.ppm
to compute the fitted conditional
intensity at other locations or with other values of the
explanatory variables.
A vector containing the values of the fitted conditional intensity
or (if type="trend"
) the fitted spatial trend.
Entries in this vector correspond to the quadrature points (data or
dummy points) used to fit the model. The quadrature points can be
extracted from object
by union.quad(quad.ppm(object))
.
Adrian Baddeley adrian@maths.uwa.edu.au http://www.maths.uwa.edu.au/~adrian/ and Rolf Turner rolf@math.unb.ca http://www.math.unb.ca/~rolf
Baddeley, A., Turner, R., Moller, J. and Hazelton, M. (2005). Residual analysis for spatial point processes (with discussion). Journal of the Royal Statistical Society, Series B 67, 617–666.
data(cells) str <- ppm(cells, ~x, Strauss(r=0.15), rbord=0.15) lambda <- fitted(str) # extract quadrature points in corresponding order quadpoints <- union.quad(quad.ppm(str)) # plot conditional intensity values # as circles centred on the quadrature points quadmarked <- setmarks(quadpoints, lambda) plot(quadmarked)