
Fits the Matern Cluster point process to a point pattern dataset by the Method of Minimum Contrast.
matclust.estK(X, startpar=c(kappa=1,scale=1), lambda=NULL,
q = 1/4, p = 2, rmin = NULL, rmax = NULL, ...)
Data to which the Matern Cluster model will be fitted. Either a point pattern or a summary statistic. See Details.
Vector of starting values for the parameters of the Matern Cluster process.
Optional. An estimate of the intensity of the point process.
Optional. Exponents for the contrast criterion.
Optional. The interval of
Optional arguments passed to optim
to control the optimisation algorithm. See Details.
An object of class "minconfit"
. There are methods for printing
and plotting this object. It contains the following main components:
Vector of fitted parameter values.
Function value table (object of class "fv"
)
containing the observed values of the summary statistic
(observed
) and the theoretical values of the summary
statistic computed from the fitted model parameters.
This algorithm fits the Matern Cluster point process model
to a point pattern dataset
by the Method of Minimum Contrast, using the
The argument X
can be either
An object of class "ppp"
representing a point pattern dataset.
The Kest
, and the method of minimum contrast
will be applied to this.
An object of class "fv"
containing
the values of a summary statistic, computed for a point pattern
dataset. The summary statistic should be the Kest
or one of its relatives.
The algorithm fits the Matern Cluster point process to X
,
by finding the parameters of the Matern Cluster model
which give the closest match between the
theoretical mincontrast
.
The Matern Cluster point process is described in Moller and Waagepetersen
(2003, p. 62). It is a cluster process formed by taking a
pattern of parent points, generated according to a Poisson process
with intensity scale
. The named vector of stating values can use
either R
or scale
as the name of the second component,
but the latter is recommended for consistency with other cluster models.
The theoretical scale
and
In this algorithm, the Method of Minimum Contrast is first used to find
optimal values of the parameters
If the argument lambda
is provided, then this is used
as the value of X
is a
point pattern, then X
.
If X
is a summary statistic and lambda
is missing,
then the intensity NA
.
The remaining arguments rmin,rmax,q,p
control the
method of minimum contrast; see mincontrast
.
The Matern Cluster process can be simulated, using
rMatClust
.
Homogeneous or inhomogeneous Matern Cluster models can also be
fitted using the function kppm
.
The optimisation algorithm can be controlled through the
additional arguments "..."
which are passed to the
optimisation function optim
. For example,
to constrain the parameter values to a certain range,
use the argument method="L-BFGS-B"
to select an optimisation
algorithm that respects box constraints, and use the arguments
lower
and upper
to specify (vectors of) minimum and
maximum values for each parameter.
Moller, J. and Waagepetersen, R. (2003). Statistical Inference and Simulation for Spatial Point Processes. Chapman and Hall/CRC, Boca Raton.
Waagepetersen, R. (2007) An estimating function approach to inference for inhomogeneous Neyman-Scott processes. Biometrics 63, 252--258.
kppm
,
lgcp.estK
,
thomas.estK
,
mincontrast
,
Kest
,
rMatClust
to simulate the fitted model.
# NOT RUN {
data(redwood)
u <- matclust.estK(redwood, c(kappa=10, scale=0.1))
u
plot(u)
# }
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