cauchy.estpcf(X, startpar=c(kappa=1,eta2=1), lambda=NULL,
q = 1/4, p = 2, rmin = NULL, rmax = NULL, ...,
pcfargs = list())
optim
to control the optimisation algorithm. See Details.pcf.ppp
to control the smoothing in the estimation of the
pair correlation function."minconfit"
. There are methods for printing
and plotting this object. It contains the following main components:"fv"
)
containing the observed values of the summary statistic
(observed
) and the theoretical values of the summary
statistic computed from the fitted model parameters. The argument X
can be either
[object Object],[object Object]
The algorithm fits the Neyman-Scott cluster point process
with Cauchy kernel to X
,
by finding the parameters of the Matern Cluster model
which give the closest match between the
theoretical pair correlation function of the Matern Cluster process
and the observed pair correlation function.
For a more detailed explanation of the Method of Minimum Contrast,
see mincontrast
.
The model is described in Jalilian et al (2011).
It is a cluster process formed by taking a
pattern of parent points, generated according to a Poisson process
with intensity $\kappa$, and around each parent point,
generating a random number of offspring points, such that the
number of offspring of each parent is a Poisson random variable with mean
$\mu$, and the locations of the offspring points of one parent
follow a common distribution described in Jalilian et al (2011).
If the argument lambda
is provided, then this is used
as the value of the point process intensity $\lambda$.
Otherwise, if X
is a
point pattern, then $\lambda$
will be estimated from X
.
If X
is a summary statistic and lambda
is missing,
then the intensity $\lambda$ cannot be estimated, and
the parameter $\mu$ will be returned as NA
.
The remaining arguments rmin,rmax,q,p
control the
method of minimum contrast; see mincontrast
.
The corresponding model can be simulated using rCauchy
.
For computational reasons, the optimisation procedure uses the parameter
eta2
, which is equivalent to 4 * omega^2
where omega
is the scale parameter for the model
as used in rCauchy
.
Homogeneous or inhomogeneous Neyman-Scott/Cauchy models can also be
fitted using the function kppm
and the fitted models
can be simulated using simulate.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.
Jalilian, A., Guan, Y. and Waagepetersen, R. (2011) Decomposition of variance for spatial Cox processes. Scandinavian Journal of Statistics 40, 119-137.
Waagepetersen, R. (2007) An estimating function approach to inference for inhomogeneous Neyman-Scott processes. Biometrics 63, 252--258.
kppm
,
cauchy.estK
,
lgcp.estpcf
,
thomas.estpcf
,
vargamma.estpcf
,
mincontrast
,
pcf
,
pcfmodel
. rCauchy
to simulate the model.
u <- cauchy.estpcf(redwood)
u
plot(u, legendpos="topright")
Run the code above in your browser using DataLab