Fit a homogeneous or inhomogeneous cluster process or Cox point process model to a point pattern by the Method of Minimum Contrast.
clusterfit(X, clusters, lambda = NULL, startpar = NULL,
           q = 1/4, p = 2, rmin = NULL, rmax = NULL, …,
           statistic = NULL, statargs = NULL, algorithm="Nelder-Mead")Data to which the cluster or Cox model will be fitted. Either a point pattern or a summary statistic. See Details.
Character string determining the cluster or Cox model.
    Partially matched.
    Options are "Thomas", "MatClust",
    "Cauchy", "VarGamma" and "LGCP".
Optional. An estimate of the intensity of the point process.
    Either a single numeric specifying a constant intensity,
    a pixel image (object of class "im") giving the
    intensity values at all locations, a fitted point process model
    (object of class "ppm" or "kppm")
    or a function(x,y) which
    can be evaluated to give the intensity value at any location.
Vector of initial values of the parameters of the
    point process mode. If X is a point pattern sensible defaults
    are used. Otherwise rather arbitrary values are used.
Optional. Exponents for the contrast criterion.
Optional. The interval of \(r\) values for the contrast criterion.
Additional arguments passed to mincontrast.
Optional. Name of the summary statistic to be used
    for minimum contrast estimation: either "K" or "pcf".
Optional list of arguments to be used when calculating
    the statistic. See Details.
An object of class "minconfit". There are methods for printing
  and plotting this object. See mincontrast.
This function fits the clustering parameters of a cluster or Cox point
  process model by the Method of Minimum Contrast, that is, by
  matching the theoretical \(K\)-function of the model to the
  empirical \(K\)-function of the data, as explained in
  mincontrast.
If statistic="pcf" (or X appears to be an
  estimated pair correlation function) then instead of using the
  \(K\)-function, the algorithm will use the pair correlation
  function.
If X is a point pattern of class "ppp" an estimate of
  the summary statistic specfied by statistic (defaults to
  "K") is first computed before minimum contrast estimation is
  carried out as described above. In this case the argument
  statargs can be used for controlling the summary statistic
  estimation. The precise algorithm for computing the summary statistic
  depends on whether the intensity specification (lambda) is:
If lambda is NUll or a single numeric the pattern is
      considered homogeneous and either Kest or
      pcf is invoked. In this case lambda is
      not used for anything when estimating the summary statistic.
If lambda is a pixel image (object of class "im"),
      a fitted point process model (object of class "ppm" or
      "kppm") or a function(x,y) the pattern is considered
      inhomogeneous. In this case either Kinhom or
      pcfinhom is invoked with lambda as an
      argument.
After the clustering parameters of the model have been estimated by
  minimum contrast lambda (if non-null) is used to compute the
  additional model parameter \(\mu\).
Diggle, P.J. and Gratton, R.J. (1984) Monte Carlo methods of inference for implicit statistical models. Journal of the Royal Statistical Society, series B 46, 193 -- 212.
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 (2007) 252--258.
# NOT RUN {
  fit <- clusterfit(redwood, "Thomas")
  fit
  if(interactive()){
    plot(fit)
  }
# }
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