kppm(X, trend = ~1, clusters = "Thomas", covariates = NULL, ...,
       statistic="K", statargs=list())"ppp") to which the model
    should be fitted."Thomas", "MatClust" and "LGCP".thomas.estK or
    thomas.estpcf or
    matclust.estK or
    "K" or "pcf"."kppm" representing the fitted model.
  There are methods for printing, plotting, predicting, simulating
  and updating objects of this class.X. Cox models are suitable for
  spatially clustered point patterns.  The model may be either a Poisson cluster process
  with Poisson clusters, or a more general Cox process.
  The type of model is determined by the argument clusters.
  Currently the options 
  are clusters="Thomas" for the Thomas process,
  clusters="MatClust" for the Matern cluster process,
  and clusters="LGCP" for the log-Gaussian Cox process.
  If the trend is constant (~1)
  then the model is homogeneous.
  The empirical $K$-function of the data is computed,
  and the parameters of the cluster model are estimated by
  the method of minimum contrast (matching the theoretical
  $K$-function of the model to the empirical $K$-function
  of the data, as explained in mincontrast).
  Otherwise, the model is inhomogeneous. 
  The algorithm first estimates the intensity function
  of the point process, by fitting a Poisson process with log intensity
  of the form specified by the foTrmula trend.
  Then the inhomogeneous $K$ function is estimated
  by Kinhom using this fitted intensity.
  Finally the parameters of the cluster model
  are estimated by the method of minimum contrast using the
  inhomogeneous $K$ function. This two-step estimation
  procedure is due to Waagepetersen (2007).
  
  If statistic="pcf" then instead of using the
  $K$-function, the algorithm will use
  the pair correlation function pcf for homogeneous
  models and the inhomogeneous pair correlation function
  pcfinhom for inhomogeneous models.
  In this case, the smoothing parameters of the pair correlation
  can be controlled using the argument statargs,
  as shown in the Examples.
plot.kppm,
  predict.kppm,
  simulate.kppm,
  update.kppm,
  vcov.kppm,
  methods.kppm,
  thomas.estK,
  matclust.estK,
  lgcp.estK,
  thomas.estpcf,
  matclust.estpcf,
  lgcp.estpcf,
  mincontrast,
  Kest,
  Kinhom,
  pcf,
  pcfinhom,
  ppmdata(redwood)
  kppm(redwood, ~1, "Thomas")
  kppm(redwood, ~x, "MatClust") 
  kppm(redwood, ~x, "MatClust", statistic="pcf", statargs=list(stoyan=0.2)) 
  kppm(redwood, ~1, "LGCP", statistic="pcf")
  if(require(RandomFields)) {
     kppm(redwood, ~x, "LGCP", statistic="pcf",
           covmodel=list(model="matern", nu=0.3))
  }Run the code above in your browser using DataLab