pcf3est(X, ..., rmax = NULL, nrval = 128, correction = c("translation",
"isotropic"), delta=NULL, adjust=1, biascorrect=TRUE)"pp3").delta."fv") that can be
  plotted, printed or coerced to a data frame containing the function
  values.  Additionally the value of delta is returned as an attribute
  of this object.
K3est).
  
  The three-dimensional point pattern X is assumed to be a
  partial realisation of a stationary point process $\Phi$.
  The distance between each pair of distinct points is computed.
  Kernel smoothing is applied to these distance values (weighted by
  an edge correction factor) and the result is 
  renormalised to give the estimate of $g_3(r)$.The available edge corrections are: [object Object],[object Object]
  Kernel smoothing is performed using the Epanechnikov kernel
  with half-width delta. If delta is missing, the
  default is to use the rule-of-thumb
  $\delta = 0.26/\lambda^{1/3}$ where
  $\lambda = n/v$ is the estimated intensity, computed
  from the number $n$ of data points and the volume $v$ of the
  enclosing box. This default value of delta is multiplied by
  the factor adjust. 
  The smoothing estimate of the pair correlation $g_3(r)$
  is typically an underestimate when $r$ is small, due to
  truncation of the kernel at $r=0$. 
  If biascorrect=TRUE, the smoothed estimate is
  approximately adjusted for this bias. This is advisable whenever
  the dataset contains a sufficiently large number of points.
Ohser, J. (1983) On estimators for the reduced second moment measure of point processes. Mathematische Operationsforschung und Statistik, series Statistics, 14, 63 -- 71.
Ripley, B.D. (1977) Modelling spatial patterns (with discussion). Journal of the Royal Statistical Society, Series B, 39, 172 -- 212.
K3est,
  pcfX <- rpoispp3(250)
  Z <- pcf3est(X)
  Zbias <- pcf3est(X, biascorrect=FALSE)
  if(interactive()) {
    opa <- par(mfrow=c(1,2))
    plot(Z,     ylim.covers=c(0, 1.2))
    plot(Zbias, ylim.covers=c(0, 1.2))
    par(opa)
  }
  attr(Z, "delta")Run the code above in your browser using DataLab