## S3 method for class 'fv':
pcf(X, \dots, method="c")"fv".smooth.spline."a", "b", "c" or "d" indicating the
    method for deriving the pair correlation function from the
    K function."fv", see fv.object)
  representing a pair correlation function.Essentially a data frame containing (at least) the variables
Kest for information
  about $K(r)$. For a stationary Poisson process, the
  pair correlation function is identically equal to 1. Values
  $g(r) < 1$ suggest inhibition between points;
  values greater than 1 suggest clustering.  We also apply the same definition to
  other variants of the classical $K$ function,
  such as the multitype $K$ functions
  (see Kcross, Kdot) and the
  inhomogeneous $K$ function (see Kinhom).
  For all these variants, the benchmark value of
  $K(r) = \pi r^2$ corresponds to
  $g(r) = 1$.
  This routine computes an estimate of $g(r)$
  from an estimate of $K(r)$ or its variants,
  using smoothing splines to approximate the derivative.
  It is a method for the generic function pcf
  for the class "fv".
  
  The argument X should be an estimated $K$ function,
  given as a function value table (object of class "fv",
  see fv.object).
  This object should be the value returned by
  Kest, Kcross, Kmulti
  or Kinhom.
  
  The smoothing spline operations are performed by
  smooth.spline and predict.smooth.spline
  from the modreg library.
  Four numerical methods are available:
  
"c" seems to be the best at 
  suppressing variability for small values of $r$.
  However it effectively constrains $g(0) = 1$.
  If the point pattern seems to have inhibition at small distances,
  you may wish to experiment with method "b" which effectively
  constrains $g(0)=0$. Method "a" seems
  comparatively unreliable.  Useful arguments to control the splines
  include the smoothing tradeoff parameter spar
  and the degrees of freedom df. See smooth.spline
  for details.
Stoyan, D. and Stoyan, H. (1994) Fractals, random shapes and point fields: methods of geometrical statistics. John Wiley and Sons.
pcf,
  pcf.ppp,
  Kest,
  Kinhom,
  Kcross,
  Kdot,
  Kmulti,
  alltypes,
  smooth.spline,
  predict.smooth.spline# univariate point pattern
  data(simdat)
  <testonly>simdat <- simdat[seq(1,simdat$n, by=4)]</testonly>
  K <- Kest(simdat)
  p <- pcf.fv(K, spar=0.5, method="b")
  plot(p, main="pair correlation function for simdat")
  # indicates inhibition at distances r < 0.3Run the code above in your browser using DataLab