## S3 method for class 'ppp':
pcf(X, \dots, r = NULL, kernel="epanechnikov", bw=NULL, stoyan=0.15,
                    correction=c("translate", "Ripley"))"ppp").density.density.density."fv").
  Essentially a data frame containing the variables  Formally, the pair correlation function of a stationary point process
  is defined by 
  $$g(r) = \frac{K'(r)}{2\pi r}$$
  where $K'(r)$ is the derivative of $K(r)$, the
  reduced second moment function (aka ``Ripley's $K$ function'')
  of the point process. See 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.
This routine computes an estimate of $g(r)$ by the kernel smoothing method (Stoyan and Stoyan (1994), pages 284--285). By default, their recommendations are followed exactly.
  If correction="translate" then the translation correction
  is used. The estimate is given in equation (15.15), page 284 of
  Stoyan and Stoyan (1994).
  If correction="Ripley" then Ripley's isotropic edge correction
  is used; the estimate is given in equation (15.18), page 285
  of Stoyan and Stoyan (1994).
  If correction=c("translate", "Ripley") then both estimates
  will be computed.
  The choice of smoothing kernel is controlled by the 
  argument kernel which is passed to density.
  The default is the Epanechnikov kernel, recommended by
  Stoyan and Stoyan (1994, page 285).
  The bandwidth of the smoothing kernel can be controlled by the
  argument bw. Its precise interpretation
  is explained in the documentation for density.
  For the Epanechnikov kernel, the argument bw is
  equivalent to $h/\sqrt{5}$.
  Stoyan and Stoyan (1994, page 285) recommend using the Epanechnikov
  kernel with support $[-h,h]$ chosen by the rule of thumn
  $h = c/\sqrt{\lambda}$,
  where $\lambda$ is the (estimated) intensity of the
  point process, and $c$ is a constant in the range from 0.1 to 0.2.
  See equation (15.16).
  If bw is missing, then this rule of thumb will be applied.
  The argument stoyan determines the value of $c$.
  The argument r is the vector of values for the
  distance $r$ at which $g(r)$ should be evaluated.
  There is a sensible default.
  If it is specified, r must be a vector of increasing numbers
  starting from r[1] = 0, 
  and max(r) must not exceed half the diameter of 
  the window.
  To compute a confidence band for the true value of the
  pair correlation function, use lohboot.
Kest,
  pcf,
  density,
  lohboot.data(simdat)
  <testonly>simdat <- simdat[seq(1,simdat$n, by=4)]</testonly>
  p <- pcf(simdat)
  plot(p, main="pair correlation function for simdat")
  # indicates inhibition at distances r < 0.3Run the code above in your browser using DataLab