nndist(X, ...)
  ## S3 method for class 'ppp':
nndist(X, \dots, k=1, method="C")
  ## S3 method for class 'default':
nndist(X, Y=NULL, \dots, k=1, method="C")nndist.ppp, the argument X should be a point
    pattern (object of class "ppp").
    For nndist.default, typically X and <nndist.ppp
    and nndist.default.kth nearest neighbour."C" and "interpreted".  If k = 1 (the default), the return value is a
  numeric vector v such that v[i] is the
  nearest neighbour distance for the ith data point.
  
  If k is a single integer, then the return value is a
  numeric vector v such that v[i] is the
  kth nearest neighbour distance for the
  ith data point.
  If k is a vector, then the return value is a
  matrix m such that m[i,j] is the
  k[j]th nearest neighbour distance for the
  ith data point.
NA value is returned if the
  distance is not defined (e.g. if there is only one point
  in the point pattern).k is specified, it computes the
  distance to the kth nearest neighbour.  The function nndist is generic, with
  a method for point patterns (objects of class "ppp"),
  and a default method for coordinate vectors.
  There is also a method for line segment patterns, nndist.psp.
  The method for point patterns expects a single
  point pattern argument X and returns the vector of its
  nearest neighbour distances.
  The default method expects that X and Y will determine
  the coordinates of a set of points. Typically X and
  Y would be numeric vectors of equal length. Alternatively
  Y may be omitted and X may be a list with two components
  named x and y, or a matrix or data frame with two columns.
  
  The argument k may be a single integer, or an integer vector.
  If it is a vector, then the $k$th nearest neighbour distances are
  computed for each value of $k$ specified in the vector.
  The argument method is not normally used. It is
  retained only for checking the validity of the software.
  If method = "interpreted" then the distances are
  computed using interpreted R code only. If method="C"
  (the default) then C code is used. 
  The C code is faster by two to three orders of magnitude
  and uses much less memory.
  If there is only one point (if x has length 1),
  then a nearest neighbour distance of Inf is returned.
  If there are no points (if x has length zero)
  a numeric vector of length zero is returned.
  To identify which point is the nearest neighbour of a given point,
  use nnwhich.
  To use the nearest neighbour distances for statistical inference,
  it is often advisable to use the edge-corrected empirical distribution,
  computed by Gest.
  To find the nearest neighbour distances from one point pattern
  to another point pattern, use nncross.
nndist.psp,
  pairdist,
  Gest,
  nnwhich,
  nncross.data(cells)
   # nearest neighbours
   d <- nndist(cells)
   # second nearest neighbours
   d2 <- nndist(cells, k=2)
   # first, second and third nearest
   d1to3 <- nndist(cells, k=1:3)
   x <- runif(100)
   y <- runif(100)
   d <- nndist(x, y)
   # Stienen diagram
   plot(cells %mark% (nndist(cells)/2), markscale=1)Run the code above in your browser using DataLab