Creates plots for visualizing a partition object.
# S3 method for partition
plot(x, ask = FALSE, which.plots = NULL,
     nmax.lab = 40, max.strlen = 5, data = x$data, dist = NULL,
     stand = FALSE, lines = 2,
     shade = FALSE, color = FALSE, labels = 0, plotchar = TRUE,
     span = TRUE, xlim = NULL, ylim = NULL, main = NULL, ...)
an object of class "partition", typically created by the
    functions pam, clara, or fanny.
logical; if true and which.plots is NULL,
    plot.partition operates in interactive mode, via menu.
integer vector or NULL (default), the latter
    producing both plots.  Otherwise, which.plots must contain
    integers of 1 for a clusplot or 2 for
    silhouette.
integer indicating the number of labels which is considered too large for single-name labeling the silhouette plot.
positive integer giving the length to which strings are truncated in silhouette plot labeling.
numeric matrix with the scaled data; per default taken
    from the partition object x, but can be specified explicitly.
when x does not have a diss component as for
    pam(*, keep.diss=FALSE), dist must be the
    dissimilarity if a clusplot is desired.
All optional arguments available for the clusplot.default
    function (except for the diss one) and graphical parameters
    (see par) may also be supplied as arguments to this function.
An appropriate plot is produced on the current graphics device.  This
  can be one or both of the following choices:
 
 Clusplot
 
 Silhouette plot
When ask= TRUE, rather than producing each plot sequentially,
  plot.partition displays a menu listing all the plots that can
  be produced.
  If the menu is not desired but a pause between plots is still wanted,
  call par(ask= TRUE) before invoking the plot command.
The clusplot of a cluster partition consists of a two-dimensional
  representation of the observations, in which the clusters are
  indicated by ellipses (see clusplot.partition for more
  details).
The silhouette plot of a nonhierarchical clustering is fully
  described in Rousseeuw (1987) and in chapter 2 of Kaufman and
  Rousseeuw (1990).
  For each observation i, a bar is drawn, representing its silhouette
  width s(i), see silhouette for details.
  Observations are grouped per cluster, starting with cluster 1 at the
  top.  Observations with a large s(i) (almost 1) are very well
  clustered, a small s(i) (around 0) means that the observation lies
  between two clusters, and observations with a negative s(i) are
  probably placed in the wrong cluster.
A clustering can be performed for several values of k (the number of
  clusters).  Finally, choose the value of k with the largest overall
  average silhouette width.
Rousseeuw, P.J. (1987) Silhouettes: A graphical aid to the interpretation and validation of cluster analysis. J. Comput. Appl. Math., 20, 53--65.
Further, the references in plot.agnes.
partition.object, clusplot.partition,
  clusplot.default, pam,
  pam.object, clara,
  clara.object, fanny,
  fanny.object, par.
## generate 25 objects, divided into 2 clusters.
x <- rbind(cbind(rnorm(10,0,0.5), rnorm(10,0,0.5)),
           cbind(rnorm(15,5,0.5), rnorm(15,5,0.5)))
plot(pam(x, 2))
## Save space not keeping data in clus.object, and still clusplot() it:
data(xclara)
cx <- clara(xclara, 3, keep.data = FALSE)
cx$data # is NULL
plot(cx, data = xclara)
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