Bivariate Cluster Plot (of a Partitioning Object)
Draws a 2-dimensional “clusplot” (clustering plot) on the
current graphics device.
The generic function has a default and a partition
method.
clusplot(x, ...) ## S3 method for class 'partition' clusplot(x, main = NULL, dist = NULL, ...)
x |
an R object, here, specifically an object of class
|
main |
title for the plot; when |
dist |
when |
... |
optional arguments passed to methods, notably the
|
The clusplot.partition()
method relies on clusplot.default
.
If the clustering algorithms pam
, fanny
and clara
are applied to a data matrix of observations-by-variables then a
clusplot of the resulting clustering can always be drawn. When the
data matrix contains missing values and the clustering is performed
with pam
or fanny
, the dissimilarity
matrix will be given as input to clusplot
. When the clustering
algorithm clara
was applied to a data matrix with NAs
then clusplot will replace the missing values as described in
clusplot.default
, because a dissimilarity matrix is not
available.
For the partition
(and default
) method: An invisible
list with components Distances
and Shading
, as for
clusplot.default
, see there.
a 2-dimensional clusplot is created on the current graphics device.
clusplot.default
for references;
partition.object
, pam
,
pam.object
, clara
,
clara.object
, fanny
,
fanny.object
, par
.
## For more, see ?clusplot.default ## 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))) clusplot(pam(x, 2)) ## add noise, and try again : x4 <- cbind(x, rnorm(25), rnorm(25)) clusplot(pam(x4, 2))
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