## S3 method for class 'formula':
specc(x, data = NULL, na.action = na.omit, ...)## S3 method for class 'matrix':
specc(x, centers, kernel = "rbfdot", kpar = list(sigma = 0.1),
iterations = 200, mod.sample = 0.6, na.action = na.omit, ...)
specc
wich extends the class vector
containing integers indicating the cluster to which
each point is allocated. The following slots contain useful informationk
(number of clusters) eigenvectors of a matrix derived
from the distance between points. Very good results are obtained by
using a standard clustering technique
to cluster the resulting eigenvector matrixes.kpca
, kcca
## Cluster the spirals data set.
data(spirals)
sc <- specc(spirals, centers=2)
sc
centers(sc)
size(sc)
withinss(sc)
plot(spirals, col=sc)
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