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I'm trying to learn to use the kmeans function in R, using the supplied "iris" data set.

data(iris)
mx<-data.matrix(iris)
kx<-kmeans(mx[,-5],centers=3, iter.max=3, nstart=3)
kx$tot.withinss

My understanding is it is meant to randomly select different centers each time it is run, perform iter.max iterations, and repeat nstart times to select the option with the lowest tot.withinss.

No matter how I change iter.max or nstart, or even try to specify various centers myself, I get the same solution (with tot.withinss=78.85144).

Any suggestions what I am doing wrong, or what I am not comprehending properly?

  • Please check withinss vs. tot.withinss in stat.ethz.ch/R-manual/R-devel/library/stats/html/kmeans.html and check them in diffeent runs (with same centers): this should be enough to move forward – Avitus May 29 '17 at 8:45
  • I used that as a reference already but checked again; I think I understand and am using them properly. Still get the same value for tot.withinss every time; ditto (as you would expect) withinss is also the same, the only difference is the id numbers for each cluster can vary between runs. I do get error messages with less than 3 iterations, and a different (worse) results for nstarts=1. But iter.max=3 and nstarts=2 is enough to arrive at the final solution. Does this indicate the algorithm is working perfectly and is just incredibly efficient on this small data set? – James May 30 '17 at 11:26

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