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km <- kmeans(iris,3)

predict.kmeans <- 
 function(km, data)
 {k <- nrow(km$centers)
 n <- nrow(data)
 d <- as.matrix(dist(rbind(km$centers, data)))[-(1:k),1:k]
 out <- apply(d, 1, which.min)

# Error:apply(d, 1, which.min) : dim(X) must have a positive length

I have some problems with my simple code here,what's wrong with it?

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@DWin - you got that far? I can't even run the first line assigning km without an error! –  thelatemail Jul 22 '13 at 6:39
Impossible!It must have been your own problem. –  Will Wang Jul 22 '13 at 6:44
Nope... fresh start, kmeans(iris,3) errors out. kmeans(iris[1:4],3) on the other hand works just fine. –  thelatemail Jul 22 '13 at 6:47
1. Explicitly specify variables predict.kmeans(km,iris[1,1:4]). 2. When you predict only one case (iris[1,1:4)) d becomes a vector not a matrix what causes an error on the next step. –  DrDom Jul 22 '13 at 6:58
@DrDom I think adding drop = FALSE would work equally equally good. –  Roman Luštrik Jul 22 '13 at 6:59

1 Answer 1

  1. kmeans works on numerical matrices only. As @thelatemail pointed out, column 5 of iris isn't numeric.
  2. you could use use cl_predict from clue instead of predict.kmeans
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With the iris data, and I think with any similar data (mostly numerical, some factors), there's no point including the factors anyway. So kmeans(iris[,1:4], n) makes sense. –  naught101 Sep 9 '14 at 5:19

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