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I want to partition a vector (length around 10^5) into five classes. With the function classIntervals from package classInt I wanted to use style = "jenks" natural breaks but this takes an inordinate amount of time even for a much smaller vector of only 500. Setting style = "kmeans" executes almost instantaneously.


my_n <- 100
x <- mapply(rnorm, n = my_n, mean = (1:5) * 5)

system.time(classIntervals(x, n = 5, style = "jenks"))
R> system.time(classIntervals(x, n = 5, style = "jenks"))
   user  system elapsed 
  13.46    0.00   13.45 

system.time(classIntervals(x, n = 5, style = "kmeans"))
R> system.time(classIntervals(x, n = 5, style = "kmeans"))
   user  system elapsed 
   0.02    0.00    0.02

What makes the Jenks algorithm so slow, and is there a faster way to run it?

If need be I will move the last two parts of the question to stats.stackexchange.com:

  • Under what circumstances is kmeans a reasonable substitute for Jenks?
  • Is it reasonable to define classes by running classInt on a random 1% subset of the data points?
share|improve this question
do read the help for functions. kmeans uses a random set of samples as initial cluster centres. To get reproducible results set a seed via set.seed() and read up about k-means and local vs global minima. This is mentioned in ?classIntervals. –  Gavin Simpson Mar 14 '11 at 21:00
Thanks Gavin. I found that part soon after posting and edited the question. –  J. Won. Mar 14 '11 at 21:13
@hadley: That's hard to believe. Imagine your data represents the heights of 10 adults and 90 children. It should be clear that a good clustering algorithm tells you more than stuffing them into equal-sized quantiles. –  J. Won. Mar 15 '11 at 2:35
Ok, but it's pretty unusual your get data with very clear clusters like that. Do you really think that your 100,000 points nicely cluster into only 5 clusters?! If so, I wish I could work with data like yours. –  hadley Mar 15 '11 at 2:53
I don't know about 5 clusters, but there are definitely situations where you expect two clusters. Converting a grayscale image of part of a page into a black and white only image for optical character recognition is an excellent example for which quantiles will be very wrong, but two definite clusters are expected. –  John Robertson Aug 17 '12 at 15:40

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