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We all know that the k-means algorithm:enter image description here which has a complexity of O( n * K * I * d ) Where:

  1. n = number of points
  2. K = number of clusters
  3. I = number of iterations
  4. d = number of attributes

but my question is when applying K-means in Dynamic Programming I can't figure out the complexity of it.

the idea of K-means using DP in a nutshell is as follows:

  • Compute the proximity matrix
  • Let each data point be a cluster
  • Repeat
    • Merge the two closest clusters
    • Update the proximity matrix
  • Until only a single cluster remains

I have tried to find a pseudo-code for it so I can try to find out the complexity, but I couldn't.

So, how can I find it's complexity? and what it could be?

Thank you guys in advance for any answer.

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up vote 1 down vote accepted

The algorithm you're describing is not k-means with dynamic programming, but rather a type of hierarchical clustering called agglomerative clustering. Typically, agglomerative clustering implementations take time (IIRC) O(n3d), where n is the number of data points and d is the number of features. Wikipedia goes into a bit more depth about how this works.

Note that the clusters found this way are not the same as the clusters you'd get with k-means. Agglomerative clustering tends to produce very different clusters with a different set of properties.

Hope this helps!

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Hi, thank you for your answer. anyway, still not clear. why o(n3d) and why not mentioning the number of iteration in the complexity measurement. Besides, yes this is a hierarchical clustering based approach. but still you can apply k-means on it. am I wrong?? – mamdouh alramadan Jan 6 '13 at 4:32
@mamdouhalramadan- The number of iterations isn't a variable parameter in this version of clustering - it just finds clusters until all of the clusters have been merged together. This contrasts with k-means, which can run for a variable number of iterations before converging. As a result, there is no direct dependence on some parameter I for the number of iterations. Does that make sense? – templatetypedef Jan 6 '13 at 4:44
actually. I'm still in some kind of lack here!! but that does make sense. so there's no way to do k-means in DP?? – mamdouh alramadan Jan 7 '13 at 0:39

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