Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

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.

share|improve this question

1 Answer 1

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!

share|improve this answer
    
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

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.