We all know that the k-means algorithm: which has a complexity of O( n * K * I * d ) Where:
- n = number of points
- K = number of clusters
- I = number of iterations
- 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
- 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.