How can we implement K-means algorithm in Matlab without using kmeans(X,k) syntax?

Actually the problem is not implementing the algorithm. please see the the image below:

I implemented the algorithm offered from most of sites e.g. http://en.wikipedia.org/wiki/Kmeans

```
1. Give initial values to m1 .. mk
2. Assignment with closest mean
3. Update
```

I set 4 observations of X (200 samples) which I knew already that these 4 observations are from 1 cluster. hence, according to algorithm, the above clustering of shown image is explainable while that's not true. I think 4 initial values shouldn't select randomly.

I also run some other source code such as http://people.revoledu.com/kardi/tutorial/kMean/matlab_kMeans.htm. the same result deduced. you can download my observations from http://www.4shared.com/get/IfwUEUBD/Observation.html and see by yourself the result.

`kmeans`

source code, enter`type kmeans.m`

at the command prompt in MATLAB. – abcd Jul 18 '11 at 19:28