The K-means algorithm works as follows:
- choose k points as initial centroids (hence, K-*);
- calculate the distance from all vertices to the k centroids choosen;
- assign each vertex to the closest centroid;
- recalculate the position of the centroids by generating the mean between all the vertices that belong to the centroid (hence, k-means, one mean calculation for each of the k centroids);
- go to step
2 and stop when, in step
3, no vertex get assigned to another centroid -- or until your error condition gets satisfied.
In your case, as you have an undirected graph, it'd be better for you to generate the coordinates of each vertex considering the edge distances, and then, apply the algorithm.
If you don't want to do this initial process, you may calculate the distance from a vertex to all other reachable vertices, but you'd have to do this for every iteration -- which is quite an unnecessary overhead.
For your undirected graph:
[vertex1] [vertex2] [edge cost]
a b 1
a c 2
a d 3
b d 4
c d 5
The table of distances would be something like:
a b c d
a 0 1 2 3
b 1 0 (1) 4
c 2 (1) 0 5
d 3 4 5 0
(1) - b to c = (b to a, a to c) = 3
If this should be your table, simply apply the Dijkstra algorithm on your graph, for each vertex, and consider the resultant table your table of distances.
The table would have the minimal distances, but, if you have any other policy to calculate it, it's totally up to you saying how to calculate it.
Notice also that, if your graph is directed, the matrix will not be symmetric, as it is, in this case.