I'm created a code book based on k-means clustering algorithm.But the algorithm didn't converge to an optimal code book, each time, the cluster centroids are varying(because of random selection of initial seeds). There is an option in Matlab to give an initial matrix to K-Means.But how we can can select the initial code book from a large data set? Is there any other way to get a unique code book using K-means?
It's somewhat standard to run k-means multiple times using different initial states (e.g., initial seeds) and choose the result with the lowest error as the best result.
It's also typical to seed k-means by randomly choosing k elements from your data set as the initial seeds.