Can anybody explain what the output of the K-Means clustering in WEKA actually means.
kMeans Number of iterations: 9 Within cluster sum of squared errors: 9434.911100488926 Missing values globally replaced with mean/mode Cluster centroids: Cluster# Attribute Full Data 0 1 (400) (310) (90) ================================================= competency134 0.0425 0.0548 0 competency207 0.0425 0.0548 0 competency263 0.01 0.0129 0 competency264 0.01 0.0129 0 competency282 0.01 0.0129 0 competency289 0.01 0.0129 0
What do the numbers in the columns actually mean, it says cluster centroids above the table but how is it possible to determine what the centroids of the two clusters are ?
If anybody could explain what the numbers mean I would be most grateful.
If anybody has any ideas how to complete a silhouette evaluation of the clusters found that would also be great.