N objects into M clusters, where no overlap is allowed.
Similar items are in a cluster and the cluster may be represented by a centroid or cluster representative that is indicative of the characteristics of the items it contains.
D1 as the representative for C1.
 Di, calculate the similarity S with the representative for each existing cluster.
 Smax is greater than a threshold value St, add the item to the corresponding cluster and recalculate the cluster representative; otherwise, use Di to initiate a new cluster.
 Di remains to be clustered, return to Step 2.
 N-1 pairwise joins beginning from an unclustered data set, or divisive, beginning with all objects in a single cluster and progressing through N-1 divisions of some cluster into a smaller cluster.
  | 
  
 
   | 
 
| 
          
     I’ve locked the door.      They’re as safe as houses (very safe).  |