Step1. select K data points as the initial representatives
Step2. for i = 1 to N, assign item xi to the most similar centroid (this gives K clusters)
Step3. for j = 1 to K, recalculate the cluster centroid Cj
Step4. repeat steps 2 and 3 until these is (little or) no change in clusters
2) Example (Clustering Term) :
Step 1:Initial arbitrary assignment as:
C1 ={ T1,T2} , C2={T3,T4}, C3 = {T5,T6}
Step 2:
Doc -Document
T - Terms in Doc
C - Clusters
Step3 : Cluster Term Similarity Matrix
2) Example (Clustering Term) :
Step 1:Initial arbitrary assignment as:
C1 ={ T1,T2} , C2={T3,T4}, C3 = {T5,T6}
Step 2:
Doc -Document
T - Terms in Doc
C - Clusters
Step3 : Cluster Term Similarity Matrix
i
Step 4 : Using new cluster centroid original Document - Term Matrix
Step5 : The process repeats until no further changes are made to Clusters.