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Clustering Methods K- means. K-means Algorithm Assume that K=3 and initially the points are assigned to clusters as follows. C 1 ={x 1,x 2,x 3 }, C 2.

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Presentation on theme: "Clustering Methods K- means. K-means Algorithm Assume that K=3 and initially the points are assigned to clusters as follows. C 1 ={x 1,x 2,x 3 }, C 2."— Presentation transcript:

1 Clustering Methods K- means

2 K-means Algorithm

3 Assume that K=3 and initially the points are assigned to clusters as follows. C 1 ={x 1,x 2,x 3 }, C 2 ={x 4,x 5,x 6 } and C 3 ={x 7,x 8 }. Apply the K-means algorithm until convergence.(i.e. untill the clusters do not change), using the manhattan distance. Problem Statement

4 Given data X1=(1,9) X2=(1,2) X3=(9,5) X4=(4,7) X5=(10,6) X6=(7,5) X7=(2,3) X8=(4,8)

5 K-means  The initial centroids are  C 1 ={x 1,x 2,x 3 }  C 2 ={x 4,x 5,x 6 }  C 3 ={x 7,x 8 }

6 K-means Manhattan distance Distance calculation:

7 Iteration 1 The table shows the distance between the object and centroids

8 Iteration 1 New centroids

9 Iteration 2 The table shows the distance between the object and new centroids

10 Iteration 2 New centroids

11 Interation 3 The table shows the distance between the object and new centroids

12 Iteration 3 New centroids

13 Results At this stage centroid remains same. The K-means algorithm converges here. Thus the final centroids are ◦ C 1 =(3,8) ◦ C 2 =(8.67,5.33) ◦ C 3 =(1.5,2.5)

14 Results


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