Originally posted by: Reenatyzed
so tell me which is ur fav restaurant :v
idk o_O
bundu khan may b... idk o_O
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Originally posted by: Reenatyzed
so tell me which is ur fav restaurant :v
idk o_O
bundu khan may b... idk o_O
ao AT hum prhte hen.. i got exam
idk if i'll ever study here again or not.. bcz my masters is also over after this exam
thank u for being here 🤗
requirements of clustering:
boht sarey ;_;
too much lazy to type..
birch:
It overcomes the two difficulties in agglomerative clustering methods: (1) scalability and (2) the inability to undo what was done in the previous step
decrease the total SSE
Split a cluster: The cluster with the largest SSE is usually chosen, but we could also split the cluster with the largest standard deviation for one particular attribute
Introduce a new cluster centroid: Often the point that is farthest from any cluster center is chosen.
decrease the number of clusters, while trying to minimize the increase in total SSE
Disperse a cluster: This is accomplished by removing the centroid that corresponds to the cluster and reassigning the points to other clusters
Merge two clusters: The clusters with the closest centroids are typically chosen or merge the two clusters that result in the smallest increase in total SSE
k-medoid
Advantages:
Disadvantages:
Disadvantages of k-means
advantages of Hierarchical Clustering:
disadvantages of Hierarchical Clustering: