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Finding Optimal Number Of Clusters for Kmeans

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jameskl
jameskl 2014년 8월 26일
편집: Walter Roberson 2022년 6월 23일
I want to find the number of clusters for my data for which the correlation is above .9. I know you can use a sum of squared error (SSE) scree plot but I am not sure how you create one in Matlab. Also, are there any other methods?

답변 (2개)

Taro Ichimura
Taro Ichimura 2016년 6월 1일
Hello,
you have 2 way to do this in MatLab, use the evalclusters() and silhouette() to find an optimal k, you can also use the elbow method (i think you can find code in matlab community) check matlab documentation for examples, and below
% example
load fisheriris
clust = zeros(size(meas,1),6);
for i=1:6
clust(:,i) = kmeans(meas,i,'emptyaction','singleton',...
'replicate',5);
end
va = evalclusters(meas,clust,'CalinskiHarabasz')

Pamudu Ranasinghe
Pamudu Ranasinghe 2022년 6월 19일
Refer "evalclusters" function
eva = evalclusters(X,'kmeans','CalinskiHarabasz','KList',1:6);
Optimal_K = eva.OptimalK;
  댓글 수: 1
Walter Roberson
Walter Roberson 2022년 6월 19일
편집: Walter Roberson 2022년 6월 23일
Real mathematics says that every unique point should be its own cluster.

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