Filter löschen
Filter löschen

Info

Diese Frage ist geschlossen. Öffnen Sie sie erneut, um sie zu bearbeiten oder zu beantworten.

k means clustering: Classifying subsequent to a particular cluster - can it be done?

1 Ansicht (letzte 30 Tage)
John
John am 16 Nov. 2011
Geschlossen: MATLAB Answer Bot am 20 Aug. 2021
Hi there,
I have question in relation to k means clustering. Say I created two clusters from data. For example using this code:
X = [randn(100,2)+ones(100,2);...
randn(100,2)-ones(100,2)];
opts = statset('Display','final');
[idx,ctrs] = kmeans(X,2,...
'Distance','city',...
'Replicates',5,...
'Options',opts);
plot(X(idx==1,1),X(idx==1,2),'r.','MarkerSize',12)
hold on
plot(X(idx==2,1),X(idx==2,2),'b.','MarkerSize',12)
plot(ctrs(:,1),ctrs(:,2),'kx',...
'MarkerSize',12,'LineWidth',2)
plot(ctrs(:,1),ctrs(:,2),'ko',...
'MarkerSize',12,'LineWidth',2)
legend('Cluster 1','Cluster 2','Centroids',...
'Location','NW')
My question is, if you collect more data can you assign it to each of the two clusters that have already been formed, or do you have to cluster all of the data again?
If it is possible, how would you do it?
Thank you

Antworten (1)

Wayne King
Wayne King am 16 Nov. 2011
k-means is an unsupervised learning algorithm that is sensitive to the number of clusters you choose AND to the initial start centers. I would say that you would need to cluster the data again.

Diese Frage ist geschlossen.

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by