kmeans
2 vues (au cours des 30 derniers jours)
Afficher commentaires plus anciens
Hi there,
how to write the plot if i use 4 cluster like this:
X = [randn(100,2)+ones(100,2);... randn(100,2)-ones(100,2)]; opts = statset('Display','final'); [idx,ctrs] = kmeans(X,4,... '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 ....] [plot ....]
thank you
0 commentaires
Réponse acceptée
Wayne King
le 30 Avr 2012
You do the same thing except:
plot(X(idx==1,1),X(idx==1,2),'r.','MarkerSize',10);
hold on
plot(X(idx==2,1),X(idx==2,2),'b.','MarkerSize',10);
plot(X(idx==3,1),X(idx==3,2),'g.','MarkerSize',10);
plot(X(idx==4,1),X(idx==4,2),'k.','MarkerSize',10);
2 commentaires
Plus de réponses (1)
Kawther
le 30 Nov 2014
Modifié(e) : Kawther
le 30 Nov 2014
Thank you Wayne King. I did get benefit from your code. i want to ask please about finding the bet error rate for such a code. How can i determine the decision regions, so that i can then find the bet error rate?
Can i consider the originally sent data as a training data and resend data again and consider it and a test data and use them to find the bet error rate?
Thank you very much. Kawther Hamad,
0 commentaires
Voir également
Produits
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!