Help on using perfcurve

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yikes_pd
yikes_pd el 15 de Nov. de 2013
Respondida: Ilya el 15 de Nov. de 2013
Hi everyone, does anyone know how to use the result from gmdistribution.fit and pdf to plot the ROC curve to test the performance of the GMM classifier? or is there any missing step in between? Thank you

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Ilya
Ilya el 15 de Nov. de 2013
Use the cluster method of the gmdistribution object to obtain cluster assignments and their posterior probabilities. Then pass these cluster indices to perfcurve as class labels and pass these posterior probabilities as classification scores. For example:
load fisheriris;
cv = cvpartition(species,'holdout',.5);
g = gmdistribution.fit(meas(cv.training,:),3);
[y,~,post] = cluster(g,meas(cv.test,:));
[fpr,tpr] = perfcurve(y,post(:,1),1,'negclass',[2 3]);
plot(fpr,tpr)
gives you a ROC curve of the 1st class vs 2nd and 3rd. (In this case there is perfect separation in the test data and you won't see a ROC curve, but that's the idea.)

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