This question already has an answer here:
I use matlab's princomp function to do PCA. From my understanding, I could check the latent to decide how many dimensions I need.
[coeff, score, latent, t2] = princomp(fdata); cumsum(latent)./sum(latent);
And by using trainMatrix = coeff(:,1:10) (I choose the top 10 dimensions), and newData = data*trainMatrix, I could get the reduced data.
But how could I figure out which dimension is reduced and which 10 dimensions are remained?
I mean if I have 30 features, could I figure out after princomp, which 10 features (the column index of original data) I reserved?