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I'm trying to select a subset of features from a data that contains 2000 of them for 63 samples. Now I know how to do PCA in MATLAB. I used 'pcacov' and it returns the eigenvectors and the eigenvalues too. However, I don't know how to select the features I want. I mean if the features aren't labeled, how can I select my features ? or they will be returned in the same order ?

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3 Answers 3

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how can I select my features ?

If you call it like

[pc,variances,explained] = pcacov(covx)

then the principal components are the vectors in the first return argument with variances as in the second return argument. They are in correspondence and sorted from most significant to least significant.

or they will be returned in the same order ?

You can assume this if the function help says so, otherwise it's not safe to assume so and you can do something like.

[varsorted,varsortedinds] = sort(variances,'descend');
pcsorted = pc(:,varsortedinds);

And varsorted and pcsorted will be in order from most to least significant.

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That's the answer I wanted :) Thanks very much! –  Morano88 Apr 30 '11 at 18:08

PCA does not tell you which features are the most significant, but which combinations of features keep the most variance.

What PCA does is rotate your dataset in such a way that it has the most variance along the first dimension, second most along second, and so on. So, what you do when you multiply your feature vectors by the first N eigenvectors is rotate the set and keep the first N dimensions to transform your vectors into a lower-dimensional representation that keeps most of the variance.

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I'm not sure what you mean by "select". If you're trying to clean a set of data using PCA, I would recommend using FastICA. ICA ~= PCA, I know, but the interface is probably what you're looking for.

If you're trying to do anything else, you can sort by eigenvalue to see which eigenvectors contribute the most to the original signal, and use can visually browse the eigenvectors to try to find specific components, and then you can either project those out of the data or simply try to reconstruct the dataset without those eigenvectors.

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