# How to determine the importance of variables in PCA using Matlab?

I have come across many similar questions on the web but could not find one that solves my problem that I can understand. I would appreciate some explanation here to aid in my understanding. Thanks in advance!

So,

``````[COEFF,SCORE,latent,tsquare] = princomp(X)
``````

I understand that for `coeff`, the columns are in order of decreasing component variance. But do I know the importance of my variables (original datatset), not the importance of the principle component (PC), as what the answer of `coeff` might present. Is there any way to rank the importance of the variables I have?

I saw that many statistic software are able to do this, showing which original variables contribute most to the plot, and which are the ones that can be removed to prevent over-fitting issue. Is there a way to do this with MatLab?

My objective is to plot the data in a 2D plot, meaning I will be using PC1 and PC2, which hold the most significant component variance. So again, how do I know which variables should be retain and which should be discarded?

Can anyone explain this to me? Thanks!

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If you only care about a projection of your data into 2D plane for visualization, then by all means take the first two coordinates of each point from `SCORE` - these are the coordinates you referred to as `PC1` and `PC2` in your question.
However, if you wish to know which are the two components in `X` who contributed most to `PC1` and `PC2` you'll have to find the entries in the first two columns of `COEFF` with maximal absolute value. Since the the first two columns of `COEFF` represents the linear combination of elements in `X` that produces `PC1` and `PC2`.
If you pay attention then `SCORE = COEFF * X` is a simple linear transformation of the data `X`. This way you can determine how the data affects the transformed `SCORE` –  Shai Jan 23 '13 at 9:09