# interpreting princomp results

I am currently trying to do PCA in R. This is my first project in Data mining. I have around 200 features and around 3000 rows of data.

Data is not in normalized form and i need to do dimensionality reduction So i am using PCA for the same. This is what i did till now

``````x <- princomp(data,scores=TRUE,cor=TRUE)
``````

I suppose to do dimension reduction, i am supposed to look at score values. So i did to get top few values

``````head(x\$scores)
``````

This was the output

``````       Comp.1     Comp.2     Comp.3     Comp.4    ...
[1,]  6.831452 -4.4316218 -1.9226226 -0.8344245
[2,] -1.808007 -4.2743390  1.0173944  0.4527465
[3,] -7.750329 -4.9523056 -1.6750438  1.6247354
.
.
.
``````

Now I am not sure how to interpret these matrix and get the best attributes (and do dimension reduction). It would be great if someone could help me out with this.

P.S - I searched a lot but did not get an answer for the same.

-

`scores` is just one piece of the puzzle. The general formula is:

``````original_data =~ approximation = (scores * loadings) * scale + center
``````

where:

``````1. `scores` are the coordinates in your new orthogonal base
1. `loadings` are the directions of the new axis in the old base
1. `scale` are the scaling applied to the dimensions
1. `center` are the coordinates of the new base origin in the old base
``````

Using the R objects, the formula above is

``````data =~ t(t(x\$scores %*% t(x\$loadings)) * x\$scale + x\$center)
``````

You'll want to reduce dimensions by only taking the first `i` loadings:

``````data =~ t(t(x\$scores[, 1:i] %*% t(x\$loadings[, 1:i ])) * x\$scale + x\$center)
``````
-
I think they should first look at the `summary`. And of course it's possible that they actually should do factor analysis and not PCA. –  Roland Oct 13 at 11:21
@Roland - Thanks for the input. I did look at the summary. Can you please elaborate why should i use factor analysis and not PCA? –  Neil Oct 13 at 12:03
I don't know if you should, since your task is not very clearly defined. Do some reading. –  Roland Oct 13 at 12:06
@Roland - I am trying to do build a predictive classification model using the data. Thanks for the input. Will definitely read some more materials –  Neil Oct 13 at 12:09