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
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.