# princomp results

I'm doing some PCA analysis for my data. and its my first time to try this type of analysis. I'm having a matrix of a thousand columns and few thousands of rows, and i am trying to make a smaller matrix by getting rid of correlated variables (which are the columns in my case). everything is going great until the moment, but i am unable to do the next step. here's an example to show my data.

``````         a1    a2    a3    a4    ....    a1000
item1    10    NA     5     3    ....
item2    0.01  0.5    NA   0.07  ....
item3    0.7   0.2    0.8  0.9   ....
.
.
.
``````

I apply the princomp and get the following results

``````                         Comp.1     Comp.2     Comp.3     Comp.4     ...   Comp.1000
Standard deviation     24.1605431 7.31176669 5.96709553 3.56507807   ...
Proportion of Variance  0.7580933 0.06943108 0.04624186 0.01650621   ...
Cumulative Proportion   0.7580933 0.82752438 0.87376624 0.89027245   ...
.
.
.
``````

Now that i have computed everything...my question is: what command should i use to pick the uncorrelated components and paste them into a new matrix (or simply get rid of the correlated ones)? how do i specify the range of correlation i want?

Thanks,

-

I believe you are after the `scores`. From the help for `?princomp`, the resulting object is a list that contains an elements `scores`:

scores

if scores = TRUE, the scores of the supplied data on the principal components. These are non-null only if x was supplied, and if covmat was also supplied if it was a covariance list. For the formula method, napredict() is applied to handle the treatment of values omitted by the na.action.

Let's set up an example (based on example in `?princomp`):

``````summary(pc.cr <- princomp(USArrests, cor = TRUE))
Importance of components:
Comp.1    Comp.2    Comp.3     Comp.4
Standard deviation     1.5748783 0.9948694 0.5971291 0.41644938
Proportion of Variance 0.6200604 0.2474413 0.0891408 0.04335752
Cumulative Proportion  0.6200604 0.8675017 0.9566425 1.00000000
``````

You can investigate the result object with `str()`:

``````str(pc.cr)
List of 7
\$ sdev    : Named num [1:4] 1.575 0.995 0.597 0.416
..- attr(*, "names")= chr [1:4] "Comp.1" "Comp.2" "Comp.3" "Comp.4"
..- attr(*, "dimnames")=List of 2
.. ..\$ : chr [1:4] "Murder" "Assault" "UrbanPop" "Rape"
.. ..\$ : chr [1:4] "Comp.1" "Comp.2" "Comp.3" "Comp.4"
\$ center  : Named num [1:4] 7.79 170.76 65.54 21.23
..- attr(*, "names")= chr [1:4] "Murder" "Assault" "UrbanPop" "Rape"
\$ scale   : Named num [1:4] 4.31 82.5 14.33 9.27
..- attr(*, "names")= chr [1:4] "Murder" "Assault" "UrbanPop" "Rape"
\$ n.obs   : int 50
\$ scores  : num [1:50, 1:4] -0.986 -1.95 -1.763 0.141 -2.524 ...
..- attr(*, "dimnames")=List of 2
.. ..\$ : chr [1:50] "Alabama" "Alaska" "Arizona" "Arkansas" ...
.. ..\$ : chr [1:4] "Comp.1" "Comp.2" "Comp.3" "Comp.4"
\$ call    : language princomp(x = USArrests, cor = TRUE)
- attr(*, "class")= chr "princomp"
``````

Now extract the scores:

``````head(pc.cr\$scores)
Comp.1     Comp.2      Comp.3       Comp.4
Alabama    -0.9855659  1.1333924 -0.44426879  0.156267145