If you do a `help(prcomp)`

or `?prcomp`

, the help file tells us all the things contained in the `prcomp()`

object returned by the function. We just need to pick which things we want to plot and do it with some function that gives us more control than `biplot()`

.

A more general trick for cases when the help file doesn't clarify things is to do a `str()`

on the prcomp object (in your case pca.Sample) to see all its parts and find what we want ( `str()`

compactly displays the internal structure of an R object. )

Here is an example with some of R's sample data:

```
# do a pca of arrests in different states
p<-prcomp(USArrests, scale = TRUE)
```

`str(p)`

gives me something ugly and too long to include, but I can see that p$x has the states as rownames and their locations on the principal components as columns. Armed with this, we can plot it any way we want, such as with `plot()`

and `text()`

(for labels):

```
# plot and add labels
plot(p$x[,1],p$x[,2])
text(p$x[,1],p$x[,2],labels=rownames(p$x))
```

If we are making a scatterplot with many observations, the labels may not be readable. We therefore might want to only label more extreme values, which we can identify with `quantile()`

:

```
#make a new dataframe with the info from p we want to plot
df <- data.frame(PC1=p$x[,1],PC2=p$x[,2],labels=rownames(p$x))
#make sure labels are not factors, so we can easily reassign them
df$labels <- as.character(df$labels)
# use quantile() to identify which ones are within 25-75 percentile on both
# PC and blank their labels out
df[ df$PC1 > quantile(df$PC1)["25%"] &
df$PC1 < quantile(df$PC1)["75%"] &
df$PC2 > quantile(df$PC2)["25%"] &
df$PC2 < quantile(df$PC2)["75%"],]$labels <- ""
# plot
plot(df$PC1,df$PC2)
text(df$PC1,df$PC2,labels=df$labels)
```