What we see when you type
function (object, ...)
This is telling us that summary is a generic function and has many methods attached to it. To see what those methods are actually called we can try
 summary.aov summary.aovlist summary.aspell*
 summary.connection summary.data.frame summary.Date
 summary.default summary.ecdf* summary.factor
 summary.glm summary.infl summary.lm
 summary.loess* summary.manova summary.matrix
 summary.mlm summary.nls* summary.packageStatus*
 summary.PDF_Dictionary* summary.PDF_Stream* summary.POSIXct
 summary.POSIXlt summary.ppr* summary.prcomp*
 summary.princomp* summary.srcfile summary.srcref
 summary.stepfun summary.stl* summary.table
Non-visible functions are asterisked
Here we see all the methods associated with the
summary function. What this means is that there is different code for when you call summary on an lm object than there is when you call summary on a data.frame. This is good because we wouldn't expect the summary to be conducted the same way for those two objects.
To see the code that is run when you call summary on a data.frame you can just type
as shown in the methods list. You'll be able to examine it and study it and do whatever you want with the printed code. You mentioned that you were interested in factors so you will probably want to examine the output of
summary.factor. Now you might notice that some of the methods printed had an asterisk (*) next to them which implies that they're non-visible. This essentially means that you can't just type the name of the function to try to view the code.
Error: object 'summary.prcomp' not found
However, if you're determined to see what the code actually is you can use the
getAnywhere function to view it.
A single object matching ‘summary.prcomp’ was found
It was found in the following places
registered S3 method for summary from namespace stats
function (object, ...)
vars <- object$sdev^2
vars <- vars/sum(vars)
importance <- rbind(`Standard deviation` = object$sdev, `Proportion of Variance` = round(vars,
5), `Cumulative Proportion` = round(cumsum(vars), 5))
colnames(importance) <- colnames(object$rotation)
object$importance <- importance
class(object) <- "summary.prcomp"
Hopefully this helps you explore the code in R much more easily in the future.
For even more details you can view Volume 6/4 of The R Journal (warning, pdf) and read Uwe Ligge's "R Help Desk" section which deals with viewing the source code of R functions.