This is way more than what you asked for, but I wrote a function called
stratified that lets you take random samples from a
data.frame by one or more group variables.
You can load it and use it like this:
#  "https://raw.github.com/gist/6424112"
# SHA-1 hash of file is 0006d8548785ec8a5651c3dd599648cc88d153a4
## One row
stratified(mydf, "v2", 1)
# v1 v2
# 10 E 1
# 8 C 2
## Two rows
stratified(mydf, "v2", 2)
# v1 v2
# 2 B 1
# 6 B 1
# 3 C 2
# 5 B 2
I'll add official documentation to the function at some point, but here's a summary to help you get the best use out of it:
The arguments to
df: The input
group: A character vector of the column or columns that make up the "strata".
size: The desired sample size.
size is a value less than 1, a proportionate sample is taken from each stratum.
size is a single integer of 1 or more, that number of samples is taken from each stratum.
size is a vector of integers, the specified number of samples is taken for each stratum. It is recommended that you use a named vector. For example, if you have two strata, "A" and "B", and you wanted 5 samples from "A" and 10 from "B", you would enter
size = c(A = 5, B = 10).
select: This allows you to subset the groups in the sampling process. This is a
list. For instance, if your
group variable was "Group", and it contained three strata, "A", "B", and "C", but you only wanted to sample from "A" and "C", you can use
select = list(Group = c("A", "C")).
replace: For sampling with replacement.