I have a input vector `vi`

with boolean values. I want to take a random sample of size `n`

from the vector where the value is true, so the final vector `vf`

has these properties

The lengths of the vectors are equal

`length(vf) == length(v0)`

`vf`

has`n`

true values`n==sum(vf)`

The true values in

`vf`

cannot be more than those in`v0`

n <= sum(v0)All the true values in

`vf`

are also true in`vi`

The vectors represents a selection of rows in a data frame, and this implements a stratified sample. So far I figured out how to use `which()`

to get the row numbers, to use `sample()`

to get a random sample, but the last part is recreating the boolean vector. There is probably a more elegant way?

For example:

`n <- 1`

`v0 <- c(T,T,F,F)`

`vf <- c(T,F,F,F)`

`length(vf) == length(v0)`

and`n <= sum(v0)`

then? – Tommy Oct 12 '11 at 19:05`vf`

cannot be greater, so I would use sampling without replacement. – Andrew Oct 12 '11 at 19:09of a subset. As a little more background, this a step in my implementation of oversampling as described in the book "Mastering Data Mining" (page 197). The vector`v0`

represents the rows in a data frame which have a negative response, and I need to reduce the negative responses because there are too many. – Andrew Oct 12 '11 at 19:54