sampling from a contingency table

I've managed as far as the code below in writing a function to sample from a contingency table - proportional to the frequencies in the cells.

It uses `expand.grid` and then `table` to get back to the original size table. Which works fine as long as the sample size is large enough that some categories are not completely missing. Otherwise the `table` command returns a table that is of smaller dimensions than the original one.

``````FunSample<- function(Full, n) {
Frame <- expand.grid(lapply(dim(Full), seq))
table(Frame[sample(1:nrow(Frame), n, prob = Full, replace = TRUE), ])
}
Full<-array(c(1,2,3,4), dim=c(2,2,2))
FunSample(Full, 100) # OK
FunSample(Full, 1) # not OK, I want it to still have dim=c(2,2,2)!
``````

My brain has stopped working, I know it has to be a small tweak to get it back on track!?

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If you don't want `table()` to "drop" missing combinations, you need to force the columns of `Frame` to be factors:

``````FunSample <- function(Full, n) {
Frame <- as.data.frame( lapply( expand.grid(lapply(dim(Full), seq)), factor) )
table( Frame[sample(1:nrow(Frame), n, prob = Full, replace = TRUE), ])
}

> dim( FunSample(Full, 1))
[1] 2 2 2
> dim( FunSample(Full, 100))
[1] 2 2 2
``````
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You could use `tabulate` instead of `table`; it works on integer-valued vectors, as you have here. You could also get the output into an array by using `array` directly, just like when you created the original data.
``````FunSample<- function(Full, n) {