Let's assume I have the following data:

```
set.seed(1)
test <- data.frame(letters=rep(c("A","B","C","D"),10), numbers=sample(1:50, 40, replace=TRUE))
```

I want to know how many numbers whose letter is `A`

are not in `B`

, how many numbers of `B`

are not in `C`

and so on.

I came up with a solution for this using base functions `split`

and `mapply`

:

```
s.test <-split(test, test$letters)
notIn <- mapply(function(x,y) sum(!s.test[[x]]$numbers %in% s.test[[y]]$numbers), x=names(s.test)[1:3], y=names(s.test)[2:4])
```

Which gives:

```
> notIn
A B C
9 7 7
```

But I would also like to do this with `dplyr`

or `data.table`

. Is it possible?

`test`

data to find the next letter. – flodel Mar 23 at 1:31`mapply(function(x,y) sum(!x$numbers %in% y$numbers), head(s.test, -1), tail(s.test, -1))`

– flodel Mar 23 at 1:37`dplyr`

or`data.table`

solution, for my real dataset is really big, so speed would help (though I am not sure they would really be faster, I would have to test). – Carlos Cinelli Mar 23 at 1:42`letters`

in your actual data? And how big isreally big? – Arun Mar 23 at 1:54