*note: this question and the following answers refer to data.table versions < 1.5.3; v. 1.5.3 was released in Feb 2011 to resolve this issue.* see more recent treatment (03-2012): Translating SQL joins on foreign keys to R data.table syntax

I've been digging through the documentation for the data.table package (a replacement for data.frame that's much more efficient for certain operations), including Josh Reich's presentation on SQL and data.table at the NYC R Meetup (pdf), but can't figure this totally trivial operation out.

```
> x <- DT(a=1:3, b=2:4, key='a')
> x
a b
[1,] 1 2
[2,] 2 3
[3,] 3 4
> y <- DT(a=1:3, c=c('a','b','c'), key='a')
> y
a c
[1,] 1 a
[2,] 2 b
[3,] 3 c
> x[y]
a b
[1,] 1 2
[2,] 2 3
[3,] 3 4
> merge(x,y)
a b c
1 1 2 a
2 2 3 b
3 3 4 c
```

The docs say "When [the first argument] is itself a data.table, a join is invoked similar to base::merge but uses binary search on the sorted key." Clearly this is not the case. Can I get the other columns from y into the result of x[y] with data.tables? It seems like it's just taking the rows of x where the key matches the key of y, but ignoring the rest of y entirely...