I've got two data.tables, both of which share one variable; I'm trying to add a variable that's missing from the second, but which is tied one-for-one to the shared variable.

This is clearly a merge, but because the shared variable has multiple instances, I'm having to use what feels like a workaround to merge the new variable.

Let's get specific.

x <- data.table(let = rep(letters[1:3], 2:4),
                num = rep(1:3, 2:4), other = rnorm(9))
y <- data.table(let = rep(c("a", "c"), c(10, 6)))

   let num       other
1:   a   1 -0.41695882
2:   a   1 -0.59875888
3:   b   2 -0.19433915
4:   b   2  0.58406046
5:   b   2 -0.33922321
6:   c   3 -0.63076561
7:   c   3  1.06987710
8:   c   3  0.08869372
9:   c   3 -1.31196123

 1:   a
 2:   a
 3:   a
 4:   a
 5:   a
 6:   a
 7:   a
 8:   a
 9:   a
10:   a
11:   c
12:   c
13:   c
14:   c
15:   c
16:   c

I just want to add the num column to y; since num is matched 1-1 with let, it doesn't really matter that there's duplicates.

Here's an approach that works; I've just got a feeling there's something simpler.

setkey(x, let)
setkey(y, let)

y <- x[!duplicated(let), c("let", "num"), with = FALSE][y]

The only improvements that I could think of is that

  1. You could skip the setkey(x, let) part

  2. You could also update y by reference (rather than creating a copy using <- and then assigning back to y)

If you are using the current stable version version of data.table (v <= 1.9.4) you will have to use allow.cartesian = TRUE

y[x[!duplicated(let)], num := i.num, allow.cartesian = TRUE][]

You could alternatively use unique instead of duplicated (they both have data.table methods)

y[unique(x, by = "let"), num := i.num, allow.cartesian = TRUE]

Here's another possibility using the new .EACHI method, although there's no need for the use of by=.EACHI here. I've shown you just to expose this feature for you. Have a look at this post for a detailed explanation of what this does and when it's useful.

y[x, num := unique(i.num), by = .EACHI, allow.cartesian = TRUE]

Edit: (Thanks to @Arun for pointing this out)

We shouldn't need allow.cartesian argument here, as there are no duplicates in i. In fact, it's a bug, #742 that has been fixed in the current development version (1.9.5). So you just need to do:

y[x[!duplicated(let)], num := i.num]
# or
y[unique(x, by = "let"), num := i.num]
# or (though not recommended in this specific case)
y[x, num := unique(i.num), by = .EACHI]
  • 1
    Is there any performance difference between !duplicated() and unique()? I think the latter should also work somehow, but I have no idea if it would be a good option. Nice answer - (+1) – docendo discimus Dec 30 '14 at 22:46
  • @docendodiscimus, yes data.table has methods for both, (similar to distinct in dplyr) see my edit. – David Arenburg Dec 30 '14 at 22:50
  • Thanks for demonstrating that! Do you think they'll be the same performance-wise? – docendo discimus Dec 30 '14 at 22:53
  • I think that skipping setkey(x, let) will improve performance, also the assigning be reference. though I'm not sure how allow.cartesian = TRUE performs – David Arenburg Dec 30 '14 at 22:55
  • 1
    @DavidArenburg, no worries. I'd thought we fixed it in 1.9.4 already.. – Arun Dec 31 '14 at 6:55

Well, I would use a merge like the following, but I am not sure that it is simpler than what you have already done.

merge(y,unique(x[,c('let','num'), with=FALSE]), all.x=TRUE, by='let')
  • I don't think it is neither simpler or more efficient – David Arenburg Dec 30 '14 at 22:37
  • Yes I mention that in my answer, but it is mostly to follow the merge approach. – Nikos Dec 30 '14 at 22:41
  • can't give credence to this given how consistently the merge approach is disparaged in the FAQ and elsewhere by data.table developers... – MichaelChirico Dec 30 '14 at 22:58
  • @MichaelChirico, the only concern is that merge.data.table makes a copy, which might not be always desirable. Other than that, there's no reason. Which FAQ specifically are you referring to? When secondary keys are extended, we'll be able to join even easier, which'll also remove that copy in merge. – Arun Dec 31 '14 at 7:02
  • cran.r-project.org/web/packages/data.table/vignettes/… 1.12 is worded against using merge; I can't think of where, but I've seen another answer on SE somewhere with similar admonition – MichaelChirico Jan 2 '15 at 17:05

Agree with @David, difficult to get much simpler. But below trim a few key strokes away :-)

  • never saw this way of subsetting! is there any efficiency loss vs. using the with=F approach? – MichaelChirico Dec 30 '14 at 22:52
  • It is the same as list(let, num). It will be probably more efficient than with= FALSE (though not tested) – David Arenburg Dec 30 '14 at 22:54
  • 1
    list(let, num) is same as [, c("list", "num"), with=FALSE]. But the second one is more useful when you've a function; you can pass the columns as a character vector to function argument. It's the SE equivalent of list(let, num), + to provide a data.frame-like syntax. – Arun Dec 31 '14 at 7:00
  • KFB, nice solution, but note that this results in an entirely dataset, which we can prevent by doing y[x, col :=value]. – Arun Dec 31 '14 at 7:04
  • 1
    @Arun, Right, especially if dataset is big. Otherwise it may not be a practical hindrance. Admitted, I was thinking of the syntax only. After all we love data.table for its speed, memory efficiency and syntax (who said beauty is skin deep?)! Thanks!! – KFB Dec 31 '14 at 7:39

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