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I have several data.tables that I would like to rbindlist. The tables contain factors with (possibly missing) levels. Then rbindlist(...) behaves differently from do.call(rbind(...)):

dt1 <- data.table(x=factor(c("a", "b"), levels=letters))

rbindlist(list(dt1, dt1))[,x] 
## [1] a b a b
## Levels: a b

do.call(rbind, list(dt1, dt1))[,x]
## [1] a b a b
## Levels: a b c d e f g h i j k l m n o p q r s t u v w x y z

If I want to keep the levels, do I have tor resort to rbind or is there a data.table way?

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You can always grab the levels before you call rbindlist and then put em back (see here). But I think you're right there should be a droplevels=TRUE argument. –  Justin Oct 18 '13 at 13:54

2 Answers 2

up vote 4 down vote accepted

I guess rbindlist is faster because it doesn't do the checking of do.call(rbind.data.frame,...)

Why not to set the levels after binding?

    Dt <- rbindlist(list(dt1, dt1)) 
    setattr(Dt$x,"levels",letters)  ## set attribute without a copy

from the ?setattr:

setattr() is useful in many situations to set attributes by reference and can be used on any object or part of an object, not just data.tables.

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Thanks. But where I actually use this, I do not know the levels. If I have 2 data.tables, I already need unique(unlist(lapply(list(dt1, dt2), function(dt) levels(dt[,x])))) to find the levels, and I am afraid then the do.call(rbind, ...) version may be faster. –  shadow Oct 18 '13 at 14:36
@shadow I'm guessing that'll only be slower if you have a very large number of rows with an even larger number of factor levels, in which case I'd ask - what's the point of having factors? I'd only use factors if I had a small number of elements that are used over and over again in the data with a large degree of repetition –  eddi Oct 18 '13 at 15:45
fwiw, if you use the internal c.factor function you can speed that last step up quite a bit: do.call(data.table:::c.factor, lapply(list(dt1, dt2), "[[", 'x')) in your scenario –  eddi Oct 18 '13 at 16:00

Thanks for pointing out this problem. As of version 1.8.11 it has been fixed:

dt1 <- data.table(x=factor(c("a", "b"), levels=letters))

rbindlist(list(dt1, dt1))[,x]
#[1] a b a b
#Levels: a b c d e f g h i j k l m n o p q r s t u v w x y z
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