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Often I need to subset a data.frame inside a function by the variables that I am subsetting another data.frame to which I apply ddply. To do that I explicitly write again the variables inside the function and I wonder whether there is a more elegant way to do that. Below I include a trivial example just to show which is my current approach to do this.


results<-ddply(d1,.(x,y),function(d) {
   d2Sub<-subset(d2,x==unique(d$x) & y==unique(d$y))
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It is a bit strange, I admit but only because your test seemed weird, why should x == unique(d$x) in d2, since that would be a vector ofl the number of rows in d2? I cannot figure out what you really intend to be selected (and not selected). – BondedDust Nov 24 '13 at 6:18
Thanks. Actually my description of the problem might have been a little bit confusing. I think @flodel captured well what I meant. My problem actually is that I wanted to split two data frames by the same variables. – danilinares Nov 25 '13 at 10:08

1 Answer 1

The plyr package offers functions to make the whole split/apply/combine construct easy. To my knowledge, however, you can only split one thing: a list, a data.frame, an array.

In your case, what you are trying to do is split two objects, then mapply (or Map), then recombine. Since plyr does not have a ready solution for this more complicated construct, you could do it in base R. That's how I assume people were doing things before plyr came out:

# split
d1.split <- split(d1, list(d1$x, d1$y))
d2.split <- split(d2, list(d2$x, d2$y))

# apply
res.split <- Map(function(df1, df2) data.frame(x = df1$x, y = df1$y,
                                               out = df1$z + df2$z),
                 d1.split, d2.split, USE.NAMES = FALSE)

#  combine
res <-, res.split)

Up to you to decide if it is more elegant or not than you current approach. The assignments I made were to help comprehension, but you can write the whole thing as a single res <-, Map(FUN, split(d1, ...), split(d2, ...), ...)) statement if you prefer.

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And @hadley might be interested to comment about the possibility to mapply inside plyr: already implemented? maybe as a future release? not worth it? – flodel Nov 24 '13 at 13:13
Already implemented with mdply, maply, etc. But they do assume that you've already have pieces. – hadley Nov 25 '13 at 13:04
but they seem pretty restrictive on what you call pieces: vectors arranged into a data.frame or a matrix. Here the OP has lists of data.frames, for which m*ply does not seem suited if I understand correctly. – flodel Nov 26 '13 at 2:39
Yes, that's right. I don't see any obvious way of extending them to deal in complete generality with all possible inputs. With data frames in particular, these problems are often easier solved with joins. – hadley Nov 26 '13 at 13:23

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