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I've been searching for a solution and have been experimenting, but I can't seem to perform what I should be a simple task.

I have two data frames formatted similar to the below toy examples

DF1 = data.frame(A=c("cats","dogs",NA,"dogs"), B=c("kittens","puppies","kittens",NA), C=c(88,99,101,110))

    A       B           C
1   cats    kittens     88
2   dogs    puppies     99
3   NA      kittens     101
4   dogs    NA          110


DF2 = data.frame(D=c(1,2), A=c("cats","dogs"), B=c("kittens","puppies"))

    D   A       B
1   1   cats    kittens
2   2   dogs    puppies

I wish to merge the two data sets such that the output is:

      A     B         C     D
1   cats    kittens   88    1
2   dogs    puppies   99    2
3   dogs    NA        110   2
4     NA    kittens   101   1

In other words, any rows with labels A=="cats" or B=="kittens" will be mapped to 1 in the column D, any rows with A=="dogs" or B=="puppies" will be mapped to 2.

I have used the command

merge(DF1, DF2, by=c("A","B"), all.x=TRUE)

However this not match rows 3 and 4 correctly, only rows 1 and 2. I get the output

      A     B         C     D
1   cats    kittens   88    1
2   dogs    puppies   99    2
3   dogs    NA        110   NA
4     NA    kittens   101   NA

Please note the actual datasets I'm working with are very long. In reality DF1 is over 1,000,000 rows and DF2 is over 300,000 rows thousands of rows each, so a solution that could be scaled is what I really need.

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You've come quite far with your example. Care to make it more handy to copy/paste into R? Here are some tips on how to do that: stackoverflow.com/questions/5963269/… –  Roman Luštrik Apr 30 '13 at 6:25
1  
Your example output doesn't match your description. Shouldn't column "D" be c(1, 2, 2, 1)? –  Ananda Mahto Apr 30 '13 at 6:27
    
You're entirely correct, I've amended this to avoid confusion. Thanks. –  Starcalibre Apr 30 '13 at 6:40

3 Answers 3

up vote 2 down vote accepted

Here's a different approach:

library(functional)

partial.merge <- function(DF1, DF2) {
  common.cols <- intersect(names(DF1), names(DF2))
  result.col <- names(DF2)[!(names(DF2) %in% common.cols)]

  # This can only handle one result column:
  stopifnot(length(result.col) == 1)

  # Merge in each common column, one at a time.
  # The identical operation is done for each common column, so Reduce is useful:
  r <- Reduce(function(D, C) merge(D, DF2[c(C, result.col)], by=c(C), all.x=TRUE), x=common.cols, init=DF1)

  # The merge created cols like c('D.x', 'D.y').  These are the columns:
  merge.cols <- paste(result.col, c('x', 'y'), sep='.')

  # The .x and .y columns are partial, put them together:
  r[[result.col]] <- rowMeans(r[merge.cols], na.rm=TRUE)

  # Remove the temporaries:
  for (i in merge.cols) {
    r[[i]] <- NULL
  }
  return(r)
}

partial.merge(DF1, DF2)
##         B    A   C D
## 1 kittens cats  88 1
## 2 kittens <NA> 101 1
## 3 puppies dogs  99 2
## 4    <NA> dogs 110 2
share|improve this answer
    
While I don't mind if you select my answer as correct, I suggest that you actually try these on your real data and check the run time with system.time(). This is almost certainly the slowest of the three! –  Matthew Lundberg Apr 30 '13 at 13:50

Perhaps you can try something along these lines:

temp <- merge(DF1, DF2, by=c("A","B"), all.x=TRUE)

within(temp, {
  M1 <- c("cats", "kittens")
  D <- ifelse(A %in% M1 | B %in% M1, 1, 2)
  rm(M1)
})
#      A       B   C D
# 1 cats kittens  88 1
# 2 dogs puppies  99 2
# 3 dogs    <NA> 110 2
# 4 <NA> kittens 101 1

You can nest ifelse statements if you need more than just these two options.

share|improve this answer
    
Thanks, this works fine for the toy example but my original datasets are very long (there are thousands of different pairs). Is there a solution that would work for really large dataframes ? –  Starcalibre Apr 30 '13 at 7:07
    
Why shouldn't it work for a larger dataset? –  BondedDust Apr 30 '13 at 7:11
DF1[which(DF1$A=="cats"|DF1$B=="kittens"), "D"] <- DF2[which(DF2$A=="cats"|DF2$B=="kittens"), "D"]
DF1[which(DF1$A=="dogs"|DF1$B=="puppies"), "D"] <- DF2[which(DF2$A=="dogs"|DF2$B=="puppies"), "D"]
DF1
#-------
     A       B   C D
1 cats kittens  88 1
2 dogs puppies  99 2
3 <NA> kittens 101 1
4 dogs    <NA> 110 2

Functionalized:

idxpick <- function(a,b) DF1[which(DF1$A==a|DF1$B==b), "D"] <<- # Yes, I feel guilty.
                                   DF2[which(DF2$A==a|DF2$B==b), "D"]
DF1 = data.frame(A=c("cats","dogs",NA,"dogs"), 
                 B=c("kittens","puppies","kittens",NA), 
                 C=c(88,99,101,110))
DF2 = data.frame(D=c(1,2), A=c("cats","dogs"), B=c("kittens","puppies"))
apply(DF2, 1, function(rr) idxpick(rr["A"], rr["B"]) )
#------------
[1] 1 2

DF1
     A       B   C D
1 cats kittens  88 1
2 dogs puppies  99 2
3 <NA> kittens 101 1
4 dogs    <NA> 110 2
share|improve this answer
    
Hey, thanks for the solution. Sorry but I should've been more clear that the datasets I'm working with are very very large so writing a command for every possible pair isn't really feasible. There's about 300,000 different types of pairs. –  Starcalibre Apr 30 '13 at 7:20
    
Might be possible to make this into a function that could be apply-ed to DF2. It will take a long time. Might need to leave running overnight. –  BondedDust Apr 30 '13 at 7:30
    
A rare <<- spotted in the wild, neat. –  Ben Apr 30 '13 at 7:42
    
I can probably get rid of it with an eval-substitute backflip. I know where to look for some examples but I'm feeling lazy. –  BondedDust Apr 30 '13 at 7:52
1  
Well thanks a lot. I solve teh problem that was posed and it works great, but you won't mark it correct until I solve another problem that wasn't posed? –  BondedDust Apr 30 '13 at 8:28

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