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This is my first time posting here, so please be kind ;-)

EDIT My question was closed before I had a chance to make the changes suggested to me. So I'm trying to do a better job now, thanks for everyone that answered so far!

QUESTION

How can I identify records/rows in data frame x.1 that are not contained in data frame x.2 based on all attributes available (i.e. all columns) in the most efficient way?

EXAMPLE DATA

> x.1 <- data.frame(a=c(1,2,3,4,5), b=c(1,2,3,4,5))
> x.1
  a b
1 1 1
2 2 2
3 3 3
4 4 4
5 5 5

> x.2 <- data.frame(a=c(1,1,2,3,4), b=c(1,1,99,3,4))
> x.2
  a  b
1 1  1
2 1  1
3 2 99
4 3  3
5 4  4

DESIRED RESULT

  a b
2 2 2
5 5 5

BEST SOLUTION SO FAR

by Prof. Brian Ripley and Gabor Grothendieck

> fun.12 <- function(x.1,x.2,...){
+     x.1p <- do.call("paste", x.1)
+     x.2p <- do.call("paste", x.2)
+     x.1[! x.1p %in% x.2p, ]
+ }
> fun.12(x.1,x.2)
  a b
2 2 2
5 5 5
> sol.12 <- microbenchmark(fun.12(x.1,x.2))
> sol.12 <- median(sol.12$time)/1000000000
> sol.12
> [1] 0.000207784

A collection of all solutions tested so far is available at my blog

FINAL EDIT 2011-10-14

Here's the best solution wrapped into a function 'mergeX()':

setGeneric(
    name="mergeX",
    signature=c("src.1", "src.2"),
    def=function(
        src.1,
        src.2,
        ...
    ){
    standardGeneric("mergeX")    
    }
)

setMethod(
    f="mergeX", 
    signature=signature(src.1="data.frame", src.2="data.frame"), 
    definition=function(
        src.1,
        src.2,
        do.inverse=FALSE,
        ...
    ){
    if(!do.inverse){
        out <- merge(x=src.1, y=src.2, ...)
    } else {
        if("by.y" %in% names(list(...))){
            src.2.0 <- src.2
            src.2 <- src.1
            src.1 <- src.2.0
        }
        src.1p <- do.call("paste", src.1)
        src.2p <- do.call("paste", src.2)
        out <- src.1[! src.1p %in% src.2p, ]
    }
    return(out)    
    }
)
share|improve this question

closed as not a real question by Andrie, Nick Sabbe, joran, Gavin Simpson, Graviton Oct 12 '11 at 1:12

It's difficult to tell what is being asked here. This question is ambiguous, vague, incomplete, overly broad, or rhetorical and cannot be reasonably answered in its current form. For help clarifying this question so that it can be reopened, visit the help center.If this question can be reworded to fit the rules in the help center, please edit the question.

6  
This isn't a real question. You post 8 different solutions to your own problem, the best of which (By Prof Brian Ripley) is only three lines of Base R code and is already packaged into a function. What more do you want? –  Andrie Oct 11 '11 at 15:46
1  
@Andrie, he probably wants my solution? :-)) –  TMS Oct 11 '11 at 15:53
1  
@Andrie: I was afraid of something like this happening ;-) Still think I did pose a question and why can't questions be linked to a collection of possible solutions instead of solutions being scattered all over the place because everyone uses different wording to describe what he/she's after? Just wanted to help others a bit... –  Rappster Oct 11 '11 at 16:11
2  
My opinion is that closing this question was an really unconstructive and stupid move. Give him chance to improve this question. This way you force him to start a new one. Is that better? –  TMS Oct 12 '11 at 7:53
1  
This question still needs for votes for reopening. I recommend to edit the question (add some solutions) and state clearly what your question is, and then flag it. –  TMS Oct 12 '11 at 12:23

2 Answers 2

up vote 4 down vote accepted

Here are a few ways. #1 and #4 assume that the rows of x.1 are unique. (If rows of x.1 are not unique then they will return only one of the duplicates among the duplicated rows.) The others return all duplicates:

# 1
x.1[!duplicated(rbind(x.2, x.1))[-(1:nrow(x.2))],]

# 2
do.call("rbind", setdiff(split(x.1, rownames(x.1)), split(x.2, rownames(x.2))))

# 3
x.1p <- do.call("paste", x.1)
x.2p <- do.call("paste", x.2)
x.1[! x.1p %in% x.2p, ]

# 4
library(sqldf)
sqldf("select * from `x.1` except select * from `x.2`")

EDIT: Some x.1 and x.2 were swapped and this has been fixed. Also have corrected note on limitations at the beginning.

share|improve this answer
    
Thanks Gabor! Not all of the approaches return the desired result ((2,2) and (5,5)) but gave me something to learn. Especially regarding 'sqldf'. Never looked at it before but seems to be really cool, thanks! –  Rappster Oct 11 '11 at 15:56
    
The roles of x.1 and x.2 were partly reversed in some of the solutions. I have edited it and they now should all give (2,2) and (5,5). –  G. Grothendieck Oct 11 '11 at 16:21
    
@Gabor: thanks a lot for editing it –  Rappster Oct 11 '11 at 16:25
    
I updated my benchmark results and your third approach seems to be the fastest (0.0002066945 seconds)! Thanks again! –  Rappster Oct 12 '11 at 8:35

What about using merge - the simplest possible solution - I'd think it's also the fastest.

tmp = merge(x.1, cbind(x.2, myid = 1:nrow(x.2)), all.x = TRUE)
    # provided that there's no column myid in both dataframes
tmp[is.na(tmp$myid), 1:ncol(x.1)] # the result

Corresponds to:

select x1.* 
from x1 natural left join x2 
where x2.myid is NULL

(you can also use sqldf to do that).

Note that the column myid is added to assure that there is some column w/o NA values. If you are sure there is already some column which doesn't contain NULL values, you can simplify the solution:

tmp = merge(x.1, x.2, all.x = TRUE)
    # provided that there's no column myid in both dataframes
tmp[is.na(tmp$some_column), 1:ncol(x.1)] # the result
share|improve this answer
    
Neat solution, but quite a claim about being the fastest - deserves an upvote if you can prove your claim is true. –  Andrie Oct 11 '11 at 15:59
    
Thanks for the answer Tomas! That's the one I was looking for, but it's not the fastest ;-) –  Rappster Oct 11 '11 at 16:00
    
It ranks 7th compared to the ones I collected above (0.002583893 seconds using microbenchmark) –  Rappster Oct 11 '11 at 16:01
    
@Andrie, I'm too lazy to do that, I let the test to songpants... You might however be right, it's not so obvious: in SQL it would be the fastest because it is optimized for joins, with R's merge I'm not so sure now... –  TMS Oct 11 '11 at 16:03
    
@songpants, we cross-talked :-) thanks for measurements, and yeah, my worries about R's merge came true... Thanks. –  TMS Oct 11 '11 at 16:05

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