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I have a list of many data.frames that I want to merge. The issue here is that each data.frame differs in terms of the number of rows and columns, but they all share the key variables (which I've called "var1" and "var2" in the code below). If the data.frames were identical in terms of columns, I could merely rbind, for which plyr's rbind.fill would do the job, but that's not the case with these data.

Because the merge command only works on 2 data.frames, I turned to the Internet for ideas. I got this one from here, which worked perfectly in R 2.7.2, which is what I had at the time:

merge.rec <- function(.list, ...){
    if(length(.list)==1) return(.list[[1]])
    Recall(c(list(merge(.list[[1]], .list[[2]], ...)), .list[-(1:2)]), ...)

And I would call the function like so:

df <- merge.rec(my.list, by.x = c("var1", "var2"), 
                by.y = c("var1", "var2"), all = T, suffixes=c("", ""))

But in any R version after 2.7.2, including 2.11 and 2.12, this code fails with the following error:

Error in match.names(clabs, names(xi)) : 
  names do not match previous names

(Incidently, I see other references to this error elsewhere with no resolution).

Is there any way to solve this?

share|improve this question
up vote 101 down vote accepted

Reduce makes this fairly easy: = Reduce(function(...) merge(..., all=T),

Here's a fully example using some mock data:

set.seed(1) = list(data.frame(x=1:10, a=1:10), data.frame(x=5:14, b=11:20), data.frame(x=sample(20, 10), y=runif(10))) = Reduce(function(...) merge(..., all=T),
#    x  a  b         y
#12 12 NA 18        NA
#13 13 NA 19        NA
#14 14 NA 20 0.4976992
#15 15 NA NA 0.7176185
#16 16 NA NA 0.3841037
#17 19 NA NA 0.3800352

And here's an example using these data to replicate my.list: = Reduce(function(...) merge(...,, all=T), my.list)[, 1:12]

#  matchname party st district chamber senate1993 name.x v2.x v3.x v4.x senate1994 name.y
#1   ALGIERE   200 RI      026       S         NA   <NA>   NA   NA   NA         NA   <NA>
#2     ALVES   100 RI      019       S         NA   <NA>   NA   NA   NA         NA   <NA>
#3    BADEAU   100 RI      032       S         NA   <NA>   NA   NA   NA         NA   <NA>

Note: It looks like this is arguably a bug in merge. The problem is there is no check that adding the suffixes (to handle overlapping non-matching names) actually makes them unique. At a certain point it uses [.data.frame which does make.unique the names, causing the rbind to fail.

# first merge will end up with 'name.x' & 'name.y'
merge(my.list[[1]], my.list[[2]],, all=T)
# [1] matchname    party        st           district     chamber      senate1993   name.x      
# [8] votes.year.x senate1994   name.y       votes.year.y
#<0 rows> (or 0-length row.names)
# as there is no clash, we retain 'name.x' & 'name.y' and get 'name' again
merge(merge(my.list[[1]], my.list[[2]],, all=T), my.list[[3]],, all=T)
# [1] matchname    party        st           district     chamber      senate1993   name.x      
# [8] votes.year.x senate1994   name.y       votes.year.y senate1995   name         votes.year  
#<0 rows> (or 0-length row.names)
# the next merge will fail as 'name' will get renamed to a pre-existing field.

Easiest way to fix is to not leave the field renaming for duplicates fields (of which there are many here) up to merge. Eg:

my.list2 = Map(function(x, i) setNames(x, ifelse(names(x) %in%,
      names(x), sprintf('%s.%d', names(x), i))), my.list, seq_along(my.list))

The merge/Reduce will then work fine.

share|improve this answer
Thanks! I saw this solution also on the link from Ramnath. Looks easy enough. But I get the following error: "Error in match.names(clabs, names(xi)) : names do not match previous names". The variables I'm matching on are all present in all the dataframes in the list, so I'm not catching what this error is telling me. – bshor Nov 11 '11 at 21:49
I tested this solution on R2.7.2 and I get the same match.names error. So there's some more fundamental problem with this solution and my data. I used the code: Reduce(function(x, y) merge(x, y, all=T,,, my.list, accumulate=F) – bshor Nov 14 '11 at 19:28
Strange, I added the code that I tested it with which runs fine. I guess there is some field-renaming occurring based on the merge args you're using? The merged result must still have the relevant keys in order to be merged with the subsequent data frame. – Charles Nov 14 '11 at 20:12
I suspect something happening with empty data frames. I tried out some examples like this: empty <- data.frame(x=numeric(0),a=numeric(0); L3 <- c(empty,empty,,empty,empty,empty) and got some weird stuff happening that I haven't figured out yet. – Ben Bolker Nov 14 '11 at 22:10
@Charles You're onto something. Your code runs fine above for me. And when I adapt it to mine, it runs fine too -- except that it does a merge ignoring the key variables I want. When I try to add key variables rather than leave them out, I get a new error "Error in is.null(x) : 'x' is missing". The code line is "test.reduce <- Reduce(function(...) merge(, all=T), my.list)" where are the vector of key variable names I want merged by. – bshor Nov 15 '11 at 19:56

You can do it using merge_all in the reshape package. You can pass parameters to merge using the ... argument

reshape::merge_all(list_of_dataframes, ...)

Here is an excellent resource on different methods to merge data frames.

share|improve this answer
looks like I just replicated merge_recurse =) good to know this function already exists. – SFun28 Nov 11 '11 at 15:29
yes. whenever i have an idea, i always check if @hadley has already done it, and most of the times he has :-) – Ramnath Nov 11 '11 at 15:33
I'm a little confused; should I do merge_all or merge_recurse? In any case, when I try to add in my additional arguments to either, I get the error "formal argument "all" matched by multiple actual arguments". – bshor Nov 11 '11 at 21:42
I think I dropped this from reshape2. Reduce + merge is just as simple. – hadley Nov 12 '11 at 4:45
@Ramnath, link is dead, is there a mirror? – Eduardo Oct 22 '14 at 7:29

You can use recursion to do this. I haven't verified the following, but it should give you the right idea:

MergeListOfDf = function( data , ... )
    if ( length( data ) == 2 ) 
        return( merge( data[[ 1 ]] , data[[ 2 ]] , ... ) )
    return( merge( MergeListOfDf( data[ -1 ] , ... ) , data[[ 1 ]] , ... ) )
share|improve this answer

Another question asked specifically how to perform multiple left joins using dplyr in R . The question was marked as a duplicate of this one so I answer here:

x <- data_frame(i = c("a","b","c"), j = 1:3)
y <- data_frame(i = c("b","c","d"), k = 4:6)
z <- data_frame(i = c("c","d","a"), l = 7:9)
list(x,y,z) %>%
    Reduce(function(dtf1,dtf2) left_join(dtf1,dtf2,by="i"), .)

#  i j  k  l
#1 a 1 NA  9
#2 b 2  4 NA
#3 c 3  5  7

You can also perform full_join() and inner_join()

list(x,y,z) %>%
    Reduce(function(dtf1,dtf2) full_join(dtf1,dtf2,by="i"), .)

#Source: local data frame [4 x 4] 
#  i  j  k  l
#1 a  1 NA  9
#2 b  2  4 NA
#3 c  3  5  7
#4 d NA  6  8

list(x,y,z) %>%
    Reduce(function(dtf1,dtf2) inner_join(dtf1,dtf2,by="i"), .)
#Source: local data frame [1 x 4]

#  i j k l
#1 c 3 5 7
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