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I have 2 data frames with different number of columns each. Some of the columns are common between the 2 data frames. How can i rbind only the common columns of the two data frames to a new data frame?

i tried with library(plyr);rbind.fill(A,B) however it sets NA values in the columns that do not match, and this does not help me.

Thanks a lot EC

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2 Answers 2

up vote 12 down vote accepted

Use intersect to retrieve the common columns.

dfr1 <- data.frame(x = 1:5, y = runif(5), z = rnorm(5))
dfr2 <- data.frame(w = letter[1:5], x = 6:10, y = runif(5))
common_cols <- intersect(colnames(dfr1), colnames(dfr2))
rbind(
  subset(dfr1, select = common_cols), 
  subset(dfr2, select = common_cols)
)

As pointed out in the comments, you can replace the last line with

rbind(
  dfr1[, common_cols], 
  dfr2[, common_cols]
)

for a small performance and typing improvement.

rbind(
  dfr1[common_cols], 
  dfr2[common_cols]
)

also works but I think that it's a tiny bit less clear.

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Nice use of intersect! +1 –  ECII Dec 22 '11 at 14:24
    
Very succinct and understandable. +1 –  Tyler Rinker Dec 22 '11 at 18:45
1  
No need to use subset here - and generally you want to avoid programming with any function that uses non-standard evaluation. (And I'm not sure why you'd want to use it because it's rather verbose compared to dfr1[common_cols]) –  hadley Dec 28 '11 at 21:04

Here is my solution hope i got your question right

df1 <- data.frame(a=rnorm(100), b=rnorm(100), not=rnorm(100))
df2 <- data.frame(a=rnorm(100), b=rnorm(100))

bind1 <- bind1 <- df1[, names(df1) %in% names(df2)]
bind2 <- bind1 <- df1[, names(df2) %in% names(df1)]

rbind(bind1, bind2)
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What happens if df2 has columns that aren't in df1? –  Richie Cotton Dec 22 '11 at 14:18
    
Also, the call to subset isn't necessary. If you are going to use indexing later, then you can just pass them the logical vector created by names(df1) %in% names(df2). –  Richie Cotton Dec 22 '11 at 14:21
    
as for your first comment: if df2 has columns that aren't in df1 - they are not common and I don't want to filter them - or am I wrong? as for your second comment: right this would be better probably I did it a bit too sloppy... –  Seb Dec 22 '11 at 14:25
    
If they're in df2 but not in df1 they they aren't common so you do want to filter them. My point is that %in% isn't symmetric, whereas intersect is. You'd need bind1 <- df1[, names(df1) %in% names(df2)] and bind2 <- df2[, names(df2) %in% names(df1)]. –  Richie Cotton Dec 22 '11 at 15:04

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