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I have 2 data frames df1 and df2.

df1 <- data.frame(c1=c("a","b","c","d"),c2=c(1,2,3,4) )
df2 <- data.frame(c1=c("c","d","e","f"),c2=c(3,4,5,6) )
> df1
  c1 c2
1  a  1
2  b  2
3  c  3
4  d  4
> df2
  c1 c2
1  c  3
2  d  4
3  e  5
4  f  6

I need to perform set operation of these 2 data frames. I used merge(df1,df2,all=TRUE) and merge(df1,df2,all=FALSE) method to get the union and intersection of these data frames and got the required output. What is the function to get the minus of these data frames,that is all the positions existing on one data frame but not the other? I need the following output.

 c1 c2
1  a  1
2  b  2
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1  
Do you want to get lines in df1 that are not in df2 and lines in df2 that are not in df1 ? –  juba Apr 22 '13 at 9:39
    
@juba, I believe this is more of setdiff but for data.frames –  Arun Apr 22 '13 at 9:43
    
Yes, that's what I thought, but the result given is not a setdiff. That's why I ask the question :) –  juba Apr 22 '13 at 9:44
    
sorry, don't follow. c,3 and d,4 are present in both. So, setdiff(df1, df2) should return those rows not in df2, which is a,1 and b,2. This seems to be a setdiff operation to me (if implemented for data.frame) –  Arun Apr 22 '13 at 9:48
2  
@juba, that depends on how you do: setdiff(df1, df2) should return OP's input. setdiff(df2, df1) should return what you say. It's a set operation. So, it should give x entries not in y (so order matters). –  Arun Apr 22 '13 at 9:51
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5 Answers 5

up vote 6 down vote accepted

I remember coming across this exact issue quite a few months back. Managed to sift through my Evernote one-liners.

Note: This is not my solution. Credit goes to whoever wrote it (whom I can't seem to find at the moment).

If you don't worry about rownames then you can do:

df1[!duplicated(rbind(df2, df1))[-seq_len(nrow(df2))], ]
#   c1 c2
# 1  a  1
# 2  b  2

Edit: A data.table solution:

dt1 <- data.table(df1, key="c1")
dt2 <- data.table(df2)
dt1[!dt2]
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this is working perfectly. Thank you –  Dinoop Nair Apr 22 '13 at 10:14
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I prefer sqldf package:

require(sqldf)
sqldf("select * from df1 except select * from df2")

##   c1 c2
## 1  a  1
## 2  b  2
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1  
(+1) Note: this doesn't check for rownames. That is, if df1 and df2 have same entries in c1 and c2 but different rownames, this would consider them as identical. (Not that the OP was hinting anything about it, but just so that it's clear). –  Arun Apr 22 '13 at 9:58
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You can create identifier columnas then subset:

e.g.

df1 <- data.frame(c1=c("a","b","c","d"),c2=c(1,2,3,4), indf1 = rep("Y",4) )
df2 <- data.frame(c1=c("c","d","e","f"),c2=c(3,4,5,6),indf2 = rep("Y",4) )
merge(df1,df2)
#  c1 c2 indf1 indf2
#1  c  3     Y     Y
#2  d  4     Y     Y

bigdf <- merge(df1,df2,all=TRUE)
#  c1 c2 indf1 indf2
#1  a  1     Y  <NA>
#2  b  2     Y  <NA>
#3  c  3     Y     Y
#4  d  4     Y     Y
#5  e  5  <NA>     Y
#6  f  6  <NA>     Y

Then subset how you wish:

 bigdf[is.na(bigdf$indf1) ,]
#  c1 c2 indf1 indf2
#5  e  5  <NA>     Y
#6  f  6  <NA>     Y

 bigdf[is.na(bigdf$indf2) ,]  #<- output you requested those not in df2
#  c1 c2 indf1 indf2
#1  a  1     Y  <NA>
#2  b  2     Y  <NA>
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this is not possible..bcoz the given data is only a sample dataframes.the actual data frames contains huge amount of rows. so the object size may become very large by this method. –  Dinoop Nair Apr 22 '13 at 9:42
1  
@DinoopNair Then you may do a merge with all.x=TRUE and subset on indf2 ? –  juba Apr 22 '13 at 9:56
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If you're not planning on using any of the actual data in d2, then you don't need merge at all:

df1[!(df1$c1 %in% df2$c1), ]
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i need to check the values in both columns. –  Dinoop Nair Apr 22 '13 at 9:52
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You can check the values in both columns and subset like this (just adding another solution):

na.omit( df1[ sapply( 1:ncol(df1) , function(x) ! df1[,x] %in% df2[,x] ) , ] )
#  c1 c2
#1  a  1
#2  b  2
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