# removing rows when flipped in two coloumns

considering the following data frame:

``````df <- data.frame(var1 = 1:5, var2 = c(5,6,7,8,1))

> df
var1 var2
1    1    5
2    2    6
3    3    7
4    4    8
5    5    1
``````

I'd like to remove all rows whose values are flipped across the two coloums. In this case, it would be row 1 and row 5 as the values 1 and 5 in row 1 are flipped to 5 and 1 in row 5. These two rows should be removed.

I hope it came clear what I am asking for :-)

Kind regards!

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Are you looking for the values that match? –  dave Oct 9 '13 at 15:41
Yep! That match and are flipped at the same time. –  ahs85 Oct 9 '13 at 15:43

Perhaps something like this could work too:

``````df <- data.frame(var1 = 1:5, var2 = c(5,6,7,8,1))
df[!do.call(paste, df) %in% do.call(paste, rev(df)), ]
var1 var2
2    2    6
3    3    7
4    4    8
``````

I'd have to test it on a few more test cases though, but the general idea is to use `rev` to reverse the order of the columns in "df" and `paste` them together and compare that with the pasted columns from "df".

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+1 If I were maintaining somebody else's code, this is the one I'd want to see. Elegant and easy to understand. –  Matt Parker Oct 9 '13 at 17:03
Works well! How do I deal with it when having factors? –  ahs85 Oct 10 '13 at 8:36
@ahs85, can you explain further what you mean? The same approach should work as far as I can tell. –  Ananda Mahto Oct 10 '13 at 10:27

Here's a simple but not especially elegant way: make a reversed data frame with a flag, and then merge it on to `df`:

``````# Make a reversed dataset
fd <- data.frame(var1 = df\$var2, var2 = df\$var1, flag = TRUE)

# Merge it onto your original df, then drop the matched rows and the flag var
df.sub <- subset(merge(x = df, y = fd, by = c("var1", "var2"), all.x = TRUE),
subset = is.na(flag),
select = c("var1", "var2"))
``````
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or just `fd <- df[,ncol(df):1] ` –  Carl Witthoft Oct 9 '13 at 15:50

Using a bit of maths - the two rows are the same up to a permutation if the sum and absolute value of difference are the same:

``````df[with(df, !duplicated(data.frame(var1 + var2, abs(var1 - var2)), fromLast = TRUE)),]
#  var1 var2
#1    1    5
#2    2    6
#3    3    7
#4    4    8
``````

edit: should've read the question more carefully, to remove both duplicates, follow Ananda's suggestion:

``````df.ind = with(df, data.frame(var1 + var2, abs(var1 - var2)))
df[!duplicated(df.ind) & !duplicated(df.ind, fromLast = TRUE),]
#  var1 var2
#2    2    6
#3    3    7
#4    4    8
``````
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You'll need to do this both ways (in other words, `duplicated` with "from last") to drop both "duplicated" rows. –  Ananda Mahto Oct 9 '13 at 16:47
@AnandaMahto thanks –  eddi Oct 9 '13 at 16:53

If creating a copy doesn't cause memory issues then this works as well -

``````df <- data.frame(var1 = 1:5, var2 = c(5,6,7,8,1))
df2 <- data.frame(var12 = 1:5, var22 = c(5,6,7,8,1))
df3 <- merge(df,df2, by.x = 'var2', by.y = 'var12', all.x = TRUE)
df3 <- subset(
df3,
is.na(var22),
select = c('var1','var2')
)
``````

Output:

``````> df3
var1 var2
3    2    6
4    3    7
5    4    8
``````

I tried merging df with df but that gives a warning about the column var2 being duplicated. Anybody know what to do?

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If you can assume there are no duplicates in the data frame. Here's a one line answer, but still not too concise:

``````df[!duplicated(rbindlist(list(df,df[,2:1])))[nrow(df) + 1:nrow(df)],]
##   var1 var2
## 2    2    6
## 3    3    7
## 4    4    8
``````

`rbindlist` is necessary here because `rbind(df,df[,2:1])` will match by column name rather than index, so the other option is something like `rbind(df,setnames(df[,2:1],names(df)))`. If you want to keep duplicates from the original, this gets even more unpleasant:

``````> df <- data.frame(var1 = 1:5, var2 = c(5,6,7,8,1))
> df<-rbind(df,c(2,6))
> df[!duplicated(rbindlist(list(df,df[,2:1])))[nrow(df)+1:nrow(df)],]
var1 var2
2    2    6
3    3    7
4    4    8
> df[!duplicated(rbindlist(list(df,df[,2:1])))[nrow(df)+1:nrow(df)] | duplicated(df),]
var1 var2
2    2    6
3    3    7
4    4    8
6    2    6
``````
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