Unlike questions I've found, I want to get the unique of two columns without order.

I have a df:

> df
     [,1] [,2]
 [1,] "a"  "b" 
 [2,] "b"  "d" 
 [3,] "c"  "e" 
 [4,] "b"  "a" 

In this case, row 1 and row 4 are "duplicates" in the sense that b-a is the same as b-a.

I know how to find unique of columns 1 and 2 but I would find each row unique under this approach.

  • That is not a data.frame but a matrix; if it were a df, unique(df) would do the trick. Try df<-data.frame(c("a","b","c","b"),c("b","d","e","a")) first.
    – Frank
    Feb 18 '15 at 0:47
  • 2
    I don't think so, unique(df) doesn't check across columns to see that c('a','b') is effectively the same as c('b','a') (and why should it?). Slightly more work ...
    – r2evans
    Feb 18 '15 at 0:52

If it's just two columns, you can also use pmin and pmax, like this:

unique(as.data.table(df)[, c("V1", "V2") := list(pmin(V1, V2),
                         pmax(V1, V2))], by = c("V1", "V2"))
#    V1 V2
# 1:  a  b
# 2:  b  d
# 3:  c  e

A similar approach using "dplyr" might be:

data.frame(df, stringsAsFactors = FALSE) %>% 
  mutate(key = paste0(pmin(X1, X2), pmax(X1, X2), sep = "")) %>% 
#   X1 X2 key
# 1  a  b  ab
# 2  b  d  bd
# 3  c  e  ce
  • Why is by = c("V1", "V2") needed? It seems that omitting it gives the same result.
    – Lyngbakr
    Aug 12 '19 at 15:20

There are lot's of ways to do this, here is one:

unique(t(apply(df, 1, sort)))
duplicated(t(apply(df, 1, sort)))

One gives the unique rows, the other gives the mask.

  • This approach returns the first unique occurence of a row (rows 1,2,3) but it does not return the duplicate rows (rows 1,4)/unique rows (2,3) as defined by the original poster.
    – atreju
    Sep 1 '15 at 10:05

You could use igraph to create a undirected graph and then convert back to a data.frame

unique(get.data.frame(graph.data.frame(df, directed=FALSE),"edges"))

If all of the elements are strings (heck, even if not and you can coerce them), then one trick is to create it as a data.frame and use some of dplyr's tricks on it.

df <- data.frame(v1 = c("a","b","c","b"), v2 = c("b","d","e","a"))
df$key <- apply(df, 1, function(s) paste0(sort(s), collapse=''))
##   v1 v2 key
## 1  a  b  ab
## 2  b  d  bd
## 3  c  e  ce
## 4  b  a  ab

The $key column should now tell you the repeats.

df %>% group_by(key) %>% do(head(., n = 1))
## Source: local data frame [3 x 3]
## Groups: key
##   v1 v2 key
## 1  a  b  ab
## 2  b  d  bd
## 3  c  e  ce
  • 1
    This is not very good use of dplyr. I would suggest looking at distinct if you wanted to go this route. On a small (100k rows) dataset, this approach presently takes > 4 seconds on my system while the base R approach takes ~ 1.3 seconds and the data.table approach takes ~ 0.03 seconds. Feb 18 '15 at 2:28
  • 1
    Using pmin and pmax is where the speed comes in. A dplyr variant of my data.table answer runs at ~ 0.05 seconds. For reference, the variant I'm referring to looks like this: data.frame(df, stringsAsFactors = FALSE) %>% mutate(key = paste0(pmin(X1, X2), pmax(X1, X2), sep = "")) %>% distinct(key) Feb 18 '15 at 2:32
  • Your code is certainly impressive. I'm still learning the ins-and-outs of dplyr, which must seem obvious to you.
    – r2evans
    Feb 18 '15 at 4:39

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