11

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

I have a df:

df<-cbind(c("a","b","c","b"),c("b","d","e","a"))
> 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.

2
  • 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
15

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

library(data.table)
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:

library(dplyr)
data.frame(df, stringsAsFactors = FALSE) %>% 
  mutate(key = paste0(pmin(X1, X2), pmax(X1, X2), sep = "")) %>% 
  distinct(key)
#   X1 X2 key
# 1  a  b  ab
# 2  b  d  bd
# 3  c  e  ce
1
  • Why is by = c("V1", "V2") needed? It seems that omitting it gives the same result.
    – Lyngbakr
    Aug 12 '19 at 15:20
8

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.

1
  • 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
3

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"))
0
0

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.

library(dplyr)
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=''))
head(df)
##   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
3
  • 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

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.