1

There are lots of question the flirt around this issue, but I haven't been able to find answer to my particular concern. I have a dataframe that has this general format.

dat <- data.frame(V1 = c(1,1,2,1,2,4,5), V2 = c(1,2,1,2,1,5,4), V3 =    c('date1','date1','date2','date3','date4','date1','date2'))

dat
V1 V2    V3
1  1 date1
2  1 date1
1  2 date2
1  2 date3
2  1 date4
5  4 date1
4  5 date2

I want to find unique pairs from column 1 and 2 (so that row 2, 3, 4, 5 are all consolidated into a single unique pair) regardless of order (1, 2 = 2, 1). I found this nice code on SO (Unique pairs in R, ignoring order)

colwise <- function(dat) data.frame(unique(cbind(pmin(dat[,1], dat[,2]), pmax(dat[,1], dat[,2]))))

Which works great for pulling out columns 1 and 2.

colwise(dat)
V1 V2
1  1
1  2
4  5

However, I would like to find the unique pairs (as above) but also include the entire first row from the original dataset for each unique pair. In the example above the final output would be

dat
V1 V2    V3
1  1 date1
1  2 date1
4  5 date1

In my actual dataset I have many more columns and several ~1 million rows, though only 100-200 truly unique combinations of column 1 and 2. Additionally, the unique pair columns are not actually columns 1, 2 in my dataset so the ability to specify specific columns to test for uniqueness is important.

Does anyone have some good thoughts for how to modify the colwise function or how to use the resulting set of unique pairs to pull from the original dataframe the first entire row based on that unique pair?

Thank you

4

The distinct function in the dplyr package does this. To ignore order, you can define the smaller and larger columns first, and remove those columns afterwards:

library(dplyr)
dat %>%
  distinct(smaller = pmin(V1, V2),
           larger = pmax(V1, V2),
           .keep_all = TRUE) %>%
  select(-smaller, -larger)

The .keep_all argument (since dplyr 0.5) tells it not to discard the other (non-V1/V2) columns.

1
  • This is a great implementation and is very fast. Much faster than what I had been using previously. I accepted the answer of @aichao because it showed how to modify my code to solve my problem, but this implementation is better than what I had. Thank you, always great to see new applications of dplyr Jul 31 '16 at 21:56
2

Use duplicated instead of unique to get the duplicated indices for the unique pairs instead of the unique pairs, then remove the duplicates:

dat <- data.frame(V1 = c(1,1,2,1,2,4,5), V2 = c(1,2,1,2,1,5,4), V3 = c('date1','date1','date2','date3','date4','date1','date2'))

dup <- function(dat) duplicated(cbind(pmin(dat[,1], dat[,2]), pmax(dat[,1], dat[,2])))

print(dat[!dup(dat),])
##  V1 V2    V3
##1  1  1 date1
##2  1  2 date1
##6  4  5 date1

Note, this only gives you the entire row for the first of these duplicated unique pairs, and you said that is what you want.

Hope this helps.

1
  • Works great for what I needed! I'd been looking at how to incorporate duplicated, but didn't realize it was going to be that simple. Jul 31 '16 at 21:51
0

You could first sort the columns and then use duplicated:

dat <- transform(dat, V1a=pmin(V1,V2), V2a=pmax(V1,V2))
idx <- which(!duplicated(dat[,c("V1a", "V2a")]))
dat <- dat[idx,]

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