# Removing duplicate combinations (irrespective of order)

I have a data frame of integers that is a subset of all of the n choose 3 combinations of 1...n. E.g., for n=5, it is something like:

``````      [,1] [,2] [,3]
[1,]    1    2    3
[2,]    1    2    4
[3,]    1    2    5
[4,]    1    3    4
[5,]    1    3    5
[6,]    1    4    5
[7,]    2    1    3
[8,]    2    1    4
[9,]    2    1    5
[10,]    2    3    4
[11,]    2    3    5
[12,]    2    4    5
[13,]    3    1    2
[14,]    3    1    4
[15,]    3    1    5
[16,]    3    2    4
[17,]    3    2    5
[18,]    3    4    5
[19,]    4    1    2
[20,]    4    1    3
[21,]    4    1    5
[22,]    4    2    3
[23,]    4    2    5
[24,]    4    3    5
[25,]    5    1    2
[26,]    5    1    3
[27,]    5    1    4
[28,]    5    2    3
[29,]    5    2    4
[30,]    5    3    4
``````

What I'd like to do is remove any rows with duplicate combinations, irrespective of ordering. E.g., `[1,] 1 2 3` is the same as `[1,] 2 1 3` is the same as `[1,] 3 1 2`.

`unique`, `duplicated`, &c. don't seem to take this into account. Also, I am working with quite a large amount of data (n is ~750), so it ought to be a pretty fast operation. Are there any base functions or packages that can do this?

Sort within the rows first, then use duplicated, see below:

``````# example data
dat = matrix(scan('data.txt'), ncol = 3, byrow = TRUE)
# Read 90 items

dat[ !duplicated(apply(dat, 1, sort), MARGIN = 2), ]
#       [,1] [,2] [,3]
#  [1,]    1    2    3
#  [2,]    1    2    4
#  [3,]    1    2    5
#  [4,]    1    3    4
#  [5,]    1    3    5
#  [6,]    1    4    5
#  [7,]    2    3    4
#  [8,]    2    3    5
#  [9,]    2    4    5
# [10,]    3    4    5
``````