4

I am a novice R programmer. I have a following series of points.

df <- data.frame(x = c(1 , 2, 3, 4), y = c(6 , 3, 7, 5))
df <- df %>% mutate(k = 1) 
df <- df %>% full_join(df, by = 'k')
df <- subset(df, select = c('x.x', 'y.x', 'x.y', 'y.y'))
df

Is there way to select for "unique" points? (the order of the points do not matter)

EDIT:

x.x y.x x.y y.y
1   6   2   3
2   3   3   7
.
.
.

(I changed the 2 to 7 to clarify the problem)

4
  • My expected output would be 6 rows (4 choose 2) of the combinations of all the points. I'll make an edit. Apr 10, 2017 at 4:57
  • should all 4 values in on line to be taken inaccount? or only one x and y value?
    – and-bri
    Apr 10, 2017 at 5:06
  • My "objects" for my 4 choose 2 problem should be the point pairs 'x.x' and 'y.x' Apr 10, 2017 at 5:09
  • By the way, overwriting df like that, especially as part of an example, is not generally a good idea. You'll see that the answers below use different dfs per your differing definitions...
    – Frank
    Apr 10, 2017 at 5:13

3 Answers 3

7

With data.table (and working from the OP's initial df):

library(data.table)
setDT(df)

df[, r := .I ]
df[df, on=.(r > r), nomatch=0]


   x y r i.x i.y
1: 2 3 1   1   6
2: 3 2 1   1   6
3: 4 5 1   1   6
4: 3 2 2   2   3
5: 4 5 2   2   3
6: 4 5 3   3   2

This is a "non-equi join" on row numbers. In x[i, on=.(r > r)] the left-hand r refers to the row in x and the right-hand one to a row of i. The columns named like i.* are taken from i.

Data.table joins, which are of the form x[i], use i to look up rows of x. The nomatch=0 option drops rows of i that find no matches.

3
  • 1
    Oh, that's just creating the row number, same as mutate(r = row_number()) in dplyr, except it adds it to the table by reference, so there's no need to assign the result with <-.
    – Frank
    Apr 10, 2017 at 5:13
  • Ohhh you are doing a non equi join on the data set. through data.table Apr 10, 2017 at 5:16
  • 1
    @NicholasHayden Fwiw, I don't know enough SQL to know what a non equi join is beyond use through data.table :)
    – Frank
    Apr 10, 2017 at 5:18
2

In the tidyverse, you can save a bit of work by doing the self-join with tidyr::crossing. If you add row indices pre-join, reducing is a simple filter call:

library(tidyverse)

df %>% mutate(i = row_number()) %>%    # add row index column
    crossing(., .) %>%    # Cartesian self-join
    filter(i < i1) %>%    # reduce to lower indices
    select(-i, -i1)    # remove extraneous columns

##   x y x1 y1
## 1 1 6  2  3
## 2 1 6  3  7
## 3 1 6  4  5
## 4 2 3  3  7
## 5 2 3  4  5
## 6 3 7  4  5

or in all base R,

df$m <- 1
df$i <- seq(nrow(df))
df <- merge(df, df, by = 'm')
df[df$i.x < df$i.y, c(-1, -4, -7)]

##    x.x y.x x.y y.y
## 2    1   6   2   3
## 3    1   6   3   7
## 4    1   6   4   5
## 7    2   3   3   7
## 8    2   3   4   5
## 12   3   7   4   5
4
  • 1
    For base R, also: cb = combn(nrow(df), 2); cbind(df[cb[1,],], df[cb[2,],])
    – Frank
    Apr 10, 2017 at 5:54
  • I am getting an error with the dplyr method. It says they are duplicated columns when it gets to the filter step. Is there a way to differientiate the columns? Apr 10, 2017 at 5:56
  • @Frank Yeah, that's a much more straightforward option.
    – alistaire
    Apr 10, 2017 at 5:58
  • @NicholasHayden Ah, this is on the devel versions of dplyr (probably doesn't matter) and tidyr. I believe the CRAN version of tidyr does not clean duplicate names automatically, but the GitHub version does. If you don't want to update, you could fix them manually with ... %>% setNames(make.names(names(.), unique = TRUE)) %>% ..., adjusting subsequent names as necessary.
    – alistaire
    Apr 10, 2017 at 6:08
1

You can use the duplicated.matrix() function from base, to find the rows which are no duplicator - which means in fact that there are unique. When you call the duplicated() function you have to clarify that you only want to use the to first colons. With this call you check which line is unique. In a second step you call in your dataframe for this rows, with all columns.

unique_lines = !duplicated.matrix(df[,c(1,2)])
df[unique_lines,]

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