62

I have a dataframe with >100 columns, and I would to find the unique rows, by comparing only two of the columns. I'm hoping this is an easy one, but I can't get it working with unique or duplicated myself.

In the below, I would like to unique only using id and id2:

data.frame(id=c(1,1,3),id2=c(1,1,4),somevalue=c("x","y","z"))

id id2 somevalue
1   1         x
1   1         y
3   4         z

I would like to obtain either:

id id2 somevalue
1   1         x
3   4         z

or:

id id2 somevalue
1   1         y
3   4         z

(I have no preference which of the unique rows is kept)

  • Your desired output isn't well defined. How do you choose to include x but not y? This decision will need to be made for every column of every repeated row, and you've given no indication of how to do it. – joran Mar 30 '12 at 14:33
  • 1
    I have no preference whether 'x' or 'y' is included. I'll update the question. – Ina Mar 30 '12 at 14:34
  • For data.table alternatives: Filtering out duplicated/non-unique rows in data.table – Henrik Jul 10 '18 at 15:21
102

Ok, if it doesn't matter which value in the non-duplicated column you select, this should be pretty easy:

dat <- data.frame(id=c(1,1,3),id2=c(1,1,4),somevalue=c("x","y","z"))
> dat[!duplicated(dat[,c('id','id2')]),]
  id id2 somevalue
1  1   1         x
3  3   4         z

Inside the duplicated call, I'm simply passing only those columns from dat that I don't want duplicates of. This code will automatically always select the first of any ambiguous values. (In this case, x.)

13

Using unique():

dat <- data.frame(id=c(1,1,3),id2=c(1,1,4),somevalue=c("x","y","z"))    
dat[row.names(unique(dat[,c("id", "id2")])),]
  • unique(dat[,c("id", "id2")]) returns vector, not dataframe, so you cannot refer to its row.names – Sashko Lykhenko Apr 18 at 7:59
  • @SashkoLykhenko, did you miss the last comma? – Gary Feng Apr 27 at 23:38
  • I copypasted this row.names(unique(dat[,c("id", "id2")])) and it returned error. Last comma relates to outer dat[...,] – Sashko Lykhenko Apr 29 at 8:35
10

Here are a couple dplyr options that keep non-duplicate rows based on columns id and id2:

library(dplyr)                                        
df %>% distinct(id, id2, .keep_all = TRUE)
df %>% group_by(id, id2) %>% filter(row_number() == 1)
df %>% group_by(id, id2) %>% slice(1)
  • 3
    I guess no reason to consider using the alternatives to distinct – Frank Jul 17 '18 at 18:40
  • 1
    @Frank maybe if there is a date or some other sequential field a combination of the two other options with some slight tweaks could be used to ensure the most recent observation is kept df %>% group_by(id, id2) %>% filter(date == max(date)) %>% slice(1) without having to sort the data. filter() gets the most recent date, slice() ensures only one observation is returned if there are ties. In other cases something like df %>% group_by(id, id2) %>% slice(max(row_number())) could might give some more flexibility. You could always use arrange() before distinct() too. – sbha Feb 9 at 12:32
  • @sbha Is there a method to designate a preference for a row with a certain column value when there is a tie in the column you are grouping on? In the case of the example in the question, the row with somevalue == x is always returned when the row is a duplicate in the id and id2 columns. – Lorcán May 20 at 10:57
1

Minor update in @Joran's code.
Using the code below, you can avoid the ambiguity and only get the unique of two columns:

dat <- data.frame(id=c(1,1,3), id2=c(1,1,4) ,somevalue=c("x","y","z"))    
dat[row.names(unique(dat[,c("id", "id2")])), c("id", "id2")]
  • 2
    This looks identical to Gary Feng's answer, except that you don't include the somevalue result. – Gregor Jul 10 '18 at 15:25

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