I have read a CSV file into an R data.frame. Some of the rows have the same element in one of the columns. I would like to remove rows that are duplicates in that column. For example:

platform_external_dbus          202           16                     google        1
platform_external_dbus          202           16         space-ghost.verbum        1
platform_external_dbus          202           16                  localhost        1
platform_external_dbus          202           16          users.sourceforge        8
platform_external_dbus          202           16                    hughsie        1

I would like only one of these rows since the others have the same data in the first column.

  • 2
    which one do you want? just the first? in other words: do you want to keep google or localhost or hughsie ? – Anthony Damico Dec 20 '12 at 7:18
  • It does not matter for this part of my statistical analysis. I am only trying to relate the project title (first column), the number of bugs (second column), and the number of organizations on the project (third column). – user1897691 Dec 20 '12 at 7:20
  • 3
    cool. throw unnecessary columns out and use ?unique – Anthony Damico Dec 20 '12 at 7:22
up vote 143 down vote accepted

just isolate your data frame to the columns you need, then use the unique function :D

# in the above example, you only need the first three columns
deduped.data <- unique( yourdata[ , 1:3 ] )
# the fourth column no longer 'distinguishes' them, 
# so they're duplicates and thrown out.
  • 1
    This looks like it will work perfectly. Can you please explain to me what is happening with the [,1:3] part of that code? I'm new to R which is why I'm asking what I can only assume is an obvious question. – user1897691 Dec 20 '12 at 7:24
  • 6
    @user1897691 mark it as correct then ;) watch this and if you like that, check twotorials.com – Anthony Damico Dec 20 '12 at 7:25

For people who have come here to look for a general answer for duplicate row removal, use !duplicated():

a <- c(rep("A", 3), rep("B", 3), rep("C",2))
b <- c(1,1,2,4,1,1,2,2)
df <-data.frame(a,b)

duplicated(df)
[1] FALSE  TRUE FALSE FALSE FALSE  TRUE FALSE  TRUE

> df[duplicated(df), ]
  a b
2 A 1
6 B 1
8 C 2

> df[!duplicated(df), ]
  a b
1 A 1
3 A 2
4 B 4
5 B 1
7 C 2

Answer from: Removing duplicated rows from R data frame

  • I want to create a new varibale that flags if there's a duplicate on a certain variable almost like df$duplicates <- ifelse(this rows value in column a == previous row value in column a , 1 , 0) – jacob Jul 22 '15 at 9:59
  • @jacob see this question stackoverflow.com/questions/12495345/… – dpel May 23 '16 at 15:16
  • 2
    This keeps the first appeared value and removes the rest of the duplicates, right? Or it removes values randomly? – alphabetagamma Aug 7 '17 at 0:43

The function distinct() in the dplyr package performs arbitrary duplicate removal, allowing the specification of the duplicated variables (as in this question) or considering all variables.

Data:

dat <- data.frame(a = rep(c(1,2),4), b = rep(LETTERS[1:4],2))

Remove rows where specified columns are duplicated:

library(dplyr)
dat %>% distinct(a, .keep_all = TRUE)

  a b
1 1 A
2 2 B

Remove rows that are complete duplicates of other rows:

dat %>% distinct

  a b
1 1 A
2 2 B
3 1 C
4 2 D
  • As usual, the dplyr solution is the cleanest. – qwr Nov 29 at 20:14

The data.table package also has unique and duplicated methods of it's own with some additional features.

Both the unique.data.table and the duplicated.data.table methods have an additional by argument which allows you to pass a character or integer vector of column names or their locations respectively

library(data.table)
DT <- data.table(id = c(1,1,1,2,2,2),
                 val = c(10,20,30,10,20,30))

unique(DT, by = "id")
#    id val
# 1:  1  10
# 2:  2  10

duplicated(DT, by = "id")
# [1] FALSE  TRUE  TRUE FALSE  TRUE  TRUE

Another important feature of these methods is a huge performance gain for larger data sets

library(microbenchmark)
library(data.table)
set.seed(123)
DF <- as.data.frame(matrix(sample(1e8, 1e5, replace = TRUE), ncol = 10))
DT <- copy(DF)
setDT(DT)

microbenchmark(unique(DF), unique(DT))
# Unit: microseconds
#       expr       min         lq      mean    median        uq       max neval cld
# unique(DF) 44708.230 48981.8445 53062.536 51573.276 52844.591 107032.18   100   b
# unique(DT)   746.855   776.6145  2201.657   864.932   919.489  55986.88   100  a 


microbenchmark(duplicated(DF), duplicated(DT))
# Unit: microseconds
#           expr       min         lq       mean     median        uq        max neval cld
# duplicated(DF) 43786.662 44418.8005 46684.0602 44925.0230 46802.398 109550.170   100   b
# duplicated(DT)   551.982   558.2215   851.0246   639.9795   663.658   5805.243   100  a 

With sqldf:

# Example by Mehdi Nellen
a <- c(rep("A", 3), rep("B", 3), rep("C",2))
b <- c(1,1,2,4,1,1,2,2)
df <-data.frame(a,b)

Solution:

 library(sqldf)
    sqldf('SELECT DISTINCT * FROM df')

Output:

  a b
1 A 1
2 A 2
3 B 4
4 B 1
5 C 2
  • This has the overhead of setting up an entire SQL database. cran.r-project.org/web/packages/sqldf/index.html – qwr Nov 29 at 20:14
  • What do you mean by setting up an entire SQL database? That is one of the main advantages: 'with sqldf the user is freed from having to do the following, all of which are automatically done: database setup, writing the create table statement which defines each table, importing and exporting to and from the database'. It is not an optimal solution, but handy for those familiar with SQL. – mpalanco Nov 30 at 7:52

Or you could nest the data in cols 4 and 5 into a single row with tidyr:

library(tidyr)
df %>% nest(V4:V5)

# A tibble: 1 × 4
#                      V1    V2    V3             data
#                  <fctr> <int> <int>           <list>
#1 platform_external_dbus   202    16 <tibble [5 × 2]>

The col 2 and 3 duplicates are now removed for statistical analysis, but you have kept the col 4 and 5 data in a tibble and can go back to the original data frame at any point with unnest().

the general answer can be for example:

df <-  data.frame(rbind(c(2,9,6),c(4,6,7),c(4,6,7),c(4,6,7),c(2,9,6))))



new_df <- df[-which(duplicated(df)), ]

output:

      X1 X2 X3
    1  2  9  6
    2  4  6  7

You can also use dplyr's distinct() function! It tends to be more efficient than alternative options, especially if you have loads of observations.

distinct_data <- dplyr::distinct(yourdata)

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