134

For example if I have this:

n = c(2, 3, 5) 
s = c("aa", "bb", "cc") 
b = c(TRUE, FALSE, TRUE) 
df = data.frame(n, s, b)

  n  s     b
1 2 aa  TRUE
2 3 bb FALSE
3 5 cc  TRUE

Then how do I combine the two columns n and s into a new column named x such that it looks like this:

  n  s     b     x
1 2 aa  TRUE  2 aa
2 3 bb FALSE  3 bb
3 5 cc  TRUE  5 cc
155

Use paste.

 df$x <- paste(df$n,df$s)
 df
#   n  s     b    x
# 1 2 aa  TRUE 2 aa
# 2 3 bb FALSE 3 bb
# 3 5 cc  TRUE 5 cc
3
  • .@thelatemail - How to add a special character between data points using paste()? For above example, x column should have data as 2-aa, then 3-bb and 5-cc. Oct 6 '17 at 2:28
  • 9
    .@thelatemail - This worked for me: paste(df$n,df$s,sep="-") Oct 6 '17 at 19:09
  • 3
    how can you omit NA if column s has NA value? (I don't like to see 3 NA if df$s[2]=NA)
    – Cina
    Aug 10 '18 at 23:18
51

For inserting a separator:

df$x <- paste(df$n, "-", df$s)
4
  • 1
    .@LittleBee - This adds a space between two data. Final output for example is like: A - B instead of A-B. Is it possible to remove this extra space? Oct 6 '17 at 2:35
  • 9
    .@LittleBee - This worked for me: paste(df$n,df$s,sep="-") Oct 6 '17 at 19:09
  • 5
    use paste0 instead of paste
    – Ferroao
    Nov 2 '17 at 16:55
  • 3
    This won't give the desired output : OP asks for a space in between the elements, not another separator (which, by the way, would be better put as the sep argument...). The other answer, posted almost 4 years prior to yours, is however perfectly answering the question.
    – Cath
    Mar 27 '19 at 9:12
23

As already mentioned in comments by Uwe and UseR, a general solution in the tidyverse format would be to use the command unite:

library(tidyverse)

n = c(2, 3, 5) 
s = c("aa", "bb", "cc") 
b = c(TRUE, FALSE, TRUE) 

df = data.frame(n, s, b) %>% 
  unite(x, c(n, s), sep = " ", remove = FALSE)
2
  • 2
    What is x in this example?
    – Levi
    Apr 3 '19 at 13:51
  • 1
    @Levi, that x represents the name of the new column that contains the combined values. Think of dplyr's mutate: df %>% dplyr::mutate(x = "your operations")
    – Vesanen
    Aug 13 '20 at 18:33
17

Using dplyr::mutate:

library(dplyr)
df <- mutate(df, x = paste(n, s)) 

df 
> df
  n  s     b    x
1 2 aa  TRUE 2 aa
2 3 bb FALSE 3 bb
3 5 cc  TRUE 5 cc
3
  • 2
    No, as already existing answers, you are using paste, not mutate.
    – zx8754
    Mar 27 '19 at 7:32
  • I thought I was demonstrating how columns could be combined as a part of a dplyr::mutate(). Sorry, just trying to be helpful - I won't pollute the site anymore and abstain from future postings.
    – sbha
    Mar 27 '19 at 22:44
  • Sorry, if it came out as rude. OP's problem is not solved by using mutate, question is not about how to use dplyr, but how to combine column values. I am simply pointing out that they need paste not mutate. If we want to demonstrate dplyr correct way is using the function unite.
    – zx8754
    Mar 28 '19 at 6:37
16

Some examples with NAs and their removal using apply

n = c(2, NA, NA) 
s = c("aa", "bb", NA) 
b = c(TRUE, FALSE, NA) 
c = c(2, 3, 5) 
d = c("aa", NA, "cc") 
e = c(TRUE, NA, TRUE) 
df = data.frame(n, s, b, c, d, e)

paste_noNA <- function(x,sep=", ") {
gsub(", " ,sep, toString(x[!is.na(x) & x!="" & x!="NA"] ) ) }

sep=" "
df$x <- apply( df[ , c(1:6) ] , 1 , paste_noNA , sep=sep)
df
1
  • @Ferroao Thanks, you saved my life. pls move paste_noNA function before df$x <-apply.
    – malajisi
    Mar 11 '19 at 16:57
12

We can use paste0:

df$combField <- paste0(df$x, df$y)

If you do not want any padding space introduced in the concatenated field. This is more useful if you are planning to use the combined field as a unique id that represents combinations of two fields.

7

Instead of

  • paste (default spaces),
  • paste0 (force the inclusion of missing NA as character) or
  • unite (constrained to 2 columns and 1 separator),

I'd suggest an alternative as flexible as paste0 but more careful with NA: stringr::str_c

library(tidyverse)

# check the missing value!!
df <- tibble(
  n = c(2, 2, 8),
  s = c("aa", "aa", NA_character_),
  b = c(TRUE, FALSE, TRUE)
)

df %>% 
  mutate(
    paste = paste(n,"-",s,".",b),
    paste0 = paste0(n,"-",s,".",b),
    str_c = str_c(n,"-",s,".",b)
  ) %>% 

  # convert missing value to ""
  mutate(
    s_2=str_replace_na(s,replacement = "")
  ) %>% 
  mutate(
    str_c_2 = str_c(n,"-",s_2,".",b)
  )
#> # A tibble: 3 x 8
#>       n s     b     paste          paste0     str_c      s_2   str_c_2   
#>   <dbl> <chr> <lgl> <chr>          <chr>      <chr>      <chr> <chr>     
#> 1     2 aa    TRUE  2 - aa . TRUE  2-aa.TRUE  2-aa.TRUE  "aa"  2-aa.TRUE 
#> 2     2 aa    FALSE 2 - aa . FALSE 2-aa.FALSE 2-aa.FALSE "aa"  2-aa.FALSE
#> 3     8 <NA>  TRUE  8 - NA . TRUE  8-NA.TRUE  <NA>       ""    8-.TRUE

Created on 2020-04-10 by the reprex package (v0.3.0)

extra note from str_c documentation

Like most other R functions, missing values are "infectious": whenever a missing value is combined with another string the result will always be missing. Use str_replace_na() to convert NA to "NA"

4
  • 1
    paste0(n,"-",s,".",b) and str_c(n,"-",s,".",b) are exactly the same, both use a default separator that is the empty string ''. I also don't know why paste is "tidy", you mean you don't like spaces?
    – Axeman
    Mar 27 '19 at 19:46
  • paste0 and str_c are not exactly the same. take a look to these links: (1) rdocumentation.org/packages/stringr/versions/1.3.1/topics/str_c (2) stackoverflow.com/questions/53118271/…
    – avallecam
    Jan 20 '20 at 20:43
  • Ah I see! Thanks! How they are different would be a good addition to this answer (and the str_c documentation could be more explitic too!).
    – Axeman
    Jan 20 '20 at 21:11
  • @Axeman thanks for your suggestion. I've simplified the answer plus added an extra note on the issue
    – avallecam
    Apr 10 '20 at 13:39
5

There are other great answers, but in the case where you don't know the column names or the number of columns you want to concatenate beforehand, the following is useful.

df = data.frame(x = letters[1:5], y = letters[6:10], z = letters[11:15])
colNames = colnames(df) # could be any number of column names here
df$newColumn = apply(df[, colNames, drop = F], MARGIN = 1, FUN = function(i) paste(i, collapse = ""))

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