337

I'd like to take data of the form

before = data.frame(attr = c(1,30,4,6), type=c('foo_and_bar','foo_and_bar_2'))
  attr          type
1    1   foo_and_bar
2   30 foo_and_bar_2
3    4   foo_and_bar
4    6 foo_and_bar_2

and use split() on the column "type" from above to get something like this:

  attr type_1 type_2
1    1    foo    bar
2   30    foo  bar_2
3    4    foo    bar
4    6    foo  bar_2

I came up with something unbelievably complex involving some form of apply that worked, but I've since misplaced that. It seemed far too complicated to be the best way. I can use strsplit as below, but then unclear how to get that back into 2 columns in the data frame.

> strsplit(as.character(before$type),'_and_')
[[1]]
[1] "foo" "bar"

[[2]]
[1] "foo"   "bar_2"

[[3]]
[1] "foo" "bar"

[[4]]
[1] "foo"   "bar_2"

Thanks for any pointers. I've not quite groked R lists just yet.

18 Answers 18

356

Use stringr::str_split_fixed

library(stringr)
str_split_fixed(before$type, "_and_", 2)
8
  • 4
    this worked pretty fine for my problem today as well.. but it was adding a 'c' at the beginning of each row. Any idea why is that??? left_right <- str_split_fixed(as.character(split_df),'\">',2)
    – LearneR
    Jul 28, 2015 at 6:53
  • I would like to split with a pattern that has "...", when I apply that function, it returns nothing. What could be the problem. my type is something like "test...score" Mar 14, 2016 at 8:15
  • 6
    @user3841581 - old query of yours I know, but this is covered in the documentation - str_split_fixed("aaa...bbb", fixed("..."), 2) works fine with fixed() to "Match a fixed string" in the pattern= argument. . means 'any character' in regex. Aug 9, 2017 at 4:30
  • Thanks hadley, very convinient method, but there is one thing can be improved, if there is NA in the original column, after separation it will become sevaral empty string in result columns, which is unwanted, I want to keep the NA still NA after separation Sep 15, 2017 at 3:28
  • Works well i.e. if the separator is missing ! i.e. if I have a vector 'a<-c("1N", "2N")' that I would like to separate in columns '1,1, "N", "N"' I run 'str_split_fixed(s, "", 2)'. I am just not sure how to name my new columns in this approach, 'col1<-c(1,1)' and 'col2<-c("N", "N")'
    – maycca
    May 22, 2018 at 19:32
272
Answer recommended by R Language Collective

You can use the tidyr package.

before <- data.frame(
  attr = c(1, 30 ,4 ,6 ), 
  type = c('foo_and_bar', 'foo_and_bar_2')
)

library(tidyr)
before |>
  separate_wider_delim(type, delim = "_and_", names = c("foo", "bar"))
# # A tibble: 4 × 3
#    attr foo   bar  
#   <dbl> <chr> <chr>
# 1     1 foo   bar  
# 2    30 foo   bar_2
# 3     4 foo   bar  
# 4     6 foo   bar_2

(Or using older versions of tidyr)

before %>%
  separate(type, c("foo", "bar"), "_and_")

##   attr foo   bar
## 1    1 foo   bar
## 2   30 foo bar_2
## 3    4 foo   bar
## 4    6 foo bar_2
3
  • 4
    Is there a way to limit number of splits with separate? Let's say I want to split on '_' only once (or do it with str_split_fixed and adding columns to existing dataframe)? Jan 11, 2016 at 11:42
  • @hadley How about if I want to split based on second _? I want the values as foo_and, bar/bar_2?
    – Prradep
    Nov 8, 2021 at 13:07
  • 2
    tidyr::separate has been superseded by tidyr::separate_wider_delim. Jul 11, 2023 at 20:32
94

5 years later adding the obligatory data.table solution

library(data.table) ## v 1.9.6+ 
setDT(before)[, paste0("type", 1:2) := tstrsplit(type, "_and_")]
before
#    attr          type type1 type2
# 1:    1   foo_and_bar   foo   bar
# 2:   30 foo_and_bar_2   foo bar_2
# 3:    4   foo_and_bar   foo   bar
# 4:    6 foo_and_bar_2   foo bar_2

We could also both make sure that the resulting columns will have correct types and improve performance by adding type.convert and fixed arguments (since "_and_" isn't really a regex)

setDT(before)[, paste0("type", 1:2) := tstrsplit(type, "_and_", type.convert = TRUE, fixed = TRUE)]
3
  • 1
    if the number of your '_and_' patterns vary, you can find out the maximum number of matches (i.e. future columns) with max(lengths(strsplit(before$type, '_and_')))
    – andschar
    Jun 4, 2019 at 10:41
  • This is my favorite answer, works very well! Could you please explain how it works. Why transpose(strsplit(…)) and isn't paste0 for concatenating strings - not splitting them...
    – Gecko
    May 14, 2020 at 11:00
  • 3
    @Gecko I'm not sure what is the question. If you just use strsplit it creates a single vector with 2 values in each slot, so tstrsplit transposes it into 2 vectors with a single value in each. paste0 is just used in order to create the column names, it is not used on the values. On the LHS of the equation are the column names, on the RHS is the split + transpose operation on the column. := stands for "assign in place", hence you don't see the <- assignment operator there. May 14, 2020 at 11:46
77

Yet another approach: use rbind on out:

before <- data.frame(attr = c(1,30,4,6), type=c('foo_and_bar','foo_and_bar_2'))  
out <- strsplit(as.character(before$type),'_and_') 
do.call(rbind, out)

     [,1]  [,2]   
[1,] "foo" "bar"  
[2,] "foo" "bar_2"
[3,] "foo" "bar"  
[4,] "foo" "bar_2"

And to combine:

data.frame(before$attr, do.call(rbind, out))
2
  • 8
    Another alternative on newer R versions is strcapture("(.*)_and_(.*)", as.character(before$type), data.frame(type_1 = "", type_2 = ""))
    – alexis_laz
    Nov 10, 2016 at 18:23
  • 1
    This is the correct solution. Simple and doesn't require thrid-party packages.
    – Cole
    Apr 4, 2023 at 1:55
46

Notice that sapply with "[" can be used to extract either the first or second items in those lists so:

before$type_1 <- sapply(strsplit(as.character(before$type),'_and_'), "[", 1)
before$type_2 <- sapply(strsplit(as.character(before$type),'_and_'), "[", 2)
before$type <- NULL

And here's a gsub method:

before$type_1 <- gsub("_and_.+$", "", before$type)
before$type_2 <- gsub("^.+_and_", "", before$type)
before$type <- NULL
0
36

here is a one liner along the same lines as aniko's solution, but using hadley's stringr package:

do.call(rbind, str_split(before$type, '_and_'))
2
  • 1
    Good catch, best solution for me. Though a bit slower than with the stringr package.
    – Melka
    Mar 30, 2016 at 11:34
  • did this function get renamed to strsplit() ? Feb 12, 2021 at 13:58
31

To add to the options, you could also use my splitstackshape::cSplit function like this:

library(splitstackshape)
cSplit(before, "type", "_and_")
#    attr type_1 type_2
# 1:    1    foo    bar
# 2:   30    foo  bar_2
# 3:    4    foo    bar
# 4:    6    foo  bar_2
3
  • 1
    3 years later - this option is working best for a similar problem I have - however the dataframe I am working with has 54 columns and I need to split all of them into two. Is there a way to do this using this method - short of typing out the above command 54 times? Many thanks, Nicki.
    – Nicki
    Aug 3, 2017 at 13:21
  • @Nicki, Have you tried providing a vector of the column names or the column positions? That should do it.... Aug 4, 2017 at 16:12
  • It wasnt just renaming the columns - I needed to literally split the columns as above effectively doubling the number of columns in my df. The below was what I used in the end: df2 <- cSplit(df1, splitCols = 1:54, "/")
    – Nicki
    Aug 7, 2017 at 13:20
30

The subject is almost exhausted, I 'd like though to offer a solution to a slightly more general version where you don't know the number of output columns, a priori. So for example you have

before = data.frame(attr = c(1,30,4,6), type=c('foo_and_bar','foo_and_bar_2', 'foo_and_bar_2_and_bar_3', 'foo_and_bar'))
  attr                    type
1    1             foo_and_bar
2   30           foo_and_bar_2
3    4 foo_and_bar_2_and_bar_3
4    6             foo_and_bar

We can't use dplyr separate() because we don't know the number of the result columns before the split, so I have then created a function that uses stringr to split a column, given the pattern and a name prefix for the generated columns. I hope the coding patterns used, are correct.

split_into_multiple <- function(column, pattern = ", ", into_prefix){
  cols <- str_split_fixed(column, pattern, n = Inf)
  # Sub out the ""'s returned by filling the matrix to the right, with NAs which are useful
  cols[which(cols == "")] <- NA
  cols <- as.tibble(cols)
  # name the 'cols' tibble as 'into_prefix_1', 'into_prefix_2', ..., 'into_prefix_m' 
  # where m = # columns of 'cols'
  m <- dim(cols)[2]

  names(cols) <- paste(into_prefix, 1:m, sep = "_")
  return(cols)
}

We can then use split_into_multiple in a dplyr pipe as follows:

after <- before %>% 
  bind_cols(split_into_multiple(.$type, "_and_", "type")) %>% 
  # selecting those that start with 'type_' will remove the original 'type' column
  select(attr, starts_with("type_"))

>after
  attr type_1 type_2 type_3
1    1    foo    bar   <NA>
2   30    foo  bar_2   <NA>
3    4    foo  bar_2  bar_3
4    6    foo    bar   <NA>

And then we can use gather to tidy up...

after %>% 
  gather(key, val, -attr, na.rm = T)

   attr    key   val
1     1 type_1   foo
2    30 type_1   foo
3     4 type_1   foo
4     6 type_1   foo
5     1 type_2   bar
6    30 type_2 bar_2
7     4 type_2 bar_2
8     6 type_2   bar
11    4 type_3 bar_3
2
  • 1
    This is very useful. Years later, I am wondering if it is possible to introduce colnames that can be inserted in a for loop. For example, I want to split_into_multiple 10 columns (or more) and I don't want to split them each column at a time. I want the resulting split columns to bind together. I can't find the way to programatically select the column names (it gives me error) the option !!as.name() says there's not such attribute... How would you do it?
    – MEC
    Feb 21, 2023 at 19:56
  • I am glad you still find it useful @MEC. My R knowledge has abandoned me and don't know how to hint you with this part. I think Python pandas might offer something but needs some homework...
    – Yannis P.
    Mar 18, 2023 at 17:46
18

An easy way is to use sapply() and the [ function:

before <- data.frame(attr = c(1,30,4,6), type=c('foo_and_bar','foo_and_bar_2'))
out <- strsplit(as.character(before$type),'_and_')

For example:

> data.frame(t(sapply(out, `[`)))
   X1    X2
1 foo   bar
2 foo bar_2
3 foo   bar
4 foo bar_2

sapply()'s result is a matrix and needs transposing and casting back to a data frame. It is then some simple manipulations that yield the result you wanted:

after <- with(before, data.frame(attr = attr))
after <- cbind(after, data.frame(t(sapply(out, `[`))))
names(after)[2:3] <- paste("type", 1:2, sep = "_")

At this point, after is what you wanted

> after
  attr type_1 type_2
1    1    foo    bar
2   30    foo  bar_2
3    4    foo    bar
4    6    foo  bar_2
11

Since R version 3.4.0 you can use strcapture() from the utils package (included with base R installs), binding the output onto the other column(s).

out <- strcapture(
    "(.*)_and_(.*)",
    as.character(before$type),
    data.frame(type_1 = character(), type_2 = character())
)

cbind(before["attr"], out)
#   attr type_1 type_2
# 1    1    foo    bar
# 2   30    foo  bar_2
# 3    4    foo    bar
# 4    6    foo  bar_2
1
  • 1
    This is the most coherent 'built for purpose'.
    – Chris
    Dec 24, 2022 at 2:40
10

Here is a base R one liner that overlaps a number of previous solutions, but returns a data.frame with the proper names.

out <- setNames(data.frame(before$attr,
                  do.call(rbind, strsplit(as.character(before$type),
                                          split="_and_"))),
                  c("attr", paste0("type_", 1:2)))
out
  attr type_1 type_2
1    1    foo    bar
2   30    foo  bar_2
3    4    foo    bar
4    6    foo  bar_2

It uses strsplit to break up the variable, and data.frame with do.call/rbind to put the data back into a data.frame. The additional incremental improvement is the use of setNames to add variable names to the data.frame.

8

This question is pretty old but I'll add the solution I found the be the simplest at present.

library(reshape2)
before = data.frame(attr = c(1,30,4,6), type=c('foo_and_bar','foo_and_bar_2'))
newColNames <- c("type1", "type2")
newCols <- colsplit(before$type, "_and_", newColNames)
after <- cbind(before, newCols)
after$type <- NULL
after
1
  • This is by far the easiest when it comes to managing df vectors
    – Apricot
    Jun 17, 2019 at 4:38
7

base but probably slow:

n <- 1
for(i in strsplit(as.character(before$type),'_and_')){
     before[n, 'type_1'] <- i[[1]]
     before[n, 'type_2'] <- i[[2]]
     n <- n + 1
}

##   attr          type type_1 type_2
## 1    1   foo_and_bar    foo    bar
## 2   30 foo_and_bar_2    foo  bar_2
## 3    4   foo_and_bar    foo    bar
## 4    6 foo_and_bar_2    foo  bar_2
4

Another approach if you want to stick with strsplit() is to use the unlist() command. Here's a solution along those lines.

tmp <- matrix(unlist(strsplit(as.character(before$type), '_and_')), ncol=2,
   byrow=TRUE)
after <- cbind(before$attr, as.data.frame(tmp))
names(after) <- c("attr", "type_1", "type_2")
2

Since this question was asked separate has been superseded by separate_longer_* and separate_wider_* functions.

The way to do it now is:

library(tidyr)
separate_wider_delim(before, type, delim = "_and_", names_sep = "_")

You could also use separate_wider_regex, but I'll leave that as an exercise to the reader :-)

1

Here is another base R solution. We can use read.table but since it accepts only one-byte sep argument and here we have multi-byte separator we can use gsub to replace the multibyte separator to any one-byte separator and use that as sep argument in read.table

cbind(before[1], read.table(text = gsub('_and_', '\t', before$type), 
                 sep = "\t", col.names = paste0("type_", 1:2)))

#  attr type_1 type_2
#1    1    foo    bar
#2   30    foo  bar_2
#3    4    foo    bar
#4    6    foo  bar_2

In this case, we can also make it shorter by replacing it with default sep argument so we don't have to mention it explicitly

cbind(before[1], read.table(text = gsub('_and_', ' ', before$type), 
                 col.names = paste0("type_", 1:2)))
1

Surprisingly, another tidyverse solution is still missing - you can also use tidyr::extract, with a regex.

library(tidyr)
before <- data.frame(attr = c(1, 30, 4, 6), type = c("foo_and_bar", "foo_and_bar_2"))

## regex - getting all characters except an underscore till the first underscore, 
## inspired by Akrun https://stackoverflow.com/a/49752920/7941188 

extract(before, col = type, into = paste0("type", 1:2), regex = "(^[^_]*)_(.*)")
#>   attr type1     type2
#> 1    1   foo   and_bar
#> 2   30   foo and_bar_2
#> 3    4   foo   and_bar
#> 4    6   foo and_bar_2
1

Another base R solution that also is a general way to split a column in several columns is:

Data

before = data.frame(attr = c(1,30,4,6), type=c('foo_and_bar','foo_and_bar_2'))

Procedure

attach(before)
before$type2 <- gsub("(\\w*)_and_(\\w*)", "c('\\1', '\\2')", type)
#this recode the column type to c("blah", "blah") form

cbind(before,t(sapply(1:nrow(before), function(x) eval(parse(text=before$type2[x])))))
#this split the desired column into several ones named 1 2 3 and so on

OUTPUT

  attr          type             type2   1     2
1    1   foo_and_bar   c('foo', 'bar') foo   bar
2   30 foo_and_bar_2 c('foo', 'bar_2') foo bar_2
3    4   foo_and_bar   c('foo', 'bar') foo   bar
4    6 foo_and_bar_2 c('foo', 'bar_2') foo bar_2

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