I have an R data frame with 6 columns, and I want to create a new data frame that only has three of the columns.

Assuming my data frame is df, and I want to extract columns A, B, and E, this is the only command I can figure out:


Is there a more compact way of doing this?

  • 5
    select(df, c('A','B','C'))
    – user2110417
    Jul 26, 2022 at 9:02

12 Answers 12

Answer recommended by R Language Collective

You can subset using a vector of column names. I strongly prefer this approach over those that treat column names as if they are object names (e.g. subset()), especially when programming in functions, packages, or applications.

# data for reproducible example
# (and to avoid confusion from trying to subset `stats::df`)
df <- setNames(data.frame(as.list(1:5)), LETTERS[1:5])
# subset

Note there's no comma (i.e. it's not df[,c("A","B","C")]). That's because df[,"A"] returns a vector, not a data frame. But df["A"] will always return a data frame.

## 'data.frame':    1 obs. of  1 variable:
## $ A: int 1
str(df[,"A"])  # vector
##  int 1

Thanks to David Dorchies for pointing out that df[,"A"] returns a vector instead of a data.frame, and to Antoine Fabri for suggesting a better alternative (above) to my original solution (below).

# subset (original solution--not recommended)
df[,c("A","B","E")]  # returns a data.frame
df[,"A"]             # returns a vector
  • 4
    That gives the error object of type 'closure' is not subsettable. Apr 10, 2012 at 2:48
  • 24
    @ArenCambre: then your data.frame isn't really named df. df is also a function in the stats package. Apr 10, 2012 at 2:58
  • 5
  • 2
    @Cina: Because -"A" is a syntax error. And ?Extract says, "i, j, ... can also be negative integers, indicating elements/slices to leave out of the selection." Jun 27, 2015 at 14:43
  • 8
    There is an issue with this syntax because if we extract only one column R, returns a vector instead of a dataframe and this could be unwanted: > df[,c("A")] [1] 1. Using subset doesn't have this disadvantage. Jul 27, 2016 at 13:49

Using the dplyr package, if your data.frame is called df1:


df1 %>%
  select(A, B, E)

This can also be written without the %>% pipe as:

select(df1, A, B, E)
  • 6
    Given the considerably evolution of the Tidyverse since posting my question, I've switched the answer to you. Aug 16, 2018 at 13:58
  • 6
    Given the furious rate of change in the tidyverse, I would caution against using this pattern. This is in addition to my strong preference against treating column names as if they are object names when writing code for functions, packages, or applications. May 22, 2019 at 11:21
  • 4
    It has been over four years since this answer was submitted, and the pattern hasn't changed. Piped expressions can be quite intuitive, which is why they are appealing. Jun 25, 2019 at 1:57
  • 1
    You'd chain together a pipeline like: df1 %>% select(A, B, E) %>% rowMeans(.). See the documentation for the %>% pipe by typing ?magrittr::`%>%`
    – Sam Firke
    May 11, 2020 at 15:52
  • 3
    This is a useful solution, but for the example given in the question, Josh's answer is more readable, faster, and dependency free. I hope new users learn square bracket subsetting before diving in the tidyverse :)! Aug 17, 2021 at 9:54

This is the role of the subset() function:

> dat <- data.frame(A=c(1,2),B=c(3,4),C=c(5,6),D=c(7,7),E=c(8,8),F=c(9,9)) 
> subset(dat, select=c("A", "B"))
  A B
1 1 3
2 2 4
  • When I try this, with my data, I get the error: " Error in x[j] : invalid subscript type 'list' " But if c("A", "B") isn't a list, what is it? Nov 28, 2016 at 18:04
  • @Rafael_Espericueta Hard to guess without viewing your code... But c("A", "B") is a vector, not a list. Nov 28, 2016 at 18:19
  • It convert data frame to list. Jun 21, 2017 at 9:42
  • 1
    subset() works with naked variable names too : subset(dat, select = c(A, B)), A and B here will be treated as numeric indices, similar to what tidy selection does. Dec 2, 2023 at 9:34

There are two obvious choices: Joshua Ulrich's df[,c("A","B","E")] or


as in

> df <- data.frame(A=c(1,2),B=c(3,4),C=c(5,6),D=c(7,7),E=c(8,8),F=c(9,9)) 
> df
  A B C D E F
1 1 3 5 7 8 9
2 2 4 6 7 8 9
> df[,c(1,2,5)]
  A B E
1 1 3 8
2 2 4 8
> df[,c("A","B","E")]
  A B E
1 1 3 8
2 2 4 8

For some reason only

df[, (names(df) %in% c("A","B","E"))]

worked for me. All of the above syntaxes yielded "undefined columns selected".


Where df1 is your original data frame:

df2 <- subset(df1, select = c(1, 2, 5))
  • 8
    This doesn't use dplyr. It uses base::subset, and is identical to Stephane Laurent's answer except that you use column numbers instead of column names. Oct 12, 2017 at 18:16

You can also use the sqldf package which performs selects on R data frames as :

df1 <- sqldf("select A, B, E from df")

This gives as the output a data frame df1 with columns: A, B ,E.


You can use with :

with(df, data.frame(A, B, E))

[ and subset are not substitutable:

[ does return a vector if only one column is selected.

df = data.frame(a="a",b="b")    


  • 5
    Not if you set drop=FALSE. Example: df[,c("a"),drop=F]
    – untill
    Sep 19, 2017 at 10:48


If you are using a tibble (commonly used in the tidyverse) you can safely do any of the following to select columns and you will get a tibble back:

tb <- tibble(A = 1:2, B = 3:4)

# By index
tb[, 1]

tb[, 1:2]

# By name
tb[, "A"]

tb[c("A", "B")]
tb[, c("A", "B")]

This is in addition to the answer given by @Sam Firke which uses the popular select() verb for column selection.

You can use any of these selection operators on base R data frames, but know there are some cases where you should specify drop = FALSE.

There is already some discussion about tidyverse versus base R in other answers, but hopefully this adds something.

You can see from the documentation ?`[.data.frame` (and the answer from @Joshua Ulrich) that data frame columns can be selected several ways. This has to do with the drop argument:

If TRUE the result is coerced to the lowest possible dimension. The default is to drop if only one column is left, but not to drop if only one row is left.

If a single vector is given, then columns are indexed and selection behaves like list selection (the drop argument of [ is ignored). In this case, a data frame is always returned:

df <- data.frame(A = 1:2, B = 3:4)

# 'data.frame': 2 obs. of  1 variable:
#  $ A: int  1 2

# 'data.frame': 2 obs. of  2 variables:
#  $ A: int  1 2
#  $ B: int  3 4

str(df[c("A", "B")])
# 'data.frame': 2 obs. of  2 variables:
#  $ A: int  1 2
#  $ B: int  3 4

However, if two indicies are given ([row, column]) then selection behaves more like matrix selection. In this case the default argument of [ is drop = TRUE so the result is coerced to the lowest possible dimension only if there is only a single column left:

str(df[1, ]) # single row selection (does not reduce dimension)
# 'data.frame': 1 obs. of  2 variables:
#  $ A: int 1
#  $ B: int 3

str(df[, 1]) # single column selection (does reduce dimension)
# int [1:2] 1 2

Of course you can always change the default behavior by setting drop = FALSE:

str(df[, 1, drop = FALSE])
# 'data.frame': 2 obs. of  1 variable:
#  $ A: int  1 2

In the tidyverse, tibbles are preferred. They are like data frames, but have a few significant differences -- one being column selection. Column selection using tibbles never reduces dimensionality, as shown above:


tb <- as_tibble(df)
# [1] "tbl_df"     "tbl"        "data.frame"

str(tb[, 1])
# tibble [2 × 1] (S3: tbl_df/tbl/data.frame)
#  $ A: int [1:2] 1 2

# tibble [2 × 1] (S3: tbl_df/tbl/data.frame)
#  $ A: int [1:2] 1 2

All the other tibble column selection works as you would expect (above only shows by index, but you can select by name too).


Sometimes it is easier to remove columns you do not want than selecting ones that you do. This can be done by using the - operator for indexes, setdiff or subset by name, or ! for logical vectors in base R:

# Column index
df[-c(3, 4)]

# Column name
subset(df, select = -c(C, D))
df[setdiff(names(df), c("C", "D"))]

# Logical vector
df[!names(df) %in% c("C", "D")]
df<- dplyr::select ( df,A,B,C)

Also, you can assign a different name to the newly created data

data<- dplyr::select ( df,A,B,C)
  • 2
    This was already in the accepted answer
    – camille
    Feb 13, 2022 at 18:01

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