I have a dataframe and list of columns in that dataframe that I'd like to drop. Let's use the iris dataset as an example. I'd like to drop Sepal.Length and Sepal.Width and use only the remaining columns. How do I do this using select or select_ from the dplyr package?

Here's what I've tried so far:

drop.cols <- c('Sepal.Length', 'Sepal.Width')
iris %>% select(-drop.cols)

Error in -drop.cols : invalid argument to unary operator

iris %>% select_(.dots = -drop.cols)

Error in -drop.cols : invalid argument to unary operator

iris %>% select(!drop.cols)

Error in !drop.cols : invalid argument type

iris %>% select_(.dots = !drop.cols)

Error in !drop.cols : invalid argument type

I feel like I'm missing something obvious because these seems like a pretty useful operation that should already exist. On Github, someone posted a similar issue, and Hadley said to use 'negative indexing'. That's what (I think) I've tried, but to no avail. Any suggestions?

10 Answers 10


Check the help on select_vars. That gives you some extra ideas on how to work with this.

In your case:

iris %>% select(-one_of(drop.cols))
  • Thanks. For some reason, this works on iris, but not on my actual dataframe (iris was a toy example). My dataframe contains 4558 rows and 147 columns. The error message I received was Error in eval(x$expr, data, x$env) : variable names are limited to 10000 bytes. Any idea why this might be happening? Commented Mar 7, 2016 at 10:20
  • 1
    Ah, looks like I was making a mistake. I accidentally used select_vars instead of select. Now it works perfectly! Commented Mar 7, 2016 at 11:04
  • 7
    Where are we supposed to find out about inbuilt functions like one_of? Unless I'm missing something it doesn't appear in the package documentation (help(package='dplyr')).
    – geotheory
    Commented Jul 5, 2016 at 22:48
  • 4
    @geotheory, actually one_of is documented. see help(one_of, package = "dplyr"). At least it is in package version 0.5.0. But it helps to read the blogs that Hadley posts when there are updates to one of his packages. And some functions are documented inside other functions. Unfortunately that requires reading all the documentation, which I mostly do when I want something that isn't immediately obvious or possible at with the function.
    – phiver
    Commented Jul 6, 2016 at 6:44
  • 13
    Thanks. How do you find out about these functions in the first place, in terms of documentation?
    – geotheory
    Commented Jul 6, 2016 at 14:03

also try

## Notice the lack of quotes
iris %>% select (-c(Sepal.Length, Sepal.Width))
  • 7
    Great! Really useful when we have to drop columns by copy-pasting the names from the console. Commented Jun 16, 2017 at 19:26
  • This uses R's non-standard evaluation to treat the column names without quotes. stackoverflow.com/questions/70773297/…
    – qwr
    Commented May 23 at 17:22

Beyond select(-one_of(drop.cols)) there are a couple other options for dropping columns using select() that do not involve defining all the specific column names (using the dplyr starwars sample data for some more variety in column names):

starwars %>% 
  select(-(name:mass)) %>%        # the range of columns from 'name' to 'mass'
  select(-contains('color')) %>%  # any column name that contains 'color'
  select(-starts_with('bi')) %>%  # any column name that starts with 'bi'
  select(-ends_with('er')) %>%    # any column name that ends with 'er'
  select(-matches('^f.+s$')) %>%  # any column name matching the regex pattern
  select_if(~!is.list(.)) %>%     # not by column name but by data type

# A tibble: 2 x 2
homeworld species
  <chr>     <chr>  
1 Tatooine  Human  
2 Tatooine  Droid 
  • Is select_if(~!is.list(.)) equivalent to select_if(is.list(.))?
    – Jasha
    Commented Nov 18, 2018 at 21:00
  • 5
    In this case ~ is purrr shorthand for defining an anonamous function, it isn't another symbol for not. For example these two mean the same thing function(x) {!is.list(x)} and ~!is.list(.). think of ~ as shorthand for function(.).
    – SlyFox
    Commented Jan 29, 2019 at 14:52

Be careful with the select() function, because it's used both in the dplyr and MASS packages, so if MASS is loaded, select() may not work properly. To find out what packages are loaded, type sessionInfo() and look for it in the "other attached packages:" section. If it is loaded, type detach( "package:MASS", unload = TRUE ), and your select() function should work again.

  • 13
    alternatively you could access the function directly in package namespace as so dplyr::select().
    – Triamus
    Commented Aug 17, 2017 at 7:02
  • 3
    I've run into this problem too often. Now I usually define a new function at the top of my script dselect <- dplyr::select().
    – filups21
    Commented Sep 4, 2019 at 21:51
  • 1
    packages that are loaded later takes precedence. I always p_load(tidyverse) after all packages are loaded, to ensure functions are not masked by another package unintentionally.
    – taiyodayo
    Commented Aug 4, 2021 at 8:44

We can try

iris %>% 
      select_(.dots= setdiff(names(.),drop.cols))
  • Thanks @akrun, this worked perfectly. However, given the hype surrounding dplyr's ability to make basic analysis tasks easy to read and write, I'm disappointed that the actual solution looks like a workaround. Commented Mar 7, 2016 at 10:23
  • @NavaneethanSanthanam Actually, the one_of in the other solution is the way to go. I forgot about it.
    – akrun
    Commented Mar 7, 2016 at 11:41

For anyone arriving here wanting to drop a range of columns.

Minimal reproducible example

Drop a range of columns like so:

iris %>% 
  select(-(Sepal.Width:Petal.Width)) %>% 

#   Sepal.Length Species
# 1          5.1  setosa
# 2          4.9  setosa
# 3          4.7  setosa
# 4          4.6  setosa
# 5          5.0  setosa
# 6          5.4  setosa


  • The (, ) around the column names is important and must be used

Another way is to mutate the undesired columns to NULL, this avoids the embedded parentheses :

head(iris,2) %>% mutate_at(drop.cols, ~NULL)
#   Petal.Length Petal.Width Species
# 1          1.4         0.2  setosa
# 2          1.4         0.2  setosa
  • This also doesn't give a warning if a column is not there.
    – skoz
    Commented Aug 9, 2019 at 5:35

If you have a special character in the column names, either select or select_may not work as expected. This property of dplyr of using ".". To refer to the data set in the question, the following line can be used to solve this problem:

drop.cols <- c('Sepal.Length', 'Sepal.Width')
  iris %>% .[,setdiff(names(.),drop.cols)]
  • Code only answers are discouraged. Please provide some explanation as to how the answer works and how it differs from the already present answers. Commented May 22, 2018 at 14:52
  • Thank you!! None of the other solutions above worked for this exact reason.
    – Marty999
    Commented Jul 9, 2019 at 17:28

You can try

iris %>% select(-!!drop.cols)
  • You should explain what the injection operator does.
    – qwr
    Commented May 23 at 17:20

I also faced the same issue, but the main error was in including library which has another function definition with the same name as "select()". For me it was clashing with the MASS package select function.

After detaching the MASS library, the error stopped.

  • Note that you can also just specify select from the dplyr library by doing dplyr::select Commented May 11, 2021 at 23:46

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.