167

I'm having trouble with a data frame and couldn't really resolve that issue myself:
The dataframe has arbitrary properties as columns and each row represents one data set.

The question is:
How to get rid of columns where for ALL rows the value is NA?

12 Answers 12

169

Try this:

df <- df[,colSums(is.na(df))<nrow(df)]
4
  • 3
    This creates an object the size of the old object which is a problem with memory on large objects. Better to use a function to reduce the size. The answer bellow using Filter or using data.table will help your memory usage. – mtelesha Dec 9 '15 at 15:21
  • 3
    This does not appear to work with non-numeric columns. – verbamour Feb 1 '17 at 23:17
  • It changes column name if they are duplicated – Peter.k Jun 26 '18 at 16:42
  • To do this with non-numeric columns, @mnel's solution using Filter() is a good one. A benchmark of multiple approaches can be found in this post – jeromeResearch Nov 24 '20 at 17:47
110

The two approaches offered thus far fail with large data sets as (amongst other memory issues) they create is.na(df), which will be an object the same size as df.

Here are two approaches that are more memory and time efficient

An approach using Filter

Filter(function(x)!all(is.na(x)), df)

and an approach using data.table (for general time and memory efficiency)

library(data.table)
DT <- as.data.table(df)
DT[,which(unlist(lapply(DT, function(x)!all(is.na(x))))),with=F]

examples using large data (30 columns, 1e6 rows)

big_data <- replicate(10, data.frame(rep(NA, 1e6), sample(c(1:8,NA),1e6,T), sample(250,1e6,T)),simplify=F)
bd <- do.call(data.frame,big_data)
names(bd) <- paste0('X',seq_len(30))
DT <- as.data.table(bd)

system.time({df1 <- bd[,colSums(is.na(bd) < nrow(bd))]})
# error -- can't allocate vector of size ...
system.time({df2 <- bd[, !apply(is.na(bd), 2, all)]})
# error -- can't allocate vector of size ...
system.time({df3 <- Filter(function(x)!all(is.na(x)), bd)})
## user  system elapsed 
## 0.26    0.03    0.29 
system.time({DT1 <- DT[,which(unlist(lapply(DT, function(x)!all(is.na(x))))),with=F]})
## user  system elapsed 
## 0.14    0.03    0.18 
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  • 7
    Very nice. You could do the same with data.frame, though. There's nothing here that really needs data.table. The key is the lapply, which avoids the copy of the whole object done by is.na(df). +10 for pointing that out. – Matt Dowle Sep 27 '12 at 9:59
  • 1
    How would you do it with a data.frame? @matt-dowle – s_a May 22 '14 at 15:52
  • 9
    @s_a, bd1 <- bd[, unlist(lapply(bd, function(x), !all(is.na(x))))] – mnel May 22 '14 at 22:55
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    @mnel I think you need to remove the , after function(x) - thanks for the example btw – Thieme Hennis Sep 22 '14 at 8:56
  • 1
    Can you do it faster with := or with a set() ? – skan Jul 18 '16 at 13:50
62

Update

You can now use select with the where selection helper. select_if is superceded, but still functional as of dplyr 1.0.2. (thanks to @mcstrother for bringing this to attention).

library(dplyr)
temp <- data.frame(x = 1:5, y = c(1,2,NA,4, 5), z = rep(NA, 5))
not_all_na <- function(x) any(!is.na(x))
not_any_na <- function(x) all(!is.na(x))

> temp
  x  y  z
1 1  1 NA
2 2  2 NA
3 3 NA NA
4 4  4 NA
5 5  5 NA

> temp %>% select(where(not_all_na))
  x  y
1 1  1
2 2  2
3 3 NA
4 4  4
5 5  5

> temp %>% select(where(not_any_na))
  x
1 1
2 2
3 3
4 4
5 5

Old Answer

dplyr now has a select_if verb that may be helpful here:

> temp
  x  y  z
1 1  1 NA
2 2  2 NA
3 3 NA NA
4 4  4 NA
5 5  5 NA

> temp %>% select_if(not_all_na)
  x  y
1 1  1
2 2  2
3 3 NA
4 4  4
5 5  5

> temp %>% select_if(not_any_na)
  x
1 1
2 2
3 3
4 4
5 5
4
  • 3
    Came here looking for the dplyr solution. Was not disappointed. Thanks! – Andrew Brēza Aug 1 '19 at 16:14
  • I found this had the issue that it would also delete variables with most but not all values as missing – MBorg May 21 '20 at 13:26
  • 2
    select_if is now superseded in dplyr, so the last two lines would be temp %>% select(where(not_all_na)) in the most recent syntax -- although select_if still works for now as of dplyr 1.0.2. Also temp %>% select(where(~!all(is.na(.x)))) works if you don't feel like defining the function on a separate line. – mcstrother Dec 31 '20 at 21:50
  • 1
    @mcstrother thank you - that is a very helpful update to my answer. If you'd like to answer it yourself I'll happily roll back the edits. – zack Jan 6 at 19:08
15

Another way would be to use the apply() function.

If you have the data.frame

df <- data.frame (var1 = c(1:7,NA),
                  var2 = c(1,2,1,3,4,NA,NA,9),
                  var3 = c(NA)
                  )

then you can use apply() to see which columns fulfill your condition and so you can simply do the same subsetting as in the answer by Musa, only with an apply approach.

> !apply (is.na(df), 2, all)
 var1  var2  var3 
 TRUE  TRUE FALSE 

> df[, !apply(is.na(df), 2, all)]
  var1 var2
1    1    1
2    2    2
3    3    1
4    4    3
5    5    4
6    6   NA
7    7   NA
8   NA    9
1
  • 3
    I expected this to be quicker, as the colSum() solution seemed to be doing more work. But on my test set (213 obs. of 1614 variables before, vs. 1377 variables afterwards) it takes exactly 3 times longer. (But +1 for an interesting approach.) – Darren Cook Feb 17 '12 at 12:01
11

Late to the game but you can also use the janitor package. This function will remove columns which are all NA, and can be changed to remove rows that are all NA as well.

df <- janitor::remove_empty(df, which = "cols")

5
df[sapply(df, function(x) all(is.na(x)))] <- NULL
0
4

Another options with purrr package:

library(dplyr)

df <- data.frame(a = NA,
                 b = seq(1:5), 
                 c = c(rep(1, 4), NA))

df %>% purrr::discard(~all(is.na(.)))
df %>% purrr::keep(~!all(is.na(.)))
2

You can use Janitor package remove_empty

library(janitor)

df %>%
  remove_empty(c("rows", "cols")) #select either row or cols or both

Also, Another dplyr approach

 library(dplyr) 
 df %>% select_if(~all(!is.na(.)))

OR

df %>% select_if(colSums(!is.na(.)) == nrow(df))

this is also useful if you want to only exclude / keep column with certain number of missing values e.g.

 df %>% select_if(colSums(!is.na(.))>500)
1

I hope this may also help. It could be made into a single command, but I found it easier for me to read by dividing it in two commands. I made a function with the following instruction and worked lightning fast.

naColsRemoval = function (DataTable) { na.cols = DataTable [ , .( which ( apply ( is.na ( .SD ) , 2 , all ) ) )] DataTable [ , unlist (na.cols) := NULL , with = F] }

.SD will allow to limit the verification to part of the table, if you wish, but it will take the whole table as

1

A handy base R option could be colMeans():

df[, colMeans(is.na(df)) != 1]
1

From my experience of having trouble applying previous answers, I have found that I needed to modify their approach in order to achieve what the question here is:

How to get rid of columns where for ALL rows the value is NA?

First note that my solution will only work if you do not have duplicate columns (that issue is dealt with here (on stack overflow)

Second, it uses dplyr.

Instead of

df <- df %>% select_if(~all(!is.na(.)))

I find that what works is

df <- df %>% select_if(~!all(is.na(.)))

The point is that the "not" symbol "!" needs to be on the outside of the universal quantifier. I.e. the select_if operator acts on columns. In this case, it selects only those that do not satisfy the criterion

every element is equal to "NA"

0

janitor::remove_constant() does this very nicely.

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