I have a data frame with many columns of different types. I would like to replace each column with NA of the corresponding class.

for example:

df = data_frame(x = c(1,2,3), y = c("a", "b", "c"))

df[, 1:2] <- NA

yields a data frame with two logical columns, rather than numeric and character. I know I can tell R:

df[,1] = as.numeric(NA)
df[,2] = as.character(NA)

But how do I do this collectively in a loop for all columns with all possible types of NA?

  • 3
    Good question +1, but why does this matter? – Tim Biegeleisen Dec 11 '18 at 7:48
  • It's a very weird problem, I later need to join the data frame with another frame of the original type... – Omry Atia Dec 11 '18 at 7:49
  • 1
    But why? Please give us more context, seems like pointless (but fun) step. – zx8754 Dec 11 '18 at 8:45
  • I have a data frame created in the beginning of my program, which sometimes need to get all NA's in some columns based on a condition. This data frame needs to be joined with another data frame in the end of the program, which might not get these NA's. In order for the join to work, the two data frames need to have exactly the same types of columns. – Omry Atia Dec 11 '18 at 9:27
  • 1
    Just a minor correction, you shouldn't talk about classes here but about atomic types, and it would be more idiomatic to use NA_character_ and NA_numeric_ than as.character(NA) and as.numeric(NA). – Moody_Mudskipper Dec 12 '18 at 11:16

You can use this "trick" :

df[1:nrow(df),1] <- NA
df[1:nrow(df),2] <- NA

the [1:nrow(df),] basically tells R to replace all values in the column with NA and in this way the logical NA is coerced to the original type of the column before replacing the other values.

Also, if you have a lot of columns to replace and the data_frame has a lot of rows, I suggest to store the row indexes and reuse them :

rowIdxs <- 1:nrow(df)
df[rowIdxs ,1] <- NA
df[rowIdxs ,2] <- NA
df[rowIdxs ,3] <- NA

As cleverly suggested by @RonakShah, you can also use :

df[TRUE, 1] <- NA
df[TRUE, 2] <- NA

As pointed out by @Cath both the methods still work when you select more than one column e.g. :

df[TRUE, 1:3] <- NA
# or
df[1:nrow(df), 1:3] <- NA
  • This doesn't seem to work... df is still logical :( – Omry Atia Dec 11 '18 at 7:45
  • @OmryAtia : edited. it should work now ;) – digEmAll Dec 11 '18 at 7:50
  • Awesome... so simple :) – Omry Atia Dec 11 '18 at 7:51
  • 3
    why not directly df[TRUE, 1:2] <- NA? – Cath Dec 11 '18 at 8:42
  • @Cath: sure, added in the answer, thanks ! – digEmAll Dec 11 '18 at 8:47

Another solution that applies to all the columns can be to specify the non-NAs and replace with NA, i.e.

df[!is.na(df)] <- NA

which gives,

# A tibble: 3 x 2
      x    y    
  <dbl> <chr>
1    NA <NA> 
2    NA <NA> 
3    NA <NA> 

Another way to change all columns at once while keeping the variables' classes:

df[] <- lapply(df, function(x) {type <- class(x); x <- NA; class(x) <- type; x})

# A tibble: 3 x 2
#      x y    
#  <dbl> <chr>
#1    NA <NA> 
#2    NA <NA> 
#3    NA <NA> 

As @digEmAll notified in comments, there is another similar but shorter way:

df[] <- lapply(df, function(x) as(NA,class(x)))
  • 2
    Also lapply(df, function(x)as(NA,class(x))) should work – digEmAll Dec 11 '18 at 8:34
  • @digEmAll indeed and much shorter thanks! – Cath Dec 11 '18 at 8:35
  • 2
    another base option df[] <- lapply(df, replace, TRUE, NA) – docendo discimus Dec 11 '18 at 10:05
  • This works in many cases, but not always. The problem is that some classes don't have methods that automatically convert the underlying typeof, and sometimes as doesn't know how to handle classes. Try it with a POSIXct: as throws an error, and manually setting the class to c("POSIXt", "POSIXct") seems to work, but does not convert the underlying NA, the result is different then as.POSIXct(NA) – Emil Bode Dec 11 '18 at 17:33
  • It would be better to use typeof instead of class, here it works "by chance" but will fail in the general case (e.g. factors). – Moody_Mudskipper Dec 12 '18 at 11:28

Using dplyr::na_if:


df %>% 
  mutate(x = na_if(x, x),
         y = na_if(y, y))

# # A tibble: 3 x 2
#       x y    
#   <dbl> <chr>
# 1    NA NA   
# 2    NA NA   
# 3    NA NA   

If we want to mutate only subset of columns to NA, then:

# dataframe with extra column that stay unchanged
df = data_frame(x = c(1,2,3), y = c("a", "b", "c"), z = c(4:6))

df %>% 
  mutate_at(vars(x, y), funs(na_if(.,.)))

# # A tibble: 3 x 3
#       x y         z
#   <dbl> <chr> <int>
# 1    NA NA        4
# 2    NA NA        5
# 3    NA NA        6
  • Or df <- mutate_all(df,~na_if(.,.)) (or modify(df,~na_if(.,.))) while you're there :) – Moody_Mudskipper Dec 12 '18 at 11:38
  • @Moody_Mudskipper I am using mutate_at as OP might want to do this on subset of columns. If they want to apply this to all columns, then why not just create an empty dataframe with 0 rows... – zx8754 Dec 12 '18 at 11:52
  • I don't know... OP's use case is obscure, but he mentions replacing each column by NAs. – Moody_Mudskipper Dec 12 '18 at 12:21

Using bind_cols() from dplyr you can also do:

df <- data_frame(x = c(1,2,3), y = c("a", "b", "c"))
classes <- sapply(df, class)
df[,1:2] <- NA

bind_cols(lapply(colnames(x), function(x){eval(parse(text=paste0("as.", classes[names(classes[x])], "(", df[,x],")")))}))

     V1 V2   
  <dbl> <chr>
1    NA NA   
2    NA NA   
3    NA NA 

Please note that this will change the colnames.

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