4

Given the data:

df <- structure(list(cola = structure(c(5L, 9L, 6L, 2L, 7L, 10L, 3L, 
8L, 1L, 4L), .Label = c("a", "b", "d", "g", "q", "r", "t", "w", 
"x", "z"), class = "factor"), colb = c(156L, 8L, 6L, 100L, 49L, 
31L, 189L, 77L, 154L, 171L), colc = c(0.207140279468149, 0.51990159181878, 
0.402017514919862, 0.382948065642267, 0.488511856179684, 0.263168515404686, 
0.38591041485779, 0.774066215148196, 0.763264901703224, 0.474355421960354
), cold = structure(c(1L, 2L, 1L, 2L, 1L, 2L, 1L, 2L, 1L, 2L), .Label = c("a", 
"b"), class = "factor")), class = "data.frame", row.names = c(NA, 
-10L))

df
#    cola colb      colc cold
# 1     q  156 0.2071403    a
# 2     x    8 0.5199016    b
# 3     r    6 0.4020175    a
# 4     b  100 0.3829481    b
# 5     t   49 0.4885119    a
# 6     z   31 0.2631685    b
# 7     d  189 0.3859104    a
# 8     w   77 0.7740662    b
# 9     a  154 0.7632649    a
# 10    g  171 0.4743554    b

If the value in colc in a particular row is >= 0.5, I would like to replace the contents of all the other cells in that row with NA, except for the contents of cold for that row (which I would like to retain as it is).

I attempted this with dplyr::mutate_at() and base::ifelse(), and it works fine:

df %>% mutate_at(vars(-c(cold)), funs(ifelse(colc >= 0.5, NA, .)))

#    cola colb      colc cold
# 1     5  156 0.2071403    a
# 2    NA   NA        NA    b
# 3     6    6 0.4020175    a
# 4     2  100 0.3829481    b
# 5     7   49 0.4885119    a
# 6    10   31 0.2631685    b
# 7     3  189 0.3859104    a
# 8    NA   NA        NA    b
# 9    NA   NA        NA    a
# 10    4  171 0.4743554    b

But I would like to do this with dplyr::case_when(), as I might have more than one replacement condition to fulfill (e.g., replace with "foo" if colc < 0.5 & colc >= 0.3. But case_when() does not appear to be playing nice:

df %>% mutate_at(vars(-c(cold)), funs(case_when(colc >= 0.5 ~ NA, TRUE ~ .)))

Error: must be a logical vector, not a factor object

Why is this happening and what can I do to fix it? I assume this is because I am trying to convert multiple columns with different data types to NA. I tried to look for a solution online, but I wasn't able to find one.

Edit: in specific, I would like to preserve the data types of the various columns as they are.

5
  • Why call colc again? Why not use an anon since colc is already in the mutate_at call?
    – NelsonGon
    Commented Feb 28, 2020 at 16:20
  • 1
    This works but not pretty imho: mutate_at(vars(-cold), ~case_when(colc >= 0.5 ~ NA_integer_, TRUE ~ as.integer(.x)))
    – NelsonGon
    Commented Feb 28, 2020 at 16:30
  • @NelsonGon could you please explain what you meant with your first comment?
    – Dunois
    Commented Feb 28, 2020 at 16:59
  • 1
    It's actually not important. I initially thought checking colc against itself was repetitive but later realised colc is the reference hence an anon wouldn't work.
    – NelsonGon
    Commented Feb 28, 2020 at 17:03
  • 1

2 Answers 2

5
library(dplyr)

df %>%
  mutate_at(vars(-c(cold)), ~ case_when(colc >= 0.5 ~ `is.na<-`(., TRUE), TRUE ~ .))

#    cola colb      colc cold
# 1     q  156 0.2071403    a
# 2  <NA>   NA        NA    b
# 3     r    6 0.4020175    a
# 4     b  100 0.3829481    b
# 5     t   49 0.4885119    a
# 6     z   31 0.2631685    b
# 7     d  189 0.3859104    a
# 8  <NA>   NA        NA    b
# 9  <NA>   NA        NA    a
# 10    g  171 0.4743554    b

Description

When you use case_when to assign NA, you need to specify the type of NA, i.e. NA_integer_, NA_real_, NA_complex_ and NA_character_. However, mutate_at transforms multiple columns at the same time and these columns have different types, so you cannot apply one statement on all columns. Ideally, there might exist something like NA_guess to identify the type, but I don't find that so far. This method is a little tricky. I use is.na() to convert the input vector to NAs, and these NAs will be the same type as the input vector. For example:

x <- 1:5
is.na(x) <- TRUE ; x
# [1] NA NA NA NA NA
class(x)
# [1] "integer"

y <- letters[1:5]
is.na(y) <- TRUE ; y
# [1] NA NA NA NA NA
class(y)
# [1] "character"
1
  • 2
    I was basically thinking along these lines, and I was hoping someone would mention that a NA_guess or something of that sort does exist. Really like the use of is.na() here.
    – Dunois
    Commented Feb 28, 2020 at 17:23
3

Work around similar to @NelsonGon :

library(dplyr)

df %>%
        mutate_all(as.character) %>% 
        mutate_at(vars(-c(cold)), 
                  ~case_when(colc >= 0.5 ~ NA_character_, # ifelse(is.numeric(.), NA_real_, NA_character_), 
                             TRUE ~ .
                  )
        ) %>% 
        mutate(colb = as.numeric(colb),
               colc = as.numeric(colc)
        )

#>    cola colb      colc cold
#> 1     q  156 0.2071403    a
#> 2  <NA> <NA>        NA    b
#> 3     r    6 0.4020175    a
#> 4     b  100 0.3829481    b
#> 5     t   49 0.4885119    a
#> 6     z   31 0.2631685    b
#> 7     d  189 0.3859104    a
#> 8  <NA> <NA>        NA    b
#> 9  <NA> <NA>        NA    a
#> 10    g  171 0.4743554    b
3
  • 1
    Wouldn't this solution require changing the data types for all the columns back to their original types?
    – Dunois
    Commented Feb 28, 2020 at 17:06
  • 1
    Good point guessing colb is of type character from the <NA> typo. I have updated my answer accordingly, thanks.
    – cbo
    Commented Feb 28, 2020 at 17:10
  • 1
    This method is great. But it’ll have a dilemma if there exist many columns and each has different type. The final mutate command will become bulky. Commented Feb 29, 2020 at 5:11

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