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rdplyrdata-cleaning

Avoiding type conflicts with dplyr::case_when


I am trying to use dplyr::case_when within dplyr::mutate to create a new variable where I set some values to missing and recode other values simultaneously.

However, if I try to set values to NA, I get an error saying that we cannot create the variable new because NAs are logical:

Error in mutate_impl(.data, dots) :
Evaluation error: must be type double, not logical.

Is there a way to set values to NA in a non-logical vector in a data frame using this?

library(dplyr)    

# Create data
df <- data.frame(old = 1:3)

# Create new variable
df <- df %>% dplyr::mutate(new = dplyr::case_when(old == 1 ~ 5,
                                                  old == 2 ~ NA,
                                                  TRUE ~ old))

# Desired output
c(5, NA, 3)

Solution

  • As said in ?case_when:

    All RHSs must evaluate to the same type of vector.

    You actually have two possibilities:

    1) Create new as a numeric vector

    df <- df %>% mutate(new = case_when(old == 1 ~ 5,
                                        old == 2 ~ NA_real_,
                                        TRUE ~ as.numeric(old)))
    

    Note that NA_real_ is the numeric version of NA, and that you must convert old to numeric because you created it as an integer in your original dataframe.

    You get:

    str(df)
    # 'data.frame': 3 obs. of  2 variables:
    # $ old: int  1 2 3
    # $ new: num  5 NA 3
    

    2) Create new as an integer vector

    df <- df %>% mutate(new = case_when(old == 1 ~ 5L,
                                        old == 2 ~ NA_integer_,
                                        TRUE ~ old))
    

    Here, 5L forces 5 into the integer type, and NA_integer_ is the integer version of NA.

    So this time new is integer:

    str(df)
    # 'data.frame': 3 obs. of  2 variables:
    # $ old: int  1 2 3
    # $ new: int  5 NA 3