2

I have some data that looks like this:

  ID Married Age Visits
1  1       0  35      0
2  2       1   0      7
3  3       0  29     19
df <- data.frame(
          ID = c(1L, 2L, 3L),
     Married = c(0L, 1L, 0L),
         Age = c(35L, 0L, 29L),
      Visits = c(0L, 7L, 19L)
)

Imagine that for this data, Married is meant to be a dummy variable, but Age and Visits should definitely not be 0. I would like to know how to do two things:

  1. How can I replace, only in columns Age and Visits, replace NA for the 0 values?
  2. How can I replace, only in columns Age and Visits, replace -999 for the 0 values? This one is just for curiosity, because I'd like to know how to do it without using na_if().

This code isn't quite right, because it changes the Married column also.

df <- na_if(df, 0)

giving:

  ID Married Age Visits
1  1      NA  35     NA
2  2       1  NA      7
3  3      NA  29     19

whereas, what I would like is (1):

  ID Married Age Visits
1  1       0  35     NA
2  2       1  NA      7
3  3       0  29     19

and (2):

  ID Married Age Visits
1  1       0  35    -999
2  2       1  -999    7
3  3       0  29     19

I tried something like:

df <- na_if(c(df$Age, df$Visits), 0))

but that's not right.

2

Here's a dplyr solution to your problem.

library(tidyverse)
df %>% mutate_at(vars(Age,Visits),funs(na_if(.,0)))
df %>% mutate_at(vars(Age,Visits),funs(ifelse(. == 0,-999,.)))
  • For some reason, I had it in my head that the funs() part of mutate_at had been deprecated to list(), but when I tried list() it didn't work. Your code worked perfectly. Can you explain the difference between funs() and list(), please? – RAndStata Mar 16 at 13:24
  • 1
    That's not the case as far as I'm aware. The funs() argument specifies the functions that you want to apply to the variables in vars(). For details, see the dplyr documentation: dplyr.tidyverse.org/reference/scoped.html. – Amir Sariaslan Mar 16 at 19:50
3

You could do

Solution 1)

library(dplyr)
cols <- c("Age", "Visits")
df[cols] <- na_if(df[cols], 0)

df
#  ID Married Age Visits
#1  1       0  35     NA
#2  2       1  NA      7
#3  3       0  29     19

Solution 2)

df[cols][df[cols] == 0] <- -999

df
#  ID Married  Age Visits
#1  1       0   35   -999
#2  2       1 -999      7
#3  3       0   29     19

Similar to Solution 2) you could also do Solution 1) as

df[cols][df[cols] == 0] <- NA
1

You might want to try

df$Age[is.na(df$Age)] <- 0
df$Age[df$Age == -999] <- 0

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