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I want to change certain values in one column (B) if a certain value appears in another column (A) but otherwise for the column values to remain unchanged. For example, in the following simplified version of my data I want to change the value in column B to be "0" if the value in column A is "none" otherwise I want the values in column B to remain unchanged

df <- data.frame(ID=c(1:4),A=c("1/wk","none","1/mo","1/wk"),B=c("3",NA,NA,"depends"))
    > df
      ID    A       B
    1  1 1/wk       3
    2  2 none    <NA>
    3  3 1/mo    <NA>
    4  4 1/wk depends

I tried this

df$B <- ifelse(df$A == "none","0",df$B)
    > df
      ID    A    B
    1  1 1/wk    1
    2  2 none    0
    3  3 1/mo <NA>
    4  4 1/wk    2

While this does change ID 2 to "0" in column B (which I want), it also changes the other values in column B. I want my output to look like this:

> df
  ID    A       B
1  1 1/wk       3
2  2 none       0
3  3 1/mo    <NA>
4  4 1/wk depends

I also tried to use if(){} but can't figure out how to use it when there are multiple columns involved

I am not particular about what function to use (though I prefer answers that use base R). PS - while I have found similar questions on stackoverflow none of the answers have worked for me.

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  • You're seeing issues because df$B starts out as a factor - it might be better to use stringsAsFactors = FALSE when creating df in the first place.
    – Marius
    Commented Apr 1, 2019 at 5:41
  • Thanks. That data frame was just an example - I extracted my data from a csv file. However, now that I know that the data's structure was the problem I changed df$B into a numerical structure and it works.
    – B.Kenobi
    Commented Apr 1, 2019 at 9:18

2 Answers 2

3

Try creating your data frame without using factors:

df <- data.frame(ID=c(1:4),
                 A=c("1/wk","none","1/mo","1/wk"),
                 B=c("3",NA,NA,"depends"),
                 stringsAsFactors=FALSE)      # add this
df$B <- ifelse(df$A == "none","0",df$B)
df

  ID    A       B
1  1 1/wk       3
2  2 none       0
3  3 1/mo    <NA>
4  4 1/wk depends

The problem with the comparison is that you are doing it against factor levels, not the values they represent.

Here is what is happening with your current comparison:

df$A [
    "1/wk" != "none"  => "1" (first factor level of df$B)
    "none" == "none"  => "0" (the comparison having been true)
    "1/mo" != "none"  => NA  (comparison failed, NA still NA for factors)
    "1/wk" != "none"  => "2" (second factor level of df$B)
]
3
  • That would be fine but in my real data, column "B" is a factor (thats what R decided it was from the csv file). I want that column to be numerical in the end but if I change it to numerical before I've corrected those NA values to 0s it just makes all those rows NA - Im doing df$B <- as.numeric(as.character(df$B)
    – B.Kenobi
    Commented Apr 1, 2019 at 6:05
  • Your B column certainly appears to start out with text, not just numbers. There is no major reason why you can't just work with characters instead of factors. Commented Apr 1, 2019 at 6:07
  • Thanks. Before when I was running df$B <- as.numeric(as.character(df$B) it was making the whole row NA but now its not for some reason. So I just made B have a numerical structure and then ran the ifelse function and its giving me what I want (I wanted the depends to become NA anyway). Thanks for giving such a clear explanation as to why it wasn't working
    – B.Kenobi
    Commented Apr 1, 2019 at 6:22
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the Problem is that by default your columns are not character vectors but factors.

Try this:

df <- data.frame(ID=c(1:4),A=c("1/wk","none","1/mo","1/wk"),B=c("3",NA,NA,"depends"), stringsAsFactors = FALSE)

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