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I have a dataset where inspection of the data shows some of the following, all of which should be missing

'missing'
'unknown'
'uncoded'

Am I correct in thinking that I can just replace all occurrences of these with "NA" ? Is this the preferred way of doing it ?

var[var=='missing'] <- NA
var[var=='unknown'] <- NA
var[var=='uncoded'] <- NA
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The "preferred" way most likely depends on the analysis you're trying to do, and so you might get a lot of opinion answers. Perhaps rephrasing the question to something like "How can R represent missing data" might help. However, the answer to that question is probably already out there. –  BenBarnes Jul 4 '12 at 9:09
    
Thanks, but I thought that missing data was always represented as NA ? I've always just dealt with data that was already coded as NA, but this time I have these other codings. –  Joe King Jul 4 '12 at 9:17
    
Ah, I didn't know whether you were referring to the preferred way of recoding or the preferred way of dealing with missing values. If you're sure you want to code them as NA, then you could also consider NA_character_, NA_integer_ etc (listed under ?"NA") –  BenBarnes Jul 4 '12 at 9:23
    
BenBarnes , sorry. To clarify, I am referring to the way of coding missing data. Actually I am going to use the mice package to impute these missing values. I am teaching myself R and don't have very much experience yet. –  Joe King Jul 4 '12 at 9:29
    
Of interest: stackoverflow.com/questions/5335745/… –  Ari B. Friedman Jul 4 '12 at 10:23

2 Answers 2

up vote 6 down vote accepted

What you show is feasible, but you can simplify your code to a single call doing the comparison via the %in% binary operator. Here is an example using some dummy data:

set.seed(1)
var <- factor(sample(c("missing","unknown","uncoded", 1:4), 100, replace = TRUE))

This gives us a factor vector like this:

> head(var)
[1] unknown uncoded 2       4       unknown 4      
Levels: 1 2 3 4 missing uncoded unknown
> table(var)
var
      1       2       3       4 missing uncoded unknown 
     14      15      17      13      10      18      13

To set all those values coded as any of c("missing","unknown","uncoded") to NA, we do it in a single shot:

var2 <- var ## copy for demo purposes, but you can over write if you wish
var2[var2 %in% c("missing","unknown","uncoded")] <- NA

which gives

> var2[var2 %in% c("missing","unknown","uncoded")] <- NA
> head(var2)
[1] <NA> <NA> 2    4    <NA> 4   
Levels: 1 2 3 4 missing uncoded unknown
> table(var2)
var2
      1       2       3       4 missing uncoded unknown 
     14      15      17      13       0       0       0

Notice how the original levels are preserved. If you want to remove those levels then we can apply the droplevels() function to var2:

var2 <- droplevels(var2)

which gives

> head(var2)
[1] <NA> <NA> 2    4    <NA> 4   
Levels: 1 2 3 4
> table(var2)
var2
 1  2  3  4 
14 15 17 13

Also note that by default the NA are not shown in the tabular output, but we rectify that to show you that they are still there:

> table(var2, useNA = "ifany")
var2
   1    2    3    4 <NA> 
  14   15   17   13   41
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Thank you. That's a really great answer ! ! +1 –  Joe King Jul 4 '12 at 11:48

The general idea of replacing them with NA is correct.

You can use recode if you want to do it in a single line:

library(car)
var <- recode( var, "c('missing','unknown','uncoded')=NA" )
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