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This is a followup question to this question, initially inspired by this question, but not quite the same.

This is my situation. First I pull some data from a database,

df <- data.frame(id = c(1:6),
                 profession = c(1, 5, 4, NA, 0, 5))
   df
#  id profession
#  1          1
#  2          5
#  3          4
#  4         NA
#  5          0
#  6          5

Second, I pull a key-table with human readable information about the profession codes,

profession.codes <- data.frame(profession.code = c(1,2,3,4,5),
                               profession.label = c('Optometrists',
                               'Accountants', 'Veterinarians', 
                               'Financial analysts',  'Nurses'))                 
   profession.codes
#  profession.code   profession.label
#               1       Optometrists
#               2        Accountants
#               3      Veterinarians
#               4 Financial analysts
#               5             Nurses

Now, I would like to overwrite the profession variable in my df with the labels from profession.codes, preferably using join from the plyr package, but I'm open to any smart solution. Though I do like that ply preserves the order of x.

I currently do it like this,

# install.packages('plyr', dependencies = TRUE)
library(plyr)

profession.codes$profession <- profession.codes$profession.code
df <- join(df, profession.codes, by="profession")
# levels(df$profession.label)
df$profession.label <- factor(df$profession.label, 
   levels = c(levels(df$profession.label), 
   setdiff(df$profession, df$profession.code)))
# levels(df$profession.label)
df$profession.label[df$profession==0 ] <- 0
df$profession.code <- NULL
df$profession  <- NULL
names(df) <- c("id", "profession")
df
#  id         profession
#  1       Optometrists
#  2             Nurses
#  3 Financial analysts
#  4               <NA>
#  5                  0
#  6             Nurses

This is how I overwrite profession without losing the NA and the 0.

The problem is that the 0 could be a 17 or any number and I would like to account for that in some way. Furthermore, I would also like to shorten my code, if possible.

Any help would be greatly appreciated.

Thanks, Eric

share|improve this question
    
Not sure what you mean by: "0 could be a 17 or any number and I would like to account for that in some way" –  Tyler Rinker Apr 15 '12 at 1:06
    
@TylerRinker, in the example above there is only one value in df$profession that does not have a matching label in profession.codes. In the example the value is 0, but it could also happen that other values showed up (if someone messes around with the database that I do not have control over). Your solution works even if several values in df$profession do not have a matching label in profession.code, which is great. –  Eric Fail Apr 15 '12 at 1:29

1 Answer 1

up vote 5 down vote accepted

This is one approach in base:

df <- data.frame(id = c(1:6),
                 profession = c(1, 5, 4, NA, 0, 5))

pc <- data.frame(profession.code = c(1,2,3,4,5),
                               profession.label = c('Optometrists',
                               'Accountants', 'Veterinarians', 
                               'Financial analysts',  'Nurses'))  


df$new <- as.character(pc[match(df$profession,  
    pc$profession.code), 'profession.label'])
df[is.na(df$new), 'new'] <- df[is.na(df$new), 'profession'] 
df$new <- as.factor(df$new)
df

Which yields:

  id profession                new
1  1          1       Optometrists
2  2          5             Nurses
3  3          4 Financial analysts
4  4         NA               <NA>
5  5          0                  0
6  6          5             Nurses
share|improve this answer
2  
I did not overwrite the column you suggested as I am not a fan of overwriting something when you can just create a new column. If you want to overwrite your orginal column then alter my solution to do this. –  Tyler Rinker Apr 15 '12 at 1:02
    
Agree both with match() solution AND not overwriting. –  BondedDust Apr 15 '12 at 1:07
    
@TylerRinker, thank you for providing a solution. I like that you use the base. I too don't like to overwrite, but I have to in this specific case. The thing is that it's hard not to do a replace, as you do in the second line of your solution (df[which(is.na(df$new)), 'new'] <- df[which(is.na(df$new)), 'profession']) without using information from the original variable. To modify your solution I would add a line deleting the $new, like this df$profession <- as.factor(df$new); df$new <- NULL, unless there is a smarter solution? Thanks! –  Eric Fail Apr 15 '12 at 1:20
1  
Yes that's likely how I'd approach it or assign the original df$profession to a duplicate object and use that in the line you correctly identify as needing the original df$professional. –  Tyler Rinker Apr 15 '12 at 1:22

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