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Recoding variables in R, seems to be my biggest headache. What functions, packages, processes do you use to ensure the best result?

I've found very few useful examples on the Internet that give a one-size-fits-all solution to recoding and I'm interested to see what you guys and gals are using.

Note: This may be a community wiki topic.

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1  
recoding factors, numerical values, binning continuous variables into discrete categories, all of the above (and more)? –  Chase Mar 21 '11 at 1:31
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@Chase, the question is intentionally broad as I would like to collect a number of possible solutions to this common problem as possible. –  Brandon Bertelsen Mar 21 '11 at 7:18

4 Answers 4

up vote 14 down vote accepted

Recoding can mean a lot of things, and is fundamentally complicated.

Changing the levels of a factor can be done using the levels function:

> #change the levels of a factor
> levels(veteran$celltype) <- c("s","sc","a","l")

Transforming a continuous variable simply involves the application of a vectorized function:

mtcars$mpg.log <- log(mtcars$mpg)

For binning continuous data look at cut and cut2 (in the hmisc package). For example:

> #make 4 groups with equal sample sizes
> mtcars[['mpg.tr']] <- cut2(mtcars[['mpg']], g=4)
> #make 4 groups with equal bin width
> mtcars[['mpg.tr2']] <- cut(mtcars[['mpg']],4, include.lowest=TRUE)

For recoding continuous or factor variables into a categorical variable there is recode in the car package and recode.variables in the Deducer package

> mtcars[c("mpg.tr2")] <- recode.variables(mtcars[c("mpg")] , "Lo:14 -> 'low';14:24 -> 'mid';else -> 'high';")

If you are looking for a GUI, Deducer implements recoding with the Transform and Recode dialogs:

http://www.deducer.org/pmwiki/pmwiki.php?n=Main.TransformVariables

http://www.deducer.org/pmwiki/pmwiki.php?n=Main.RecodeVariables

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5  
I also like the recode function in the car package. It can also be used to map one set of categories onto another set (e.g., when you want to collapse a bunch of small categories into an 'other' category). –  Jeromy Anglim Mar 21 '11 at 4:59
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When recoding the levels of a factor, I often use a dput(levels(var)), then paste and edit the output before giving him to levels(var)<-. I find this quite convenient. –  juba Mar 21 '11 at 8:53

I've found that it can sometimes be easier to convert non numeric factors to character before attempting to change them, for example.

df <- data.frame(example=letters[1:26]) 
example <- as.character(df$example)
example[example %in% letters[1:20]] <- "a"
example[example %in% letters[21:26]] <- "b"

Also, when importing data, it can be useful to ensure that numbers are actually numeric before attempting to convert:

df <- data.frame(example=1:100)
example <- as.numeric(df$example)
example[example < 20] <- 1
example[example >= 20 & example < 80] <- 2
example[example >= 80] <- 3
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I find this very convenient when several values should be transformed (its like doing recodes in Stata):

# load package and gen some data
require(car)
x <- 1:10

# do the recoding
x
## [1]   1   2   3   4   5   6   7   8   9  10

recode(x,"10=1; 9=2; 1:4=-99")
## [1] -99 -99 -99 -99   5   6   7   8   2   1
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I found mapvalues from plyr package very handy. Package also contains function revalue which is similar to car:::recode.

The following example will "recode"

> mapvalues(letters, from = c("r", "o", "m", "a", "n"), to = c("R", "O", "M", "A", "N"))
 [1] "A" "b" "c" "d" "e" "f" "g" "h" "i" "j" "k" "l" "M" "N" "O" "p" "q" "R" "s" "t" "u" "v" "w" "x" "y" "z"
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