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
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.