15

I am using the new package , dplyr and facing some difficulties.

mutate(df,isOdd=digit%%2) or transform(df,isOdd=digit%%2)

Both of which work perfectly.

I am asking a question on passing custom method.

IsItOdd <- function(x) {
  if(x%%2==0)
     result<-"even"
  else
     result<-"odd"
  return(result)
}

transform(df,isOdd=IsItOdd(digit))

This doesnt work because the whole column of all the digit is passed to the function. Is there a way to make this work by just passing that one cell to the function instead of the whole column ?

  • 2
    transform(df,isOdd=vapply(digit, IsItOdd, "")) or transform(df,isOdd=Vectorize(IsItOdd)(digit))? – lukeA Feb 18 '15 at 8:55
12

With transform your function has to operate on the vector. You can use ifelse instead, which works on vectors:

 isOdd <- function(x){ ifelse(x %% 2 == 0, "even", "odd") }

Alternatively you can apply the function to every value in the column with one of the apply functions:

 isOdd <- function(x){
     sapply(x, function(x){
          if(x %% 2 == 0){
               return("even") 
          }else{
               return("odd") 
          }
     })}
  • 1
    Can you explain why with transform/mutate the function operates on the entire vector rather than on the individual values? This isn't true with base functions (e.g. sin() or log()). – Robert McDonald Apr 21 '18 at 19:03
  • @rmcd I'm very interested in your question, maybe worth another thread? I guess dplyr::mutate is parsing the function and trying to guess whether to pass in a single value or the whole vector? – Will Cornwell Apr 22 '18 at 9:33
  • btw you can force the proper behavior by using dplyr::rowwise but it's still an interesting question – Will Cornwell Apr 22 '18 at 9:39
  • @WillCornwell Thanks for the response and the pointer to rowwise, which I was't aware of. I've posted a question here stackoverflow.com/questions/49967559/… – Robert McDonald Apr 22 '18 at 15:23
7

I think you could also use group_by() to tease apart the rows by unique values and subsequently do your computation, like so:

df %>% group_by(digit) %>% mutate(isOdd = IsItOdd(digit))
1

You do not need to use mutate, you can do it in R base or in purr

get_rango_edad <- function(x) {
    if (x <= 25) {
       return("18-25")
     } else{
        return("26+")
     }
  }

encuestas$rango_edad <- map_chr(encuestas$edad,get_rango_edad)

or

encuestas$rango_edad <- sapply(encuestas$edad,get_rango_edad)

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.