29

I have an example data set with a column that reads somewhat like this:

Candy
Sanitizer
Candy
Water
Cake
Candy
Ice Cream
Gum
Candy
Coffee

What I'd like to do is replace it into just two factors - "Candy" and "Non-Candy". I can do this with Python/Pandas, but can't seem to figure out a dplyr based solution. Thank you!

67

In dplyr and tidyr

dat %>% 
    mutate(var = replace(var, var != "Candy", "Not Candy"))

Significantly faster than the ifelse approaches. Code to create the initial dataframe can be as below:

library(dplyr)
dat <- as_data_frame(c("Candy","Sanitizer","Candy","Water","Cake","Candy","Ice Cream","Gum","Candy","Coffee"))
colnames(dat) <- "var"
0
15

Assuming your data frame is dat and your column is var:

dat = dat %>% mutate(candy.flag = factor(ifelse(var == "Candy", "Candy", "Non-Candy")))
1
  • @RichardScriven's approach (comments on mine) strictly dominates this Feb 24 '16 at 20:53
7

Another solution with dplyr using case_when:

dat %>%
    mutate(var = case_when(var == 'Candy' ~ 'Candy',
                           TRUE ~ 'Non-Candy'))

The syntax for case_when is condition ~ value to replace. Documentation here.

Probably less efficient than the solution using replace, but an advantage is that multiple replacements could be performed in a single command while still being nicely readable, i.e. replacing to produce three levels:

dat %>%
    mutate(var = case_when(var == 'Candy' ~ 'Candy',
                           var == 'Water' ~ 'Water',
                           TRUE ~ 'Neither-Water-Nor-Candy'))
0
6

No need for dplyr. Assuming var is stored as a factor already:

non_c <- setdiff(levels(dat$var), "Candy")

levels(dat$var) <- list(Candy = "Candy", "Non-Candy" = non_c)

See ?levels.

This is much more efficient than the ifelse approach, which is bound to be slow:

library(microbenchmark)
set.seed(01239)
smp <- data.frame(sample(dat$var, 1e6, TRUE))
names(smp) <- "var"

times <- 
  replicate(50, 
            {cop <- smp
            s <- get_nanotime()
            levs <- setdiff(levels(cop$var), "Candy")
            levels(cop$var) <- list(Candy = "Candy", "Non-Candy" = levs)
            d1 <- get_nanotime() - s
            cop <- smp
            s <- get_nanotime()
            cop = cop %>%
              mutate(candy.flag = factor(ifelse(var == "Candy", 
                                                "Candy", "Non-Candy")))
            d2 <- get_nanotime() - s
            cop <- smp
            s <- get_nanotime()
            cop$var <- 
              factor(cop$var == "Candy", labels = c("Non-Candy", "Candy"))
            d3 <- get_nanotime() - s
            c(levels = d1, dplyr = d2, direct = d3)})

(x <- apply(times, 1, median))[2]/x[1]
#    dplyr   direct 
# 8.894303 4.962791 

That is, this is 9 times faster.

1
  • 2
    Or also factor(dat$var == "Candy", labels = c("Non-Candy", "Candy")) but I think resetting the levels is a nice way to go. Feb 24 '16 at 20:43
0

When you only need two values, a simple ifelse() is prettiet, I think.

Furthermore, embedded ifelses can simulate the same situation as the case_when solution proposed by PhJ (I do like his readability, though)!

dat %>%
    mutate(
        var = ifelse(var == "Candy", "Candy", "Non-Candy")
    )

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.