0

I'm trying to reshape a data frame so that each unique value in a column becomes a binary column.

I've been provided data that looks like this:

df <- data.frame(id = c(1,1,2),
                 value = c(200,200,1000),
                 feature = c("A","B","C"))

print(df)

##id,value,feature
##1,200,A
##1,200,B
##2,1000,C

I'm trying to reshape it into this:

##trying to get here
##id,value,A,B,C
##1,200,1,1,0
##2,1000,0,0,1

spread(df,id,feature) fails because ids repeat.

I want to reshape the data to facilitate modeling - I'm trying to predict value from the presence or absence of features.

  • dcast(df, id + value ~ ..., length) of the reshape2 package works well. But this question most likely is a duplicate. – SabDeM Aug 1 '15 at 16:32
4

As my previous comment: You have to use dcast of the reshape2 package because spread works well for data that are been processed and/or are consistent with tidy data principles. Your "spreading" is a little bit different (and complicated). Unless of course you use spread combined with other functions.

library(reshape2)
dcast(df, id + value ~ ..., length)
  id value A B C
1  1   200 1 1 0
2  2  1000 0 0 1
6

There is a way to do it with tidyr::spread though, using a transition variable always equal to one.

library(dplyr)
library(tidyr)

mutate(df,v=1) %>%
  spread(feature,v,fill=0)

  id value A B C
1  1   200 1 1 0
2  2  1000 0 0 1
  • 1
    You could use fill argument in spread i..e mutate(df, v=1) %>% spread(feature, v, fill=0) – akrun Aug 1 '15 at 18:48

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.