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"))



I'm trying to reshape it into this:

##trying to get here

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

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.

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

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


mutate(df,v=1) %>%

  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

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