56

Suppose I have the following data

df = data.frame(name=c("A", "B", "C", "D"), score = c(10, 10, 9, 8))

I want to add a new column with the ranking. This is what I'm doing:

df %>% mutate(ranking = rank(score, ties.method = 'first'))
#   name score ranking
# 1    A    10       3
# 2    B    10       4
# 3    C     9       2
# 4    D     8       1

However, my desired result is:

#   name score ranking
# 1    A    10       1
# 2    B    10       1
# 3    C     9       2
# 4    D     8       3

Clearly rank does not do what I have in mind. What function should I be using?

0
85

It sounds like you're looking for dense_rank from "dplyr" -- but applied in a reverse order than what rank normally does.

Try this:

df %>% mutate(rank = dense_rank(desc(score)))
#   name score rank
# 1    A    10    1
# 2    B    10    1
# 3    C     9    2
# 4    D     8    3
4
  • 7
    Prbly want to use desc(score) even though -score works. Hadley has poked me abt that a cpl times.
    – hrbrmstr
    Sep 29 '14 at 18:45
  • 2
    Is it possible to have the ranking of C be 3 and for D 4?
    – Ignacio
    Sep 29 '14 at 19:00
  • 7
    @Ignacio instead of using dense_rank use min_rank
    – jalapic
    Sep 29 '14 at 19:02
  • aaah thank you. Only to say than arrange (desc()) beforedense_rank() doesn't work in that case for items outside the group_by(). It's what I've tried during times.
    – phili_b
    Jan 29 '19 at 15:57
8

Other solution when you need to apply the rank to all variables (not just one).

df = data.frame(name = c("A","B","C","D"),
                score=c(10,10,9,8), score2 = c(5,1,9,2))

select(df, -name) %>% mutate_all(funs(dense_rank(desc(.))))
2
  • 1
    dplyr has desc(), you don't need inv_d. (It's nice because it works for many data types, not just numeric.) You also don't need to do this in separate steps, you can go all at once: mutate_all(df, funs(dense_rank(desc(.)))) Feb 21 '17 at 21:28
  • funs() is now deprecated in dplyr 0.8.0. What is the alternative?
    – user101089
    Aug 22 '21 at 9:17
0

@user101089 --- you can try out with this alternative way:

df = data.frame(name = c("A","B","C","D"), score=c(10,10,9,8), score2 = c(5,1,9,2))

df %>% mutate(rank_score = dense_rank(desc(score)), rank_score2 = dense_rank(desc(score2)))

1
  • Thank you for taking the time to post an answer to this question but it is not clear to me how this answer is different to the existing answers. Please edit your post to make it clear how this is answer is different / an improvement. Sep 28 '21 at 5:10

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