14

I have a dataframe with columns x1, x2, group and I would like to generate a new dataframe whith an extra column rank that indicates the order of x1 in its group.

There is a related question here, but the accepted answer does not seem to work anymore.

Until here, it's fine:

library(dplyr)
data(iris)
by_species <- iris %>% 
              arrange(Species, Sepal.Length) %>% 
              group_by(Species)  

But when I try to get the ranks by group:

by_species <- mutate(by_species, rank=row_number())

The error is:

Error in rank(x, ties.method = "first", na.last = "keep") :
argument "x" is missing, with no default

Update

The problem was some conflict between dplyr and plyr. To reproduce the error, load both packages:

library(dplyr)
library(plyr)
data(iris)
by_species <- iris %>% 
              arrange(Species, Sepal.Length) %>% 
              group_by(Species) %>% 
              mutate(rank=row_number())
# Error in rank(x, ties.method = "first", na.last = "keep") : 
# argument "x" is missing, with no default

Unloading plyr it works as it should:

detach("package:plyr", unload=TRUE)
by_species <- iris %>% 
              arrange(Species, Sepal.Length) %>% 
              group_by(Species) %>% 
              mutate(rank=row_number())

by_species %>% filter(rank <= 3)

##   Sepal.Length Sepal.Width Petal.Length Petal.Width    Species  rank
##          (dbl)       (dbl)        (dbl)       (dbl)     (fctr) (int)
## 1          4.3         3.0          1.1         0.1     setosa     1
## 2          4.4         2.9          1.4         0.2     setosa     2
## 3          4.4         3.0          1.3         0.2     setosa     3
## 4          4.9         2.4          3.3         1.0 versicolor     1
## 5          5.0         2.0          3.5         1.0 versicolor     2
## 6          5.0         2.3          3.3         1.0 versicolor     3
## 7          4.9         2.5          4.5         1.7  virginica     1
## 8          5.6         2.8          4.9         2.0  virginica     2
## 9          5.7         2.5          5.0         2.0  virginica     3
  • 1
    Are you sure the command by_species <- mutate(by_species, rank=row_number()) is the one producing the error ? It works for me and your error refers to the rank function, not the row_number function that is being used. Also, if you do use rank, you need to provide an argument as in rank(x) (where x is what you want to rank). row_number does not require this. – steveb Jan 23 '16 at 19:35
  • hmm no, I'm not sure... :O – alberto Jan 23 '16 at 19:39
  • It doesn't complain when I use rank: by_species <- mutate(by_species, myrank=rank(Sepal.Length)) – alberto Jan 23 '16 at 19:42
  • Your post does not use rank (the part you are stating is causing problems). If rank is working for you, then does that mean this problem is solved or am I missing something ? – steveb Jan 23 '16 at 19:47
  • I think I might be missing something too :) If I use rank instead of row_number it does not complain but it doesn't do what I want (rank column should be like 1,2,3... 1,2,3.... 1,2,3....) – alberto Jan 23 '16 at 19:56
19

The following produces the desired result as was specified.

library(dplyr)

by_species <- iris %>% arrange(Species, Sepal.Length) %>%
    group_by(Species) %>% 
    mutate(rank = rank(Sepal.Length, ties.method = "first"))

by_species %>% filter(rank <= 3)
##Source: local data frame [9 x 6]
##Groups: Species [3]
##
##  Sepal.Length Sepal.Width Petal.Length Petal.Width    Species  rank
##         (dbl)       (dbl)        (dbl)       (dbl)     (fctr) (int)
##1          4.3         3.0          1.1         0.1     setosa     1
##2          4.4         2.9          1.4         0.2     setosa     2
##3          4.4         3.0          1.3         0.2     setosa     3
##4          4.9         2.4          3.3         1.0 versicolor     1
##5          5.0         2.0          3.5         1.0 versicolor     2
##6          5.0         2.3          3.3         1.0 versicolor     3
##7          4.9         2.5          4.5         1.7  virginica     1
##8          5.6         2.8          4.9         2.0  virginica     2
##9          5.7         2.5          5.0         2.0  virginica     3

by_species %>% slice(1:3)
##Source: local data frame [9 x 6]
##Groups: Species [3]
##
##  Sepal.Length Sepal.Width Petal.Length Petal.Width    Species  rank
##         (dbl)       (dbl)        (dbl)       (dbl)     (fctr) (int)
##1          4.3         3.0          1.1         0.1     setosa     1
##2          4.4         2.9          1.4         0.2     setosa     2
##3          4.4         3.0          1.3         0.2     setosa     3
##4          4.9         2.4          3.3         1.0 versicolor     1
##5          5.0         2.0          3.5         1.0 versicolor     2
##6          5.0         2.3          3.3         1.0 versicolor     3
##7          4.9         2.5          4.5         1.7  virginica     1
##8          5.6         2.8          4.9         2.0  virginica     2
##9          5.7         2.5          5.0         2.0  virginica     3
  • This question was asking for a dplyr solution so I am putting a data.table solution in this comment, as it may be useful. The following will work using data.table: setDT(iris)[order(Species, Sepal.Length), .SD[1:3], by = Species] – steveb Aug 17 '16 at 14:47
2

For future readers, the rank by group variable can be achieved using base R. Per the OP's iris data example to rank according to Sepal.Length:

# ORDER BY SPECIES AND SEPAL.LENGTH
iris <- iris[with(iris, order(Species, Sepal.Length)), ]

# RUN A ROW COUNT FOR RANK BY SPECIES GROUP
iris$rank <- sapply(1:nrow(iris), 
                    function(i) sum(iris[1:i, c('Species')]==iris$Species[i]))

# FILTER DATA FRAME BY TOP 3
iris <- iris[iris$rank <= 3,]

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