We can test it with an example data:
set.seed(100)
data = data.frame(revenues=rnbinom(100,mu=1000,size=1),
dimension=sample(letters[1:2],100,replace=TRUE))
Firstly as @DarrenTsai correctly pointed out, you need to specify the column to do top_n(). Secondly, when you use top_n, it goes by descending order and takes the entries with rank 1-10:
data %>% top_n(10,revenues)
revenues dimension
1 4191 b
2 1916 a
3 2397 b
4 1895 a
5 2013 a
6 2351 b
7 3889 b
8 2503 a
9 3909 a
10 2779 b
This means you don't need to arrange your data, and I am not sure whether you intend to take it in descending or ascending. Let's assume it is descending, :
data %>% group_by(dimension) %>% top_n(10,revenues)
Note, this code above will take the top 10 values, meaning in events of ties (say you have 2 ranked 1st), you will get more than 10. For example in this data:
# A tibble: 21 x 2
# Groups: dimension [2]
revenues dimension
<dbl> <fct>
1 1663 a
2 1663 a
3 1753 a
4 1849 a
5 1856 a
6 1869 a
7 1895 a
8 1916 a
9 2013 a
10 2503 a
# … with 11 more rows
We can see whether the results are correct, this is what we expect:
unlist(tapply(data$revenues,data$dimension,function(i)-sort(-i)[1:10]))
a1 a2 a3 a4 a5 a6 a7 a8 a9 a10 b1 b2 b3 b4 b5 b6
3909 2503 2013 1916 1895 1869 1856 1849 1753 1663 4191 3889 2779 2397 2351 1479
b7 b8 b9 b10
1414 1340 1327 1274
And using the group_by + top_n()
:
data %>% group_by(dimension) %>% top_n(10,revenues) %>%
arrange(dimension,desc(revenues)) %>% pull(revenues)
[1] 3909 2503 2013 1916 1895 1869 1856 1849 1753 1663 1663 4191 3889 2779 2397
[16] 2351 1479 1414 1340 1327 1274
You can see 1663 is taken twice, giving 21 values in total.
If you need absolutely 20 (10 each):
data %>% arrange(desc(revenues)) %>%
group_by(dimension) %>% do(head(.,10))
dplyr
at the front of the title unless you are a master ofdplyr
. It might save you having to write the question entirely.