7

Using the package dplyr and the function sample_frac it is possible to sample a percentage from every group. What I need is to first sort the elements in every group and then select top x% from every group?

There is a function top_n, but here I can only determine the number of rows, and I need a relative value.

For example the following data is grouped by gear and sorted by wt within each group:

library(dplyr)
mtcars %>%
  select(gear, wt) %>%
  group_by(gear) %>%
  arrange(gear, wt)

    gear    wt
1   3   2.465
2   3   3.215
3   3   3.435
4   3   3.440
5   3   3.460
6   3   3.520
7   3   3.570
8   3   3.730
9   3   3.780
10  3   3.840
11  3   3.845
12  3   4.070
13  3   5.250
14  3   5.345
15  3   5.424
16  4   1.615
17  4   1.835
18  4   1.935
19  4   2.200
20  4   2.320
21  4   2.620
22  4   2.780
23  4   2.875
24  4   3.150
25  4   3.190
26  4   3.440
27  4   3.440
28  5   1.513
29  5   2.140
30  5   2.770
31  5   3.170
32  5   3.570

Now I would like to select top 20 % within each gear group.

It would be very nice if the solution could be integrated with dplyr's group_by function.

  • 2
    Please provide a minimal reproducible example – Steven Beaupré Oct 19 '15 at 17:45
  • 1
    Couldn't you just calculate the percentage yourself? I'm not sure if this works since we don't have a reproducible example, but I think it might: my_data %>% group_by(my_var) %>% arrange(my_var) %>% filter(top_n()/n() == x%) – brittenb Oct 19 '15 at 17:52
  • @brittenb Thanks for ypur help! top_n() cannot be used without arguments. – DatamineR Oct 19 '15 at 18:05
17

Or another option with dplyr:

mtcars %>% select(gear, wt) %>% 
  group_by(gear) %>% 
  arrange(gear, desc(wt)) %>% 
  filter(wt > quantile(wt, .8))

Source: local data frame [7 x 2]
Groups: gear [3]

   gear    wt
  (dbl) (dbl)
1     3 5.424
2     3 5.345
3     3 5.250
4     4 3.440
5     4 3.440
6     4 3.190
7     5 3.570
  • Really creative solutions guys! Thanks a lot! :-) – DatamineR Oct 19 '15 at 18:22
  • I will join the majority and accept your answer :-) – DatamineR Oct 20 '15 at 11:34
8

Here's another way

mtcars %>% 
  select(gear, wt) %>% 
  arrange(gear, desc(wt)) %>% 
  group_by(gear) %>% 
  slice(seq(n()*.2))

   gear    wt
  (dbl) (dbl)
1     3 5.424
2     3 5.345
3     3 5.250
4     4 3.440
5     4 3.440
6     5 3.570

I take "top" to mean "having the highest value for wt" and so used desc().

  • 1
    I should be able to write top_n(n()*.2) in place of the slice, but alas, the familiar Error in n() : This function should not be called directly rears its head. – Frank Oct 19 '15 at 18:14
5

I believe this gets to the answer you're looking for.

library(dplyr)

mtcars %>% select(gear, wt) %>% 
  group_by(gear) %>% 
  arrange(gear, wt) %>% 
  filter(row_number() / n() <= .2)
  • perfect! I think in dplyr there shoul be a function which implements this. – DatamineR Oct 19 '15 at 18:09
  • 1
    Just keep in mind that this approach doesn't allow for an "at least 20%" approach. What I mean by that is that if a group has 4 rows or less, then it will not select any of them because the minimum ratio will be greater than 20%. So keep in mind that you can lose data like this. – brittenb Oct 19 '15 at 18:13
  • @brittenb How about filter(row_number() <= max(1,.2*n())) if you always want to keep at least one row? – Frank Oct 19 '15 at 18:17
  • 1
    @Frank I think that's a good idea if you're concerned with keeping at least one record from a group. It would obviously depend on the context of the problem, which is outside the scope of this question, but I just wanted to bring it up. – brittenb Oct 19 '15 at 18:22

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