# Using dplyr window functions to calculate percentiles

I have a working solution but am looking for a cleaner, more readable solution that perhaps takes advantage of some of the newer dplyr window functions.

Using the mtcars dataset, if I want to look at the 25th, 50th, 75th percentiles and the mean and count of miles per gallon ("mpg") by the number of cylinders ("cyl"), I use the following code:

library(dplyr)
library(tidyr)

data("mtcars")

# Percentiles used in calculation
p <- c(.25,.5,.75)

# old dplyr solution
mtcars %>% group_by(cyl) %>%
do(data.frame(p=p, stats=quantile(.\$mpg, probs=p),
n = length(.\$mpg), avg = mean(.\$mpg))) %>%
select(1, 4:6, 3, 2)

# note: the select and spread statements are just to get the data into
#       the format in which I'd like to see it, but are not critical

Is there a way I can do this more cleanly with dplyr using some of the summary functions (n_tiles, percent_rank, etc.)? By cleanly, I mean without the "do" statement.

Thank you

• I should add that this code also uses the "tidyr" package, which is where the "spread" function comes from – dreww2 May 27 '15 at 16:39

If you're up for using purrr::map, you can do it like this!

library(tidyverse)

mtcars %>%
tbl_df() %>%
nest(-cyl) %>%
mutate(Quantiles = map(data, ~ quantile(.\$mpg)),
Quantiles = map(Quantiles, ~ bind_rows(.) %>% gather())) %>%
unnest(Quantiles)

#> # A tibble: 15 x 3
#>      cyl key   value
#>    <dbl> <chr> <dbl>
#>  1     6 0%     17.8
#>  2     6 25%    18.6
#>  3     6 50%    19.7
#>  4     6 75%    21
#>  5     6 100%   21.4
#>  6     4 0%     21.4
#>  7     4 25%    22.8
#>  8     4 50%    26
#>  9     4 75%    30.4
#> 10     4 100%   33.9
#> 11     8 0%     10.4
#> 12     8 25%    14.4
#> 13     8 50%    15.2
#> 14     8 75%    16.2
#> 15     8 100%   19.2

Created on 2018-11-10 by the reprex package (v0.2.1)

• Thanks, I think this is the cleanest approach. – Fato39 Aug 17 '17 at 14:02
• The only thing I'd add is a "spread" at the end to make things tabular for presentation purposes, i.e. %>% spread(names,x) – Abhijit May 15 '18 at 19:36
• Trying this now, I get stopped with 'tidy.numeric' is deprecated. – doconnor Nov 10 '18 at 0:17
• Thanks @doconnor. I've updated my answer to not use broom anymore. – Julia Silge Nov 10 '18 at 22:14
• It's been bugging me that the mutate portion couldn't be done in one line with built-in tidyverse functionality, but I just realized theenframe function turns this into a one-liner: mutate(Quantiles = map(data, ~ enframe(quantile(.\$mpg), "quantile"))). – eipi10 Nov 21 '18 at 16:45

UPDATE 2: One more update to turn the previous version's summarise() into a one-liner using enframe:

library(tidyverse)

mtcars %>%
group_by(cyl) %>%
summarise(mpg = list(enframe(quantile(mpg, probs=c(0.25,0.5,0.75))))) %>%
unnest
cyl quantiles   mpg
1     4       25% 22.80
2     4       50% 26.00
3     4       75% 30.40
4     6       25% 18.65
5     6       50% 19.70
6     6       75% 21.00
7     8       25% 14.40
8     8       50% 15.20
9     8       75% 16.25

This can be turned into a more general function using tidyeval:

q_by_group = function(data, value.col, ..., probs=seq(0,1,0.25)) {

value.col=enquo(value.col)
groups=enquos(...)

data %>%
group_by(!!!groups) %>%
summarise(mpg = list(enframe(quantile(!!value.col, probs=probs)))) %>%
unnest
}

q_by_group(mtcars, mpg)
q_by_group(mtcars, mpg, cyl)
q_by_group(mtcars, mpg, cyl, vs, probs=c(0.5,0.75))
q_by_group(iris, Petal.Width, Species)

UPDATE: Here's a variation on @JuliaSilge's answer that uses nesting to get the quantiles, but without the use of map. It does, however, require an extra line of code to add a column listing the quantile levels, as I'm not sure how (or if it's possible) to capture the names of the quantiles into a separate column directly from the call to quantile.

p = c(0.25,0.5,0.75)

mtcars %>%
group_by(cyl) %>%
summarise(quantiles = list(sprintf("%1.0f%%", p*100)),
mpg = list(quantile(mpg, p))) %>%
unnest

Here's a dplyr approach that avoids do but requires a separate call to quantile for each quantile value.

mtcars %>% group_by(cyl) %>%
summarise(`25%`=quantile(mpg, probs=0.25),
`50%`=quantile(mpg, probs=0.5),
`75%`=quantile(mpg, probs=0.75),
avg=mean(mpg),
n=n())

cyl   25%  50%   75%      avg  n
1   4 22.80 26.0 30.40 26.66364 11
2   6 18.65 19.7 21.00 19.74286  7
3   8 14.40 15.2 16.25 15.10000 14

It would be better if summarise could return multiple values with a single call to quantile, but this appears to be an open issue in dplyr development.

• Thanks -- this is the answer I was looking for, which is that you can do it, but not in a seamless way with a single call to quantile (and that it is an open issue in dplyr development). – dreww2 May 28 '15 at 16:30

This is a dplyr approach that uses the tidy() function of the broom package, unfortunately it still requires do(), but it is a lot simpler.

library(dplyr)
library(broom)

mtcars %>%
group_by(cyl) %>%
do( tidy(t(quantile(.\$mpg))) )

which gives:

cyl   X0.  X25.  X50.  X75. X100.
(dbl) (dbl) (dbl) (dbl) (dbl) (dbl)
1     4  21.4 22.80  26.0 30.40  33.9
2     6  17.8 18.65  19.7 21.00  21.4
3     8  10.4 14.40  15.2 16.25  19.2

Note the use of t() since the broom package does not have a method for named numerics.

This is based on my earlier answer for summary() here.

• If you also want to change column names you could even use tidy::spread() instead of t() and stringr::str_c(): mtcars %>% group_by(cyl) %>% do(tidy(quantile(.\$mpg))) %>% mutate(names = stringr::str_c("Q", names)) %>% tidyr::spread(names, x). It is more verbose but gives you some freedom in adjustments. – giovannotti Jun 23 '18 at 13:48

Not sure how to avoid do() in dplyr, but you can do this with c() and as.list() with data.table in a pretty straightforward manner:

require(data.table)
as.data.table(mtcars)[, c(as.list(quantile(mpg, probs=p)),
avg=mean(mpg), n=.N), by=cyl]
#    cyl   25%  50%   75%      avg  n
# 1:   6 18.65 19.7 21.00 19.74286  7
# 2:   4 22.80 26.0 30.40 26.66364 11
# 3:   8 14.40 15.2 16.25 15.10000 14

Replace by with keyby if you want them ordered by cyl column.

• Good. I was aware of the as.list method in [.data.table and I tried it in dplyr but failed. – 42- May 27 '15 at 20:33
• This is a nice solution -- I wish I could use it for my particular project but can't for reasons unrelated to the answer itself – dreww2 May 28 '15 at 16:29

This solution uses dplyr and tidyr only, lets you specify your quantiles in the dplyr chain, and takes advantage of tidyr::crossing() to "stack" multiple copies of the dataset prior to grouping and summarising.

diamonds %>%  # Initial data
tidyr::crossing(pctile = 0:4/4) %>%  # Specify quantiles; crossing() is like expand.grid()
dplyr::group_by(cut, pctile) %>%  # Indicate your grouping var, plus your quantile var
dplyr::summarise(quantile_value = quantile(price, unique(pctile))) %>%  # unique() is needed
dplyr::mutate(pctile = sprintf("%1.0f%%", pctile*100))  # Optional prettification

Result:

# A tibble: 25 x 3
# Groups:   cut [5]
cut pctile quantile_value
<ord>  <chr>          <dbl>
1      Fair     0%         337.00
2      Fair    25%        2050.25
3      Fair    50%        3282.00
4      Fair    75%        5205.50
5      Fair   100%       18574.00
6      Good     0%         327.00
7      Good    25%        1145.00
8      Good    50%        3050.50
9      Good    75%        5028.00
10      Good   100%       18788.00
11 Very Good     0%         336.00
12 Very Good    25%         912.00
13 Very Good    50%        2648.00
14 Very Good    75%        5372.75
15 Very Good   100%       18818.00
21     Ideal     0%         326.00
22     Ideal    25%         878.00
23     Ideal    50%        1810.00
24     Ideal    75%        4678.50
25     Ideal   100%       18806.00

The unique() is necessary to let dplyr::summarise() know that you only want one value per group.

Here's a fairly readable solution that uses dplyr and purrr to return quantiles in a tidy format:

Code

library(dplyr)
library(purrr)

mtcars %>%
group_by(cyl) %>%
do({x <- .\$mpg
map_dfr(.x = c(.25, .5, .75),
.f = ~ data_frame(Quantile = .x,
Value = quantile(x, probs = .x)))
})

Result

# A tibble: 9 x 3
# Groups:   cyl [3]
cyl Quantile Value
<dbl>    <dbl> <dbl>
1     4     0.25 22.80
2     4     0.50 26.00
3     4     0.75 30.40
4     6     0.25 18.65
5     6     0.50 19.70
6     6     0.75 21.00
7     8     0.25 14.40
8     8     0.50 15.20
9     8     0.75 16.25

Here is a solution using a combination of dplyr, purrr, and rlang:

library(dplyr)
#>
#> Attaching package: 'dplyr'
#> The following objects are masked from 'package:stats':
#>
#>     filter, lag
#> The following objects are masked from 'package:base':
#>
#>     intersect, setdiff, setequal, union
library(tidyr)
library(purrr)

data("mtcars")

# Percentiles used in calculation
p <- c(.25,.5,.75)

p_names <- paste0(p*100, "%")
p_funs <- map(p, ~partial(quantile, probs = .x, na.rm = TRUE)) %>%
set_names(nm = p_names)

# dplyr/purrr/rlang solution
mtcars %>%
group_by(cyl) %>%
summarize_at(vars(mpg), funs(!!!p_funs))
#> # A tibble: 3 x 4
#>     cyl `25%` `50%` `75%`
#>   <dbl> <dbl> <dbl> <dbl>
#> 1     4  22.8  26    30.4
#> 2     6  18.6  19.7  21
#> 3     8  14.4  15.2  16.2

#Especially useful if you want to summarize more variables
mtcars %>%
group_by(cyl) %>%
summarize_at(vars(mpg, drat), funs(!!!p_funs))
#> # A tibble: 3 x 7
#>     cyl `mpg_25%` `drat_25%` `mpg_50%` `drat_50%` `mpg_75%` `drat_75%`
#>   <dbl>     <dbl>      <dbl>     <dbl>      <dbl>     <dbl>      <dbl>
#> 1     4      22.8       3.81      26         4.08      30.4       4.16
#> 2     6      18.6       3.35      19.7       3.9       21         3.91
#> 3     8      14.4       3.07      15.2       3.12      16.2       3.22

Created on 2018-10-01 by the reprex package (v0.2.0).

do() is in fact the correct idiom, since it’s designed for group-wise transformations. Think of it as an lapply() that maps over groups of a data frame. (For such a specialized function, a generic name like “do” is not ideal. But it’s probably too late to change it.)

Morally, within each cyl group, you want to apply quantile() to the mpg column:

library(dplyr)

p <- c(.2, .5, .75)

mtcars %>%
group_by(cyl) %>%
do(quantile(.\$mpg, p))

#> Error: Results 1, 2, 3 must be data frames, not numeric

Except that doesn’t work because quantile() doesn’t return a data frame; you must convert its output, explicitly. Since this alteration amounts to wrapping quantile() with a data frame, you can use the gestalt function composition operator %>>>%:

library(gestalt)
library(tibble)

quantile_tbl <- quantile %>>>% enframe("quantile")

mtcars %>%
group_by(cyl) %>%
do(quantile_tbl(.\$mpg, p))

#> # A tibble: 9 x 3
#> # Groups:   cyl [3]
#>     cyl quantile value
#>   <dbl> <chr>    <dbl>
#> 1     4 20%       22.8
#> 2     4 50%       26
#> 3     4 75%       30.4
#> 4     6 20%       18.3
#> 5     6 50%       19.7
#> 6     6 75%       21
#> 7     8 20%       13.9
#> 8     8 50%       15.2
#> 9     8 75%       16.2