# Getting the top values by group

Here's a sample data frame:

``````d <- data.frame(
x   = runif(90),
grp = gl(3, 30)
)
``````

I want the subset of `d` containing the rows with the top 5 values of `x` for each value of `grp`.

Using base-R, my approach would be something like:

``````ordered <- d[order(d\$x, decreasing = TRUE), ]
splits <- split(ordered, ordered\$grp)
##              x grp
## 1.19 0.8879631   1
## 1.4  0.8844818   1
## 1.12 0.8596197   1
## 1.26 0.8481809   1
## 1.18 0.8461516   1
## 1.29 0.8317092   1
## 2.31 0.9751049   2
## 2.34 0.9269764   2
## 2.57 0.8964114   2
## 2.58 0.8896466   2
## 2.45 0.8888834   2
## 2.35 0.8706823   2
## 3.74 0.9884852   3
## 3.73 0.9837653   3
## 3.83 0.9375398   3
## 3.64 0.9229036   3
## 3.69 0.8021373   3
## 3.86 0.7418946   3
``````

Using `dplyr`, I expected this to work:

``````d %>%
arrange_(~ desc(x)) %>%
group_by_(~ grp) %>%
``````

but it only returns the overall top 5 rows.

Swapping `head` for `top_n` returns the whole of `d`.

``````d %>%
arrange_(~ desc(x)) %>%
group_by_(~ grp) %>%
top_n(n = 5)
``````

How do I get the correct subset?

From dplyr 1.0.0, "`slice_min()` and `slice_max()` select the rows with the minimum or maximum values of a variable, taking over from the confusing `top_n().`"

``````d %>% group_by(grp) %>% slice_max(order_by = x, n = 5)
# # A tibble: 15 x 2
# # Groups:   grp [3]
#     x grp
# <dbl> <fct>
#  1 0.994 1
#  2 0.957 1
#  3 0.955 1
#  4 0.940 1
#  5 0.900 1
#  6 0.963 2
#  7 0.902 2
#  8 0.895 2
#  9 0.858 2
# 10 0.799 2
# 11 0.985 3
# 12 0.893 3
# 13 0.886 3
# 14 0.815 3
# 15 0.812 3
``````

Pre-`dplyr 1.0.0` using `top_n`:

From `?top_n`, about the `wt` argument:

The variable to use for ordering [...] defaults to the last variable in the tbl".

The last variable in your data set is "grp", which is not the variable you wish to rank, and which is why your `top_n` attempt "returns the whole of d". Thus, if you wish to rank by "x" in your data set, you need to specify `wt = x`.

``````d %>%
group_by(grp) %>%
top_n(n = 5, wt = x)
``````

### Data:

``````set.seed(123)
d <- data.frame(
x = runif(90),
grp = gl(3, 30))
``````

Pretty easy with `data.table` too...

``````library(data.table)
setorder(setDT(d), -x)[, head(.SD, 5), keyby = grp]
``````

Or

``````setorder(setDT(d), grp, -x)[, head(.SD, 5), by = grp]
``````

Or (Should be faster for big data set because avoiding calling `.SD` for each group)

``````setorder(setDT(d), grp, -x)[, indx := seq_len(.N), by = grp][indx <= 5]
``````

Edit: Here's how `dplyr` compares to `data.table` (if anyone's interested)

``````set.seed(123)
d <- data.frame(
x   = runif(1e6),
grp = sample(1e4, 1e6, TRUE))

library(dplyr)
library(microbenchmark)
library(data.table)
dd <- copy(d)

microbenchmark(
top_n = {d %>%
group_by(grp) %>%
top_n(n = 5, wt = x)},
arrange_(~ desc(x)) %>%
group_by_(~ grp) %>%
slice = {d %>%
arrange_(~ desc(x)) %>%
group_by_(~ grp) %>%
slice(1:5)},
filter = {d %>%
arrange(desc(x)) %>%
group_by(grp) %>%
filter(row_number() <= 5L)},
data.table1 = setorder(setDT(dd), -x)[, head(.SD, 5L), keyby = grp],
data.table2 = setorder(setDT(dd), grp, -x)[, head(.SD, 5L), grp],
data.table3 = setorder(setDT(dd), grp, -x)[, indx := seq_len(.N), grp][indx <= 5L],
times = 10,
unit = "relative"
)

#        expr        min         lq      mean     median        uq       max neval
#       top_n  24.246401  24.492972 16.300391  24.441351 11.749050  7.644748    10
#      dohead 122.891381 120.329722 77.763843 115.621635 54.996588 34.114738    10
#       slice  27.365711  26.839443 17.714303  26.433924 12.628934  7.899619    10
#      filter  27.755171  27.225461 17.936295  26.363739 12.935709  7.969806    10
# data.table1  13.753046  16.631143 10.775278  16.330942  8.359951  5.077140    10
# data.table2  12.047111  11.944557  7.862302  11.653385  5.509432  3.642733    10
# data.table3   1.000000   1.000000  1.000000   1.000000  1.000000  1.000000    10
``````

Adding a marginally faster `data.table` solution:

``````set.seed(123L)
d <- data.frame(
x   = runif(1e8),
grp = sample(1e4, 1e8, TRUE))
setDT(d)
setorder(d, grp, -x)
dd <- copy(d)

library(microbenchmark)
microbenchmark(
data.table3 = d[, indx := seq_len(.N), grp][indx <= 5L],
data.table4 = dd[dd[, .I[seq_len(.N) <= 5L], grp]\$V1],
times = 10L
)
``````

timing output:

``````Unit: milliseconds
expr      min       lq     mean   median        uq      max neval
data.table3 826.2148 865.6334 950.1380 902.1689 1006.1237 1260.129    10
data.table4 729.3229 783.7000 859.2084 823.1635  966.8239 1014.397    10
``````
• Adding another `data.table` method which should be slightly faster: `dt <- setorder(setDT(dd), grp, -x); dt[dt[, .I[seq_len(.N) <= 5L], grp]\$V1]` – chinsoon12 Sep 5 '18 at 6:15
• @chinsoon12 be my guest. I don't have time to benchmark these solutions again. – David Arenburg Sep 5 '18 at 7:22
• Adding another `data.table` method easier : `setDT(d)[order(-x),x[1:5],keyby = .(grp)]` – Tao Hu May 3 '19 at 14:39
• @TaoHu it's pretty much like the first two solutions. I don't think `:` will beat `head` – David Arenburg May 3 '19 at 14:43
• @DavidArenburg Yeah，I agree with you,I think the most difference is `setorder` faster than `order` – Tao Hu May 3 '19 at 14:49

You need to wrap `head` in a call to `do`. In the following code, `.` represents the current group (see description of `...` in the `do` help page).

``````d %>%
arrange_(~ desc(x)) %>%
group_by_(~ grp) %>%
``````

As mentioned by akrun, `slice` is an alternative.

``````d %>%
arrange_(~ desc(x)) %>%
group_by_(~ grp) %>%
slice(1:5)
``````

Though I didn't ask this, for completeness, a possible `data.table` version is (thanks to @Arun for the fix):

``````setDT(d)[order(-x), head(.SD, 5), by = grp]
``````
• @akrun Thanks. I didn't know about that function. – Richie Cotton Jan 4 '15 at 13:40
• @DavidArenburg Thanks. That's what comes of posting an answer in hurry. I've removed the nonsense. – Richie Cotton Jan 4 '15 at 18:16
• Richie, FWIW you just need a small addition: `setDT(d)[order(-x), head(.SD, 5L), by=grp]` – Arun Jan 4 '15 at 18:19
• This answer is a bit outdated but the second part is the idomatic way if you drop the `~` and use `arrange` and `group_by` instead of `arrange_` and `group_by_` – Moody_Mudskipper Feb 18 '19 at 20:40

My approach in base R would be:

``````ordered <- d[order(d\$x, decreasing = TRUE), ]
ordered[ave(d\$x, d\$grp, FUN = seq_along) <= 5L,]
``````

And using dplyr, the approach with `slice` is probably fastest, but you could also use `filter` which will likely be faster than using `do(head(., 5))`:

``````d %>%
arrange(desc(x)) %>%
group_by(grp) %>%
filter(row_number() <= 5L)
``````

### dplyr benchmark

``````set.seed(123)
d <- data.frame(
x   = runif(1e6),
grp = sample(1e4, 1e6, TRUE))

library(microbenchmark)

microbenchmark(
top_n = {d %>%
group_by(grp) %>%
top_n(n = 5, wt = x)},
arrange_(~ desc(x)) %>%
group_by_(~ grp) %>%
slice = {d %>%
arrange_(~ desc(x)) %>%
group_by_(~ grp) %>%
slice(1:5)},
filter = {d %>%
arrange(desc(x)) %>%
group_by(grp) %>%
filter(row_number() <= 5L)},
times = 10,
unit = "relative"
)

Unit: relative
expr       min        lq    median        uq       max neval
top_n  1.042735  1.075366  1.082113  1.085072  1.000846    10
dohead 18.663825 19.342854 19.511495 19.840377 17.433518    10
slice  1.000000  1.000000  1.000000  1.000000  1.000000    10
filter  1.048556  1.044113  1.042184  1.180474  1.053378    10
``````
• @akrun `filter` requires an additional function, while your `slice` version doesn't... – David Arenburg Jan 4 '15 at 14:11
• You know why you didn't add `data.table` here ;) – David Arenburg Jan 4 '15 at 14:30
• I know it and I can tell you: because the question was asking specifically for a dplyr solution. – talat Jan 4 '15 at 14:37
• I was just kidding... It is not like you never did the same (just on the opposite direciton). – David Arenburg Jan 4 '15 at 14:43
• @DavidArenburg, I wasn't saying it's "illegal" or anything the like to provide a data.table answer.. Of course you can do that and provide any benchmark you like :) Btw, the question you linked to is a nice example where dplyr syntax is way more convenient (I know, subjective!) than data.table. – talat Jan 4 '15 at 14:53

top_n(n = 1) will still return multiple rows for each group if the ordering variable is not unique within each group. In order to select precisely one occurence for each group, add an unique variable to each row:

``````set.seed(123)
d <- data.frame(
x   = runif(90),
grp = gl(3, 30))

d %>%
mutate(rn = row_number()) %>%
group_by(grp) %>%
top_n(n = 1, wt = rn)
``````

One more `data.table` solution to highlight its concise syntax:

``````setDT(d)
d[order(-x), .SD[1:5], grp]
``````