179

Question

Using dplyr, how do I select the top and bottom observations/rows of grouped data in one statement?

Data & Example

Given a data frame:

df <- data.frame(id=c(1,1,1,2,2,2,3,3,3), 
                 stopId=c("a","b","c","a","b","c","a","b","c"), 
                 stopSequence=c(1,2,3,3,1,4,3,1,2))

I can get the top and bottom observations from each group using slice, but using two separate statements:

firstStop <- df %>%
  group_by(id) %>%
  arrange(stopSequence) %>%
  slice(1) %>%
  ungroup

lastStop <- df %>%
  group_by(id) %>%
  arrange(stopSequence) %>%
  slice(n()) %>%
  ungroup

Can I combine these two statements into one that selects both top and bottom observations?

1

9 Answers 9

304

There is probably a faster way:

df %>%
  group_by(id) %>%
  arrange(stopSequence) %>%
  filter(row_number()==1 | row_number()==n())
2
  • 82
    rownumber() %in% c(1, n()) would obviate the need to run vector scan twice Sep 4, 2016 at 12:20
  • 18
    @MichaelChirico I suspect you omitted an _? i.e. filter(row_number() %in% c(1, n()))
    – Eric Fail
    Oct 11, 2017 at 11:03
130

Just for completeness: You can pass slice a vector of indices:

df %>% arrange(stopSequence) %>% group_by(id) %>% slice(c(1,n()))

which gives

  id stopId stopSequence
1  1      a            1
2  1      c            3
3  2      b            1
4  2      c            4
5  3      b            1
6  3      a            3
2
  • might even be faster than filter - have not tested this, but see here
    – tjebo
    Jul 3, 2018 at 16:42
  • 1
    @Tjebo Unlike filter, slice can return the same row multiple times, eg mtcars[1, ] %>% slice(c(1, n())) so in that sense the choice between them depends on what you want returned. I'd expect the timings to be close unless n is very large (where slice might be favored), but haven't tested either.
    – Frank
    Jul 3, 2018 at 16:47
16

Not dplyr, but it's much more direct using data.table:

library(data.table)
setDT(df)
df[ df[order(id, stopSequence), .I[c(1L,.N)], by=id]$V1 ]
#    id stopId stopSequence
# 1:  1      a            1
# 2:  1      c            3
# 3:  2      b            1
# 4:  2      c            4
# 5:  3      b            1
# 6:  3      a            3

More detailed explanation:

# 1) get row numbers of first/last observations from each group
#    * basically, we sort the table by id/stopSequence, then,
#      grouping by id, name the row numbers of the first/last
#      observations for each id; since this operation produces
#      a data.table
#    * .I is data.table shorthand for the row number
#    * here, to be maximally explicit, I've named the variable V1
#      as row_num to give other readers of my code a clearer
#      understanding of what operation is producing what variable
first_last = df[order(id, stopSequence), .(row_num = .I[c(1L,.N)]), by=id]
idx = first_last$row_num

# 2) extract rows by number
df[idx]

Be sure to check out the Getting Started wiki for getting the data.table basics covered

9
  • 1
    Or df[ df[order(stopSequence), .I[c(1,.N)], keyby=id]$V1 ]. Seeing id appear twice is weird to me.
    – Frank
    Jul 21, 2015 at 17:22
  • You can set keys in the setDT call. So an order call no need here. Feb 1, 2017 at 7:52
  • 2
    @ArtemKlevtsov - you may not always want to set the keys, though.
    – SymbolixAU
    Apr 23, 2017 at 22:57
  • 2
    Or df[order(stopSequence), .SD[c(1L,.N)], by = id]. See here
    – JWilliman
    Jul 11, 2017 at 9:33
  • @JWilliman that won't necessarily be exactly the same, since it won't reorder on id. I think df[order(stopSequence), .SD[c(1L, .N)], keyby = id] should do the trick (with the minor difference to the solution above that the result will be keyed Oct 11, 2017 at 11:13
8

Something like:

library(dplyr)

df <- data.frame(id=c(1,1,1,2,2,2,3,3,3),
                 stopId=c("a","b","c","a","b","c","a","b","c"),
                 stopSequence=c(1,2,3,3,1,4,3,1,2))

first_last <- function(x) {
  bind_rows(slice(x, 1), slice(x, n()))
}

df %>%
  group_by(id) %>%
  arrange(stopSequence) %>%
  do(first_last(.)) %>%
  ungroup

## Source: local data frame [6 x 3]
## 
##   id stopId stopSequence
## 1  1      a            1
## 2  1      c            3
## 3  2      b            1
## 4  2      c            4
## 5  3      b            1
## 6  3      a            3

With do you can pretty much perform any number of operations on the group but @jeremycg's answer is way more appropriate for just this task.

3
  • 1
    Hadn't considered writing a function - certainly a good way of doing something more complex.
    – tospig
    Jul 21, 2015 at 1:57
  • 1
    This seems overcomplicated compared to just using slice, like df %>% arrange(stopSequence) %>% group_by(id) %>% slice(c(1,n()))
    – Frank
    Jul 21, 2015 at 5:01
  • 4
    Not disagreeing (and I pointed to jeremycg's as a better answer in the post) but having a do example here might help others when slice won't work (i.e. more complex operations on a group). And, you shld post your comment as an answer (it's the best one).
    – hrbrmstr
    Jul 21, 2015 at 11:44
8

using which.min and which.max :

library(dplyr, warn.conflicts = F)
df %>% 
  group_by(id) %>% 
  slice(c(which.min(stopSequence), which.max(stopSequence)))

#> # A tibble: 6 x 3
#> # Groups:   id [3]
#>      id stopId stopSequence
#>   <dbl> <fct>         <dbl>
#> 1     1 a                 1
#> 2     1 c                 3
#> 3     2 b                 1
#> 4     2 c                 4
#> 5     3 b                 1
#> 6     3 a                 3

benchmark

It is also much faster than the current accepted answer because we find the min and max value by group, instead of sorting the whole stopSequence column.

# create a 100k times longer data frame
df2 <- bind_rows(replicate(1e5, df, F)) 
bench::mark(
  mm =df2 %>% 
    group_by(id) %>% 
    slice(c(which.min(stopSequence), which.max(stopSequence))),
  jeremy = df2 %>%
    group_by(id) %>%
    arrange(stopSequence) %>%
    filter(row_number()==1 | row_number()==n()))
#> Warning: Some expressions had a GC in every iteration; so filtering is disabled.
#> # A tibble: 2 x 6
#>   expression      min   median `itr/sec` mem_alloc `gc/sec`
#>   <bch:expr> <bch:tm> <bch:tm>     <dbl> <bch:byt>    <dbl>
#> 1 mm           22.6ms     27ms     34.9     14.2MB     21.3
#> 2 jeremy      254.3ms    273ms      3.66    58.4MB     11.0
7

I know the question specified dplyr. But, since others already posted solutions using other packages, I decided to have a go using other packages too:

Base package:

df <- df[with(df, order(id, stopSequence, stopId)), ]
merge(df[!duplicated(df$id), ], 
      df[!duplicated(df$id, fromLast = TRUE), ], 
      all = TRUE)

data.table:

df <-  setDT(df)
df[order(id, stopSequence)][, .SD[c(1,.N)], by=id]

sqldf:

library(sqldf)
min <- sqldf("SELECT id, stopId, min(stopSequence) AS StopSequence
      FROM df GROUP BY id 
      ORDER BY id, StopSequence, stopId")
max <- sqldf("SELECT id, stopId, max(stopSequence) AS StopSequence
      FROM df GROUP BY id 
      ORDER BY id, StopSequence, stopId")
sqldf("SELECT * FROM min
      UNION
      SELECT * FROM max")

In one query:

sqldf("SELECT * 
        FROM (SELECT id, stopId, min(stopSequence) AS StopSequence
              FROM df GROUP BY id 
              ORDER BY id, StopSequence, stopId)
        UNION
        SELECT *
        FROM (SELECT id, stopId, max(stopSequence) AS StopSequence
              FROM df GROUP BY id 
              ORDER BY id, StopSequence, stopId)")

Output:

  id stopId StopSequence
1  1      a            1
2  1      c            3
3  2      b            1
4  2      c            4
5  3      a            3
6  3      b            1
3

Using data.table:

# convert to data.table
setDT(df) 
# order, group, filter
df[order(stopSequence)][, .SD[c(1, .N)], by = id]

   id stopId stopSequence
1:  1      a            1
2:  1      c            3
3:  2      b            1
4:  2      c            4
5:  3      b            1
6:  3      a            3
1

Another approach with lapply and a dplyr statement. We can apply an arbitrary number of whatever summary functions to the same statement:

lapply(c(first, last), 
       function(x) df %>% group_by(id) %>% summarize_all(funs(x))) %>% 
bind_rows()

You could for example be interested in rows with the max stopSequence value as well and do:

lapply(c(first, last, max("stopSequence")), 
       function(x) df %>% group_by(id) %>% summarize_all(funs(x))) %>%
bind_rows()
1

A different base R alternative would be to first order by id and stopSequence, split them based on id and for every id we select only the first and last index and subset the dataframe using those indices.

df[sapply(with(df, split(order(id, stopSequence), id)), function(x) 
                   c(x[1], x[length(x)])), ]


#  id stopId stopSequence
#1  1      a            1
#3  1      c            3
#5  2      b            1
#6  2      c            4
#8  3      b            1
#7  3      a            3

Or similar using by

df[unlist(with(df, by(order(id, stopSequence), id, function(x) 
                   c(x[1], x[length(x)])))), ]

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