11

I would like to apply dplyr::summarise and dplyr::summarise_each at the same time for a grouped data frame. Is it possible?

My data looks like this:

mydf <- data.frame(
    id = c(rep(1,2), rep(2, 3), rep(3, 4)), 
    amount = c(rep(1,4), rep(2,5)), 
    type1 = c(rep(1, 2), rep(0, 7)),
    type2 = c(rep(0, 4), rep(1, 5))
)
mydf
#  id amount type1 type2
#1  1      1     1     0
#2  1      1     1     0
#3  2      1     0     0
#4  2      1     0     0
#5  2      2     0     1
#6  3      2     0     1
#7  3      2     0     1
#8  3      2     0     1
#9  3      2     0     1

I would like to sum over id the amount variable and get the max for the type variables. I know I can do this as follows:

mydf %>% 
    group_by(id) %>% 
    summarise(amount = sum(amount), type1 = max(type1), type2 = max(type2))

However, I have a lot of type variables so I would prefer something like this (but with the sum of amount as well).

mydf %>%
    group_by(id) %>%
    summarise_each(funs(max), matches("type"))
  • Interesting question. I wonder if you open for non-dplyr solutions. – David Arenburg Aug 4 '15 at 17:12
  • dplyr might not allow for this. Then I should find a non-dplyr solution. – janosdivenyi Aug 4 '15 at 17:14
  • 1
    may be unique(mydf %>% group_by(id) %>% mutate(amount = sum(amount)) %>% mutate_each(funs(max), matches("type"))) ? – Veerendra Gadekar Aug 4 '15 at 17:17
  • @VeerendraGadekar This is a good work around, thanks. If you post it as an answer, I can accept it. – janosdivenyi Aug 4 '15 at 17:21
  • 1
    @VeerendraGadekar to keep the piping: mydf %>% group_by(id) %>% mutate(amount = sum(amount)) %>% mutate_each(funs(max), matches("type")) %>% unique – Carlos Cinelli Aug 4 '15 at 17:22
9

Using dplyr

library(dplyr)

mydf %>% 
     group_by(id) %>% 
     mutate(amount = sum(amount)) %>% 
     mutate_each(funs(max), matches("type")) %>%
     unique

#Source: local data table [3 x 4]

#  id amount type1 type2
#1  1      2     1     0
#2  2      4     0     1
#3  3      8     0     1

Or simply as @HongOoi indicated

mydf %>% 
     group_by(id) %>% 
     mutate(amount=sum(amount)) %>% 
     summarise_each(funs(max))
  • @DavidArenburg it worked ok with mean. – Carlos Cinelli Aug 4 '15 at 17:56
  • 1
    @DavidArenburg it returned the correct result – Carlos Cinelli Aug 4 '15 at 18:05
  • 1
    Hmm, yes, when it gives wrong result on a data.table object, I've should have test this code before the data.table solution. Let me think of it – David Arenburg Aug 4 '15 at 18:09
  • 3
    You can simplify this to mydf %>% group_by(id) %>% mutate(amount=sum(amount)) %>% summarise_each(funs(max)) – Hong Ooi Aug 5 '15 at 8:09
  • 1
    @HongOoi this only works correctly for that mock data and that isn't a general solution. – David Arenburg Aug 5 '15 at 8:34
7

I'm not sure regarding the idiomatic way using dplyr, but this is pretty idiomatic using data.table

library(data.table)
setDT(mydf)[, c(amount = sum(amount), 
                lapply(.SD[, grep("type", names(mydf), value = TRUE), with = FALSE], max)),
            by = id]
#    id amount type1 type2
# 1:  1      2     1     0
# 2:  2      4     0     1
# 3:  3      8     0     1

Basically, we are combining both operation using c, while lapply(.SD, max) stands for mutate_each in dplyr and matches is just a wrapper for grep (as clearly shown in the source code). with = FALSE is for standard evaluation of column names within a data.table or .SD parent frame (which stands for SubData).

1

A more general approach with dplyr could be:

mydf %>%
  group_by(id) %>%
  mutate_each('sum', amount) %>%
  mutate_each('max', matches("type")) %>%
  summarise_each('first', amount, matches("type"))

This has the benefit of applying only one aggregate function to each column that Veerendra Gadekar's original answer had. It comes handy if we need sd or similar in place of max, Hong Ooi's solution would break in such case. It would also break if there are character columns. Third advantage is that it drops the columns that are not part of the computation.

See also my related question.

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