12

After using data.table for quite some time I now thought it's time to try dplyr. It's fun, but I wasn't able to figure out how to access - the current grouping variable - returning multiple values per group

The following example shows is working fine with data.table. How would you write this with dplyr

foo <- matrix(c(1, 2, 3, 4), ncol = 2)
dt <- data.table(a = c(1, 1, 2), b = c(4, 5, 6))

# data.table (expected)
dt[, .(c = foo[, a]), by = a]
   a c
1: 1 1
2: 1 2
3: 2 3
4: 2 4

# dplyr (?)
dt %>% 
  group_by(a) %>% 
  summarize(c = foo[a])
  • 2
    With summarize, you may not be able to do it, you may try with do – akrun Jul 29 '16 at 16:38
  • 2
    You are missing a comma in your foo[a]... Anyway, as akrun suggested, summarise is not a good fit since it likes to return one row per group. Nor is mutate, which likes to return n() aka .N, so you need to hack something together in the dplyr world. – Frank Jul 29 '16 at 16:39
  • hm. thanks. Still no success with: dt %>% group_by(a) %>% do(c = foo[, a]) Could you show me the working snippet? – Fabian Gehring Jul 29 '16 at 16:42
7

We can use do from dplyr. (No other packages used). The do is very handy for expanding rows. We only need to wrap with data.frame.

dt %>% 
     group_by(a) %>%
     do(data.frame(c = foo[, unique(.$a)]))
#      a     c
#  <dbl> <dbl>
#1     1     1
#2     1     2
#3     2     3
#4     2     4

Or instead of unique we can subset by the 1st observation

dt %>% 
    group_by(a) %>%
    do(data.frame(c = foo[, .$a[1]]))
#     a     c
#  <dbl> <dbl>
#1     1     1
#2     1     2
#3     2     3
#4     2     4

This can be also done without using any packages

stack(lapply(split(dt$a, dt$a), function(x) foo[,unique(x)]))[2:1]
#   ind values
#1   1      1
#2   1      2
#3   2      3
#4   2      4
8

You can still access the group variable but it is like a normal vector with one unique value for each group, so if you put unique around it, it will work. And at same time, dplyr does not seem to expand rows like data.table automatically, you will need the unnest from tidyr package:

library(dplyr); library(tidyr)
dt %>% 
      group_by(a) %>% 
      summarize(c = list(foo[,unique(a)])) %>% 
      unnest()

# Source: local data frame [4 x 2]

#       a     c
#   <dbl> <dbl>
# 1     1     1
# 2     1     2
# 3     2     3
# 4     2     4

Or we can use first to speed up, since we've already know the group variable vector is the same for every group:

dt %>% 
      group_by(a) %>% 
      summarize(c = list(foo[,first(a)])) %>% 
      unnest()

# Source: local data frame [4 x 2]

#       a     c
#   <dbl> <dbl>
# 1     1     1
# 2     1     2
# 3     2     3
# 4     2     4

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