# Create combinations by group and sum

I have data of names within an ID number along with a number of associated values. It looks something like this:

``````structure(list(id = c("a", "a", "b", "b"), name = c("bob", "jane",
"mark", "brittney"), number = c(1L, 2L, 1L, 2L), value = c(1L,
2L, 1L, 2L)), class = "data.frame", row.names = c(NA, -4L))

#   id     name number value
# 1  a      bob      1     1
# 2  a     jane      2     2
# 3  b     mark      1     1
# 4  b brittney      2     2
``````

I would like to create all the combinations of `name`, regardless of how many there are, and paste them together separated with commas, and sum their `number` and `value` within each `id`. The desired output from the example above is then:

``````structure(list(id = c("a", "a", "a", "b", "b", "b"), name = c("bob",
"jane", "bob, jane", "mark", "brittney", "mark, brittney"), number = c(1L,
2L, 3L, 1L, 2L, 3L), value = c(1L, 2L, 3L, 1L, 2L, 3L)), class = "data.frame", row.names = c(NA, -6L))

#   id           name number value
# 1  a            bob      1     1
# 2  a           jane      2     2
# 3  a      bob, jane      3     3
# 4  b           mark      1     1
# 5  b       brittney      2     2
# 6  b mark, brittney      3     3
``````

Thanks all!

You could use `group_modify()` + `add_row()`:

``````library(dplyr)

df %>%
group_by(id) %>%
group_modify( ~ .x %>%
summarise(name = toString(name), across(c(number, value), sum)) %>%
) %>%
ungroup()

# # A tibble: 6 × 4
#   id    name           number value
#   <chr> <chr>           <int> <int>
# 1 a     bob                 1     1
# 2 a     jane                2     2
# 3 a     bob, jane           3     3
# 4 b     mark                1     1
# 5 b     brittney            2     2
# 6 b     mark, brittney      3     3
``````
• I don't think this solves OPs problem - they're asking for combinations of cases. OPs example data and output was perhaps a bit too minimal. Jul 1 at 2:09
• @RitchieSacramento Yes, maybe. A simplified description of questions leads to a simplified answer. Thanks for the useful comment. Jul 1 at 2:18
• Thanks Darren! Apologies for the too minimal example. This is great though. Yes; I need all combinations of `names` within each `id`, so I don't think this will work. Upvoted and appreciated though! Jul 1 at 11:34

You can create pairwise indices using `combn()` and expand the data frame with these using `slice()`. Then just group by these row pairs and summarise. I'm assuming you want pairwise combinations but this can be adapted for larger sets if needed. Some code to handle groups < 2 is included but can be removed if these don't exist in your data.

``````library(dplyr)
library(purrr)

df1 %>%
group_by(id) %>%
slice(c(combn(seq(n()), min(n(), 2)))) %>%
mutate(id2 = (row_number()-1) %/% 2) %>%
group_by(id, id2) %>%
summarise(name = toString(name),
across(where(is.numeric), sum), .groups = "drop") %>%
select(-id2) %>%
bind_rows(df1 %>%
group_by(id) %>%
filter(n() > 1), .) %>%
arrange(id) %>%
ungroup()

# A tibble: 6 × 4
id    name           number value
<chr> <chr>           <int> <int>
1 a     bob                 1     1
2 a     jane                2     2
3 a     bob, jane           3     3
4 b     mark                1     1
5 b     brittney            2     2
6 b     mark, brittney      3     3
``````

Edit:

To adapt for all possible combinations you can iterate over the values up to the max group size. Using edited data which has a couple of rows added to the first group:

``````map_df(seq(max(table(df2\$id))), ~
df2 %>%
group_by(id) %>%
slice(c(combn(seq(n()), .x * (.x <= n())))) %>%
mutate(id2 = (row_number() - 1) %/% .x) %>%
group_by(id, id2) %>%
summarise(name = toString(name),
across(where(is.numeric), sum), .groups = "drop")
) %>%
select(-id2) %>%
arrange(id)

# A tibble: 18 × 4
id    name                      number value
<chr> <chr>                      <int> <int>
1 a     bob                            1     1
2 a     jane                           2     2
3 a     sophie                         1     1
4 a     jeremy                         2     2
5 a     bob, jane                      3     3
6 a     bob, sophie                    2     2
7 a     bob, jeremy                    3     3
8 a     jane, sophie                   3     3
9 a     jane, jeremy                   4     4
10 a     sophie, jeremy                 3     3
11 a     bob, jane, sophie              4     4
12 a     bob, jane, jeremy              5     5
13 a     bob, sophie, jeremy            4     4
14 a     jane, sophie, jeremy           5     5
15 a     bob, jane, sophie, jeremy      6     6
16 b     mark                           3     5
17 b     brittney                       4     6
18 b     mark, brittney                 7    11
``````

Data for `df2`:

``````df2 <- structure(list(id = c("a", "a", "a", "a", "b", "b"), name = c("bob",
"jane", "sophie", "jeremy", "mark", "brittney"), number = c(1L,
2L, 1L, 2L, 3L, 4L), value = c(1L, 2L, 1L, 2L, 5L, 6L)), class = "data.frame", row.names = c(NA,
-6L))
``````
• Thank you! This is great, clever. I do need all combinations of `names`, not just pairwise, within each `id` (apologies for the too-minimal example). So changing that is lines 3 and 4? Did you have a specific tweak in mind? Jul 1 at 11:31
• Can you expand on your expected output? If for example a group contained 4 names, would you want the output to contain 4 (single) + 6 (pair combination) + 4 (triplet combinations) + 1 (quad) rows (i.e. 15 rows for that group)? Jul 1 at 11:58
• @BHudson - see edit. Jul 1 at 12:37
• Thank you! I really appreciate the help. This is super clever and something I will learn a lot from. Jul 1 at 13:03

A `data.table` option

``````setDT(df)[
,
lapply(
.SD,
function(x) {
unlist(
lapply(
seq_along(x),
combn,
x = x,
function(v) {
ifelse(all(is.character(v)), toString, sum)(v)
}
)
)
}
),
id
]
``````

gives

``````   id           name number value
1:  a            bob      1     1
2:  a           jane      2     2
3:  a      bob, jane      3     3
4:  b           mark      1     1
5:  b       brittney      2     2
6:  b mark, brittney      3     3
``````
• This is great! Thank you! Upvoted. Works and generalizes to cases with many values for `names`. I already accepted the other answer but will learn from this and it is great to have for others' future reference. Jul 1 at 13:32