# R Find the “groups” of tuples [duplicate]

I try to find the "group" (`id3`) based on two variables (`id1`, `id2`):

``````df = data.frame(id1 = c(1,1,2,2,3,3,4,4,5,5),
id2 = c('a','b','a','c','c','d','x','y','y','z'),
id3 = c(rep('group1',6), rep('group2',4)))

id1 id2      id3
1    1   a   group1
2    1   b   group1
3    2   a   group1
4    2   c   group1
5    3   c   group1
6    3   d   group1
7    4   x   group2
8    4   y   group2
9    5   y   group2
10   5   z   group2
``````

For example `id1=1` is related to `a` and `b` of `id2`. But `id1=2` is also related to `a` so both belong to one group (`id3=group1`). But since `id1=2` and `id1=3` share `id2=c`, also `id1=3` belongs to that group (`id3=1`). The values of the tuple `((1,2),('a','b','c'))` appear no where else, so no other row belongs to that group (which is labeled `group1` generically).

My idea was to create a table based on `id3` which would subsequently populated in a loop.

``````solution = data.frame(id3= c('group1', 'group2'),id1=NA, id2=NA)
group= 1

for (step in c(1:1000)) { # run many steps to make sure to get all values
solution\$id1[group] = # populate
solution\$id2[group] = # populate

if (fully populated) {
group = group +1
}}
``````

I am struggling to see how to populate.

Disclaimer: I asked a similar question here, but using names in `id2` led a lot of people point me to fuzzy string procedures in R, which are not needed here, since there exist an exact solution. I also include all code I have tried since then in this post.

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You can leverage on `igraph` to find the different clusters of networks

``````library(igraph)
g <- graph_from_data_frame(df, FALSE)
cg <- clusters(g)\$membership
df\$id3 <- cg[df\$id1]
df
``````

output:

``````   id1 id2 id3
1    1   a   1
2    1   b   1
3    2   a   1
4    2   c   1
5    3   c   1
6    3   d   1
7    4   x   2
8    4   y   2
9    5   y   2
10   5   z   2
``````