# How to merge two data frames on common columns in R with sum of others?

R Version 2.11.1 32-bit on Windows 7

I got two data sets: data_A and data_B:

### data_A

``````USER_A USER_B ACTION
1      11     0.3
1      13     0.25
1      16     0.63
1      17     0.26
2      11     0.14
2      14     0.28
``````

### data_B

``````USER_A USER_B ACTION
1      13     0.17
1      14     0.27
2      11     0.25
``````

Now I want to add the ACTION of data_B to the data_A if their USER_A and USER_B are equal. As the example above, the result would be:

### data_A

``````USER_A USER_B ACTION
1      11     0.3
1      13     0.25+0.17
1      16     0.63
1      17     0.26
2      11     0.14+0.25
2      14     0.28
``````

So how could I achieve it?

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Normally, I'd use awk or perl for this. Would such a solution be ok? – Peter G. Apr 24 '11 at 9:14
@Peter G.: I would use Common Lisp; so what? Since there is no real algorithm involved, it is just a question of implementation, and that is very language-specific. – Svante Apr 24 '11 at 10:39

You can use `ddply` in package `plyr` and combine it with `merge`:

``````library(plyr)
ddply(merge(data_A, data_B, all.x=TRUE),
.(USER_A, USER_B), summarise, ACTION=sum(ACTION))
``````

Notice that `merge` is called with the parameter `all.x=TRUE` - this returns all of the values in the first data.frame passed to `merge`, i.e. data_A:

``````  USER_A USER_B ACTION
1      1     11   0.30
2      1     13   0.25
3      1     16   0.63
4      1     17   0.26
5      2     11   0.14
6      2     14   0.28
``````
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That output isn't quite what the OP had - notice you have one extra row than the OP wanted. We need `data_A` but with an update to two of the `ACTION` entries. The equivalent base R of your answer would be: `aggregate(ACTION ~ USER_B + USER_A, data = rbind(data_A, data_B), FUN = sum)[, c(2,1,3)]` but I discounted this because it wasn't an update of `data_A`. – Gavin Simpson Apr 24 '11 at 13:12
@GavinSimpson Thank you for spotting this. I have now modified the code to use merge, rather than rbind. – Andrie Apr 24 '11 at 13:19
Dies quick on two sets of 3M rows each after consuming 2Gb of ram. – Artem Oboturov Dec 30 '12 at 23:10
@ArtemOboturov If you want faster processing with lower memory consumption, try the data.table package – Andrie Dec 30 '12 at 23:15

This sort of thing is quite easy to do with a database-like operation. Here I use package `sqldf` to do a left (outer) join and then summarise the resulting object:

``````require(sqldf)
tmp <- sqldf("select * from data_A left join data_B using (USER_A, USER_B)")
``````

This results in:

``````> tmp
USER_A USER_B ACTION ACTION
1      1     11   0.30     NA
2      1     13   0.25   0.17
3      1     16   0.63     NA
4      1     17   0.26     NA
5      2     11   0.14   0.25
6      2     14   0.28     NA
``````

Now we just need sum the two `ACTION` columns:

``````data_C <- transform(data_A, ACTION = rowSums(tmp[, 3:4], na.rm = TRUE))
``````

Which gives the desired result:

``````> data_C
USER_A USER_B ACTION
1      1     11   0.30
2      1     13   0.42
3      1     16   0.63
4      1     17   0.26
5      2     11   0.39
6      2     14   0.28
``````

This can be done using standard R function `merge`:

``````> merge(data_A, data_B, by = c("USER_A","USER_B"), all.x = TRUE)
USER_A USER_B ACTION.x ACTION.y
1      1     11     0.30       NA
2      1     13     0.25     0.17
3      1     16     0.63       NA
4      1     17     0.26       NA
5      2     11     0.14     0.25
6      2     14     0.28       NA
``````

So we can replace the `sqldf()` call above with:

``````tmp <- merge(data_A, data_B, by = c("USER_A","USER_B"), all.x = TRUE)
``````

whilst the second line using `transform()` remains the same.

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