# How to achieve this result in R

R Version 2.11.1 32-bit on Windows 7

I have two data sets as shown below:

data_set_A:

``````USER_B   ACTION
10       0.1
11       0.3
12       0.1
``````

data_set_B:

``````USER_A   USER_B   ACTION
1        10       0.2
1        11       0.1
1        15       0.1
2        12       0.2
``````

How to add the `ACTION` of `USER_B` from `data_set_A` to `data_set_B`? The `USER_B` in `data_set_A` is a subset of `USER_B` in `data_set_B`.

for the example above, it may be:

``````USER_A   USER_B   ACTION
1        10       0.2+0.1
1        11       0.1+0.3
1        15       0.1
2        12       0.2+0.1
``````

In `data_set_B` I don't need to consider the `USER_A`, just consider the `USER_B` appear in `data_set_A`.

I wonder if it could be achieved without doing one by one?

-

``````dfa <- data.frame(
user_b = 10:12,
action = c(0.1, 0.3, 0.1)
)

dfb <- data.frame(
user_a = c(1, 1, 1, 2),
user_b = c(10, 11, 15, 12),
action = c(0.2, 0.1, 0.1, 0.2)
)

action <- dfa\$action[match(dfb\$user_b, dfa\$user_b)]
action[is.na(action)] <- 0
dfb\$action <- dfb\$action + action
dfb

user_a user_b action
1      1     10    0.3
2      1     11    0.4
3      1     15    0.1
4      2     12    0.3
``````
-

One way is to do the equivalent of a database merge on the two data sets to form the action pairs you want and then sum those. Using @Andrie's example code:

``````dfa <- data.frame(
user_b = 10:12,
action = c(0.1, 0.3, 0.1)
)

dfb <- data.frame(
user_a = c(1, 1, 1, 2),
user_b = c(10, 11, 15, 12),
action = c(0.2, 0.1, 0.1, 0.2)
)
``````

### Solution Code

I'll first present the full solution and then explain the steps:

``````mdat <- merge(dfb, dfa, by = "user_b", all.x = TRUE)
res <- data.frame(mdat[,c(2,1)],
action = rowSums(mdat[, c("action.x", "action.y")],
na.rm = TRUE))
res <- res[order(res\$user_a, res\$user_b),]
``````

`res` now contains the results.

### Explanation

We first merge the two data frames, matching on `user_b`:

``````## merge the data
mdat <- merge(dfb, dfa, by = "user_b", all.x = TRUE)
mdat
``````

giving:

``````> mdat
user_b user_a action.x action.y
1     10      1      0.2      0.1
2     11      1      0.1      0.3
3     12      2      0.2      0.1
4     15      1      0.1       NA
``````

Then we just use this object to create the result data frame, and sum the two `action.` columns row-wise:

``````## format the merged data with summed `action`
res <- data.frame(mdat[,c(2,1)],
action = rowSums(mdat[, c("action.x", "action.y")],
na.rm = TRUE))
## reorder
res <- res[order(res\$user_a, res\$user_b),]
res
``````

resulting in

``````> res
user_a user_b action
1      1     10    0.3
2      1     11    0.4
4      1     15    0.1
3      2     12    0.3
``````
-
+1 For showing merge. Especially for showing that you may wish to reorder the merged data.frame - I spent several hours last month debugging some code. It turned out that the bug was introduced as a result of my erroneous assumption that the merged data.frame would have the same order as the original (using merge(..., all.x=TRUE)). –  Andrie Apr 13 '11 at 11:18