# How to merge two data frames with different lengths by recycling without duplication in R?

Suppose we've got two data frames and we want to merge them. The number of values of each group in `df2` is less than or equal to the number of values in `df1`:

``````df1 <- data.frame(group = c(rep("A", 5), rep("B", 4), rep("C", 2)),
values = c(51, 13, 18, 89, 3, 27, 86, 85, 31, 100, 55))
df2 <- data.frame(group = c(rep("A", 2), rep("B", 2), rep("C", 2)),
values = c(30, 36, 50, 60, 45, 70))
df.merge <- merge(df1, df2, "group")
``````

We get something like this:

``````head(df1)
## group values
## A     51
## A     13
## A     18
## A     89
## A      3
## B     27

df2
## group values
## A     30
## A     36
## B     50
## B     60
## C     45
## C     70

## group values.x values.y
## A       51       30
## A       51       36
## A       13       30
## A       13       36
## A       18       30
## A       18       36
``````

So for each unique `value` of `df2`, each row of the corresponding group in `df1` is duplicated.

My aim is to get:

``````## group values.x values.y
## A       51       30
## A       13       36
## A       18       30
## A       89       36
## A        3       30
## B       27       50
## B       86       60
## B       85       50
## B       31       60
## C       100      45
## C       55       70
``````

Is there any convenient way to achieve this?

-
I'd appreciate being told the reason for the downvote. – AnjaM Oct 11 '13 at 13:29

This'll do it:

``````library(data.table)
dt1 = data.table(df1)
dt2 = data.table(df2)

setkey(dt2, group)

dt1[, values.y := dt2[J(.BY[[1]])]\$values, by = group]
dt1
#    group values values.y
# 1:     A     51       30
# 2:     A     13       36
# 3:     A     18       30
# 4:     A     89       36
# 5:     A      3       30
# 6:     B     27       50
# 7:     B     86       60
# 8:     B     85       50
# 9:     B     31       60
#10:     C    100       45
#11:     C     55       70
``````
-
+1 Beat my (deleted) answer by a minute. I'm surprised that didn't give a warning about recycling. It's also possible to write it as `dt1[, values.y := dt2[.(g)]\$values, by =list(g=group)]`...which I like the look of better. – Frank Oct 10 '13 at 15:57
@Frank I think the absence of a warning is a bug – eddi Oct 10 '13 at 16:03
I didn't try it, but I'm guessing that it would not work because dt2 also has a group column, which would be grabbed instead of the dt1 group associated with the `by=group`. Also, yes, .BY is always a list. – Frank Oct 11 '13 at 11:23
just to be clear what `.BY` is, if you had `by =list(col1, col2)`, the first element would be the value of `col1` in the current group, and the second the value of `col2` – eddi Oct 11 '13 at 12:26
A solution using base R. Essentially the idea is to repeat the values for each group in `df2` to equal the number of rows in each group in `df1`. This can be done with `rep` and the argument `length.out`. It can be done separately for each group in `by`, and then I just `unlist` to a vector to add to `df1`
``````df1\$values.y = unlist(by(df2, df2\$group,