# How to merge tables in R?

I think this will have a simple answer, but I can't work it out! Here is an example using the `iris` dataset:

``````a <- table(iris[,2])
b <- table(iris[,3])
``````

How do I add these two tables together? For example, the variable 3 would have a value of 27 (26+1) and variable 3.3 a value of 8 (6+2) in the new output table.

Any help much appreciated.

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This will work if you want to use the variables which are present in both `a` and `b`:

``````n <- intersect(names(a), names(b))
a[n] + b[n]

#  3 3.3 3.5 3.6 3.7 3.8 3.9   4 4.1 4.2 4.4
# 27   8   8   5   4   7   5   6   4   5   5
``````

If you want to use all variables:

``````n <- intersect(names(a), names(b))

res <- c(a[!(names(a) %in% n)], b[!(names(b) %in% n)], a[n] + b[n])

res[order(names(res))] # sort the results
``````
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+1 much better than mine. –  Gavin Simpson Oct 15 '12 at 14:32
Thanks for this. Can it be modified to keep the values that aren't present in both datasets and only present in one though? I need a total that incorporates all data including the merged common values as your code has shown. –  JPD Oct 15 '12 at 15:28
@JPD See the update of my answer. –  Sven Hohenstein Oct 16 '12 at 9:24
@SvenHohenstein thanks for the update. Using the `iris` example provided, `[-n]` appears to be invalid. –  JPD Oct 18 '12 at 9:14
@JPD See my correction. –  Sven Hohenstein Oct 18 '12 at 11:04
``````temp<-merge(a,b,by='Var1')
temp\$sum<-temp\$Freq.x + temp\$Freq.y

Var1 Freq.x Freq.y sum
1     3     26      1  27
2   3.3      6      2   8
3   3.5      6      2   8
4   3.6      4      1   5
5   3.7      3      1   4
6   3.8      6      1   7
7   3.9      2      3   5
8     4      1      5   6
9   4.1      1      3   4
10  4.2      1      4   5
11  4.4      1      4   5
``````
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+1 nice use of `merge()` –  Gavin Simpson Oct 15 '12 at 14:32

Here is another one:

``````transform(merge(a,b, by="Var1"), sum=Freq.x + Freq.y)
Var1 Freq.x Freq.y sum
1     3     26      1  27
2   3.3      6      2   8
3   3.5      6      2   8
4   3.6      4      1   5
5   3.7      3      1   4
6   3.8      6      1   7
7   3.9      2      3   5
8     4      1      5   6
9   4.1      1      3   4
10  4.2      1      4   5
11  4.4      1      4   5
``````
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