11

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.

5 Answers 5

9

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
3
  • 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, 2012 at 15:28
  • @SvenHohenstein thanks for the update. Using the iris example provided, [-n] appears to be invalid.
    – JPD
    Oct 18, 2012 at 9:14
  • @SvenHohenstein That's one step closer! However, 3.8 for example occurs 3 times in the resulting table. Ideally the final table would capture only the sum of the 2 values and not the originals. Any way to keep just the combined value and remove the others? Thanks again for your help.
    – JPD
    Oct 18, 2012 at 11:18
3
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
0
3

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
2

Here's a slightly tortured one-liner version of the merge() solution:

do.call(function(Var1, Freq.x, Freq.y) data.frame(Var1=Var1, Freq=rowSums(cbind(Freq.x, Freq.y))), merge(a, b, by="Var1"))

Here's the one if you want to use all variables:

do.call(function(Var1, Freq.x, Freq.y) data.frame(Var1=Var1, Freq=rowSums(cbind(Freq.x, Freq.y), na.rm=TRUE)), merge(a, b, by="Var1", all=TRUE))

Unlike the transform() one-liner, it doesn't accumulate .x and .y so it can be used iteratively.

1

The merge function of the data.table package may be what you want: https://rpubs.com/ronasta/join_data_tables

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.