17

How do I compute the weighted mean in R?

For example, I have 4 elements of which 1 element is of size (or: length, width, etc.) 10 and 3 elements are of size 2.

> z = data.frame(count=c(1,3), size=c(10,2))
> z
  count size
1     1   10
2     3    2

The weighted average is (10 * 1 + 2 * 3) / 4 = 4.

  • 6
    Speaking for myself, I downvoted because a google search for "weighted average in R" returns the help page for weighted.mean as the very first result. – joran Jun 12 '12 at 4:35
  • 3
    @Frank Hover over the down triangle beneath the vote count next to your Q. The tool tip says: "This question does not show any research effort; ...". Given that someone here has already asked a very similar Q here that could easily be found via a search, and a Google search takes you to the correct Answer, that may be why you got Downvotes and had your Q closed. – Gavin Simpson Jun 12 '12 at 7:38
  • 1
    The other question appears to be different, the OP is asking about weighted variance as he clarified in his comment on the accepted answer: > yes, i'm looking for weighted variance though. not mean – Alex Apr 8 '12 at 2:26 – Chris Snow Jun 11 '15 at 6:08
  • 3
    Voting to reopen; as @ChrisSnow notes, the other question seems different, and in any case is much less clear than this one. – Ilmari Karonen Apr 5 '16 at 9:21
32

Use weighted.mean:

> weighted.mean(z$size, z$count)
[1] 4
| improve this answer | |
23

Seems like you already know how to calculate this, just need a nudge in the right direction to implement it. Since R is vectorized, this is pretty simple:

with(z, sum(count*size)/sum(count))

The with bit just saves on typing and is equivalent to sum(z$count*z$size)/sum(z$count)

Or use the built in function weighted.mean() as you also pointed out. Using your own function can prove faster, though will not do the same amount of error checking that the builtin function does.

builtin <- function() with(z, weighted.mean(count, size))
rollyourown <- function() with(z, sum(count*size)/sum(count))

require(rbenchmark)  
  benchmark(builtin(), rollyourown(),
            replications = 1000000,
            columns = c("test", "elapsed", "relative"),
            order = "relative")
#-----
           test elapsed relative
2 rollyourown()   13.26 1.000000
1     builtin()   22.84 1.722474
| improve this answer | |

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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