# How to compute weighted mean in R?

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`.

• 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
• @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
• 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
• 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

Use `weighted.mean`:

``````> weighted.mean(z\$size, z\$count)
[1] 4
``````

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
``````