How to summarise data by group with weighted mean?

With

`````` xa=aggregate(x\$avg,by=list(x\$value),FUN=weighted.mean,w=x\$weight)
``````

gives me an error

Error in weighted.mean.default(X[[1L]], ...) : 'x' and 'w' must have the same length

But

`weighted.mean(x\$avg,w=x\$weight);`

works fine.

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When you use aggregate, you split your data set in the chunks. So weighted mean is operating on a chunk of data. So the weights should be from this chunk. You however supply the weights from all data. Hence the error message. – mpiktas Aug 22 '11 at 10:31
something like this should work: `aggregate(x[,c("avg","weight")],by=list(x\$value),FUN=function(d)weighted.mean(d‌​[,1],d[,2]))` – mpiktas Aug 22 '11 at 10:34
Could you give this question some fitting tags? (If this language is R, the r tag seems right.) – Paŭlo Ebermann Aug 22 '11 at 14:08
possible duplicate of Aggregate and Weighted Mean in R – John Mar 30 '15 at 22:26

As suggested on an old R thread, you can use `by` instead:

``````wt <- c(5,  5,  4,  1)/15
x <- c(3.7,3.3,3.5,2.8)
xx <- data.frame(avg=x, value=gl(2,2), weight=wt)
by(xx, xx\$value, function(x) weighted.mean(x\$avg, x\$weight))
``````
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This being a 'million ways to skin a cat' question, here's a `plyr` solution (using @chl's example data):

``````ddply(xx,.(value),summarise, wm = weighted.mean(avg,weight))
``````
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