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I am able to successfully get a simple mean of a given vector within factor levels, but in attempting to take it to the next step of weighting the observations, I can't get it to work. This works:

> tapply(exp.f,part.f.p.d,mean)
    1         2         3         4         5         6         7        8             9        10 
0.8535996 1.1256058 0.6968142 1.4346451 0.8136110 1.2006801 1.6112160 1.9168835     1.5135006 3.0312460 

But this doesn't:

> tapply(exp.f,part.f.p.d,weighted.mean,b.pct)
Error in weighted.mean.default(X[[1L]], ...) : 
  'x' and 'w' must have the same length

In the code below, I am trying to find the weighted mean of exp.f, within levels of the factor part.f.p.d, weighted by the observations within b.pct that are in each level.

b.exp <- tapply(exp.f,part.f.p.d,weighted.mean,b.pct)

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

I am thinking I must be supplying the incorrect syntax, as all 3 of these vectors are the same length:

> length(b.pct)
[1] 978
> length(exp.f)
[1] 978
> length(part.f.p.d)
[1] 978

What is the correct way to do this? Thank you in advance.

share|improve this question
Hi jonw- exp.f is a numeric vector of stock expected returns,part.f.p.d is a factor with 10 levels, and b.pct are percentages for each stock in an index (the top 1000 stocks) – user297400 Feb 1 '11 at 18:47
See answers to…. – Charles Feb 1 '11 at 18:51

3 Answers 3

up vote 8 down vote accepted

Now I do it like this (thanks to Gavin):

sapply(split(Data,Data$part.f.p.d), function(x) weighted.mean(x$exp.f,x$b.pct)))

Others likely use ddply from the plyr package:

ddply(Data, "part.f.p.d", function(x) weighted.mean(x$exp.f, x$b.pct))
share|improve this answer
+1 plyr/ddply is my favorite way – Prasad Chalasani Feb 1 '11 at 18:56
Better than mine :) – J. Won. Feb 1 '11 at 19:03
@Prasad: I knew the obligatory plyr solution would get some up-votes. ;-) – Joshua Ulrich Feb 1 '11 at 19:05
@Joshua the is a bit of extra overkill here. sapply(split(Data, Data$part.f.p.d), function(x) weighted.mean(x$exp.f,x$b.pct)) would be sufficient to return a vector of weighted means. The simplicity of your split approach (+1) is hidden by the wrapping. – Gavin Simpson Feb 1 '11 at 19:39
Why the plyr love-in? ;-) I agree it is a very nice package, but such simple problems as that posed in the Q can be handled very nicely via basic R functionality without needing to learn a new package. – Gavin Simpson Feb 1 '11 at 19:43

Your problem is that tapply does not "split" the extra arguments supplied (through its ... arguments) to the function, as it does for the main argument X. See the 'Note' on the help page for tapply (?tapply).

Optional arguments to FUN supplied by the ... argument are not divided into cells. It is therefore inappropriate for FUN to expect additional arguments with the same length as X.

Here is a hacky solution.

exp.f <- rnorm(10)
part.f.p.d <- factor(sample(1:5, size = 10, replace = T))
b.pct <- rnorm(10)
a <- split(exp.f, part.f.p.d)
b <- split(b.pct, part.f.p.d)
lapply(seq_along(a), function(i){
  weighted.mean(a[[i]], b[[i]])
share|improve this answer
Welcome rbtgde :) – J. Won. Feb 1 '11 at 19:33
+1 for explaining the error – Joshua Ulrich Feb 1 '11 at 20:09

I've recreated the error with some dummy data. I'm assuming that part.f.p.d is some kind of factor that you're using to separate the other vectors.

b.pct <- sample(1:100, 10) / 100
exp.f <- sample(1:1000, 10)
part.f.p.d <- factor(rep(letters[1:5], 2))

tapply(exp.f, part.f.p.d, mean) # this works
tapply(exp.f, part.f.p.d, weighted.mean, w = b.pct) # this doesn't

A call to traceback() helps to uncover the problem. The reason the second doesn't work is because the INDEX argument (ie part.f.p.d) that you passed to tapply() is used to split the X argument (ie exp.f) into smaller vectors. Each of these splits is applied to weighted.mean() together with the w argument (ie b.pct), which was not split.

EDIT: This should do what you want.

       function(whichpart) weighted.mean(x = exp.f[part.f.p.d == whichpart], 
                                         w = b.pct[part.f.p.d == whichpart]))
share|improve this answer
thank you - is there some tweak that would make this work to calculate a weighted.mean that you know of? – user297400 Feb 1 '11 at 18:47
+1 for explaining the error – Joshua Ulrich Feb 1 '11 at 20:08

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