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I'm trying to calculate asset-weighted returns by asset class. For the life of me, I can't figure out how to do it using the aggregate command.

My data frame looks like this

dat <- data.frame(company, fundname, assetclass, return, assets)

I'm trying to do something like (don't copy this, it's wrong):

aggregate(dat, list(dat$assetclass), weighted.mean, w=(dat$return, dat$assets))
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2 Answers 2

up vote 8 down vote accepted

For starters, w=(dat$return, dat$assets)) is a syntax error.

And plyr makes this a little easier:

> set.seed(42)   # fix seed so that you get the same results
> dat <- data.frame(assetclass=sample(LETTERS[1:5], 20, replace=TRUE), 
+                   return=rnorm(20), assets=1e7+1e7*runif(20))
> library(plyr)
> ddply(dat, .(assetclass),   # so by asset class invoke following function
+       function(x) data.frame(wret=weighted.mean(x$return, x$assets)))
  assetclass     wret
1          A -2.27292
2          B -0.19969
3          C  0.46448
4          D -0.71354
5          E  0.55354
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It works like a charm. The first time I tried it, I replaced x in the function with dat (returning the same number for each asset class). Any idea why this won't work with the aggregate command? –  Brandon Bertelsen Jul 30 '10 at 5:01
It seems aggregate aggregates every column wheres you desire computation over two columns. I think a while ago I use doBy or something like it -- but hey, plyr makes it easier and has other bells and whistles. –  Dirk Eddelbuettel Jul 30 '10 at 11:38
You still need to learn about summarise ;) –  hadley Jul 30 '10 at 17:32
I knew this would happen ;-) Thanks for waving the cluebat. –  Dirk Eddelbuettel Jul 30 '10 at 17:34

A data.table solution, will be faster than plyr

DT <- data.table(dat)
DT[,list(wret = weighted.mean(return,assets)),by=assetclass]
##    assetclass        wret
## 1:          A -0.05445455
## 2:          E -0.56614312
## 3:          D -0.43007547
## 4:          B  0.69799701
## 5:          C  0.08850954
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I've been meaning to look at data.table for some time now. With growing databases I guess it's about time. Appreciate the pointer! –  Brandon Bertelsen Sep 10 '12 at 18:12

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