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I am trying to do a "group by" - style weighted mean in R. With some basic mean the following code (using the plyr package from Hadley) worked well.

ddply(mydf,.(period),mean)

If I use the same approach with weighted.mean i get the following error "'x' and 'w' must have the same length" , which I do not understand because the weighted.mean part works outside ddply.

weighted.mean(mydf$mycol,mydf$myweight) # works just fine
ddply(mydf,.(period),weighted.mean,mydf$mycol,mydf$myweight) # returns the erros described above
ddply(mydf,.(period),weighted.mean(mydf$mycol,mydf$myweight)) # different code same story

I thought of writing a custom function instead of using weighted.mean and then passing it to ddply or even writing something new from scratch with subset. In my case it would be too much work hopefully, but there should by a smarter solution with what´s already there.

thx for any suggestions in advance!

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2 Answers 2

up vote 17 down vote accepted

Use an anonymous function:

> ddply(iris,"Species",function(X) data.frame(wmn=weighted.mean(X$Sepal.Length,
+                                                               X$Petal.Length),
+                                             mn=mean(X$Sepal.Length)))
     Species      wmn    mn
1     setosa 5.016963 5.006
2 versicolor 5.978075 5.936
3  virginica 6.641535 6.588
> 

This computes a weighted mean of Sepal.Length (weighted by Petal.Length) as well as unweighted mean and returns both.

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This is nice. Haven´t had much to do with anonymous functions so far. seems really worth a look. I don´t get the syntax / idea fully yet, but I will look into it, thx for your help! Do you need to print everything in one line because of no "{}" in there ? Where can I learn something about anonymous functions? –  Matt Bannert Jul 18 '10 at 21:50
1  
Well, all these these *apply, by, ... functions use anonymous functions so you should find plenty of examples. Curly braces are needed once you group more than one command. Lastly, you do not have use an anonymous function -- you can also define your own -- but using them saves on typing :) –  Dirk Eddelbuettel Jul 18 '10 at 22:03
    
what about lapply(split(iris, species), weighted.mean) or smth like that? –  aL3xa Jul 18 '10 at 23:27

Use summarise (or summarize):

ddply(iris, "Species", summarise, 
  wmn = weighted.mean(Sepal.Length, Petal.Length),
  mn = mean(Sepal.Length))
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When I try this form I get Error in is.list(by) : 'by' is missing. The debugger output is impenetrable. Any clue where this error would come from? Anyone interested in trying my data and ddply() call? –  Neil Best Jul 2 '12 at 16:27
4  
I'm getting that error too on similar code. The error occurs only in RStudio. It's due to Hmisc::summarize being higher than plyr::ddply in the search() list. See this link‌​. Fix it by replacing summarize with summarise: it works and does not create a conflict with Hmisc. Welcome to dependency hell! –  Fr. Apr 11 '13 at 19:48
6  
Or be explicit and use plyr::summarize –  hadley Apr 11 '13 at 22:51

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