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I have a dataframe that has two sets of data that I need to multiply for a calculation. A simple version would be

sample = data.frame(apples=c(10,20,25,30,40,NA,NA,15))
sample$oranges = c(25,60,90,86,10,67,45,10)
sample$oats = c(65,75,85,95,105,115,125,135)
sample$eggs = c(23,22,21,20,19,18,17,16)
sample$consumer =c('john','mark','luke','paul','peter','thomas','matthew','brian')
sample$mealtime = c('breakfast','lunch','lunch','snack','lunch','breakfast','snack','dinner')

s1 = melt(sample,id.vars=c(5,6),measure.vars=c(1:4))

and what I'm trying to do is something along the lines of

s2 = dcast(s1, mealtime ~ ., function(x) (x[variable == 'oranges'] * x[variable =='apples'])/sum(x[variable == 'apples'])

In practice its a much longer data.frame and a more elaborate calculation but the principle should be the same. Thanks -- first post to SO so apologies for any errors.

The output would be a data frame that has mealtimes as the Id var and the apple weighted average of the orange data as the values for each mealtime.

Something along the lines of

    Group.1         x
1 breakfast  1.785714
2    dinner  1.071429
3     lunch 27.500000
4     snack 18.428571

This was calculated using

sample$wa = sample$oranges*sample$apples/sum(sample$apples)
aggregate(sample$wa,by=list(sample$mealtime),sum,na.rm=T)

which feels off mathematically but was meant to be a quick kludgy approximation.

share|improve this question
    
Since your code is failing, can you describe the expected output? – flodel Sep 16 '12 at 2:50
    
Can you add in your question how you calculated "x" in the provided output. – A Handcart And Mohair Sep 16 '12 at 7:04
    
Thanks for everyones patience with the iterative process of asking this question. – Tahnoon Pasha Sep 16 '12 at 8:28
up vote 1 down vote accepted

This is a much better task for plyr than it is for reshape.

library(plyr)
s1<-ddply(sample,.(mealtime), function(x) {return(sum(x$apples,x$oranges))})

And now you have clarified the output:

ddply(sample,.(mealtime), summarize,
      wavg.oranges = sum(apples * oranges, na.rm=TRUE) / sum(apples, na.rm=TRUE))
#    mealtime wavg.oranges
# 1 breakfast     25.00000
# 2    dinner     10.00000
# 3     lunch     45.29412
# 4     snack     86.00000
share|improve this answer
    
@flodel, I think I'm going to have to track down some of your other answers to upvote to give you some credit here. – A Handcart And Mohair Sep 16 '12 at 16:13
    
Thanks @flodel. I'm attaching a corollary link to another question I found while researching this and before seeing your response. It follows the same approach and uses dataframes quite cleverly to add additional columns. Mainly for the sake of completeness in case anyone else comes across this looking for the same thing. link – Tahnoon Pasha Sep 17 '12 at 9:03

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