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The cast() function is great at calculating margins for aggregate values:

cast(df, IDx1+IDx2~IDy1, margins=c('IDx1','IDx2','grand_row'),c(min, mean, max))

The problem is that I need to weight my means using a second vector and a custom function.

Of course, ddply() lets me apply custom aggregation functions to my grouped records:

ddply(d, IDx1+IDx2~IDy1 , function(x) 

...and this is awesome.

But what would really save the day is the ability to do both things at once, whether by calling the two-vector function in cast() or by faking somehow the margins=() variable in ddply().

Is this possible?

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1 Answer 1

up vote 1 down vote accepted

It's pretty to compute the margins yourself:

ddply(d, "IDX1", ...) 
ddply(d, c("IDX1", "IDX2"), ...)
ddply(d, "IDy1", ...)

and then combine the results together with rbind. It wouldn't be too hard to wrap this up into a general function.

Also, I'd rewrite your original code as:

ddply(d, IDx1+IDx2~IDy1, summarise, 
  min = min(value),
  wt.mean = MyFancyWeightedHarmonicMeanFunction(value, weight),
  max = max(value)
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Hadley, Thanks for the tip. The separate ddply operations, rbinded together, is exactly what I've done. Still getting my head around both summarise and transform. – MW Frost Jan 6 '10 at 5:52
rbind.fill is particularly helpful when ddply returns data frames with different numbers of columns. – Andrew Jan 24 '13 at 15:31

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