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I have a script where I'm using ddply, as in the following example:

ddply(df, .(col),
function(x) data.frame(
col1=some_function(x$y),
col2=some_other_function(x$y)
)
)

Within ddply, is it possible to reuse col1 without calling the entire function again?

For example:

ddply(df, .(col),
function(x) data.frame(
col1=some_function(x$y),
col2=some_other_function(x$y)
col3=col1*col2
)
)
share|improve this question
    
I don't understand the question. Your second example is perfectly valid code and should work. If you're using transform or summarise, it's a slightly different situation because of the way those functions are written. –  hadley Jul 30 '10 at 17:55
    
Should work, but it doesn't. –  Brandon Bertelsen Jul 30 '10 at 18:14
    
I receive an error message akin to what follows: Error in data.frame(..., : arguments imply differing number of rows: X, Y when I try to use code like my second example. –  Brandon Bertelsen Jul 30 '10 at 23:52

3 Answers 3

up vote 5 down vote accepted

You've got a whole function to play with! Doesn't have to be a one-liner! This should work:

ddply(df, .(col), function(x) {
  tmp <- some_other_function(x$y)
  data.frame(
    col1=some_function(x$y),
    col2=tmp,
    col3=tmp
  )
})
share|improve this answer
1  
Thank you, I didn't realize how scalable ddply was. It's my first day actually making use of it. I'm trying to move away from "for" loops. Dirk, pointed the function and the plyr package out to me in another question and I've been making great use of it. –  Brandon Bertelsen Jul 30 '10 at 22:05

This appears to be a good candidate for data.table using the scoping rules of the j component. See FAQ 2.8 for details.

From the FAQ

No anonymous function is passed to the j. Instead, an anonymous body is passed to the j.

So, for your case

library(data.table)
DT <- as.data.table(df)
DT[,{
 col1=some_function(y)
 col2=some_other_function(y)
 col3= col1 *col2
 list(col1 = col1, col2 = col2, col3 = col3)
 }, by = col]  

or a slightly more direct way :

DT[,list(
 col1=col1<-some_function(y)
 col2=col2<-some_other_function(y)
 col3=col1*col2
 ), by = col]  

This avoids one repetition each of col1 and col2, and avoids two repeats of col3; repetition is something we strive to reduce in data.table. The = followed by <- might initially look cumbersome. That allows the following syntactic sugar, though :

DT[,list(
 "Projected return (%)"=      col1<-some_function(y),
 "Investment ($m)"=           col2<-some_other_function(y),
 "Return on Investment ($m)"= col1*col2
 ), by = col]  

where the output can be sent directly to latex or html, for example.

share|improve this answer
    
+1 for the alternative. What's the hype with DT? I haven't read about it yet. –  Brandon Bertelsen Sep 20 '12 at 5:40
    
Im not sure how lexical scoping comes in here? And shouldn't col3 be col1*col2 to avoid the recall? –  Matt Dowle Sep 20 '12 at 5:40
    
True, was really only wanting the bit on it being a body of a function evaluated using the scoping rules. –  mnel Sep 20 '12 at 5:47
    
@mnel Added some more in edit. Hope ok. When others have editted my answers I think I've noticed that S.O. doesn't automatically tell me. Does it for you? –  Matt Dowle Sep 20 '12 at 8:18
    
That is really nifty! And yes, I seem to get notifications about edits. –  mnel Sep 20 '12 at 9:38

I don't think that's possible, but it shouldn't matter too much, because at that point it's not an aggregation function anymore. For example:

#use summarize() in ddply()
data.means <- ddply(data, .(groups), summarize, mean = mean(x), sd = sd(x), n = length(x))
data.means$se <- data.means$sd / sqrt(data.means$n)
data.means$Upper <- data.means$mean + (data.means$SE * 1.96)
data.means$Lower <- data.means$mean - (data.means$SE * 1.96)

So I didn't calculate the SEs directly, but it wasn't so bad calculating it outside of ddply(). If you really wanted to, you could also do

ddply(data, .(groups), summarize, se = sd(x) / sqrt(length(x)))

Or to put it in terms of your example

ddply(df, .(col), summarize,
      col1=some_function(y),
      col2=some_other_function(y)
      col3=some_function(y)*some_other_function(y)
    )
share|improve this answer
    
Thank you for this example. –  Brandon Bertelsen Jul 30 '10 at 22:04

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