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I have a data.frame for aggregation which is simply done by ddply from plyr. The target now is to write a function that bind the aggregation object automatically to the original data. The problem is, that there can be more then one aggregation variable.

The following refers to an example with only one aggregation variable:

Here the dataframe I have:

  M O
1 1 6 
2 2 7 
3 2 4 
4 1 6 

Then with ddply I get the aggregation for "O":

TEST <- ddply(.data = DF,
              .variables = c("M"),
              .fun = summarise,
              NEW = sum(O))

The result looks like:

  M NEW
1 1  12
2 2  11

What I wanna do now is to write a function that enables me to bind the variable "New" to the original data.frame.

In a loop it works with:

for(i in 1:nrow(TEST)) {
  DF$New[DF$M == TEST$M[i]] <- TEST$NEW[i]
  } 

  M O New
1 1 6  12 
2 2 7  11 
3 2 4  11 
4 1 6  12 

Now I wanna transform this into a function that gives an equivalent output even when there are more then just one aggregation variable.

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4  
Just use transform instead of summarise. –  joran Feb 11 '13 at 15:08
    
and its better if you write replacing summarise with transform as an answer and accept it. –  Arun Feb 11 '13 at 15:11
    
@Tyler I ll do so! Thx! –  Diegoal Feb 12 '13 at 11:21

2 Answers 2

up vote 4 down vote accepted

Like I said in my comment:

ddply(.data = DF,
      .variables = c("M"),
      .fun = transform,
       NEW = sum(O))
  M O NEW
1 1 6  12
2 1 6  12
3 2 7  11
4 2 4  11
share|improve this answer
    
Thanks! That was simple and helpfull! –  Diegoal Feb 11 '13 at 15:26

You can use ave and within in base R and add multiple columns as follows. Assuming your data.frame is called "mydf":

within(mydf, {
  P <- ave(O, M, FUN = sum)
  Q <- ave(O, M, FUN = mean)
})
#   M O   Q  P
# 1 1 6 6.0 12
# 2 2 7 5.5 11
# 3 2 4 5.5 11
# 4 1 6 6.0 12

Of course, even nicer is the data.table package:

library(data.table)
DT <- data.table(mydf)
DT[, `:=`(SUM = sum(O), MEAN = mean(O)), by = "M"]
DT
   M O SUM MEAN
1: 1 6  12  6.0
2: 2 7  11  5.5
3: 2 4  11  5.5
4: 1 6  12  6.0
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1  
This is a perfect use of ave +1 –  Tyler Rinker Feb 11 '13 at 15:12

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