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I want to write a function to analyze a data set where I need to aggregate/group by/split on each combination of identification variables. Unfortunately the measurement variable are numerous, often change and enumerating them leads to brittle code and bugs in the inputs.

dat <- data.frame(id.a=c('aa','bb','aa','bb'),id.b=c('x','y','x','x'),m.c=c(1:4),m.d=c(5:8)) 
id.vars <- c('id.a', 'id.b')
measure.vars <- setdiff(names(dat),id.vars)

I would like to sum up my measurment variables. I have found ways but they are all hacky. The result would be

id.a id.b m.c m.d
1   aa    x   4  12
2   bb    y   2   6
3   bb    x   4   8

I think that reshape2 or ddply is likely to be a solution.

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Perhaps a solution for the brittleness of the inputs would be to change your data structuring so you read in the name of the variable and its value into a dictionary. Then traversing that different ways you might be able to get what you want without having to try to deal with a whole outside package. –  TomNysetvold Apr 6 '12 at 0:38

3 Answers 3

up vote 3 down vote accepted

With plyr:

ddply(dat, .(id.a,id.b), numcolwise(function(x) sum(x)))
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This does however list out the measurement variables, which the question was trying to avoid. –  thelatemail Apr 6 '12 at 1:36
    
I don't think I see that in his question. Other than... "The result would be..." –  Brandon Bertelsen Apr 6 '12 at 1:40
    
In the title of the post - ..."without explicitly naming them?" –  thelatemail Apr 6 '12 at 1:42
1  
Ah, thanks. It's updated accordingly. numcolwise() runs on all numeric columns - so there's no need to specify measure.vars. –  Brandon Bertelsen Apr 6 '12 at 2:13
    
Just what I have been looking for! –  Ed Fine Apr 6 '12 at 18:13

Using your supplied code:

dat <- data.frame(id.a=c('aa','bb','aa','bb'),id.b=c('x','y','x','x'),m.c=c(1:4),m.d=c(5:8)) 
id.vars <- c('id.a', 'id.b')
measure.vars <- setdiff(names(dat),id.vars)

and then running:

aggregate(dat[measure.vars],dat[id.vars],sum)

produces:

  id.a id.b m.c m.d
1   aa    x   4  12
2   bb    x   4   8
3   bb    y   2   6
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I don't think the as.list is needed on the grouping variables. –  Tyler Rinker Apr 6 '12 at 1:30
    
+1 for base.... –  Brandon Bertelsen Apr 6 '12 at 1:31
    
@TylerRinker - correct, the c() wasn't needed on the first set of variables either. I have updated the answer. –  thelatemail Apr 6 '12 at 1:34
    
Though I am likely to use the ddply version due to its ease of permutation, thank you for showing me how to better use base. –  Ed Fine Apr 6 '12 at 18:12

Here is a data.table solution that will be memory efficient

dat <- data.frame(id.a=c('aa','bb','aa','bb'),id.b=c('x','y','x','x'),m.c=c(1:4),m.d=c(5:8)) 
id.vars <- c('id.a', 'id.b')
measure.vars <- setdiff(names(dat),id.vars)
DT <- as.data.table(dat)
DT[, lapply(.SD, sum), by = id.vars, .SDcols =measure.vars]
##   id.a id.b m.c m.d
## 1:   aa    x   4  12
## 2:   bb    y   2   6
## 3:   bb    x   4   8

Assuming that all the non-id columns are measurement columns (implied in the question, but not explicitly stated as a requirement), then the following would work

 DT[, lapply(.SD, sum), by = id.vars]
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