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I'd like to group this data but apply different functions to some columns when grouping.

ID  type isDesc isImage
1   1    1      0
1   1    0      1
1   1    0      1
4   2    0      1
4   2    1      0
6   1    1      0
6   1    0      1
6   1    0      0

I want to group by ID, columns isDesc and isImage can be summed, but I would like to get the value of type as it is. type will be the same through the whole dataset. The result should look like this:

ID  type isDesc isImage
1   1    1      2
4   2    1      1
6   1    1      1

Currently I am using

library(plyr)
summarized = ddply(data, .(ID), numcolwise(sum))

but it simply sums up all the columns. You don't have to use ddply but if you think it's good for the job I'd like to stick to it. data.table library is also an alternative

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What will you do when there's more than one type for an ID? Just take one (chosen by whatever means) or is that you really want to group by both ID and type? This sounds like an SQL query (see "group by"). –  igelkott Mar 15 '13 at 15:05
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1 Answer

up vote 3 down vote accepted

Using data.table:

require(data.table)
dt <- data.table(data, key="ID")
dt[, list(type=type[1], isDesc=sum(isDesc), 
                  isImage=sum(isImage)), by=ID]

#    ID type isDesc isImage
# 1:  1    1      1       2
# 2:  4    2      1       1
# 3:  6    1      1       1

Using plyr:

ddply(data , .(ID), summarise, type=type[1], isDesc=sum(isDesc), isImage=sum(isImage))
#   ID type isDesc isImage
# 1  1    1      1       2
# 2  4    2      1       1
# 3  6    1      1       1

Edit: Using data.table's .SDcols, you can do this in case you've too many columns that are to be summed, and other columns to be just taken the first value.

dt1 <- dt[, lapply(.SD, sum), by=ID, .SDcols=c(3,4)]
dt2 <- dt[, lapply(.SD, head, 1), by=ID, .SDcols=c(2)]
> dt2[dt1]
#    ID type isDesc isImage
# 1:  1    1      1       2
# 2:  4    2      1       1
# 3:  6    1      1       1

You can provide column names or column numbers as arguments to .SDcols. Ex: .SDcols=c("type") is also valid.

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Hi again Arun :D, is there a possibility to define, "all columns except x"? I am dealing with about 70 columns, most of them will be sum but only a few should be unique. Tnx –  frinx Mar 15 '13 at 13:57
    
@frinx, please check edit. –  Arun Mar 15 '13 at 14:00
    
tnx, I think it works, I just added the setkey so the code is complete –  frinx Mar 15 '13 at 14:38
1  
@frinx, I've already set dt's key to ID at the top. When you use by with key-column and store it in a data.table, the result automatically has the same key. Meaning, dt2 and dt1's keys are already ID. Please write here before editing, to verify. –  Arun Mar 15 '13 at 14:43
1  
+1 There's also keyby instead of by maybe, to remove any uncertainty/dependency on a previous setkey. I suppose the problem with cbind(dt2,dt1) is then the ID column would appear in the result twice. Hm. –  Matt Dowle Mar 15 '13 at 16:20
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