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I have the following data frame in R:

objects   categories
   A       162
   B       162
   B       190
   C       123
   C       162
   C       185
   C       190
   C        82
   C       191
   D       185

As you see there are objects and the categories they belong to. I would like to sum up the categories of each object in comma separated list to get a data frame which would look like this:

 objects   categories
   A       162
   B       162, 190
   C       123, 162, 185, 190, 82, 191
   D       185

How could I do this?

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5 Answers 5

up vote 3 down vote accepted

This can be done with any of the aggregation tools of your choice, I'll show an example using plyr package and paste() function. This assumes your data is named x:

library(plyr)
ddply(x, .(objects), summarize, categories = paste(categories, collapse = ","))
#-----
  objects             categories
1       A                    162
2       B                162,190
3       C 123,162,185,190,82,191
4       D                    185
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2  
The next logical question will be "which aggregation tool should I use?" I gave a pretty good effort answering that one here should you be interested. –  Chase Jul 24 '12 at 16:28
    
He that was amazing fast. Works like charm thank you! –  sabsirro Jul 24 '12 at 16:32
aggregate(categories~objects,data=x,FUN=paste)
  objects                  categories
1       A                         162
2       B                    162, 190
3       C 123, 162, 185, 190, 82, 191
4       D                         185
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Just beat me to it. I had posted aggregate(list(categories=df$categories), by=list(objects=df$objects), c) –  Ananda Mahto Jul 24 '12 at 16:26
    
@mrdwab I was just about to upvote it. I'd suggest undeleting it as using c may be preferable to paste if the OP wants to calculate with the numbers later. –  James Jul 24 '12 at 16:31
    
true. I generally prefer c for flexibility further down the line. I had just felt the two responses were so much the same. Undeleted--we'll see what others think! :-) –  Ananda Mahto Jul 24 '12 at 16:35

As the title of your question implies, use aggregate:

aggregate(list(categories=df$categories), by=list(objects=df$objects), c)
#   objects                  categories
# 1       A                         162
# 2       B                    162, 190
# 3       C 123, 162, 185, 190, 82, 191
# 4       D                         185
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aggregate If DF is your data frame then try this:

aggregate(categories ~ objects, DF, function(x) toString(unique(x)))

sqldf With sqldf this works:

library(sqldf)
sqldf("select objects, group_concat(distinct categories) as categories
  from DF group by objects")
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A data.table solution

library(data.table)
DT <- as.data.table(DF)
DT[,list(categories = list(categories)), by = objects]

##    objects             categories
## 1:       A                    162
## 2:       B                162,190
## 3:       C 123,162,185,190,82,191
## 4:       D                    185
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