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If I have a df:

> ID<-c("A","A","A","B","B","B","B","C","C","C","C")
> attr<-c("yes1","yes1","no","yes2","yes1","yes1","yes1","no","no","yes1","yes2")
> df = data.frame(ID, attr) ; df
   ID attr
1   A yes1
2   A yes1
3   A   no
4   B yes2
5   B yes1
6   B yes1
7   B yes1
8   C   no
9   C   no
10  C yes1
11  C yes2

With thousands of IDs. I'd like to add another column that outputs the percent of "yes" attributes per ID, as well as if there was only one "no" attr:

     ID    %yes   #no
1     A    66.7     1
2     B     100     0
3     C      50     2

Is there a way to consolidate rows, akin to the SQL GROUP BY? Ultimately this new df would categorize IDs and be added into the original df:

     ID    attr    result
1     A    yes1       Pos
2     A    yes1       Pos
3     A      no     False
4     B    yes2   TruePos
5     B    yes1   TruePos
6     B    yes1   TruePos
7     B    yes1   TruePos
8     C      no     False
9     C      no     False
10    C    yes1       Pos
11    C    yes2       Pos
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2 Answers 2

up vote 3 down vote accepted

Take a look at the data.table package:

Load the package and convert your data.frame to a data.table. Use key= to specify your grouping column.

library(data.table)
DT <- data.table(df, key="ID")

Perform your aggregation.

DT2 <- DT[, list(pct = length(grep("yes", attr))/length(attr),
                 no = sum(attr == "no")), by=key(DT)]
DT2
#    ID       pct no
# 1:  A 0.6666667  1
# 2:  B 1.0000000  0
# 3:  C 0.5000000  2
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I've come across data.table a couple times now and I'll have to read the documentation. Seems like it has everything! –  stites Nov 29 '12 at 19:09
    
I just read the intro and the FAQ for data.table today. While the basic idea sounds great, I was slightly put off by the amount of things they changed in new releases. I am not necessarily a big fan of backwards compatibility, but it looks like it is a bit of a gamble whether today's R scripts will work with tomorrow's data.table releases. –  Stephan Kolassa Nov 29 '12 at 19:22
    
@StephanKolassa, the developer is quite active here on SO, so I find that... comforting. I've found that for a lot of aggregation problems, it's super fast, and the syntax isn't too hard to pick up. What sorts of changes have you been put off by? –  Ananda Mahto Nov 29 '12 at 19:25
1  
@StephanKolassa A bit of a gamble? What the hec are you on about??? We jump through hoops to keep it backwards compatible, over 800 tests etc etc. All the changes are new features. Please explain further. –  Matt Dowle Nov 29 '12 at 19:30
1  
@StephanKolassa Dropping J() outside DT[...], on the other hand, did break some scripts and one dependent package in particular. But we knew in advance, gave many months notice period on datatable-help and in NEWS, and defining the alias yourself is trivial. It still hasn't been fully dropped actually. The reason we dropped it was it wasn't documented, and, it conflicted with rJava::J, meaning data.table can't be used with rJava currently until we fully drop it in the next version. –  Matt Dowle Nov 29 '12 at 21:05

This will give you the proportion of "yes" per ID level:

by(substr(df$attr,1,3)=="yes",INDICES=df$ID,FUN=mean)

And this will tell you the number of "no" entries per ID level:

by(df$attr=="no",INDICES=df$ID,FUN=sum)
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