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I have a data frame like this:

     id  no  age
1    1   7   23
2    1   2   23
3    2   1   25
4    2   4   25
5    3   6   23
6    3   1   23

and I hope to aggregate the date frame by id to a form like this: (just sum the no if they share the same id, but keep age there)

    id  no  age
1    1   9   23
2    2   5   25
3    3   7   23

How to achieve this using R?

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3 Answers 3

up vote 8 down vote accepted

Assuming that your data frame is named df.

  id age no
1  1  23  9
2  3  23  7
3  2  25  5
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It works! Thanks a lot! – Nip Apr 12 '13 at 20:32

Even better, data.table, having declared your data as a data.table dt:

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And if you haven't declared it as a data.table (as is likely if you're just now calling library(data.table)), you can use setDT(dt)[,list(sum(no),unique(age)),by=id]. I like data.table, but I don't know if I'd say this is "Even better" than the equally concise answers above :) – Frank Feb 17 at 21:12
fair, but I mean even better in the sense that this may get you to start using data.table, the dividends if which are immeasurable ;-) – MichaelChirico Feb 17 at 21:23
Why do you use unique(age) here? Why not just dt[, sum(no), .(id, age)] ? You have way too many of unnecessary keystrokes here – David Arenburg Feb 18 at 15:32
you're using .( as a standin for by=list( here? I wasn't aware that syntax is allowed. how might one extend that approach to include, say, 20 id-specific variables? i was struggling with this yesterday, which is how i came to this question in the first place – MichaelChirico Feb 18 at 16:12
Not sure what you mean. My main concern was about unique(age). Also don't need to quote id. by is also not needed, but it may stay because it's easier to read. You also don't need list at all in your first statement, just sum(no) would give same result. – David Arenburg Feb 18 at 17:19

Alternatively, you could use ddply from plyr package:

ddply(df,.(id,age),summarise,no = sum(no))

In this particular example the results are identical. However, this is not always the case, the difference between the both functions is outlined here. Both functions have their uses and are worth exploring, which is why I felt this alternative should be mentioned.

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