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I need to summarize a data frame by some variables, ignoring the others. This is sometimes referred to as collapsing. E.g. if I have a dataframe like this:

Widget Type Energy  
egg 1 20  
egg 2 30  
jap 3 50  
jap 1 60

Then collapsing by Widget, with Energy the dependent variable, Energy~Widget, would yield

Widget Energy  
egg  25  
jap  55  

In Excel the closest functionality might be "Pivot tables" and I've worked out how to do it in python (, and here's an example with R using doBy library to do something very related (, but is there an easy way to do the above? And even better is there anything built into the ggplot2 library to create plots that collapse across some variables?

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up vote 11 down vote accepted

Use aggregate to summarize across a factor:

> df<-read.table(textConnection('
+ egg 1 20
+ egg 2 30
+ jap 3 50
+ jap 1 60'))
> aggregate(df$V3,list(df$V1),mean)
  Group.1  x
1     egg 25
2     jap 55

For more flexibility look at the tapply function and the plyr package.

In ggplot2 use stat_summary to summarize

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by also comes in handy from time to time. – Jonathan Chang Apr 1 '10 at 5:42
true. also ave – Jyotirmoy Bhattacharya Apr 1 '10 at 5:46
for an example using ddply from the plyr package take a look at this related question:… – mropa Apr 1 '10 at 6:08
i would check out plyr for a general purpose SAC combine framework (what pivot tables are), it's an excellent resource – Dan Apr 1 '10 at 6:35
Do you really want the long line? Otherwise stat_summary(fun.y=mean,geom='point') produces just the points. – Jyotirmoy Bhattacharya Apr 1 '10 at 8:10

For those familiar with SQL, another way to manipulate dataframes can be the sqldf command in the sqldf package.

sqldf("SELECT Widget, avg(Energy) FROM yourDataFrame GROUP BY Widget")
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@Jyotirmoy mentioned that this can be done with the plyr library. Here is what that would look like:

DF <- read.table(text=
"Widget Type Energy  
egg 1 20  
egg 2 30  
jap 3 50  
jap 1 60", header=TRUE)

ddply(DF, .(Widget), summarise, Energy=mean(Energy))

which gives

> ddply(DF, .(Widget), summarise, Energy=mean(Energy))
  Widget Energy
1    egg     25
2    jap     55
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