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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 ( http://alexholcombe.wordpress.com/2009/01/26/summarizing-data-by-combinations-of-variables-with-python/), and here's an example with R using doBy library to do something very related ( http://www.mail-archive.com/r-help@r-project.org/msg02643.html), 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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3 Answers 3

up vote 10 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

qplot(V1,V3,data=df,stat="summary",fun.y=mean,geom='bar',width=0.4)
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2  
by also comes in handy from time to time. –  Jonathan Chang Apr 1 '10 at 5:42
1  
true. also ave –  Jyotirmoy Bhattacharya Apr 1 '10 at 5:46
3  
for an example using ddply from the plyr package take a look at this related question: stackoverflow.com/questions/2473659/… –  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
1  
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.

library(sqldf)
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)

library("plyr")
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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