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I'm trying to use R's by command to get column means for subsets of a data frame. For example, consider this data frame:

> z = data.frame(labels=c("a","a","b","c","c"),data=matrix(1:20,nrow=5))
> z
  labels data.1 data.2 data.3 data.4
1      a      1      6     11     16
2      a      2      7     12     17
3      b      3      8     13     18
4      c      4      9     14     19
5      c      5     10     15     20

I can use R's by command to get the column means according to the labels column:

> by(z[,2:5],z$labels,colMeans)
z[, 1]: a
data.1 data.2 data.3 data.4
   1.5    6.5   11.5   16.5
------------------------------------------------------------
z[, 1]: b
data.1 data.2 data.3 data.4
     3      8     13     18
------------------------------------------------------------
z[, 1]: c
data.1 data.2 data.3 data.4
   4.5    9.5   14.5   19.5

But how do I coerce the output back to a data frame? as.data.frame doesn't work...

> as.data.frame(by(z[,2:5],z$labels,colMeans))
Error in as.data.frame.default(by(z[, 2:5], z$labels, colMeans)) :
  cannot coerce class '"by"' into a data.frame
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2 Answers 2

up vote 7 down vote accepted

You can use ddply from plyr package

library(plyr)
ddply(z, .(labels), numcolwise(mean))
  labels data.1 data.2 data.3 data.4
1      a    1.5    6.5   11.5   16.5
2      b    3.0    8.0   13.0   18.0
3      c    4.5    9.5   14.5   19.5

Or aggregate from stats

aggregate(z[,-1], by=list(z$labels), mean)
  Group.1 data.1 data.2 data.3 data.4
1       a    1.5    6.5   11.5   16.5
2       b    3.0    8.0   13.0   18.0
3       c    4.5    9.5   14.5   19.5

Or dcast from reshape2 package

library(reshape2)
dcast( melt(z), labels ~ variable, mean)

Using sapply :

 t(sapply(split(z[,-1], z$labels), colMeans))
  data.1 data.2 data.3 data.4
a    1.5    6.5   11.5   16.5
b    3.0    8.0   13.0   18.0
c    4.5    9.5   14.5   19.5
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Great! All do what I was looking for, though aggregate seems like simplest (and the simplest for me to figure out again in the future). Thanks! –  Andrew Sep 12 '12 at 13:40

The output of by is a list so you can use do.call to rbind them and then convert this:

as.data.frame(do.call("rbind",by(z[,2:5],z$labels,colMeans)))
  data.1 data.2 data.3 data.4
a    1.5    6.5   11.5   16.5
b    3.0    8.0   13.0   18.0
c    4.5    9.5   14.5   19.5
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