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Is there a way that this can be improved, or done more simply?

means.by<-function(data,INDEX){
  b<-by(data,INDEX,function(d)apply(d,2,mean))
  return(structure(
    t(matrix(unlist(b),nrow=length(b[[1]]))),
      dimnames=list(names(b),col.names=names(b[[1]]))
  ))
}

The idea is the same as a SAS MEANS BY statement. The function 'means.by' takes a data.frame and an indexing variable and computes the mean over the columns of the data.frame for each set of rows corresponding to the unique values of INDEX and returns a new data frame with with the row names the unique values of INDEX.

I'm sure there must be a better way to do this in R but I couldn't think of anything.

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I saw the example that you posted on your site. plyr is designed exactly for this functionality. I've updated my example to match the output on your site. –  Brandon Bertelsen Oct 5 '10 at 0:14

3 Answers 3

up vote 9 down vote accepted

Does the aggregate function do what you want?

If not, look at the plyr package, it gives several options for taking things apart, doing computations on the pieces, then putting it back together again.

You may also be able to do this using the reshape package.

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yes aggregate was what I was looking for thank you. –  Andrew Redd Oct 4 '10 at 20:10

With plyr

library(plyr)
df <- ddply(x, .(id),function(x) data.frame(
mean=mean(x$var)
))
print(df)

Update:

data<-data.frame(I=as.factor(rep(letters[1:10],each=3)),x=rnorm(30),y=rbinom(30,5,.5))
ddply(data,.(I), function(x) data.frame(x=mean(x$x), y=mean(x$y)))

See, plyr is smart :)

Update 2:

In response to your comment, I believe cast and melt from the reshape package are much simpler for your purpose.

cast(melt(data),I ~ variable, mean)
share|improve this answer
    
Can this scale to a data.frame with 100 columns? Writing data.frame(x=mean(x$X),...) is not practical. I don't mean to be negative or derogatory, but that is the context of my situation, and so am looking for the best solution that can scale up well. –  Andrew Redd Oct 5 '10 at 14:35
    
The answer is yes, you have a whole function to work with inside of ddply. However, I think cast and melt are more efficient for this purpose. I have updated my response. –  Brandon Bertelsen Oct 5 '10 at 15:03

You want tapply or ave, depending on how you want your output:

> Data <- data.frame(grp=sample(letters[1:3],20,TRUE),x=rnorm(20))
> ave(Data$x, Data$grp)
 [1] -0.3258590 -0.5009832 -0.5009832 -0.2136670 -0.3258590 -0.5009832
 [7] -0.3258590 -0.2136670 -0.3258590 -0.2136670 -0.3258590 -0.3258590
[13] -0.3258590 -0.5009832 -0.2136670 -0.5009832 -0.3258590 -0.2136670
[19] -0.5009832 -0.2136670
> tapply(Data$x, Data$grp, mean)
         a          b          c 
-0.5009832 -0.2136670 -0.3258590 

# Example with more than one column:
> Data <- data.frame(grp=sample(letters[1:3],20,TRUE),x=rnorm(20),y=runif(20))
> do.call(rbind,lapply(split(Data[,-1], Data[,1]), mean))
             x         y
a -0.675195494 0.4772696
b  0.270891403 0.5091359
c  0.002756666 0.4053922
share|improve this answer
    
Neither of those will do what I want, and are essentially the same thing. In fact the function 'by' which I am using is simply a wrapper for tapply. The idea is that I give a data.frame apply a function over the columns and get a data.frame or matrix back. –  Andrew Redd Oct 4 '10 at 19:42
    
My bad. My example only has one column. –  Joshua Ulrich Oct 4 '10 at 19:45

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