Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

This question already has an answer here:

I would like calculate mean values based on two different groupings in my data frame. An example data set is:

> data
     age Year Length
[1,]   3 2004   23.2
[2,]   3 2004   27.6
[3,]   3 2005   25.4
[4,]   3 2005   22.2
[5,]   4 2004   37.6
[6,]   4 2004   31.3
[7,]   4 2005   29.9
[8,]   4 2005   30.1

So far, I have used the ddply function to calculate means within one age grouping. To do this I've created an index to sort all of the three year old data and then found the means of length within Year.

logical3=(mydata$Age ==3)
mydata3= mydata[logical3,]
mean_values_3 <- ddply(mydata3, "Year", transform, grp.mean.values=mean(Length))

I'd like to make the process faster and less clunky by calculating means without sorting by age first.

Is there a way to 1) find mean values based upon more than 1 groups-This grouping does not need to be done sequentially- and 2) how can I get the means to output into a separate data frame and not append to the working one.

Thanks!

share|improve this question

marked as duplicate by Gregor, Sandy Muspratt, Bishan, Chen-Tsu Lin, HaveNoDisplayName May 9 '15 at 5:55

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

3  
Try the formula method of aggregate. See ?aggregate. In your case, something like result <- aggregate(Length ~ age + year, data = data, FUN = mean)` or something close. – Bryan Hanson May 8 '14 at 22:10
up vote 1 down vote accepted

You want to use the aggregate function. Probably something like this:

example_data <- data.frame(age=c(3,3,3,3,4,4,4,4),
                           Year=c(2004,2004,2005,2005,2004,2004,2005,2005),
                           Length=c(23.2,27.6,25.4,22.2,37.6,31.3,29.9,30.1))

aggregate(x=example_data$Length,
          by=list(example_data$age,example_data$Year),
          FUN=mean)

  Group.1 Group.2     x
1       3    2004 25.40
2       4    2004 34.45
3       3    2005 23.80
4       4    2005 30.00
share|improve this answer
2  
Alternatively you can write aggregate this way aggregate(Length ~ age + Year, FUN=mean, data=example_data) to avoid calling example_data and using $ several times. – Jilber May 8 '14 at 22:49

Use the plyr package. It can summarize your data with simple code. The c("Year","age") is how you specify the group variables. You can also include many summary statistical functions with this package. This code will return a separate data frame with the columns of the grouping variables and the group means. NO sorting required.

group.means<-ddply(data,c("Year","age"),summarise,mean=mean(Length))
group.means
share|improve this answer

Not the answer you're looking for? Browse other questions tagged or ask your own question.