# Summary statistics by two or more factor variables?

This is best illustrated with an example

``````str(mtcars)
mtcars\$gear <- factor(mtcars\$gear, labels=c("three","four","five"))
mtcars\$cyl <- factor(mtcars\$cyl, labels=c("four","six","eight"))
mtcars\$am <- factor(mtcars\$am, labels=c("manual","auto")
str(mtcars)
tapply(mtcars\$mpg, mtcars\$gear, sum)
``````

That gives me the summed mpg per gear. But say I wanted a 3x3 table with gear across the top and cyl down the side, and 9 cells with the bivariate sums in, how would I get that 'smartly'.

I could go.

``````tapply(mtcars\$mpg[mtcars\$cyl=="four"], mtcars\$gear[mtcars\$cyl=="four"], sum)
tapply(mtcars\$mpg[mtcars\$cyl=="six"], mtcars\$gear[mtcars\$cyl=="six"], sum)
tapply(mtcars\$mpg[mtcars\$cyl=="eight"], mtcars\$gear[mtcars\$cyl=="eight"], sum)
``````

This seems cumbersome.

Then how would I bring a 3rd variable in the mix?

This is somewhat in the space I'm thinking about. Summary statistics using ddply

update This gets me there, but it's not pretty.

``````aggregate(mpg ~ am+cyl+gear, mtcars,sum)
``````

Cheers

-

How about this, still using `tapply()`? It's more versatile than you knew!

``````with(mtcars, tapply(mpg, list(cyl, gear), sum))
#       three  four five
# four   21.5 215.4 56.4
# six    39.5  79.0 19.7
# eight 180.6    NA 30.8
``````

Or, if you'd like the printed output to be a bit more interpretable:

``````with(mtcars, tapply(mpg, list("Cylinder#"=cyl, "Gear#"=gear), sum))
``````

If you want to use more than two cross-classifying variables, the idea's exactly the same. The results will then be returned in a 3-or-more-dimensional array:

``````A <- with(mtcars, tapply(mpg, list(cyl, gear, carb), sum))

dim(A)
# [1] 3 3 6
lapply(1:6, function(i) A[,,i]) # To convert results to a list of matrices

# But eventually, the curse of dimensionality will begin to kick in...
table(is.na(A))
# FALSE  TRUE
#    12    42
``````
-
This would seem to be the obvious answer, considering that tapply with one factor was the starting point. `ftable` might also be of interest. –  BondedDust Apr 19 '12 at 2:15

I like Josh's answer for this, but `reshape2` can also provide a nice framework for these type of problems:

``````library(reshape2)

#use subset to only grab the variables of interest...
mtcars.m <- melt(subset(mtcars, select = c("mpg", "gear", "cyl")), measure.vars="mpg")
#cast into appropriate format
dcast(mtcars.m, cyl ~ gear, fun.aggregate=sum, value.var="value")

cyl three  four five
1  four  21.5 215.4 56.4
2   six  39.5  79.0 19.7
3 eight 180.6   0.0 30.8
``````
-
I edited to put quotes around the `"mpg"` passed to `measure.vars`, b/c the code wasn't otherwise working for me. Does that look right to you too? Also, is there any easy way to get this to return `NA` rather than `0` in the middle of the bottom row? –  Josh O'Brien Apr 19 '12 at 2:15
@JoshO'Brien - very strange, I have no idea why that worked previously without quotes around mpg...thanks for that. Also, the `fill` parameter to `dcast` should allow NA's, but I'm getting a strange error...setting `fill = Inf` or any other numeric value works though. This is not what I'd expect from the function...will dig further –  Chase Apr 19 '12 at 3:05