# find what variables changed per value of another variable

Given the following data.frame:

``````t   x   y
---------
1   1   3
1   1   3
1   1   2
2   1   2
2   2   2
``````

I would like output of the form

``````t   cnt cux cuy
---------------
1   3   1   2
2   2   2   1
``````

where cnt is the count of all rows with a particular value t, cux/cuy is the count of all unique rows of x/y

The other constraint is that the answer must work for a variable number of columns.

Thanks.

-
I didn't downvote either, but certainly thought about doing so, because the example cannot be reconciled with the output offered. –  BondedDust Sep 28 '11 at 18:38
@Dwin: fixed; sorry –  hoffmanc Sep 28 '11 at 19:02

What you describe in words and what you show in expected output do not agree. In particular, counting unique values of `y` would be 2 and 1, not 3 and 2 based on your input. Going with the written description:

``````DF <- data.frame(t=c(1,1,1,2,2), x=c(1,1,1,1,2), y=c(3,3,2,2,2))

library("plyr")

ddply(DF, .(t), function(DF) {
data.frame(cnt=length(DF\$t), colwise(function(x) {length(unique(x))})(DF))
})
``````

Or if you want something really functional looking:

``````library("functional")

ddply(DF, .(t), function(DF) {
data.frame(cnt=length(DF\$t), colwise(Compose(unique, length))(DF))
})
``````

Or going completely overboard with the functional paradigm:

``````merge(ddply(DF, .(t), summarise, cnt=length(t)),
ddply(DF, .(t), colwise(Compose(unique, length))))
``````

None of these give the column names you asked for; instead of `cux` it is `x`. However, they can be changed afterward.

``````res <-
merge(ddply(DF, .(t), summarise, cnt=length(t)),
ddply(DF, .(t), colwise(Compose(unique, length))))

names(res)[-(1:2)] <- paste("cu", names(DF)[-1], sep="")
``````

which gives

``````> res
t cnt cux cuy
1 1   3   1   2
2 2   2   2   1
``````
-
awesome! thanks for the explanation. I'll work on better question writing :) –  hoffmanc Sep 28 '11 at 18:56