# Why `cumsum` doesn't work within groups or facets in ggplot?

Borrowing example from Plotting cumulative counts in ggplot2

``````x <- data.frame(A=replicate(200,sample(c("a","b","c"),1)),X=rnorm(200))
ggplot(x,aes(x=X,color=A)) + stat_bin(aes(y=cumsum(..count..)),geom="step")
``````

As you can see, `cumsum` work across groups & facets. I am wondering why it does that? Clearly `..count..` is done within groups, why `cumsum` is not when applied on to `..count..`? Does ggplot internally cat all `..count..` into a vector and then apply `cumsum` to it?

How to correctly resolve it without pre processing, e.g. using `plyr`?

And I don't mind `geom` is not `step`, it can be `line` or even `bar` as long as the graph is a cumulative plot.

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Read `?stat_bin`. It returns a data.frame and you access one of the data.frame columns with `..count..`. –  Roland Oct 15 '13 at 12:43
I've read ?stat_bin.And as often happens in ggplot documentation it says nothing how to get the statistical function applied by groups. The line "See layer" is sprinkled liberally around ggplot2 help pages and what you get at ?layer is laughably brief. –  BondedDust Oct 15 '13 at 13:22
Basically, you can't. Keep in mind that one of the basic design principles of ggplot is that you manipulate your data into the right shape and then call ggplot. –  joran Oct 15 '13 at 14:04

## 1 Answer

Here's how I handle this with one line of code (ddply and mutate):

``````df <- data.frame(x=rnorm(1000),kind=sample(c("a","b","c"),1000,replace=T),
label=sample(1:5,1000,replace=T),attribute=sample(1:2,1000,replace=T))

dfx <- ddply(df,.(kind,label,attribute),mutate,cum=rank(x)/length(x))

ggplot(dfx,aes(x=x))+geom_line(aes(y=cum,color=kind))+facet_grid(label~attribute)
``````
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