# Plotting cumulative counts in ggplot2

There are some posts about plotting cumulative densities in ggplot. I'm currently using the accepted answer from Easier way to plot the cumulative frequency distribution in ggplot? for plotting my cumulative counts. But this solution involves pre-calculating the values beforehand.

Here I'm looking for a pure ggplot solution. Let's show what I have so far:

``````x <- data.frame(A=replicate(200,sample(c("a","b","c"),1)),X=rnorm(200))
``````

## ggplot's `stat_ecdf`

I can use ggplot's `stat_ecdf`, but it only plots cumulative densities:

``````ggplot(x,aes(x=X,color=A)) + geom_step(aes(y=..y..),stat="ecdf")
``````

I'd like to do something like the following, but it doesn't work:

``````ggplot(x,aes(x=X,color=A)) + geom_step(aes(y=..y.. * ..count..),stat="ecdf")
``````

## `cumsum` and `stat_bin`

I found an idea about using `cumsum` and `stat_bin`:

``````ggplot(x,aes(x=X,color=A)) + stat_bin(aes(y=cumsum(..count..)),geom="step")
``````

But as you can see, the next color doesn't start at `y=0`, but where the last color ended.

What I'd like to have from best to worst:

1. Ideally a simple fix to the not working

``````ggplot(x,aes(x=X,color=A)) + geom_step(aes(y=..y.. * ..count..),stat="ecdf")
``````
2. A more complicated way to use `stat_ecdf` with counts.

3. Last resort would be to use the `cumsum` approach, since it gives worse (binned) results.
-

This will not solve directly problem with grouping of lines but it will be workaround.

You can add three calls to `stat_bin()` where you subset your data according to `A` levels.

``````ggplot(x,aes(x=X,color=A)) +
stat_bin(data=subset(x,A=="a"),aes(y=cumsum(..count..)),geom="step")+
stat_bin(data=subset(x,A=="b"),aes(y=cumsum(..count..)),geom="step")+
stat_bin(data=subset(x,A=="c"),aes(y=cumsum(..count..)),geom="step")
``````

## UPDATE - solution using geom_step()

Another possibility is to multiply values of `..y..` with number of observations in each level. To get this number of observations at this moment only way I found is to precalculate them before plotting and add them to original data frame. I named this column `len`. Then in `geom_step()` inside `aes()` you should define that you will use variable `len=len` and then define `y` values as `y=..y.. * len`.

``````set.seed(123)
x <- data.frame(A=replicate(200,sample(c("a","b","c"),1)),X=rnorm(200))
library(plyr)
df <- ddply(x,.(A),transform,len=length(X))
ggplot(df,aes(x=X,color=A)) + geom_step(aes(len=len,y=..y.. * len),stat="ecdf")
``````

-
While this works, it doesn't scale. The motivation of this question is to get more maintainable/robust code. – ziggystar Aug 22 '13 at 14:43
@ziggystar Updated my solution with more robust code – Didzis Elferts Aug 25 '13 at 18:42