geom_density both expect an x aesthetic, where each will look at the incidence of a variable across its domain.
I have a function that outputs both the domain and incidences for some distribution (i.e. does not present the events in a countable form, rather in an already-counted form).
The actual value set is coming from an external library, so will set up an example here. I would like to plot this distribution:
data <- data.frame(depth=seq(0,20), incidence=seq(0,20)^1.5) ggplot() + geom_density (aes(x=depth, y=incidence), data=data, fill='lightblue')
The above does not work. Of course I can use x=depth or x=incidence on its own and generate a plot, however, neither would be correct, as the x variable is considered to be the variable we are counting events over.
It occurs to me that could take the data frame and generate rows for each depth, where the # of rows corresponds to the incidence #. This becomes more complicated with fractional incidence, but could scale.
Question: is there a way to generate a density plot in ggplot given incidence rather than events? If not, I guess could use something like:
c (apply (data, 1, function(r) rep(r, r)), recursive=TRUE)
to generate a discrete approximation of events. A direct way within ggplot would be better.