# (ggplot) in stat_density, aes sometimes does not map variables from default dataset

Trying to understand how ggplot mapping works…

Consider data table dt with two columns:

``````group:  data grouping variable [a, b, … e]
values: the data [here, N(x,1) where x depends on group]
``````

The following generates a sample dataset.

``````library(data.table)
set.seed(333)
dt  <- data.table(group=rep(letters[1:5],each=20))
dt[,values:=rnorm(100,mean=as.numeric(factor(group)))]
``````

The following generates density plots for each group scaled to (0,1).

``````ggp <- ggplot(dt)      # establish dt as the default dataset
ggp + stat_density(aes(x=values, color=group, y=..scaled..),
geom="line", position="identity")
``````

The following generates density plots with scale changed from (0,1) to (-25,+25).

``````ggp + stat_density(aes(x=values, color=group, y=-25+50*..scaled..),
geom="line", position="identity")
``````

But the following generates and error:

``````ggp + stat_density(aes(x=values, color=group, y=min(values)+diff(range(values))*..scaled..),
geom="line", position="identity")
``````

My question is: why does aes correctly map “values” to dt in x=values, but not in y=… ?

NB: The reason I am trying to do this is to put density plots in the diagonal facets in a scatterplot matrix. And yes, I know there are about 5 different ways to generate scatterplot matrices in ggplot.

Thanks in advance to anyone who can help.

-

It seems that `stat_density()` can only use values of `x` and `y` for calculation. So if you need scale data by range of `values` variable then you can write `x` instead of `values` because `values` are already mapped to `x`.
``````ggplot(dt)+stat_density(aes(x=values, color=group, y=min(x)+diff(range(x))*..scaled..),