# How to interpret the different ggplot2 densities?

I am confused about the meaning of the following variants of `geom_density` in ggplot:

EDIT: everytime I write `aes` I mean `aes_string`

Can someone please explain the difference between these four calls: `geom_density(aes(x='myvar'))` versus `geom_density(aes(x='myvar', y='..density..'))` versus `geom_density(aes(x='myvar', y='..scaled..'))` versus `geom_density(aes(x='myvar', y='..count../sum(..count..)'))`?

My understanding is that:

• `geom_density` alone will produce a density whose area under the curve sums to 1
• `geom_density` with `..density..` basically does the same... ?
• the `..count../sum(..count..)` will normalize the peak heights to be more like a normalized histogram, ensuring that all the heights sum to 1
• the `..count..` by itself without the denominator will just multiply each bin by # of items in it
• the `..scaled..` parameter will make it so the maximum value of the density is 1.

I find `..scaled..` very counterintuitive and have never seen it used if my interpretation of it is correct so I'd like to ignore that. I am mainly looking for a clarification of the differences between `geom_density` and a kind of normalized density plot, which I am assuming requires the `...count../...` argument. thanks.

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Unrelated: you really need to stop quoting the variables inside `aes()`. Unless you're using `aes_string` you shouldn't be doing that. –  joran Mar 27 at 16:43
@joran: I am using `aes_string`, sorry, I am using rpy2 so it's always `aes_string` –  user248237dfsf Mar 28 at 0:56

The default aesthetic for `stat_density` is `..density..`, so a call to `geom_density` which uses `stat_density` by default, will plot `y = ..density..` by default.

You can see how the various columns are caculated by looking at the source code

`..scaled..` is defined as

``````densdf\$scaled <- densdf\$y / max(densdf\$y, na.rm = TRUE)
``````

Feel free to ignore it if you wish.

Looking at the source code for stat_bin

The results are computed as such

``````res <- within(results, {
count[is.na(count)] <- 0
density <- count / width / sum(abs(count), na.rm=TRUE)
ncount <- count / max(abs(count), na.rm=TRUE)
ndensity <- density / max(abs(density), na.rm=TRUE)
})
``````

So if you want to compare the results of `geom_histogram` (using the default `stat = 'bin'`), then you can set `y = ..density..` and it will calculate `count / sum(count)` for you (accounting for the width of the bins)

If you wanted to compare `geom_density(aes(y=..scaled..))` with `stat_bin`, then you would use `geom_histogram(aes(y = ..ndensity..))`

You could get them on the same scale by using `..count..` in both as well, however you would need to adjust the `adjust` parameter in `stat_density` to get the appropriately detailed approximation of the curve.

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