Is there a general way to draw densities (violin plots) or histograms showing the distribution of `x`

along a smooth `(x,y)`

curve? I use this approach to show the marginal distribution of `x`

when there are multiple groups (e.g., different curves on one panel, delineated by differing colors).

Here is an example using the `Hmisc`

package's `plsmo`

function to get stratified loess curves and spike histograms showing the `sex`

-specific data density for `age`

.

```
require(Hmisc)
set.seed(1)
age <- rnorm(500, 50, 15)
y <- sample(0:1, 500, TRUE)
sex <- sample(c('female','male'), 500, TRUE)
plsmo(age, y, group=sex, col=1:2,
datadensity=TRUE, scat1d.opts=list(nhistSpike=20))
```

`densityplot(~age, groups=sex, data=dat)`

for which the ggplot2 counterpart would be:`p <- ggplot( data=dat, aes( x=y, y=age, group=sex))+geom_violin(); print(p)`

`plsmo`

is estimating the relationship between x and y using`lowess()`

then computing elements of a high-resolution histogram for the distribution of`x`

condition on the grouping variable and projecting the histogram onto the`lowess`

curve(s).`plsmo`

to use use`ggplot`

.`sat_smooth()`

is already doing the loess part, All you left is to add the histogram just like you did in`plsmo`

function`ggplot()`

- see github.com/harrelfe/rms/blob/master/R/ggplot.Predict.s. But this function has to be provided with redundant information already known to the`ggplot`

object, and the function takes the already-smoothed data instead of the raw data. I've also created a new`geom`

--`geom_plsmo`

-- to use the exceptionally fast`lowess()`

but`geom_plsmo`

does not add the histogram to the curves.3more comments