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.

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))

enter image description here

  • 3
    How are you specifying the smooth curve? It would help to have a reproducible example to see what your input looks like.
    – MrFlick
    Dec 25, 2014 at 20:44
  • I'm having trouble understanding what plsmo is estimating and plotting. I would have imagined that you were describing a 1-d density: 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)
    – IRTFM
    Dec 26, 2014 at 1:06
  • 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). Dec 26, 2014 at 3:17
  • I doubt you will able to achieve anything even close to this without creating your own custom function. I guess you could just modify your own 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 Dec 26, 2014 at 9:48
  • 3
    Yes I have a new function that creates a layer to add to 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. Dec 26, 2014 at 12:52

1 Answer 1


I believe you can do this with the ggsubplot package. See the article and the package. I believe the code will look something like:

qplot(age, y, data = dataset, color = sex) + 
    geom_subplot(aes(x, y, data = distributions, group = sex, 
        subplot = geom_violin(aes(x, y, data = distributions))))

But I don't think your example provides enough detail in your example to create the violins at points along the curves. Unless I misunderstood your question.

  • Thanks for the pointer to the excellent article which I read with interest. I haven't yet been able to figure out if subplots will allow me to coordinate point-by-point with the main layer, which is need to add things like spike histograms along existing plotted curves. I note that the article failed to reference Daniel Carr's work or thermometer plots. Feb 9, 2015 at 17:10

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