I just came by the following plot:

alt text

And wondered how can it be done in R? (or other softwares)

Update 10.03.11: Thank you everyone who participated in answering this question - you gave wonderful solutions! I've compiled all the solution presented here (as well as some others I've came by online) in a post on my blog.

  • 5
    This is maybe a stupid comment, but what does the position of dots suppose to mean?
    – mbq
    Sep 1, 2010 at 14:52
  • 1
    It wasn't a stupid comment because the answer to how to plot that is plot(x,y). I'm sure mbq was trying to get at the idea that what you're trying to do may be something other than a simple scatter plot.
    – John
    Sep 1, 2010 at 16:41
  • 1
    It's also something other than a simple violin plot since that's supposed to be symmetric around the vertical axis.
    – John
    Sep 1, 2010 at 17:01
  • 2
    @Tal, @John -- I know how standard vioplot works, but I can't figure out how those points were obtained (and as I see not only me, while it is crucial for producing good answer) -- some kind of stem? Or maybe someone just thought that filling vioplot with distorted polka dots is a good idea?
    – mbq
    Sep 1, 2010 at 19:51
  • 2
    OK, I found what the software was. It's a "column scatter plot" made in GraphPad Prism. See for instance graphpad.com/help/prism5/… . I found some reference to those also here: originlab.com/www/products/…
    – nico
    Sep 2, 2010 at 16:38

5 Answers 5


Make.Funny.Plot does more or less what I think it should do. To be adapted according to your own needs, and might be optimized a bit, but this should be a nice start.

Make.Funny.Plot <- function(x){
    unique.vals <- length(unique(x))
    N <- length(x)
    N.val <- min(N/20,unique.vals)

      x <- ave(x,cut(x,N.val),FUN=min)
      x <- signif(x,4)
    # construct the outline of the plot
    outline <- as.vector(table(x))
    outline <- outline/max(outline)

    # determine some correction to make the V shape,
    # based on the range
    y.corr <- diff(range(x))*0.05

    # Get the unique values
    yval <- sort(unique(x))


    for(i in 1:length(yval)){
        n <- sum(x==yval[i])
        x.plot <- seq(-outline[i],outline[i],length=n)
        y.plot <- yval[i]+abs(x.plot)*y.corr

N <- 500
x <- rpois(N,4)+abs(rnorm(N))

EDIT : corrected so it always works.

  • Found one problem with it: If cut returns an empty level, you get an error.
    – Joris Meys
    Sep 2, 2010 at 13:03
  • +1 Good job! Still I think something is missing -- that original plot is asymmetric.
    – mbq
    Sep 2, 2010 at 13:17
  • @mbq? Something missing? I just optimized that original plot. It's not a bug, it's a feature! ;-)
    – Joris Meys
    Sep 2, 2010 at 13:20
  • 1
    @Joris Maybe try using cut2 from Hmisc instead of cut?
    – chl
    Sep 2, 2010 at 13:35
  • @chl If I don't have to load other libraries, I rather avoid it. I just used the wrong number in the for-loop, that has been corrected now.
    – Joris Meys
    Sep 2, 2010 at 13:54

I recently came upon the beeswarm package, that bears some similarity.

The bee swarm plot is a one-dimensional scatter plot like "stripchart", but with closely-packed, non-overlapping points.

Here's an example:

  beeswarm(time_survival ~ event_survival, data = breast,
    method = 'smile',
    pch = 16, pwcol = as.numeric(ER),
    xlab = '', ylab = 'Follow-up time (months)',
    labels = c('Censored', 'Metastasis'))
  legend('topright', legend = levels(breast$ER),
    title = 'ER', pch = 16, col = 1:2)

(source: eklund at www.cbs.dtu.dk)


I have come up with the code similar to Joris, still I think this is more than a stem plot; here I mean that they y value in each series is a absolute value of a distance to the in-bin mean, and x value is more about whether the value is lower or higher than mean.
Example code (sometimes throws warnings but works):


#Cutting in bins

#Calculate the means over bins
sapply(levels(p),function(i) mean(x[p==i]))->meansl;

#Calculate the mins over bins
sapply(levels(p),function(i) min(x[p==i]))->minl;

#Each dot is one value.
#X is an order of a value inside bin, moved so that the values lower than bin mean go below 0
for(e in levels(p)) X[p==e]<-(1:sum(p==e))-1-sum((x-means)[p==e]<0);
#Y is a bin minum + absolute value of a difference between value and its bin mean
  • Thank you mbq, I was wondering who's answer to pick. I choose Joris, simply since he wrapped it up. Either way - both answers are great and won my +1 vote. Cheers - Tal
    – Tal Galili
    Sep 3, 2010 at 11:24

Try the vioplot package:


(with awful default color ;-)

There is also wvioplot() in the wvioplot package, for weighted violin plot, and beanplot, which combines violin and rug plots. They are also available through the lattice package, see ?panel.violin.

  • That doesn't produce a scatterplot, does it?
    – Shane
    Sep 1, 2010 at 13:58
  • @Shane no, it's just a variation of the boxplot with an added kernel density estimate
    – chl
    Sep 1, 2010 at 14:13
  • 1
    @Shane @Tal BTW, Box-percentile plot are better (bpplot in the Hmisc package).
    – chl
    Sep 1, 2010 at 14:16
  • Hi chl. Thank you for the answer. I remember coming by that function, but as Shane said - it doesn't produce the scatter plot element. I'll +1 for the good intentions - but will keep this question open :). Cheers, Tal
    – Tal Galili
    Sep 1, 2010 at 14:16
  • 1
    @Tal Well, I'll try to figure out myself how to make it in R; I think it would not be so difficult using stripchart() or a jittering procedure.
    – chl
    Sep 1, 2010 at 14:46

Since this hasn't been mentioned yet, there is also ggbeeswarm as a relatively new R package based on ggplot2.

Which adds another geom to ggplot to be used instead of geom_jitter or the like.

In particular geom_quasirandom (see second example below) produces really good results and I have in fact adapted it as default plot.

Noteworthy is also the package vipor (VIolin POints in R) which produces plots using the standard R graphics and is in fact also used by ggbeeswarm behind the scenes.


ggplot(iris,aes(Species, Sepal.Length)) + geom_beeswarm()

ggplot(iris,aes(Species, Sepal.Length)) + geom_quasirandom()

#compare to jitter
ggplot(iris,aes(Species, Sepal.Length)) + geom_jitter()

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