# Plot mix of dirac and empirical distributions in R

My data looks a bit like this:

``````myData <- data.frame(dist1=rep(0.5, 1000), dist2=rnorm(1000,0.8,0.01), dist3=rnorm(1000,0.7,0.05))
``````

Note that dist1 consists exclusively of the number 0.5.

Question: How would you plot this data using ggplot in R?

My failed attempts:

If I try geom_density then it doesn't do justice to dist1:

``````ggplot(melt(myData), aes(x=value, colour=variable)) + geom_density()
``````

I know I can tune the kernel width, but as dist1 becomes pointy, dist2 and dist3 start to break up

If I try geom_freqpoly then it automatically selects the bin boundaries and causes the dist1 peak to be to one side of 0.5, confusing the reader that expects it to be bang-on 0.5:

``````ggplot(melt(myData), aes(x=value, colour=variable)) + geom_freqpoly()
``````

I know I can change the bin widths, but not the bin divisions themselves, otherwise I'd make sure there were bin divisions equidistant either side of 0.5.

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I think your big problem with `dist1` is that you're forcing the plot to create a line when in fact you should be plotting points. No matter what you do, unless the distribution (x-axis values) of `dist1` is extremely fine, the line will plot from 0.5 to the next points in the dataset. Try just plotting points, or creating a 2Xn matrix `fakedist1` which has ordered pairs (0.5,0);(0.5,1000),(0.5,0) in it and plot as a plain old line. –  Carl Witthoft Nov 18 '12 at 19:31
Not sure I fully understand the suggestions. For plotting points do you mean like geom_dotplot? Presumably the line suggestion would amount to drawing a line (dist1) on top of the smooth density plots (dists 2 & 3)? –  Pengin Nov 18 '12 at 21:58
``````ggplot(melt(myData), aes(x=value, colour=variable)) +