# Plot probability with ggplot2 (not density)

I'd like to plot data such that on y axis there would be probability (in range [0,1]) and on x-axis I have the data values. The data is contiguous (also in range [0,1]), thus I'd like to use some kernel density estimation function and normalize it such that the y-value at some point x would mean the probability of seeing value x in input data.

a) Is it reasonable at all? I understand that I cannot have probability of seeing values I do not have in the data, but I just would like to interpolate between points I have using a kernel density estimation function and normalize it afterwards.

b) Are there any built-in options in ggplot I could use, that would override default behavior of geom_density() for example for doing this?

Timo

EDIT: when i said "normalize" before, I actually meant "scale". But I got the answer, so thanks guys for clearing up my mind about this.

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I'm not sure what you mean by plotting probability but "not density" yet you mention wanting to kernel smooth the data. What the kernel does is turn an empirical distribution (i.e. the histogram) into a smoothed density function (i.e. the PDF). I think you have to let go of either the kernel smoother requirement or the desire to not plot density. Although you may be addressing this when you say "normalize it afterward." –  JD Long Feb 17 '11 at 19:02
Thank you for clearing up my mind. I think that just using an histogram is more appropriate in this case then. If I tried to plot probability with smoothing, I guess I would confuse anybody trying to interpret the plots. –  Timo Feb 17 '11 at 20:12

This isn't a ggplot answer, but if you want to bring together the ideas of kernel smoothing and histograms you could do a bootstrapping + smoothing approach. You'll get beat about the head and shoulders by stats folks for doing ugly things like this, so use at your own risk ;)

``````set.seed(1)
randomData <- c(rnorm(100, 5, 3), rnorm(100, 20, 3) )
hist(randomData, freq=FALSE)
lines(density(randomData), col="red")
``````

The density function has a reasonably smart bandwidth calculator which you can borrow from:

``````bw <- density(randomData)\$bw
resample <- sample( randomData, 10000, replace=TRUE)
``````

Then use the bandwidth calc as the SD to make some random noise

``````noise <- rnorm(10000, 0, bw)
hist(resample + noise, freq=FALSE)
lines(density(randomData), col="red")
``````

Hey look! A kernel smoothed histogram!

I know this long response is not really an answer to your question, but maybe it will provide some creative ideas on how to abuse your data.

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Awesome! That's a very neat hack you used to achieve this! Thanks for the time and effort for sharing it. I certainly try it out more indepth tomorrow. In the meantime I take your cautions about getting beat up by stats folks seriously :) –  Timo Feb 17 '11 at 21:49

You can control the behaviour of density / kernel estimation in ggplot by calling stat_density() rather than geom_density().

See the on-line user manual: http://had.co.nz/ggplot2/stat_density.html You can specify any of the kernel estimation functions that are supported by by stats::density()

``````library(ggplot2)
df <- data.frame(x = rnorm(1000))
ggplot(df, aes(x=x)) + stat_density(kernel="biweight")
``````

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Thanks, although my main problem was how to scale the ..density.. such afterwards that it would correspond to probability that value at position x happens. But as @JDLong commented above, this approach does not make much sense in most cases. –  Timo Feb 17 '11 at 20:19

Just making up a quick merge of @JD Long's and @yesterday's answers:

``````ggplot(df, aes(x=x)) +
geom_histogram(aes(y = ..density..), binwidth=density(df\$x)\$bw) +
geom_density(fill="red", alpha = 0.2) +
theme_bw() +
xlab('') +
ylab('')
``````

This way the binwidth for `ggplot2` was calculated by the `density` function, and also the latter is drawn on the top of a histogram with a nice transparency. But you should definitely look into stat_densitiy as @yesterday suggested for further customization.

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