# How do I create a continuous density heatmap of 2D scatter data in R?

I can generate a density plot of 1D data with:

``````qplot(mydatapoints, geom='density')
``````

I've also seen plenty of examples of heatmap grids, but these are more akin to histograms for 1D data in that data goes into discrete buckets instead of showing a smooth curve.

Can I plot something similar to the 1D density but for 2D data, with (say) something like hue/saturation/lightness to represent the density?

-
geom_tile, maybe? – baptiste Aug 16 '11 at 3:33
Or `stat_density2d`? Like this? – joran Aug 16 '11 at 3:57
`smoothScatter()`? stackoverflow.com/questions/2076370/… – Ari B. Friedman Aug 16 '11 at 6:31
Another option is `hexbin` (this is the name of both a package and a function) – nullglob Aug 16 '11 at 7:01
`kde2d` from the MASS package plus `filled.contour` ? – Ben Bolker Aug 16 '11 at 14:52

I think you want a 2D density estimate, which is implemented by `kde2d` in the `MASS` package.

``````df <- data.frame(x=rnorm(10000),y=rnorm(10000))
``````

via `MASS` and base R:

``````k <- with(df,MASS:::kde2d(x,y))
filled.contour(k)
``````

via `ggplot` (`geom_density2d()` calls `kde2d()`)

``````library(ggplot2)
ggplot(df,aes(x=x,y=y))+geom_density2d()
``````

I find `filled.contour` more attractive, but it's a big pain to work with if you want to modify anything because it uses `layout` and takes over the page layout. Building on Brian Diggs's answer, which fills in colours between the contours: here's the equivalent with different alpha levels, with transparent points added for comparison.

``````ggplot(df,aes(x=x,y=y))+
stat_density2d(aes(alpha=..level..), geom="polygon") +
scale_alpha_continuous(limits=c(0,0.2),breaks=seq(0,0.2,by=0.025))+
geom_point(colour="red",alpha=0.02)+
theme_bw()
``````

-
Any ideas if the data is more sparse than this? I'm getting small patches in some places but no coverage in others. – CodeGuy May 12 '14 at 21:30
You might be able to increase the smoothing parameter of the kernel density estimator. – Ben Bolker May 12 '14 at 21:53

Combining two other answers (one pointing to `geom_density2d` and one giving sample data and `scale_colour_gradient`):

``````df <- data.frame(x=rnorm(10000),y=rnorm(10000))
ggplot(df,aes(x=x,y=y))+
stat_density2d(aes(fill=..level..), geom="polygon") +
There's also `scale_colour_gradient()`
``````df <- data.frame(x=rnorm(10000),y=rnorm(10000))