# R - Smoothing color and adding a legend to a scatterplot

I have a scatterplot in R. Each `(x,y)` point is colored according to its `z` value. So you can think of each point as `(x,y,z)`, where `(x,y)` determines its position and `z` determines its color along a color gradient. I would like to add two things

1. A legend on the right side showing the color gradient and what `z` values correspond to what colors
2. I would like to smooth all the color using some type of interpolation, I assume. In other words, the entire plotting region (or at least most of it) should become colored so that it looks like a huge heatmap instead of a scatterplot. So, in the example below, there would be lots of orange/yellow around and then some patches of purple throughout. I'm happy to further clarify what I'm trying to explain here, if need be.

Here is the code I have currently, and the image it makes.

``````x <- seq(1,150)
y <- runif(150)
z <- c(rnorm(mean=1,100),rnorm(mean=20,50))
colorFunction <- colorRamp(rainbow(100))
zScaled <- (z - min(z)) / (max(z) - min(z))
zMatrix <- colorFunction(zScaled)
zColors <- rgb(zMatrix[,1], zMatrix[,2], zMatrix[,3], maxColorValue=255)
df <- data.frame(x,y)
x <- densCols(x,y, colramp=colorRampPalette(c("black", "white")))
df\$dens <- col2rgb(x)[1,] + 1L
plot(y~x, data=df[order(df\$dens),],pch=20, col=zColors, cex=1)
``````

-

Here are some solutions using the `ggplot2` package.

``````# Load library
library(ggplot2)

# Recreate the scatterplot from the example with default colours
ggplot(df) +
geom_point(aes(x=x, y=y, col=dens))

# Recreate the scatterplot with a custom set of colours. I use rainbow(100)
ggplot(df) +
geom_point(aes(x=x, y=y, col=dens)) +

# A 2d density plot, using default colours
ggplot(df) +
stat_density2d(aes(x=x, y=y, z=dens, fill = ..level..), geom="polygon") +
ylim(-0.2, 1.2) + xlim(-30, 180) # I had to twiddle with the ranges to get a nicer plot

# A better density plot, in my opinion. Tiles across your range of data
ggplot(df) +
stat_density2d(aes(x=x, y=y, z=dens, fill = ..density..), geom="tile",
contour = FALSE)

# Using custom colours. I use rainbow(100) again.
ggplot(df) +
stat_density2d(aes(x=x, y=y, z=dens, fill = ..density..), geom="tile",
contour = FALSE) +

# You can also plot the points on top, if you want
ggplot(df) +
stat_density2d(aes(x=x, y=y, z=dens, fill = ..density..), geom="tile",
contour = FALSE) +
geom_point(aes(x=x, y=y, col=dens)) +
scale_colour_continuous(guide=FALSE) # This removes the extra legend
``````

I attach the plots as well:

-
Oops, ignore the "smoothed" plots. Those were not generated with the `z` values given in the data set, but by the proximity of the (x,y) values. –  ialm Nov 20 '13 at 1:24
These are beautiful. Thanks for your answer. Would really like something that doesn't use ggplot, because I'm not familiar with it. But these are so nice that I may just take a few days to learn ggplot. –  StanLe Nov 20 '13 at 1:26

Also, using ggplot2, you can use color and size together, as in:

``````ggplot(df, aes(x=x, y=y, size=dens, color=dens)) + geom_point() +
scale_size_continuous(range=c(1,15), guide="none")
``````

which might make it a little clearer.

Notes:

1. The expression `rev(rainbow(100))` reverses the rainbow color scale, so that red goes with the larger values of `dens`.

2. Unfortunately, you cannot combine a continuous legend (color) and a discrete legend (size), so you would normally get two legends. The expression `guide="none"` hides the size legend.

Here's the plot:

-