# Scatterplot with too many points

I am trying to plot two variables where N=700K. The problem is that there is too much overlap, so that the plot becomes mostly a solid block of black. Is there any way of having a grayscale "cloud" where the darkness of the plot is a function of the number of points in an region? In other words, instead of showing individual points, I want the plot to be a "cloud", with the more the number of points in a region, the darker that region.

One way to deal with this is with alpha blending, which makes each point slightly transparent. So regions appear darker that have more point plotted on them.

This is easy to do in `ggplot2`:

``````df <- data.frame(x = rnorm(5000),y=rnorm(5000))
ggplot(df,aes(x=x,y=y)) + geom_point(alpha = 0.3)
`````` Another convenient way to deal with this is (and probably more appropriate for the number of points you have) is hexagonal binning:

``````ggplot(df,aes(x=x,y=y)) + stat_binhex()
`````` And there is also regular old rectangular binning (image omitted), which is more like your traditional heatmap:

``````ggplot(df,aes(x=x,y=y)) + geom_bin2d()
``````
• How can i change the colours? I am now getting blue to black scale, whereas i would like to get reg, green blue scale. – user1007742 Aug 12 '14 at 13:44
• @user1007742 Use `scale_fill_gradient()` and specify your own low and high colors, or use `scale_fill_brewer()` and choose from one of the sequential palettes. – joran Aug 12 '14 at 14:04
• @joran thanks, that is working now. How about changing the the type/shape of the points? I get either hexagon or square. I just want simple dots. When i use geom_point(), it gives me error. – user1007742 Aug 12 '14 at 14:09
• @user1007742 Well, it's called "hexagonal binning" for a reason! ;) It isn't plotting "points" it is dividing the entire region into hexagonal (or rectangular) bins and then simply coloring the bins based upon how many points are in that bin. So the short answer is "you can't". If you want different shapes, you have to use `geom_point()` and plot each individual point. – joran Aug 12 '14 at 14:18
• What if I have 3D data? – skan Feb 16 '16 at 15:03

You can also have a look at the `ggsubplot` package. This package implements features which were presented by Hadley Wickham back in 2011 (http://blog.revolutionanalytics.com/2011/10/ggplot2-for-big-data.html).

(In the following, I include the "points"-layer for illustration purposes.)

``````library(ggplot2)
library(ggsubplot)

# Make up some data
set.seed(955)
dat <- data.frame(cond = rep(c("A", "B"), each=5000),
xvar = c(rep(1:20,250) + rnorm(5000,sd=5),rep(16:35,250) + rnorm(5000,sd=5)),
yvar = c(rep(1:20,250) + rnorm(5000,sd=5),rep(16:35,250) + rnorm(5000,sd=5)))

# Scatterplot with subplots (simple)
ggplot(dat, aes(x=xvar, y=yvar)) +
geom_point(shape=1) +
geom_subplot2d(aes(xvar, yvar,
subplot = geom_bar(aes(rep("dummy", length(xvar)), ..count..))), bins = c(15,15), ref = NULL, width = rel(0.8), ply.aes = FALSE)
`````` However, this features rocks if you have a third variable to control for.

``````# Scatterplot with subplots (including a third variable)

ggplot(dat, aes(x=xvar, y=yvar)) +
geom_point(shape=1, aes(color = factor(cond))) +
geom_subplot2d(aes(xvar, yvar,
subplot = geom_bar(aes(cond, ..count.., fill = cond))),
bins = c(15,15), ref = NULL, width = rel(0.8), ply.aes = FALSE)
`````` Or another approach would be to use `smoothScatter()`:

``````smoothScatter(dat[2:3])
`````` • that second plot is great! – Ricardo Saporta May 1 '13 at 16:42
• What if I have 3D data? – skan Feb 16 '16 at 15:03
• @ skan: You can open a new question for that. – majom Feb 16 '16 at 19:41
• unfortunately the package ggsubplot is not maintaned anymore and removed from cran repo...do you know of an alternative package which could be used to generate plots like the first two above? – dieHellste May 2 '19 at 9:28
• If you use an old version of R & ggplot2, you should be able to get it working – majom May 3 '19 at 12:40

An overview of several good options in `ggplot2`:

``````library(ggplot2)
x <- rnorm(n = 10000)
y <- rnorm(n = 10000, sd=2) + x
df <- data.frame(x, y)
``````

### Option A: transparent points

``````o1 <- ggplot(df, aes(x, y)) +
geom_point(alpha = 0.05)
``````

### Option B: add density contours

``````o2 <- ggplot(df, aes(x, y)) +
geom_point(alpha = 0.05) +
geom_density_2d()
``````

### Option C: add filled density contours

``````o3 <- ggplot(df, aes(x, y)) +
stat_density_2d(aes(fill = stat(level)), geom = 'polygon') +
scale_fill_viridis_c(name = "density") +
geom_point(shape = '.')
``````

### Option D: density heatmap

``````o4 <- ggplot(df, aes(x, y)) +
stat_density_2d(aes(fill = stat(density)), geom = 'raster', contour = FALSE) +
scale_fill_viridis_c() +
coord_cartesian(expand = FALSE) +
geom_point(shape = '.', col = 'white')
``````

### Option E: hexbins

``````o5 <- ggplot(df, aes(x, y)) +
geom_hex() +
scale_fill_viridis_c() +
geom_point(shape = '.', col = 'white')
``````

### Option F: rugs

``````o6 <- ggplot(df, aes(x, y)) +
geom_point(alpha = 0.1) +
geom_rug(alpha = 0.01)
``````

Combine in one figure:

``````cowplot::plot_grid(
o1, o2, o3, o4, o5, o6,
ncol = 2, labels = 'AUTO', align = 'v', axis = 'lr'
)
`````` • This is a very nicely laid-out answer that I think deserves a bit more up-votes. – Lalochezia Mar 26 '18 at 13:02
• Gives me an error Error in scale_fill_viridis_c() : could not find function "scale_fill_viridis_c" – JustGettinStarted Sep 16 '18 at 17:17
• updated ggplot2, re-installed ggplot2 and reloaded ggplot2. Didnt fix the error. Separately installed 'viridis' package and that let me use 'scale_fill_viridis' function but not 'scale_fill_viridis_c' function which still gives same error – JustGettinStarted Sep 16 '18 at 17:24
• oh i believe you. No issues there. Just trying to get to the bottom of the error. – JustGettinStarted Sep 16 '18 at 17:38

Alpha blending is easy to do with base graphics as well.

``````df <- data.frame(x = rnorm(5000),y=rnorm(5000))
with(df, plot(x, y, col="#00000033"))
``````

The first six numbers after the `#` are the color in RGB hex and the last two are the opacity, again in hex, so 33 ~ 3/16th opaque. • Just to add a bit of context, "#000000" is the color black and the "33" added to the end of the color is the degree of opacity---here, 33%. – Charlie Oct 11 '11 at 16:25
• Thanks for the added explanation. – Aaron left Stack Overflow Oct 11 '11 at 16:48
• Makes perfect sense. Thanks, both Aaron and Charlie. – user702432 Oct 12 '11 at 3:58
• Minor note; the numbers are in hex so 33 is actually 3/16th opaque. – Aaron left Stack Overflow Dec 13 '11 at 14:50

You can also use density contour lines (`ggplot2`):

``````df <- data.frame(x = rnorm(15000),y=rnorm(15000))
ggplot(df,aes(x=x,y=y)) + geom_point() + geom_density2d()
`````` Or combine density contours with alpha blending:

``````ggplot(df,aes(x=x,y=y)) +
geom_point(colour="blue", alpha=0.2) +
geom_density2d(colour="black")
`````` You may find useful the `hexbin` package. From the help page of `hexbinplot`:

``````library(hexbin)
mixdata <- data.frame(x = c(rnorm(5000),rnorm(5000,4,1.5)),
y = c(rnorm(5000),rnorm(5000,2,3)),
a = gl(2, 5000))
hexbinplot(y ~ x | a, mixdata)
`````` • +1 hexbin is my preferred solution - it can take a large # of points and then safely create a plot. I'm not sure that the others won't try to produce a plot, but simply shade things differently ex post. – Iterator Oct 15 '11 at 16:59
• Anything like hexbin for 3D data? – skan Feb 16 '16 at 15:04

`geom_pointdenisty` from the `ggpointdensity` package (recently developed by Lukas Kremer and Simon Anders (2019)) allows you visualize density and individual data points at the same time:

``````library(ggplot2)
# install.packages("ggpointdensity")
library(ggpointdensity)

df <- data.frame(x = rnorm(5000), y = rnorm(5000))
ggplot(df, aes(x=x, y=y)) + geom_pointdensity() + scale_color_viridis_c()
`````` My favorite method for plotting this type of data is the one described in this question - a scatter-density plot. The idea is to do a scatter-plot but to colour the points by their density (roughly speaking, the amount of overlap in that area).

It simultaneously:

• clearly shows the location of outliers, and
• reveals any structure in the dense area of the plot.

Here is the result from the top answer to the linked question: • This is my favorite way too. See my answer for how to achieve this in `R`. – jan-glx Oct 23 '19 at 13:29