# Scatterplot with marginal histograms in ggplot2

Is there a way of creating scatterplots with marginal histograms just like in the sample below in `ggplot2`? In Matlab it is the `scatterhist()` function and there exist equivalents for R as well. However, I haven't seen it for ggplot2.

I started an attempt by creating the single graphs but don't know how to arrange them properly.

`````` require(ggplot2)
x<-rnorm(300)
y<-rt(300,df=2)
xy<-data.frame(x,y)
xhist <- qplot(x, geom="histogram") + scale_x_continuous(limits=c(min(x),max(x))) + opts(axis.text.x = theme_blank(), axis.title.x=theme_blank(), axis.ticks = theme_blank(), aspect.ratio = 5/16, axis.text.y = theme_blank(), axis.title.y=theme_blank(), background.colour="white")
yhist <- qplot(y, geom="histogram") + coord_flip() + opts(background.fill = "white", background.color ="black")

yhist <- yhist + scale_x_continuous(limits=c(min(x),max(x))) + opts(axis.text.x = theme_blank(), axis.title.x=theme_blank(), axis.ticks = theme_blank(), aspect.ratio = 16/5, axis.text.y = theme_blank(), axis.title.y=theme_blank() )

scatter <- qplot(x,y, data=xy)  + scale_x_continuous(limits=c(min(x),max(x))) + scale_y_continuous(limits=c(min(y),max(y)))
none <- qplot(x,y, data=xy) + geom_blank()
``````

and arranging them with the function posted here. But to make long story short: Is there a way of creating these graphs?

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Just to offer the notion that maybe you shouldn't always use ggplot, see this implementation in base R graphics: addictedtor.free.fr/graphiques/RGraphGallery.php?graph=78 –  IShouldBuyABoat Dec 17 '11 at 14:48
@DWin right thank you - but i think that's pretty much the solution i gave in my question. however, i like the geom_rag() think very much given by you below! –  Seb Dec 17 '11 at 17:02
from a recent blog post that features the same topic: blog.mckuhn.de/2009/09/learning-ggplot2-2d-plot-with.html looks also quite nice :) –  Seb Apr 24 '13 at 6:37
The new website for the Graphics Gallery is: gallery.r-enthusiasts.com –  IShouldBuyABoat Jun 28 '13 at 17:46

The `gridExtra` package should work here. Start by making each of the ggplot objects:

``````hist_top <- ggplot()+geom_histogram(aes(rnorm(100)))
empty <- ggplot()+geom_point(aes(1,1), colour="white")+
opts(axis.ticks=theme_blank(),
panel.background=theme_blank(),
axis.text.x=theme_blank(), axis.text.y=theme_blank(),
axis.title.x=theme_blank(), axis.title.y=theme_blank())

scatter <- ggplot()+geom_point(aes(rnorm(100), rnorm(100)))
hist_right <- ggplot()+geom_histogram(aes(rnorm(100)))+coord_flip()
``````

Then use the grid.arrange function:

``````grid.arrange(hist_top, empty, scatter, hist_right, ncol=2, nrow=2, widths=c(4, 1), heights=c(1, 4))
``````

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1+ for demonstrating the placement, but you should not be re-doing the random sampling if you want the interior scatter to "line up" with the marginal histograms. –  IShouldBuyABoat Dec 17 '11 at 16:35
You're right. They're sampled from the same distribution though, so the marginal histograms should theoretically match the scatter plot. –  oeo4b Dec 17 '11 at 17:03
In "theory" they will be asymptotically "match"; in practice the number of times they will match is infinitesimally small. It's very easy to use the example provided `xy <- data.frame(x=rnorm(300), y=rt(300,df=2) )` and use `data=xy` in the ggplot calls. –  IShouldBuyABoat Dec 17 '11 at 17:10
That's true, but since histograms are meant to demonstrate the distribution of some variable rather than the values themselves, either way would work. –  oeo4b Dec 17 '11 at 17:16
No, they would not, in general. ggplot2 currently outputs a varying panel width that changes depending on the extent of the axis labels etc. Have a look at ggExtra::align.plots to see the kind of hack that is currently required to align axes. –  baptiste Dec 18 '11 at 18:51

This is not a completely responsive answer but it is very simple. It illustrates an alternate method to display marginal densities and also how to use alpha levels for graphical output that supports transparency:

``````scatter <- qplot(x,y, data=xy)  +
scale_x_continuous(limits=c(min(x),max(x))) +
scale_y_continuous(limits=c(min(y),max(y))) +
geom_rug(col=rgb(.5,0,0,alpha=.2))
scatter
``````

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That's an interesting way to show the density. Thanks for adding this answer. :) –  Michelle Dec 17 '11 at 18:54
It should be noted that this method is much more commonplace than putting marginal histograms. In fact, have rug plots is common in published articles where I have never seen a published article with marginal historgrams. –  Xu Wang Dec 17 '11 at 23:26

One addition, just to save some searching time for people doing this after us.

Legends, axis labels, axis texts, ticks make the plots drifted away from each other, so your plot will look ugly and inconsistent.

You can correct this by using some of these theme settings,

``````+theme(legend.position = "none",
axis.title.x = element_blank(),
axis.title.y = element_blank(),
axis.text.x = element_blank(),
axis.text.y = element_blank(),
plot.margin = unit(c(3,-5.5,4,3), "mm"))
``````

and align scales,

``````+scale_x_continuous(breaks = 0:6,
limits = c(0,6),
expand = c(.05,.05))
``````

so the results will look OK:

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Just a very minor variation on DWin's answer, in the general spirit of marginal indicators of distribution.

Edward Tufte has called this use of rug plots a 'dot-dash plot', and has an example in VDQI of using the axis lines to indicate the range of each variable. In my example the axis labels and grid lines also indicate the distribution of the data. The labels are located at the values of Tukey's five number summary (minimum, lower-hinge, median, upper-hinge, maximum), giving a quick impression of the spread of each variable. These five numbers are thus a numerical representation of a boxplot. It's a bit tricky because the unevenly spaced grid-lines suggest that the axes have a non-linear scale (in this example they are linear). Perhaps it would be best to omit grid lines or force them to be in regular locations, and just let the labels show the five number summary.

``````x<-rnorm(300)
y<-rt(300,df=10)
xy<-data.frame(x,y)

require(ggplot2); require(grid)
# make the basic plot object
ggplot(xy, aes(x, y)) +
# set the locations of the x-axis labels as Tukey's five numbers
scale_x_continuous(limit=c(min(x), max(x)),
breaks=round(fivenum(x),1)) +
# ditto for y-axis labels
scale_y_continuous(limit=c(min(y), max(y)),
breaks=round(fivenum(y),1)) +
# specify points
geom_point() +
# specify that we want the rug plot
geom_rug(size=0.1) +
# improve the data/ink ratio
theme_set(theme_minimal(base_size = 18))
``````

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awesome, I gotta read me Tufte! –  elaichi Dec 5 '13 at 16:27