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I'm plotting a boxplot of y for the interactions between two variables x1 and x2. The problem is that for levels where there is no data, boxplot still shows blank space for the boxplot.

How can I easily avoid the blank space? In reality I have many more than two factor levels. Also, I would like to avoid ggplot2-based solutions.


> set.seed(0)
> t <- data.frame(y =rnorm(60),
                  x1 = rep(c("a","a","b"), each=20),
                  x2 = rep(c("c","d","d"), each=20))
> boxplot(y~x1+x2, t)
> points(aggregate(y~x1+x2, t, mean)$y, col="red")

The points function to plot the means does not know about the missing interaction b.c, so the points don't correspond to groups:

enter image description here

I could work it out from the output of boxplot(y~x1+x2, t, plot=F), but I don't know how to easily plot the modified object.

> b <- boxplot(y~x1+x2, t, plot=F)
> i <- complete.cases(t(b$stats))
> b$stats <- b$stats[,i]
> b$n <- b$n[i]
> b$conf <- b$conf[,i]
> b$names <- b$names[i]
share|improve this question
bxp(b) will let you plot the modified results –  hrbrmstr Apr 13 '14 at 18:14
@hrbrmstr bxp made the trick as well. Cheers! –  Julián Urbano Apr 13 '14 at 18:56

1 Answer 1

up vote 3 down vote accepted

You can create one variable containing the interaction with interaction. Then you can drop the unused levels with droplevels:

boxplot(y ~ droplevels(interaction(x1, x2)), t)

points(aggregate(y ~ droplevels(interaction(x1, x2)), t, mean)$y, col="red")

enter image description here

share|improve this answer
droplevels, that's my new function for today :-) –  Julián Urbano Apr 13 '14 at 19:02

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