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Using ggplot2 I'm creating a histogram with a factor on the horizontal axis and another factor for the fill color, using a dodged position. My problem is that the fill factor sometimes takes only one value for a value of the horizontal factor, and with nothing to dodge the bar takes up the full width. Is there a way to make it dodge nothing so that all bar widths are the same? Or equivalently to plot the 0's?

For example

ggplot(data = mtcars, aes(x = factor(carb), fill = factor(gear))) +
geom_histogram(position = "dodge")

enter image description here

This answer has a couple ideas. It was also asked before the new version was released, so maybe something changed? Using facets (also shown here) I don't like for my situation, though I suppose editing the data and using geom_bar could work, but it feels inelegant. Moreover, when I tried facetting anyway

ggplot(mtcars, aes(x = factor(carb), fill = factor(gear))) +
    geom_bar() + facet_grid(~factor(carb))

I get the error "Error in layout_base(data, cols, drop = drop): At least one layer must contain all variables used for facetting"

I suppose I could generate a data frame of counts and then use geom_bar,

mtcounts <- ddply(subset(mtcars, select = c("carb", "gear")),
    .fun = count, .variables = c("carb", "gear"))

filling out the levels that aren't present with 0's. Does anyone know if that would work or if there's a better way?

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I know you don't consider it ideal, but I think pre-calculating the counts and using geom_bar would be my preferred way of doing this. –  joran Apr 14 '12 at 2:15

1 Answer 1

up vote 6 down vote accepted

I'm not sure if this is too late for you, but see the answer to a recent post here That is, I'd take Joran's advice to pre-calculate the counts outside the ggplot call and to use geom_bar. As with the answer to other post, the counts are obtained in two steps: first, a crosstabulation of counts is obtained using dcast; then second, melt the crosstabulation.


dat = dcast(mtcars, factor(carb) ~ factor(gear), fun.aggregate = length)
dat.melt = melt(dat, id.vars = "factor(carb)", measure.vars = c("3", "4", "5"))

(p <- ggplot(dat.melt, aes(x = `factor(carb)`, y =value, fill = variable)) + 
  geom_bar(position = "dodge"))

The chart:

enter image description here

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Care to attach the final result image, too? –  Roman Luštrik Apr 28 '12 at 7:03
I've added the chart, and made a couple of editorial changes to clarify the response. –  Sandy Muspratt Apr 28 '12 at 7:26
Never too late! Thanks for expanding that comment into a complete answer. –  Gregor Apr 28 '12 at 17:01

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