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I've seen many questions (often linked to Order Bars in ggplot2 bar graph) about how to (re)order categories in a bar plot.

What I am after is just a touch different, but I haven't found a good way to do it: I have a multi-faceted bar plot, and I want to order the x axis for each facet independently, according to another variable (in my case, that variable is just the y value itself, i.e. I just want the bars to go in increasing length in each facet).

Simple example, following e.g. Order Bars in ggplot2 bar graph:

df <- data.frame(name=c('foo','bar','foo','bar'),period=c('old','old','recent','recent'),val=c(1.23,2.17,4.15,3.65))
p = ggplot(data = df, aes(x = reorder(name, val), y = val))
p = p + geom_bar(stat='identity')
p = p + facet_grid(~period)

What we get is the following: enter image description here

Whereas what I want is: enter image description here

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Oh my goodness! Are you writing a followup to How to Lie with Statistics? – John Sep 4 '13 at 22:14
The only way to do this would be to make separate plots and use grid.arrange from the gridExtra package. But I agree that it generally doesn't result in a very nice plot. (You'll find that a lot in ggplot; if something is really hard to do, it's probably because it's trying to keep you from doing something stupid. Not always, but a lot...) – joran Sep 4 '13 at 22:23
Yes, thanks, not super useful, but thanks anyway. In the context where we are using it, it is an important plot and the ordering of the categories is very deliberate. Here I boiled this down to a minimal example, but in our application, we sort a dozen or so signals in function of their realized additivity, and having the bars go all over the place in some facet would be unacceptable. – Pierre D Sep 4 '13 at 22:40
I understand the motivation, it's just that most people misunderstand the reason why facets are designed the way they are. They are explicitly intended for when each panel shares the same scale. There are instances where you want several plots that do not share a common scale, but then faceting isn't the right tool. You're fundamentally talking about multiple individual plots, hence grid.arrange. But most people just assume that faceting = arranging multiple plots that are generally similar. – joran Sep 4 '13 at 22:45
well, honestly, the categorical order of discrete_scale (e.g. alphabetical, or some overall order by mean value of y) is somewhat arbitrary anyway, so the notion that several facets must share the same categorical scale is a bit artificial to me. In my mind it makes more sense to decide that x, while showing categories, is ranked by some metric, and let the labels fall where they may in each facet. In that sense, the common scale that is shared across all facets is that numerical metric. It is a bit like plotting text labels in a scatterplot. – Pierre D Sep 5 '13 at 0:22
up vote 11 down vote accepted

Ok, so all philosophizing aside, and in case anyone is interested, here is an ugly hack to do it. The idea is to use different labels (think paste(period, name) except I replace the period into 0-space, 1-space, etc. so that they don't show). I need this plot and I don't want to arrange grobs and the like, because I might want to share a common legend, etc.

The atomic example given earlier becomes:

df <- data.frame(name=c('foo','bar','foo','bar'),
df$n = as.numeric(factor(df$period))
df = ddply(df,.(period,name),transform, x=paste(c(rep(' ',n-1), name), collapse=''))
df$x = factor(df$x, levels=df[order(df$val), 'x'])
p = ggplot(data = df, aes(x = x, y = val))
p = p + geom_bar(stat='identity')
p = p + facet_grid(~period, scale='free_x')

enter image description here Another example, still a bit silly but closer to my actual use case, would be:

df <- ddply(mpg, .(year, manufacturer), summarize, mixmpg = mean(cty+hwy))
df$manufacturer = as.character(df$manufacturer)
df$n = as.numeric(factor(df$year))
df = ddply(df, .(year,manufacturer), transform,
     x=paste(c(rep(' ',n-1), manufacturer), collapse=''))
df$x = factor(df$x, levels=df[order(df$mixmpg), 'x'])
p = ggplot(data = df, aes(x = x, y = mixmpg))
p = p + geom_bar(stat='identity')
p = p + facet_grid(~year, scale='free_x')
p = p + theme(axis.text.x=element_text(angle=90,hjust=1,vjust=.5,colour='gray50'))

enter image description here Close your eyes, think of the Empire, and try to enjoy.

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I plus oned the answer because I think it's cool that it could be done without grid.arrange but again believe this could be very tricky in that our expectations of a faceted graph are that the categories will be arranged in the same way across facets. This may be an innate or historical expectations, but the expectation is there none the less and violating it could be misleading. – Tyler Rinker Sep 5 '13 at 0:57
I agree with @TylerRinker on both counts and voted accordingly. Another option that (IMHO) might be less confusing might be to suppress the axis labels entirely and either use only the fill aesthetic (if there are only a few bars) or label them inside the plot above each bar. – joran Sep 5 '13 at 1:10
Thanks. Essentially you are proposing that x be the rank (which is a consistent, numerical value) and plot the text of the category somewhere inside each bar instead of as a label. This might be a problem if a bar is small for some categories, but I am always open to diversity of opinions. Perhaps you can give an example, e.g. using the mpg data, so that we can see how it would look like. Being a Tufte devotee, using barplots wouldn't be my first choice anyway, but it fits in what Tyler would call "historical expectations" (in this case, those of my Company)... – Pierre D Sep 5 '13 at 1:47

Try this, it's really simple (Just ignore the warnings)

df <-data.frame(name=c('foo','bar','foo','bar'),period=c('old','old','recent','recent'),val=c(1.23,2.17,4.15,3.65))

d1$sn <- sn
p = ggplot(data = d1, aes(x = sn, y = val))
p = p + geom_bar(stat='identity')
p = p + facet_wrap(~period, scale='free_x')
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