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I'm working on a project where I have multiple response variables and want to show ordered caterpillar plots. This is fairly straightforward with the base R plotting capabilities

#generate random data frame
set.seed(42)
my_df<-data.frame(x=rnorm(100), y=runif(100,-2,2), z=rpois(100, 10))

#3 panels of plots
par(mfrow=c(1,3))

#note the abline to show an axis at y=0
sapply(c("x", "y", "z"), function(i){ plot(sort(my_df[[i]])); abline(0,0)})

But I am at a loss as to how to do this with ggplot2. To put together the three panels, I know I have to melt the data frame, but then...how does one do the ordering by variable and plotting with a 0 axis later? All I have so far is...

melt_df<-melt(my_df)

qplot(1:100, value, data=melt_df, geom="point",facets=~variable)+theme_bw(base_size=16)
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2 Answers 2

up vote 5 down vote accepted

Building off jebyrnes answer - you can set the y-axis to have free scales as an argument in facet_wrap. We can add a horizontal line with geom_hline():

ggplot(melt_df, aes(1:100, value)) + geom_point() + 
    facet_wrap(~ variable, ncol = 3, scales = "free_y") +
    geom_hline(aes(intercept = 0), linetype = 2) +
    theme_bw(base_size = 16)

You can get equivalent results by using stat_qq() and avoid the sorting with ddply beforehand. The difference is that we only need to pass in the sample argument to aes:

ggplot(melt_df, aes(sample = value)) + geom_point(stat = "qq") + 
    facet_wrap(~ variable, ncol = 3, scales = "free_y") +
    geom_hline(aes(intercept = 0), linetype = 2) +
    theme_bw(base_size = 16)
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Hrm. Adding a geom_linerange to that seems...tricky. It doesn't want to use the sample as x values, and if you just use sample, it seems to not like providing ymin and ymax in the toplevel aes. Hrm... –  jebyrnes Sep 14 '12 at 22:29

Step 1: The ordering is done by ddply.

melt_df<-melt(my_df)

melt_df<-ddply(melt_df, .(variable), summarize, value=sort(value))

qplot(1:100, value, data=melt_df, geom="point",facets=~variable)+theme_bw(base_size=16)

The axis part is still puzzling to me, though, particularly given the 3 facets.

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