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In the following example, how do I set separate ylims for each of my facets?

qplot(x, value,  data=df, geom=c("smooth")) + facet_grid(variable ~ ., scale="free_y")

In each of the facets, the y-axis takes a different range of values and I would like to different ylims for each of the facets.

The defaults ylims are too long for the trend that I want to see.

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up vote -1 down vote accepted

It should be scales="free_y" not scale.

qplot(x, value, data=df, geom=c("smooth")) + facet_grid(~variable, scales="free_y")


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Thanks, but I believe r automagically maps scale to scales. But actually the problem I have is that even though this produces a plot with different scales for each facet, I would to be able to control them individually using ylim. By default, ylim is the range of y values in each facet. I want to restrict that range. – signalseeker Nov 5 '10 at 14:34
I'm not sure how to do that (or if it's possible). However, you could create the same effect by plotting the each facet in separate view ports. – Brandon Bertelsen Nov 5 '10 at 17:27
If you'd like to remove outliers by changing the scale, I would recommend that instead you subset them out of your data first. Then you won't have to control the scales individualy. Remember that ylim() removes the data from your plot. – Brandon Bertelsen Nov 5 '10 at 17:47

This was brought up on the ggplot2 mailing list a short while ago. What you are asking for is currently not possible but I think it is in progress.

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any news about this? Is it possible now? – Ignacio Sep 30 '14 at 19:35
yeah, I'd be interested in news, too. – Toni Feb 3 '15 at 18:54

As far as I know this has not been implemented in ggplot2, yet. However a workaround - that will give you ylims that exceed what ggplot provides automatically - is to add "artificial data". To reduce the ylims simply remove the data you don't want plot (see at the and for an example).

Here is an example:

Let's just set up some dummy data that you want to plot

df <- data.frame(x=rep(seq(1,2,.1),4),f1=factor(rep(c("a","b"),each=22)),f2=factor(rep(c("x","y"),22)))
df <- within(df,y <- x^2)

Which we could plot using line graphs

p <- ggplot(df,aes(x,y))+geom_line()+facet_grid(f1~f2,scales="free_y")

Assume we want to let y start at -10 in first row and 0 in the second row, so we add a point at (0,-10) to the upper left plot and at (0,0) ot the lower left plot:

ylim <- data.frame(x=rep(0,2),y=c(-10,0),f1=factor(c("a","b")),f2=factor(c("x","y")))
dfy <- rbind(df,ylim)

Now by limiting the x-scale between 1 and 2 those added points are not plotted (a warning is given):

p <- ggplot(dfy,aes(x,y))+geom_line()+facet_grid(f1~f2,scales="free_y")+xlim(c(1,2))

Same would work for extending the margin above by adding points with higher y values at x values that lie outside the range of xlim.

This will not work if you want to reduce the ylim, in which case subsetting your data would be a solution, for example to limit the upper row between -10 and 1.5 you could use:

p <- ggplot(dfy,aes(x,y))+geom_line(subset=.(y < 1.5 | f1 != "a"))+facet_grid(f1~f2,scales="free_y")+xlim(c(1,2))
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