# automatic non-equidistant breaks in ggplot2

I create a simple scatter plot with `ggplot2` and visualise the z-variable with a color:

`````` require(ggplot2)

data = data.frame(x=runif(1000), y=runif(1000), vis=rf(1000, df1=1, df2=3))
qplot(x=x, y=y, data=data, color=vis)
``````

however, this is of course not very informative since the distribution is heavily skewed:

`````` hist(data\$vis)
``````

the problem - in my opinion - is the equidistant breaks that creates bins for data that is simply not in the sample.

so here is my question: is there an efficient way of overcoming this problem and creating more breaks where more data is available. or in other words i'm looking for non-linear breaks or non-equidistant braks.

-

Edit: probably something more similar to what you want:

``````breaks <- quantile(data\$vis)
qplot(x=x, y=y, data = data, color = vis) +
c("grey", "blue", "red"), values = as.vector(breaks),
oob = identity, rescaler = function(x,...) x, labels = names(breaks))
``````

Old answer: In this case breaks are not what you really want

``````qplot(x=x, y=y, data=data, color=vis) + scale_colour_gradient(breaks = 1:10 * 10)
``````

Considering amount of data we have

``````quantile(data\$vis, seq(0, 1, 0.1))
0%          10%          20%          30%          40%
9.294095e-07 1.883887e-02 8.059213e-02 1.646752e-01 3.580304e-01
50%          60%          70%          80%          90%
6.055612e-01 9.463869e-01 1.638687e+00 2.686160e+00 5.308239e+00
100%
1.693077e+02
``````

so possibly something like

``````qplot(x=x, y=y, data=data, color=vis) + scale_colour_gradient(limits = c(0,5))
``````

would be good, here points > 5 are grey. A more complicated solution, which you maybe wanted in the first place would be this.

-
thanks for your help... that's not quite what i was looking for. i guess: `scale_colour_gradient(breaks=as.matrix(quantile(data\$vis))` is closer to my intention since it takes account of the skewness and it works without visual inspection. yet: the colors are not adapted to my breaks strangely... –  Seb Aug 27 '12 at 20:01
@Seb, yes, that is what I meant: here breaks do not work in the way that you need, `1:10*10` was just an example of that. You should combine `as.vector(quantile(data\$vis))` with the answer that I mentioned in the end. –  Julius Aug 27 '12 at 20:09
@Seb, is my edited answer still not what you need? –  Julius Aug 30 '12 at 20:54
sorry, i have not been around for some days - looks good and i will try it in a minute :) tanks! –  Seb Aug 31 '12 at 17:57
@Seb, did it work well? –  Julius Dec 14 '12 at 17:11
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