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How would I ignore outliers in ggplot2 boxplot? I don't simply want them to disappear (i.e. outlier.size=0), but I want them to be ignored such that the y axis scales to show 1st/3rd percentile. My outliers are causing the "box" to shrink so small its practically a line. Are there some techniques to deal with this?

Edit Here's an example:

y = c(.01,.02,.03,.04,.05,.06,.07,.08,.09,.5,-.6)
x = c(1,1,1,1,1,1,1,1,1,1,1)
qplot( factor( x ) , y , geom="boxplot" )
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Some sample data and a reproducible example will make it easier to help you. –  Andrie Apr 15 '11 at 14:03
my file is 200 meg! Just take any dataset where there are lots of datapoints between the 1st and 3rd quantile and a few outliers (you only need 1). If the outlier is far away from the 1st/3rd then necessarily the boxes are going to shrink to accomodate the outlier –  SFun28 Apr 15 '11 at 14:07
Yes, that's what I had in mind. Make up such a dataset and use dput() to post it here together with the ggplot() statement you use. Help us to help you. –  Andrie Apr 15 '11 at 14:09
So sample out a subset. –  Dirk Eddelbuettel Apr 15 '11 at 14:09
let me look.... Oh yes, sorry. Just do fivenum() on the data to extract what, IIRC, is used for the upper and lower hinges on boxplots and use that output in the scale_y_continuous() call that @Ritchie showed. This can be automated very easily using the tools R and ggplot provide. If you need to include the whiskers as well, consider using boxplot.stats() to get the upper and lower limits for the whiskers and use then in scale_y_continuous(). –  Gavin Simpson Apr 15 '11 at 14:21

4 Answers 4

up vote 37 down vote accepted

Here is a solution using boxplot.stats

# create a dummy data frame with outliers
df = data.frame(y = c(-100, rnorm(100), 100))

# create boxplot that includes outliers
p0 = ggplot(df, aes(y = y)) + geom_boxplot(aes(x = factor(1)))

# compute lower and upper whiskers
ylim1 = boxplot.stats(df$y)$stats[c(1, 5)]

# scale y limits based on ylim1
p1 = p0 + coord_cartesian(ylim = ylim1*1.05)
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+1 for automatic computation, +1 for using coord_cartesian to zoom rather than excluding data –  Ben Bolker Apr 15 '11 at 14:30
@Ben - you have two accounts? =) @Ramnath - this is a really elegant solution –  SFun28 Apr 15 '11 at 14:33
oops, a rhetorical flourish. I would give two votes if I had them. –  Ben Bolker Apr 15 '11 at 15:54

I had the same problem and precomputed the values for Q1 , Q2, median, ymin, ymax using boxplot.stats

# precompute values
stats <- boxplot.stats(data)$stats
df <- data.frame(x="label1", ymin=stats[1], lower=stats[2], middle=stats[3], upper=stats[4], ymax[5])

# create plot
p <- ggplot(df, aes(x=x, lower=lower, upper=upper, middle=middle, ymin=ymin, ymax=ymax)) + 

The result is a boxplot without outliers.

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This is very helpful if one wants to force plotting of minima and maxima... –  James Stanley Aug 16 '13 at 0:06

Use geom_boxplot(outlier.shape = NA) to not display the outliers and scale_y_continuous(limits = c(lower, upper)) to change the axis limits.

An example.

n <- 1e4L
dfr <- data.frame(
  y = exp(rlnorm(n)),  #really right-skewed variable
  f = gl(2, n / 2)

p <- ggplot(dfr, aes(f, y)) + 
p   # big outlier causes quartiles to look too slim

p2 <- ggplot(dfr, aes(f, y)) + 
  geom_boxplot(outlier.shape = NA) +
  scale_y_continuous(limits = quantile(dfr$y, c(0.1, 0.9)))
p2  # no outliers plotted, range shifted

Actually, as Ramnath showed in his answer (and Andrie too in the comments), it makes more sense to crop the scales after you calculate the statistic.

coord_cartesian(ylim = quantile(dfr$y, c(0.1, 0.9)))

(You'll probably still need to use scale_y_continuous to fix the axis breaks.)

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So I would have to calculate the lower/upper - perhaps by calculating the 1st/3rd percentile? Meaning there's no auto-magic way to tell gg-plot2 to ignore outliers and scale intelligently? –  SFun28 Apr 15 '11 at 14:17
Be careful with scale_y_continuous(limits=...) This will remove data that fall outside the limits and then perform the statistical calculations. In other words the mean and other summaries will be affected. If this is what you want, then great. The alternative is to use coord_cartesian(limits=...) - this 'zooms' in without removing data or affecting the summaries. –  Andrie Apr 15 '11 at 14:30
@Andrie - thanks! I don't want mean and other summaries to be affected. –  SFun28 Apr 15 '11 at 14:35

One idea would be to winsorize the data in a two-pass procedure:

  1. run a first pass, learn what the bounds are, e.g. cut of at given percentile, or N standard deviation above the mean, or ...

  2. in a second pass, set the values beyond the given bound to the value of that bound

I should stress that this is an old-fashioned method which ought to be dominated by more modern robust techniques but you still come across it a lot.

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Whoever just downvoted silently: leave comment to explain the why. –  Dirk Eddelbuettel Apr 15 '11 at 14:30
Wasn't me. Just wanted to add that having whiskers that stop at percentiles (usually 10th and 90th) seems to be very common with environmental data. –  Richie Cotton Apr 15 '11 at 14:35
I was a silent +1, and wish I had another to offer. Winsorizing is almost always done in econ + finance. If SFun has outliers that ruin data visualiation, I wonder what is their effect on data analysis. –  Richard Herron Apr 15 '11 at 15:03
was re-reading this post, you mentioned that windsorizing is an older technique....what would be some more modern techniques? –  SFun28 May 13 '11 at 13:23
In general, robust methods as a development of the last 30+ years. –  Dirk Eddelbuettel May 13 '11 at 13:25

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