# In ggplot2, what do the end of the boxplot lines represent?

I can't find a description of what the end points of the lines of a boxplot represent.

For example, here are point values above and below where the lines end.

(I realize that the top and bottom of the box are 25th and 75th percentile, and the centerline is the 50th). I assume, as there are points above and below the lines that they do not represent the max/min values.

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The "dots" at the end of the boxplot represent outliers. There are a number of different rules for determining if a point is an outlier, but the method that R and ggplot use is the "1.5 rule". If a data point is:

• less than Q1 - 1.5*IQR
• greater than Q3 + 1.5*IQR

then that point is classed as an "outlier". The line goes to the first data point before the "1.5" cut-off. Note: IQR = Q3 - Q1

• See the wikipedia boxplot page for alternative outlier rules.
• There are actually a variety of ways of calculating quantiles. Have a look at `?quantile for the description of the nine different methods.

Example

Consider the following example

``````> set.seed(1)
> x = rlnorm(20, 1/2)#skewed data
> par(mfrow=c(1,3))
> boxplot(x, range=1.7, main="range=1.7")
> boxplot(x, range=1.5, main="range=1.5")#default
> boxplot(x, range=0, main="range=0")#The same as range="Very big number"
``````

This gives the following plot:

As we decrease range from 1.7 to 1.5 we reduce the length of the whisker. However, `range=0` is a special case - it's equivalent to "range=infinity"

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See the help pages for `?boxplot` or `?boxplot.stats` . ggplot uses the standard R functions for these calculations. –  csgillespie Feb 9 '11 at 15:47

I think ggplot using the standard defaults, the same as boxplot: "the whiskers extend to the most extreme data point which is no more than [1.5] times the length of the box away from the box"

See: boxplot.stats

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I call this the Tukey boxplot to save confusion with the myriad other types of (worse) boxplots people have since created. –  hadley Feb 9 '11 at 17:22
As far as i understand `?boxplot.stats`, the criterium is `+/-1.58 * IQR/sqrt(n)` and not `[1.5] times the length of the box`. Am I misunderstanding something? –  Henrik Feb 9 '11 at 17:41
@Henrik: you're confusing the whiskers with the notches. –  Tyler Feb 9 '11 at 17:45
Thanks, for the clarification. but for what does the notch stands. –  Henrik Feb 9 '11 at 17:58
McGill's paper is very readable: lis.epfl.ch/~markus/References/McGill78.pdf –  Tyler Feb 9 '11 at 18:41

P1IMSA Tutorial 8 - Understanding Box and Whisker Plots video offers a visual step-by-step explanation of (Tukey) box and whisker plots.

At 4m 23s I explain the meaning of the whisker ends and its relationship to the 1.5*IQR.

Although the chart shown in the video was rendered using D3.js rather than R, its explanations jibe with the R implementations of boxplots mentioned.

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