I have some data here [in a .txt file] which I read into a data frame df,

df <- read.table("data.txt", header=T,sep="\t")

I remove the negative values in the column x (since I need only positive values) of the df using the following code,

yp <- subset(df, x>0)

Now I want plot multiple box plots in the same layer. I first melt the data frame df, and the plot which results contains several outliers as shown below.

# Melting data frame df    
df_mlt <-melt(df, id=names(df)[1])
    # plotting the boxplots
    plt_wool <- ggplot(subset(df_mlt, value > 0), aes(x=ID1,y=value)) + 
      geom_boxplot(aes(color=factor(ID1))) +
      scale_y_log10(breaks = trans_breaks("log10", function(x) 10^x), labels = trans_format("log10", math_format(10^.x))) +    
      theme_bw() +
      theme(legend.text=element_text(size=14), legend.title=element_text(size=14))+
      theme(axis.text=element_text(size=20)) +
      theme(axis.title=element_text(size=20,face="bold")) +
      labs(x = "x", y = "y",colour="legend" ) +
      annotation_logticks(sides = "rl") +
      theme(panel.grid.minor = element_blank()) +
      guides(title.hjust=0.5) +
      theme(plot.margin=unit(c(0,1,0,0),"mm")) 
    plt_wool

Boxplot with outliers

Now I need to have a plot without any outliers, so to do this first I compute the lower and upper bound whiskers I use the following code as suggested here,

sts <- boxplot.stats(yp$x)$stats

To remove the outlier I add the upper and lower whisker limits as below,

p1 = plt_wool + coord_cartesian(ylim = c(sts*1.05,sts/1.05))

The resulting plot is shown below, while the above line of code correctly removes most of the top outliers all the bottom outliers still remain. Could someone please suggest how to remove all the outlier completely from this plot, Thanks.

enter image description here

A minimal reproducible example:

library(ggplot2)
p <- ggplot(mtcars, aes(factor(cyl), mpg))
p + geom_boxplot()

Not plotting outliers:

p + geom_boxplot(outlier.shape=NA)
#Warning message:
#Removed 3 rows containing missing values (geom_point).

(I prefer to get this warning, because a year from now with a long script it would remind me that I did something special there. If you want to avoid it use Sven's solution.)

  • 4
    This is a good way, however, the Y-limitation is not change and therefore the figure is not looks well with large white space in the top – Shicheng Guo Oct 26 '16 at 23:05
up vote 13 down vote accepted

Based on suggestions by @Sven Hohenstein, @Roland and @lukeA I have solved the problem for displaying multiple boxplots in expanded form without outliers.

First plot the box plots without outliers by using outlier.colour=NA in geom_boxplot()

plt_wool <- ggplot(subset(df_mlt, value > 0), aes(x=ID1,y=value)) + 
  geom_boxplot(aes(color=factor(ID1)),outlier.colour = NA) +
  scale_y_log10(breaks = trans_breaks("log10", function(x) 10^x), labels = trans_format("log10", math_format(10^.x))) +
  theme_bw() +
  theme(legend.text=element_text(size=14), legend.title=element_text(size=14))+
  theme(axis.text=element_text(size=20)) +
  theme(axis.title=element_text(size=20,face="bold")) +
  labs(x = "x", y = "y",colour="legend" ) +
  annotation_logticks(sides = "rl") +
  theme(panel.grid.minor = element_blank()) +
  guides(title.hjust=0.5) +
  theme(plot.margin=unit(c(0,1,0,0),"mm"))

Then compute the lower, upper whiskers using boxplot.stats() as the code below. Since I only take into account positive values, I choose them using the condition in the subset().

yp <- subset(df, x>0)             # Choosing only +ve values in col x
sts <- boxplot.stats(yp$x)$stats  # Compute lower and upper whisker limits

Now to achieve full expanded view of the multiple boxplots, it is useful to modify the y-axis limit of the plot inside coord_cartesian() function as below,

p1 = plt_wool + coord_cartesian(ylim = c(sts[2]/2,max(sts)*1.05))

Note: The limits of y should be adjusted according to the specific case. In this case I have chosen half of lower whisker limit for ymin.

The resulting plot is below,

  • 1
    much distraction in this otherwise nice answer – jan-glx Dec 9 '16 at 0:21
  • Great answer. Such a simple fix using outlier.colour = NA – Seanosapien Apr 25 at 12:44
  • This doesn't work for faceted / grouped boxplots. – jzadra Jun 19 at 20:34

You can make the outliers invisible with the argument outlier.colour = NA:

geom_boxplot(aes(color = factor(ID1)), outlier.colour = NA)
  • 1
    To Sven Hohenstein and @Roland The problem with removing the outliers in such a way here is that, the boxes in the boxplot still remains squished. What I would like to have is the boxes in the boxplot in an expanded form, like the one shown in the image 2 of my question but without the outliers though. – Amm Feb 3 '14 at 17:18
  • I solved the issue (see above answer) with regards to expanding the boxplot after removal of the outliers. – Amm Feb 4 '14 at 12:26
ggplot(df_mlt, aes(x = ID1, y = value)) + 
  geom_boxplot(outlier.size = NA) + 
  coord_cartesian(ylim = range(boxplot(df_mlt$value, plot=FALSE)$stats)*c(.9, 1.1))
  • 1
    This removes outliers in top and bottom but it ends up displaying a single boxplot. I need multiple boxplots though, I have solved this now, thanks. – Amm Feb 4 '14 at 9:39

Another way to exclude outliers is to calculate them then set the y-limit on what you consider an outlier.

For example, if your upper and lower limits are Q3 + 1.5 IQR and Q1 - 1.5 IQR, then you may use:

upper.limit <- quantile(x)[4] + 1.5*IQR(x)
lower.limit <- quantile(x)[2] - 1.5*IQR(x)

Then put limits on the y-axis range:

ggplot + coord_cartesian(ylim=c(lower.limit, upper.limit))
  • as the OP included in their question this solution is not suitable for the problem – deeenes Jun 26 '17 at 19:55
  • This doesn't work for faceted / grouped boxplots. – jzadra Jun 19 at 20:34

Your Answer

 

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Not the answer you're looking for? Browse other questions tagged or ask your own question.