14

We all love robust measures like medians and interquartile ranges, but lets face it, in many fields, boxplots almost never show up in published articles, while means and standard errors do so all the time.

It's simple in lattice, ggplot2, etc to draw boxplots and the galleries are full of them. Is there an equally straightforward way to draw means and standard errors, conditioned by a categorical variable?

I'm taking about plots like these:

http://freakonomics.blogs.nytimes.com/2008/07/30/how-big-is-your-halo-a-guest-post/

Or what are called "means diamonds" in JMP (see Figure 3):

http://blogs.sas.com/jmp/index.php?/archives/127-What-Good-Are-Error-Bars.html

5 Answers 5

14

The first plot was just covered in a blog post on imachordata.com. (hat tip to David Smith on blog.revolution-computing.com) You can also read the related documentation from Hadley on ggplot2.

Here's the example code:

library(ggplot2)
data(mpg)

#create a data frame with averages and standard deviations
 hwy.avg<-ddply(mpg, c("class", "year"), function(df)
 return(c(hwy.avg=mean(df$hwy), hwy.sd=sd(df$hwy))))

#create the barplot component
 avg.plot<-qplot(class, hwy.avg, fill=factor(year), data=hwy.avg, geom="bar", position="dodge")

#first, define the width of the dodge
dodge <- position_dodge(width=0.9)

#now add the error bars to the plot
avg.plot+geom_linerange(aes(ymax=hwy.avg+hwy.sd, ymin=hwy.avg-hwy.sd), position=dodge)+theme_bw()

It ends up looking like this: alt text

5
  • you just beat me to this one! I read the www.imachordata.com post yesterday and even emailed it to a former coworker.
    – JD Long
    Sep 16, 2009 at 16:02
  • It's a small world in the R blogosphere. :) I recently started following planet R (planetr.stderr.org), and it's a bit overwhelming.
    – Shane
    Sep 16, 2009 at 16:18
  • I need to stop being lazy and start maintaining an R blog list.
    – JD Long
    Sep 16, 2009 at 18:21
  • Pretty good answer, though those are SDs not SEs. It's a pity the "bar w/ SE plot" can't be drawn in one straightforward call like the boxplot can. Sep 18, 2009 at 11:11
  • That's a good point about the SD/SE (I was just showing how to plot it). If you look at the geom_errorbar documentation, you will see that it doesn't take too many steps to produce. Incidentally, I don't see any evidence of R being able to produce a "means diamonds" right now.
    – Shane
    Sep 18, 2009 at 13:23
11

This question is almost 2 years old now, but as a new R user in an experimental field, this was a big question for me, and this page is prominent in google results. I just discovered an answer I like better than the current set, so I thought I'd add it.

the package sciplot makes the task super easy. It gets the job done in a single command

#only necessary to get the MPG dataset from ggplot for direct comparison
library(ggplot2)
data(mpg)
attach(mpg)

#the bargraph.CI function with a couple of parameters to match the ggplot example
#see also lineplot.CI in the same package
library(sciplot)
bargraph.CI(
  class,  #categorical factor for the x-axis
  hwy,    #numerical DV for the y-axis
  year,   #grouping factor
  legend=T, 
  x.leg=19,
  ylab="Highway MPG",
  xlab="Class")

produces this very workable graph with mostly default options. Note that the error bars are standard errors by default, but the parameter takes a function, so they can be anything you want! sciplot bargraph.CI with mpg data

7

Coming a little late to the game, but this solution might be useful for future users. It uses the diamond data.frame loaded with R and takes advantage of stat_summary along with two (super short) custom functions.

require(ggplot2)

# create functions to get the lower and upper bounds of the error bars
stderr <- function(x){sqrt(var(x,na.rm=TRUE)/length(na.omit(x)))}
lowsd <- function(x){return(mean(x)-stderr(x))}
highsd <- function(x){return(mean(x)+stderr(x))}

# create a ggplot
ggplot(diamonds,aes(cut,price,fill=color))+
  # first layer is barplot with means
  stat_summary(fun.y=mean, geom="bar", position="dodge", colour='white')+
  # second layer overlays the error bars using the functions defined above
  stat_summary(fun.y=mean, fun.ymin=lowsd, fun.ymax=highsd, geom="errorbar", position="dodge",color = 'black', size=.5)

enter image description here

1

Means and their standard errors are easily automatically computed using ggplot2. I would recommend using the default pointranges, instead of dynamite plots. You might have to provide the position manually. Here is how:

ggplot(mtcars, aes(factor(cyl), hp, color = factor(am))) +
  stat_summary(position = position_dodge(0.5))

enter image description here

0

ggplot produces aesthetically pleasing graphs, but I don't have the gumption to try and publish any ggplot output yet.

Until the day comes, here is how I have been making the aforementioned graphs. I use a graphics package called 'gplots' in order to get the standard error bars (using data I've calculated already). Note that this code provides for two or more factors for each class/category. This requires the data to go in as a matrix and for the "beside=TRUE" command in the "barplot2" function to keep the bars from being stacked.

# Create the data (means) matrix
# Using the matrix accommodates two or more factors for each class

data.m <- matrix(c(75,34,19, 39,90,41), nrow = 2, ncol=3, byrow=TRUE,
               dimnames = list(c("Factor 1", "Factor 2"),
                                c("Class A", "Class B", "Class C")))

# Create the standard error matrix

error.m <- matrix(c(12,10,7, 4,7,3), nrow = 2, ncol = 3, byrow=TRUE)

# Join the data and s.e. matrices into a data frame

data.fr <- data.frame(data.m, error.m) 

# load library {gplots}

library(gplots)

# Plot the bar graph, with standard errors

with(data.fr,
     barplot2(data.m, beside=TRUE, axes=T, las=1, ylim = c(0,120),  
                main=" ", sub=" ", col=c("gray20",0),
                    xlab="Class", ylab="Total amount (Mean +/- s.e.)",
                plot.ci=TRUE, ci.u=data.m+error.m, ci.l=data.m-error.m, ci.lty=1))

# Now, give it a legend:

legend("topright", c("Factor 1", "Factor 2"), fill=c("gray20",0),box.lty=0)

It is pretty plain-Jane, aesthetically, but seems to be what most journals/old professors want to see.

I'd post the graph produced by these example data, but this is my first post on the site. Sorry. One should be able to copy-paste the whole thing (after installing the "gplots" package) without problem.

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