I have used the following ggplot command:

ggplot(survey,aes(x=age))+stat_bin(aes(n=nrow(h3),y=..count../n), binwidth=10)
  +scale_y_continuous(formatter = "percent", breaks=c(0, 0.1, 0.2)) 
  + facet_grid(hospital ~ .) 
  + opts(panel.background = theme_blank()) 

to produce

alt text

I'd like to change the facet labels, however, to something shorter (like Hosp 1, Hosp 2...) because they are too long now and look cramped (increasing the height of the graph is not an option, it would take too much space in the document). I looked at the facet_grid help page but cannot figure out how.

14 Answers 14

up vote 100 down vote accepted

Change the underlying factor level names with something like:

# Using the Iris data
> i <- iris
> levels(i$Species)
[1] "setosa"     "versicolor" "virginica" 
> levels(i$Species) <- c("S", "Ve", "Vi")
> ggplot(i, aes(Petal.Length)) + stat_bin() + facet_grid(Species ~ .)
  • 12
    Great, it works well; even though I would have preferred a solution that doesn't change the underlying data, it solved my problem so I could move with my work. Thank you. – wishihadabettername Aug 13 '10 at 2:23
  • 9
    @wishihadabettername: To avoid changing underlying data, you can use: ggplot(transform(iris, Species = c("S", "Ve", "Vi")[as.numeric(Species)]), aes(Petal.Length)) + stat_bin() + facet_grid(Species ~ .) – Arnaud A May 12 '14 at 14:58
  • 1
    related... if you want the panel label to be a bquote() expression (e.g., levels(x$measurements) <- c(bquote(Area ~~ (cm^2)), bquote(Length ~~ (cm)))) it will not appear in mathematical expression. How would one show expressions as facet labels? – Brian D Feb 21 at 14:26
  • related for including expressions in the facet label, use labeller option to facet_grid: stackoverflow.com/questions/37089052/… – Brian D Feb 21 at 15:40

Here is a solution that avoids editing your data:

Say your plot is facetted by the group part of your dataframe, which has levels control, test1, test2, then create a list named by those values:

hospital_names <- list(
  'Hospital#1'="Some Hospital",
  'Hospital#2'="Another Hospital",
  'Hospital#3'="Hospital Number 3",
  'Hospital#4'="The Other Hospital"
)

Then create a 'labeller' function, and push it into your facet_grid call:

hospital_labeller <- function(variable,value){
  return(hospital_names[value])
}

ggplot(survey,aes(x=age)) + stat_bin(aes(n=nrow(h3),y=..count../n), binwidth=10)
 + facet_grid(hospital ~ ., labeller=hospital_labeller)
 ...

This uses the levels of the data frame to index the hospital_names list, returning the list values (the correct names).


Please note that this only works if you only have one faceting variable. If you have two facets, then your labeller function needs to return a different name vector for each facet. You can do this with something like :

plot_labeller <- function(variable,value){
  if (variable=='facet1') {
    return(facet1_names[value])
  } else {
    return(facet2_names[value])
  }
}

Where facet1_names and facet2_names are pre-defined lists of names indexed by the facet index names ('Hostpital#1', etc.).


Edit: The above method fails if you pass a variable/value combination that the labeller doesn't know. You can add a fail-safe for unknown variables like this:

plot_labeller <- function(variable,value){
  if (variable=='facet1') {
    return(facet1_names[value])
  } else if (variable=='facet2') {
    return(facet2_names[value])
  } else {
    return(as.character(value))
  }
}

Answer adapted from how to change strip.text labels in ggplot with facet and margin=TRUE


edit: WARNING: if you're using this method to facet by a character column, you may be getting incorrect labels. See this bug report. fixed in recent versions of ggplot2.

  • This is the working one tbh – user1685185 Feb 9 '14 at 2:22
  • 9
    Nice, but will not work with facet_wrap, whereas @Vince solution will work with facet_wrap too. – Arnaud A May 12 '14 at 14:01
  • @ArnaudAmzallag: Correct, though if someone feels like donating some time, it could in the future. – naught101 May 13 '14 at 0:52
  • Added a fail-safe for unknown facetting variables. – naught101 Dec 11 '14 at 4:08
  • 13
    Notice: This does not work in ggplot2 v.2 - the labeller function has changed. @mbirons answer works stackoverflow.com/a/34811062/162832 – Andreas Jan 18 '16 at 9:06

Here's another solution that's in the spirit of the one given by @naught101, but simpler and also does not throw a warning on the latest version of ggplot2.

Basically, you first create a named character vector

hospital_names <- c(
                    `Hospital#1` = "Some Hospital",
                    `Hospital#2` = "Another Hospital",
                    `Hospital#3` = "Hospital Number 3",
                    `Hospital#4` = "The Other Hospital"
                    )

And then you use it as a labeller, just by modifying the last line of the code given by @naught101 to

... + facet_grid(hospital ~ ., labeller = as_labeller(hospital_names))

Hope this helps.

  • Which verison of ggplot2 is as_labeller in? I have found some source code for on the CRAN GitHub repository, but after upgrading to the latest version (on CRAN!) I don't seem to have the function. – n1k31t4 Jan 25 '16 at 5:40
  • That's weird. I also updated through CRAN. Here is the documentation docs.ggplot2.org/dev/as_labeller.html – mbiron Jan 25 '16 at 11:23
  • 3
    This is cool. What happens when you have two variables in your facet grid though? Like hospital ~ gender or something? Is there a way to use labellers on both axes? I can't see anything obvious in the docs. – naught101 Jul 21 '16 at 0:30
  • 2
    Note if you started with naught's answer, this one only works with a c() not a list(). – thomas88wp Jan 19 at 1:52
  • 1
    One great part of this is that this works with both axes of the facet grid! – Calum You Oct 8 at 23:30

Here's how I did it with facet_grid(yfacet~xfacet) using ggplot2, version 2.2.1:

facet_grid(
    yfacet~xfacet,
    labeller = labeller(
        yfacet = c(`0` = "an y label", `1` = "another y label"),
        xfacet = c(`10` = "an x label", `20` = "another x label")
    )
)

Note that this does not contain a call to as_labeller() -- something that I struggled with for a while.

This approach is inspired by the last example on the help page Coerce to labeller function.

  • this works!!! I wasn't able to apply the other solutions because some of the suggested solutions were deprecated on current ggplot2 versions. – yanes Apr 1 '17 at 3:19
  • You can construct these named vectors with setNames() stackoverflow.com/a/22428439/3362993 – jsta Sep 6 at 13:08

If you have two facets hospital and room but want to rename just one, you can use:

facet_grid( hospital ~ room, labeller = labeller(hospital = as_labeller(hospital_names)))

For renaming two facets using the vector-based approach (as in naught101's answer), you can do:

facet_grid( hospital ~ room, labeller = labeller(hospital = as_labeller(hospital_names),
                                                 room = as_labeller(room_names)))

Note that this solution will not work nicely in case ggplot will show less factors than your variable actually contains (which could happen if you had been for example subsetting):

 library(ggplot2)
 labeli <- function(variable, value){
  names_li <- list("versicolor"="versi", "virginica"="virg")
  return(names_li[value])
 }

 dat <- subset(iris,Species!="setosa")
 ggplot(dat, aes(Petal.Length)) + stat_bin() + facet_grid(Species ~ ., labeller=labeli)

A simple solution (besides adding all unused factors in names_li, which can be tedious) is to drop the unused factors with droplevels(), either in the original dataset, or in the labbeler function, see:

labeli2 <- function(variable, value){
  value <- droplevels(value)
  names_li <- list("versicolor"="versi", "virginica"="virg")
  return(names_li[value])
}

dat <- subset(iris,Species!="setosa")
ggplot(dat, aes(Petal.Length)) + stat_bin() + facet_grid(Species ~ ., labeller=labeli2)

This solution is very close to what @domi has, but is designed to shorten the name by fetching first 4 letters and last number.

library(ggplot2)

# simulate some data
xy <- data.frame(hospital = rep(paste("Hospital #", 1:3, sep = ""), each = 30),
                 value = rnorm(90))

shortener <- function(string) {
  abb <- substr(string, start = 1, stop = 4) # fetch only first 4 strings
  num <- gsub("^.*(\\d{1})$", "\\1", string) # using regular expression, fetch last number
  out <- paste(abb, num) # put everything together
  out
}

ggplot(xy, aes(x = value)) +
  theme_bw() +
  geom_histogram() +
  facet_grid(hospital ~ ., labeller = labeller(hospital = shortener))

enter image description here

Both facet_wrap and facet_grid also accept input from ifelse as an argument. So if the variable used for faceting is logical, the solution is very simple:

facet_wrap(~ifelse(variable, "Label if true", "Label if false"))

If the variable has more categories, the ifelse statement needs to be nested.

As a side effect, this also allows the creation of the groups to be faceted within the ggplot call.

I think all other solutions are really helpful to do this, but there is yet another way.

I assume:

  • you have installed the dplyr package, which has the convenient mutate command, and
  • your dataset is named survey.

    survey %>% mutate(Hosp1 = Hospital1, Hosp2 = Hospital2,........)

This command helps you to rename columns, yet all other columns are kept.

Then do the same facet_wrap, you are fine now.

  • sorry, it does not work as it also changes the column content – Jens Jul 19 at 12:22

The labeller function defintion with variable, value as arguments would not work for me. Also if you want to use expression you need to use lapply and can not simply use arr[val], as the argument to the function is a data.frame.

This code did work:

libary(latex2exp)
library(ggplot2)
arr <- list('virginica'=TeX("x_1"), "versicolor"=TeX("x_2"), "setosa"=TeX("x_3"))
mylabel <- function(val) { return(lapply(val, function(x) arr[x])) }
ggplot(iris, aes(x=Sepal.Length, y=Sepal.Width)) + geom_line() + facet_wrap(~Species, labeller=mylabel)

Just extending naught101's answer -- credit goes to him

plot_labeller <- function(variable,value, facetVar1='<name-of-1st-facetting-var>', var1NamesMapping=<pass-list-of-name-mappings-here>, facetVar2='', var2NamesMapping=list() )
{
  #print (variable)
  #print (value)
  if (variable==facetVar1) 
    {
      value <- as.character(value)
      return(var1NamesMapping[value])
    } 
  else if (variable==facetVar2) 
    {
      value <- as.character(value)
      return(var2NamesMapping[value])
    } 
  else 
    {
      return(as.character(value))
    }
}

What you have to do is create a list with name-to-name mapping

clusteringDistance_names <- list(
  '100'="100",
  '200'="200",
  '300'="300",
  '400'="400",
  '600'="500"
)

and redefine plot_labeller() with new default arguments:

plot_labeller <- function(variable,value, facetVar1='clusteringDistance', var1NamesMapping=clusteringDistance_names, facetVar2='', var1NamesMapping=list() )

And then:

ggplot() + 
  facet_grid(clusteringDistance ~ . , labeller=plot_labeller) 

Alternatively you can create a dedicated function for each of the label changes you want to have.

I have another way to achieve the same goal without changing the underlying data:

ggplot(transform(survey, survey = factor(survey,
        labels = c("Hosp 1", "Hosp 2", "Hosp 3", "Hosp 4"))), aes(x = age)) +
  stat_bin(aes(n = nrow(h3),y=..count../n), binwidth = 10) +
  scale_y_continuous(formatter = "percent", breaks = c(0, 0.1, 0.2)) +
  facet_grid(hospital ~ .) +
  opts(panel.background = theme_blank())

What I did above is changing the labels of the factor in the original data frame, and that is the only difference compared with your original code.

Since I'm not yet allowed to comment on posts, I'm posting this separately as an addendum to Vince's answer and son520804's answer . Credit goes to them.

Son520804:

using Iris data:

I assume:
You have installed the dplyr package, which has the convenient mutate command, and your dataset is named survey. survey %>% mutate(Hosp1 = Hospital1, Hosp2 = Hospital2,........) This command helps you to rename columns, yet all other columns are kept. Then do the same facet_wrap, you are fine now.

Using the iris example of Vince and the partial code of son520804, I did this with the mutate function and achieved an easy solution without touching the original dataset. The trick is to create a stand-in name vector and use mutate() inside the pipe to correct the facet names temporarily:

i <- iris

levels(i$Species)
[1] "setosa"     "versicolor" "virginica"

new_names <- c(
  rep("Bristle-pointed iris", 50), 
  rep("Poison flag iris",50), 
  rep("Virginia iris", 50))

i %>% mutate(Species=new_names) %>% 
ggplot(aes(Petal.Length))+
    stat_bin()+
    facet_grid(Species ~ .)

In this example you can see the levels of i$Species is temporarily changed to corresponding common names contained in the new_names vector. The line containing

mutate(Species=new_names) %>%

can easily be removed to reveal the original naming.

Word of caution: This may easily introduce errors in names if the new_name vector is not correctly set up. It would probably be much cleaner to use a separate function to replace the variable strings. Keep in mind that the new_name vector may need to be repeated in different ways to match the order of your original dataset. Please double - and - triple check that this is correctly achieved.

Have you tried changing the specific levels of your Hospital vector?

levels(survey$hospital)[levels(survey$hospital) == "Hospital #1"] <- "Hosp 1"
levels(survey$hospital)[levels(survey$hospital) == "Hospital #2"] <- "Hosp 2"
levels(survey$hospital)[levels(survey$hospital) == "Hospital #3"] <- "Hosp 3"

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