161

I'm plotting a categorical variable and instead of showing the counts for each category value.

I'm looking for a way to get ggplot to display the percentage of values in that category. Of course, it is possible to create another variable with the calculated percentage and plot that one, but I have to do it several dozens of times and I hope to achieve that in one command.

I was experimenting with something like

qplot(mydataf) +
  stat_bin(aes(n = nrow(mydataf), y = ..count../n)) +
  scale_y_continuous(formatter = "percent")

but I must be using it incorrectly, as I got errors.

To easily reproduce the setup, here's a simplified example:

mydata <- c ("aa", "bb", NULL, "bb", "cc", "aa", "aa", "aa", "ee", NULL, "cc");
mydataf <- factor(mydata);
qplot (mydataf); #this shows the count, I'm looking to see % displayed.

In the real case, I'll probably use ggplot instead of qplot, but the right way to use stat_bin still eludes me.

I've also tried these four approaches:

ggplot(mydataf, aes(y = (..count..)/sum(..count..))) + 
  scale_y_continuous(formatter = 'percent');

ggplot(mydataf, aes(y = (..count..)/sum(..count..))) + 
  scale_y_continuous(formatter = 'percent') + geom_bar();

ggplot(mydataf, aes(x = levels(mydataf), y = (..count..)/sum(..count..))) + 
  scale_y_continuous(formatter = 'percent');

ggplot(mydataf, aes(x = levels(mydataf), y = (..count..)/sum(..count..))) + 
  scale_y_continuous(formatter = 'percent') + geom_bar();

but all 4 give:

Error: ggplot2 doesn't know how to deal with data of class factor

The same error appears for the simple case of

ggplot (data=mydataf, aes(levels(mydataf))) +
  geom_bar()

so it's clearly something about how ggplot interacts with a single vector. I'm scratching my head, googling for that error gives a single result.

  • 2
    Data should be a data frame, not a bare factor. – hadley Sep 13 '10 at 3:04
  • 1
    adding to hadley's comment, converting your data into a data frame using mydataf = data.frame(mydataf), and renaming it as names(mydataf) = foo will do the trick – Ramnath Sep 13 '10 at 3:44
214

Since this was answered there have been some meaningful changes to the ggplot syntax. Summing up the discussion in the comments above:

 require(ggplot2)
 require(scales)

 p <- ggplot(mydataf, aes(x = foo)) +  
        geom_bar(aes(y = (..count..)/sum(..count..))) + 
        ## version 3.0.0
        scale_y_continuous(labels=percent)

Here's a reproducible example using mtcars:

 ggplot(mtcars, aes(x = factor(hp))) +  
        geom_bar(aes(y = (..count..)/sum(..count..))) + 
        scale_y_continuous(labels = percent) ## version 3.0.0

enter image description here

This question is currently the #1 hit on google for 'ggplot count vs percentage histogram' so hopefully this helps distill all the information currently housed in comments on the accepted answer.

Remark: If hp is not set as a factor, ggplot returns:

enter image description here

  • 11
    Thanks for this answer. Any idea on how to do it class-wise ? – WAF Feb 25 '15 at 15:07
  • 3
    As .@WAF suggests, this answer does not work with faceted data. See @Erwan's comment in stackoverflow.com/questions/22181132/… – LeeZamparo Nov 11 '15 at 20:49
  • See my answer below for a workaround. – ACNB Aug 1 '17 at 13:51
  • You might need to prefix percent with the package it's from to get the above to work (I did). ggplot(mtcars, aes(x = factor(hp))) + geom_bar(aes(y = (..count..)/sum(..count..))) + scale_y_continuous(labels = scales::percent) – mammykins May 22 at 16:22
  • To get around use of facets use geom_bar(aes(y = (..count..)/tapply(..count..,..PANEL..,sum)[..PANEL..])) instead. Each facet should sum to 100%. – JWilliman Aug 14 at 1:07
58

this modified code should work

p = ggplot(mydataf, aes(x = foo)) + 
    geom_bar(aes(y = (..count..)/sum(..count..))) + 
    scale_y_continuous(formatter = 'percent')

if your data has NAs and you dont want them to be included in the plot, pass na.omit(mydataf) as the argument to ggplot.

hope this helps.

  • 37
    Note that in ggplot2 version 0.9.0 the formatter argument will no longer work. Instead, you'll want something like labels = percent_format()). – joran Mar 3 '12 at 0:02
  • 25
    And with 0.9.0 you'll need to load the scales library before using percent_format(), otherwise it won't work. 0.9.0 doesn't automatically load supporting packages anymore. – Andrew Mar 16 '12 at 6:22
  • 1
    See ? stat_bin. It shows what additional columns are added to the data frame by ggplot2. All extra columns are of the form ..variable... – Ramnath May 17 '14 at 13:42
  • 1
    Does it make sense to replace aes(y = (..count..)/sum(..count..)) with simply aes(y = ..density..)? Visually it give very similar (but still different) picture – Alexander Kosenkov Jun 11 '14 at 22:01
  • 6
    In ggplot 0.9.3.1.0, you'll want to first load the scales library, then use scale_y_continuous(labels=percent) as mentioned in the docs – adilapapaya Oct 7 '14 at 22:56
48

With ggplot2 version 2.1.0 it is

+ scale_y_continuous(labels = scales::percent)
37

As of March 2017, with ggplot2 2.2.1 I think the best solution is explained in Hadley Wickham's R for data science book:

ggplot(mydataf) + stat_count(mapping = aes(x=foo, y=..prop.., group=1))

stat_count computes two variables: count is used by default, but you can choose to use prop which shows proportions.

  • 3
    This is the best answer as of June 2017, works with filling by group and with faceting. – Skumin Jun 29 '17 at 15:52
  • 1
    For some reason this doesn't allow me to use the fill mapping (no error is thrown, but no fill color is added). – Max Candocia Apr 7 '18 at 3:20
  • @MaxCandocia I had to remove group = 1 in order to get fill mapping. maybe it helps – Tjebo Apr 25 '18 at 18:27
  • 1
    If I remove the group parameter, though, it does not show the proper percentages, since everything belongs to its own group for each unique x value. – Max Candocia Apr 25 '18 at 19:41
19

If you want percentages on the y-axis and labeled on the bars:

library(ggplot2)
library(scales)
ggplot(mtcars, aes(x = as.factor(am))) +
  geom_bar(aes(y = (..count..)/sum(..count..))) +
  geom_text(aes(y = ((..count..)/sum(..count..)), label = scales::percent((..count..)/sum(..count..))), stat = "count", vjust = -0.25) +
  scale_y_continuous(labels = percent) +
  labs(title = "Manual vs. Automatic Frequency", y = "Percent", x = "Automatic Transmission")

enter image description here

When adding the bar labels, you may wish to omit the y-axis for a cleaner chart, by adding to the end:

  theme(
        axis.text.y=element_blank(), axis.ticks=element_blank(),
        axis.title.y=element_blank()
  )

enter image description here

6

If you want percentage labels but actual Ns on the y axis, try this:

    library(scales)
perbar=function(xx){
      q=ggplot(data=data.frame(xx),aes(x=xx))+
      geom_bar(aes(y = (..count..)),fill="orange")
       q=q+    geom_text(aes(y = (..count..),label = scales::percent((..count..)/sum(..count..))), stat="bin",colour="darkgreen") 
      q
    }
    perbar(mtcars$disp)
6

Here is a workaround for faceted data. (The accepted answer by @Andrew does not work in this case.) The idea is to calculate the percentage value using dplyr and then to use geom_col to create the plot.

library(ggplot2)
library(scales)
library(magrittr)
library(dplyr)

binwidth <- 30

mtcars.stats <- mtcars %>%
  group_by(cyl) %>%
  mutate(bin = cut(hp, breaks=seq(0,400, binwidth), 
               labels= seq(0+binwidth,400, binwidth)-(binwidth/2)),
         n = n()) %>%
  group_by(cyl, bin) %>%
  summarise(p = n()/n[1]) %>%
  ungroup() %>%
  mutate(bin = as.numeric(as.character(bin)))

ggplot(mtcars.stats, aes(x = bin, y= p)) +  
  geom_col() + 
  scale_y_continuous(labels = percent) +
  facet_grid(cyl~.)

This is the plot:

enter image description here

2

Note that if your variable is continuous, you will have to use geom_histogram(), as the function will group the variable by "bins".

df <- data.frame(V1 = rnorm(100))

ggplot(df, aes(x = V1)) +  
  geom_histogram(aes(y = (..count..)/sum(..count..))) 

# if you use geom_bar(), with factor(V1), each value of V1 will be treated as a
# different category. In this case this does not make sense, as the variable is 
# really continuous. With the hp variable of the mtcars (see previous answer), it 
# worked well since hp was not really continuous (check unique(mtcars$hp)), and one 
# can want to see each value of this variable, and not to group it in bins.
ggplot(df, aes(x = factor(V1))) +  
  geom_bar(aes(y = (..count..)/sum(..count..))) 

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