I'm looking for a way to label a stacked bar chart with percentages while the y-axis shows the original count (using ggplot). Here is a MWE for the plot without labels:

df <- as.data.frame(matrix(nrow = 7, ncol= 3,
                       data = c("ID1", "ID2", "ID3", "ID4", "ID5", "ID6", "ID7",
                                "north", "north", "north", "north", "south", "south", "south",
                                "A", "B", "B", "C", "A", "A", "C"),
                      byrow = FALSE))

colnames(df) <- c("ID", "region", "species")

p <- ggplot(df, aes(x = region, fill = species))
p  + geom_bar()

I have a much larger table and R counts quite nicely the different species for every region. Now, I would like to show both, the original count value (preferably on the y-axis) and the percentage (as label) to compare proportions of species between regions.

I tried out many things using geom_text() but I think the main difference to other questions (e.g. this one) is that

  • I do not have a separate column for y values (they are just the counts of different species per region) and
  • I need the labels per region to sum up to 100% (since they are considered to represent seperate populations), not all labels of the entire plot.

Any help is much appreciated!!

  • 5
    When you're doing something non-standard you usually need to compute the numbers yourself. It might be possible to do this inside ggplot, but it won't be straightforward. Better to use functions built for data manipulation then trying to do data manipulation within ggplot. Jun 14, 2016 at 16:54

2 Answers 2


As @Gregor mentioned, summarize the data separately and then feed the data summary to ggplot. In the code below, we use dplyr to create the summary on the fly:


ggplot(df %>% count(region, species) %>%    # Group by region and species, then count number in each group
         mutate(pct=n/sum(n),               # Calculate percent within each region
                ypos = cumsum(n) - 0.5*n),  # Calculate label positions
       aes(region, n, fill=species)) +
  geom_bar(stat="identity") +
  geom_text(aes(label=paste0(sprintf("%1.1f", pct*100),"%"), y=ypos))

enter image description here

Update: With dplyr 0.5 and later, you no longer need to provide a y-value to center the text within each bar. Instead you can use position_stack(vjust=0.5):

ggplot(df %>% count(region, species) %>%    # Group by region and species, then count number in each group
         mutate(pct=n/sum(n)),              # Calculate percent within each region
       aes(region, n, fill=species)) +
  geom_bar(stat="identity") +
  geom_text(aes(label=paste0(sprintf("%1.1f", pct*100),"%")), 
  • 1
    Thanks a lot, this is exactly what I was looking for!
    – Johanna
    Jun 15, 2016 at 8:22
  • 1
    Note that the code presented above will NOT produce the barplot shown! You have to use a group_by command in addition to that: df %>% group_by(region) %>% count(region, species) %>% mutate(pct=n/sum(n)
    – J_F
    Dec 7, 2017 at 9:48
  • 3
    group_by is unnecessary. count(x,y) is the equivalent of group_by(x,y) %>% tally.
    – eipi10
    Dec 7, 2017 at 16:36

I agree with Johanna. You could try:

d <- aggregate(.~region+species, df, length)
d$percent <- paste(round(ID/sum(ID)*100),'%',sep='')
ggplot(d, aes(region, ID, fill=species)) + geom_bar(stat='identity') + 
  geom_text(position='stack', aes(label=paste(round(ID/sum(ID)*100),'%',sep='')), vjust=5)
  • Thanks for you input, but in your solution the percentages per stack do not sum up to 100%. BTW: I guess it should be d$percent <- paste(round(d$ID/sum(d$ID)*100),'%',sep='').
    – Johanna
    Jun 15, 2016 at 8:24

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