# Simpler population pyramid in ggplot2

I want to create a population pyramid with ggplot2. This question was asked before, but I believe the solution must be far simpler.

``````test <- (data.frame(v=rnorm(1000), g=c('M','F')))
require(ggplot2)
ggplot(data=test, aes(x=v)) +
geom_histogram() +
coord_flip() +
facet_grid(. ~ g)
``````

Produces this image. In my opinion, the only step missing here to create a population pyramid is to invert the x axis of the first facet, so that is goes from 50 to 0, while keeping the second untouched. Can anyone help? • I think that stackoverflow.com/questions/4559229/… is a better fit for a previous question on the same topic. Sometimes one has to move from `ggplot2`.
– mnel
Feb 4, 2013 at 3:50
• @dmvianna I'm an avid `ggplot2` user but when I recently had to create a population pyramid I eventually gave up and used `pyramid.plot` from the `plotrix` package. It was not difficult and the results were perfectly acceptable to my eyes. Frankly much better than the result in the linked question using `ggplot` or my own efforts with `ggplot` for that matter. Feb 4, 2013 at 4:16

Here is a solution without the faceting. First, create data frame. I used values from 1 to 20 to ensure that none of values is negative (with population pyramids you don't get negative counts/ages).

``````test <- data.frame(v=sample(1:20,1000,replace=T), g=c('M','F'))
``````

Then combined two `geom_bar()` calls separately for each of `g` values. For `F` counts are calculated as they are but for `M` counts are multiplied by -1 to get bar in opposite direction. Then `scale_y_continuous()` is used to get pretty values for axis.

``````require(ggplot2)
require(plyr)
ggplot(data=test,aes(x=as.factor(v),fill=g)) +
geom_bar(subset=.(g=="F")) +
geom_bar(subset=.(g=="M"),aes(y=..count..*(-1))) +
scale_y_continuous(breaks=seq(-40,40,10),labels=abs(seq(-40,40,10))) +
coord_flip()
``````

## UPDATE

As argument `subset=.` is deprecated in the latest `ggplot2` versions the same result can be atchieved with function `subset()`.

``````ggplot(data=test,aes(x=as.factor(v),fill=g)) +
geom_bar(data=subset(test,g=="F")) +
geom_bar(data=subset(test,g=="M"),aes(y=..count..*(-1))) +
scale_y_continuous(breaks=seq(-40,40,10),labels=abs(seq(-40,40,10))) +
coord_flip()
`````` ## UPDATE 2

As the dot-dot notation (`..count..`) was deprecated in ggplot2 3.4.0 it might be useful to update the 2nd call of `geom_bar` to use `after_stat` instead, so:
``````ggplot(data=test,aes(x=as.factor(v),fill=g)) +
geom_bar(data=subset(test,g=="F")) +
geom_bar(data=subset(test,g=="M"),aes(y=after_stat(count)*(-1))) +
scale_y_continuous(breaks=seq(-40,40,10),labels=abs(seq(-40,40,10))) +
coord_flip()
``````
• I get an error: 'Error in do.call("layer", list(mapping = mapping, data = data, stat = stat, : could not find function "."' but '+ geom_bar(data=subset(test, g=="F"))' worked for me Feb 12, 2013 at 2:40
• You may need to explicitly load the `plyr` package using `library(plyr)`
– mnel
Feb 12, 2013 at 3:31
• cool plot. I get a warning: Warning message: In loop_apply(n, do.ply) : Stacking not well defined when ymin != 0 Do you know what it means? Jul 1, 2015 at 19:13
• @ExpectoPatronum this is warning occures because we use negative values for stacking in barplot. Jul 2, 2015 at 4:47
• Found the error of "Error: Unknown parameters: subset" under ggplot 2.1.0. It's better to update the answer for the new version of ggplot. Thanks. Jun 19, 2016 at 11:57

A general ggplot code template for population pyramids (below) that

1. Uses `geom_col()` rather than `geom_bar()` which has a nicer default `stat` and avoids the need for `coord_flip()`
2. Avoids manually setting label breaks by using `labels = abs` in the scale function.
3. Has equal male and female horizontal axes (and labels) to enable easier comparisons between sexes - using `scale_x_symmetric()` in the lemon package.
4. Uses only one geom, avoiding the need to subset the data; this is useful if you want to create multiple pyramids in a facet plot.

Creating the data...

``````set.seed(100)
a <- seq(from = 0, to = 90, by = 10)
d <- data.frame(age = paste(a, a + 10, sep = "-"),
sex = rep(x = c("Female", "Male"), each = 10),
pop = sample(x = 1:100, size = 20))
#     age    sex pop
# 1  0-10 Female  74
# 2 10-20 Female  89
# 3 20-30 Female  78
# 4 30-40 Female  23
# 5 40-50 Female  86
# 6 50-60 Female  70
``````

Plot code ...

``````library(ggplot2)
library(lemon)

ggplot(data = d,
mapping = aes(x = ifelse(test = sex == "Male", yes = -pop, no = pop),
y = age, fill = sex)) +
geom_col() +
scale_x_symmetric(labels = abs) +
labs(x = "Population")
`````` • Works under new version of `ggplot` 2.1.0. Jun 19, 2016 at 11:59
• This is a simple method and works quite well. Should be the top answer. Apr 19, 2018 at 14:40
• Clean, simple and extensible - this is awesome! Oct 9, 2019 at 9:00

Extending @gjabel's post, here is a cleaner population pyramid, again just using ggplot2.

``````popPy1 <- ggplot(data = venDemo,
mapping = aes(
x = AgeName,
y = ifelse(test = sex == "M",  yes = -Percent, no = Percent),
fill = Sex2,
label=paste(round(Percent*100, 0), "%", sep="")
)) +
geom_bar(stat = "identity") +
#geom_text( aes(label = TotalCount, TotalCount = TotalCount + 0.05)) +
geom_text(hjust=ifelse(test = venDemo\$sex == "M",  yes = 1.1, no = -0.1), size=6, colour="#505050") +
#  scale_y_continuous(limits=c(0,max(appArr\$Count)*1.7)) +
# The 1.1 at the end is a buffer so there is space for the labels on each side
scale_y_continuous(labels = abs, limits = max(venDemo\$Percent) * c(-1,1) * 1.1) +
# Custom colours
scale_fill_manual(values=as.vector(c("#d23f67","#505050"))) +
# Remove the axis labels and the fill label from the legend - these are unnecessary for a Population Pyramid
labs(
x = "",
y = "",
fill="",
family=fontsForCharts
) +
theme_minimal(base_family=fontsForCharts, base_size=20) +
coord_flip() +
# Remove the grid and the scale
theme(
panel.grid.major = element_blank(),
panel.grid.minor = element_blank(),
axis.text.x=element_blank(),
axis.text.y=element_text(family=fontsForCharts, size=20),
strip.text.x=element_text(family=fontsForCharts, size=24),
legend.position="bottom",
legend.text=element_text(size=20)
)

popPy1
`````` Check out my population pyramid: with your generated data you could do this:

``````
# import the packages in an elegant way ####

packages <- c("tidyverse")

installed_packages <- packages %in% rownames(installed.packages())

if (any(installed_packages == FALSE)) {
install.packages(packages[!installed_packages])
}

invisible(lapply(packages, library, character.only = TRUE))

# _________________________________________________________

# create data ####

sex_age <- data.frame(age=rnorm(n = 10000, mean = 50, sd = 9), sex=c(1, 2)))

# _________________________________________________________

# prepare data + build the plot ####

sex_age %>%
mutate(sex = ifelse(sex == 1, "Male",
ifelse(sex == 2, "Female", NA))) %>% # construct from the sex variable: "Male","Female"
select(age, sex) %>% # pick just the two variables
table() %>% # table it
as.data.frame.matrix() %>% # create data frame matrix
rownames_to_column("age") %>% # rownames are now the age variable
mutate(across(everything(), as.numeric),
# mutate everything as.numeric()
age = ifelse(
# create age groups 5 year steps
age >= 18 & age <= 22 ,
"18-22",
ifelse(
age >= 23 & age <= 27,
"23-27",
ifelse(
age >= 28 & age <= 32,
"28-32",
ifelse(
age >= 33 & age <= 37,
"33-37",
ifelse(
age >= 38 & age <= 42,
"38-42",
ifelse(
age >= 43 & age <= 47,
"43-47",
ifelse(
age >= 48 & age <= 52,
"48-52",
ifelse(
age >= 53 & age <= 57,
"53-57",
ifelse(
age >= 58 & age <= 62,
"58-62",
ifelse(
age >= 63 & age <= 67,
"63-67",
ifelse(
age >= 68 & age <= 72,
"68-72",
ifelse(
age >= 73 & age <= 77,
"73-77",
ifelse(age >= 78 &
age <= 82, "78-82", "83 and older")
)
)
)
)
)
)
)
)
)
)
)
)) %>%
group_by(age) %>% # group by the age
summarize(Female = sum(Female), # summarize the sum of each sex
Male = sum(Male)) %>%
pivot_longer(names_to = 'sex',
# pivot longer
values_to = 'Population',
cols = 2:3) %>%
mutate(
# create a pop perc and a signal 1 / -1
PopPerc = case_when(
sex == 'Male' ~ round(Population / sum(Population) * 100, 2),
TRUE ~ -round(Population / sum(Population) *
100, 2)
),
signal = case_when(sex == 'Male' ~ 1,
TRUE ~ -1)
) %>%
ggplot() + # build the plot with ggplot2
geom_bar(aes(x = age, y = PopPerc, fill = sex), stat = 'identity') + # define aesthetics
geom_text(aes(
# create the text
x = age,
y = PopPerc + signal * .3,
label = abs(PopPerc)
)) +
coord_flip() + # flip the plot
scale_fill_manual(name = '', values = c('darkred', 'steelblue')) + # define the colors (darkred = female, steelblue = male)
scale_y_continuous(
# scale the y-lab
breaks = seq(-10, 10, 1),
labels = function(x) {
paste(abs(x), '%')
}
) +
labs(
# name the labs
x = '',
y = 'Participants in %',
title = 'Population Pyramid',
subtitle = paste0('N = ', nrow(sex_age)),
caption = 'Source: '
) +
theme(
# costume the theme
axis.text.x = element_text(vjust = .5),
panel.grid.major.y = element_line(color = 'lightgray', linetype =
'dashed'),
legend.position = 'top',
legend.justification = 'center'
) +
theme_classic() # choose theme
``````
• I’m sure R would have a better solution than that sequence of `ifelse`. Keep looking! Apr 26, 2022 at 0:14