22

I need to draw a pyramid plot, like the one attached.

alt text

I found an example using R (but not ggplot) from here, can anyone give me some hint on doing this using ggplot? Thanks!

1
  • Just discovered a function with a similar concept in Hmisc. histbackback(rnorm(20), rnorm(30)). – Roman Luštrik May 10 '11 at 7:53
19

This is essentially a back-to-back barplot, something like the ones generated using ggplot2 in the excellent learnr blog: http://learnr.wordpress.com/2009/09/24/ggplot2-back-to-back-bar-charts/

You can use coord_flip with one of those plots, but I'm not sure how you get it to share the y-axis labels between the two plots like what you have above. The code below should get you close enough to the original:

First create a sample data frame of data, convert the Age column to a factor with the required break-points:

require(ggplot2)
df <- data.frame(Type = sample(c('Male', 'Female', 'Female'), 1000, replace=TRUE),
                 Age = sample(18:60, 1000, replace=TRUE))

AgesFactor <- ordered( cut(df$Age, breaks = c(18,seq(20,60,5)), 
                           include.lowest = TRUE))

df$Age <- AgesFactor

Now start building the plot: create the male and female plots with the corresponding subset of the data, suppressing legends, etc.

gg <- ggplot(data = df, aes(x=Age))

gg.male <- gg + 
  geom_bar( subset = .(Type == 'Male'), 
            aes( y = ..count../sum(..count..), fill = Age)) +
  scale_y_continuous('', formatter = 'percent') + 
  opts(legend.position = 'none') +
  opts(axis.text.y = theme_blank(), axis.title.y = theme_blank()) + 
  opts(title = 'Male', plot.title = theme_text( size = 10) ) +  
  coord_flip()    

For the female plot, reverse the 'Percent' axis using trans = "reverse"...

gg.female <- gg + 
  geom_bar( subset = .(Type == 'Female'), 
            aes( y = ..count../sum(..count..), fill = Age)) +
  scale_y_continuous('', formatter = 'percent', trans = 'reverse') + 
  opts(legend.position = 'none') +
  opts(axis.text.y = theme_blank(), 
       axis.title.y = theme_blank(), 
       title = 'Female') +
  opts( plot.title = theme_text( size = 10) ) +
  coord_flip()

Now create a plot just to display the age-brackets using geom_text, but also use a dummy geom_bar to ensure that the scaling of the "age" axis in this plot is identical to those in the male and female plots:

gg.ages <- gg + 
  geom_bar( subset = .(Type == 'Male'), aes( y = 0, fill = alpha('white',0))) +
  geom_text( aes( y = 0,  label = as.character(Age)), size = 3) +
  coord_flip() +
  opts(title = 'Ages',
       legend.position = 'none' ,
       axis.text.y = theme_blank(),
       axis.title.y = theme_blank(),
       axis.text.x = theme_blank(),
       axis.ticks = theme_blank(),          
       plot.title = theme_text( size = 10))       

Finally, arrange the plots on a grid, using the method in Hadley Wickham's book:

grid.newpage()

pushViewport( viewport( layout = grid.layout(1,3, widths = c(.4,.2,.4))))

vplayout <- function(x, y) viewport(layout.pos.row = x, layout.pos.col = y)

print(gg.female, vp = vplayout(1,1))
print(gg.ages,   vp = vplayout(1,2))
print(gg.male,   vp = vplayout(1,3))

alt text

0
22

I did it with a little workaround - instead of using geom_bar, I used geom_linerange and geom_label.

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

population <- read.csv("https://raw.githubusercontent.com/andriy-gazin/datasets/master/ageSexDistribution.csv")

population %<>% 
  tidyr::gather(sex, number, -year, - ageGroup) %>% 
  mutate(ageGroup = gsub("100 і старше", "≥100", ageGroup), 
     ageGroup = factor(ageGroup,
                        ordered = TRUE,
                        levels = c("0-4", "5-9", "10-14", "15-19", "20-24",
                                   "25-29", "30-34", "35-39", "40-44", 
                                   "45-49", "50-54", "55-59", "60-64",
                                   "65-69", "70-74", "75-79", "80-84",
                                   "85-89", "90-94", "95-99", "≥100")),
     number = ifelse(sex == "male", number*-1/10^6, number/10^6)) %>% 
  filter(year %in% c(1990, 1995, 2000, 2005, 2010, 2015))

png(filename = "~/R/pyramid.png", width = 900, height = 1000, type = "cairo")

ggplot(population, aes(x = ageGroup, color = sex))+
  geom_linerange(data = population[population$sex=="male",], 
                 aes(ymin = -0.3, ymax = -0.3+number), size = 3.5, alpha = 0.8)+
  geom_linerange(data = population[population$sex=="female",], 
                 aes(ymin = 0.3, ymax = 0.3+number), size = 3.5, alpha = 0.8)+
  geom_label(aes(x = ageGroup, y = 0, label = ageGroup, family = "Ubuntu Condensed"), 
         inherit.aes = F,
         size = 3.5, label.padding = unit(0.0, "lines"), label.size = 0,
         label.r = unit(0.0, "lines"), fill = "#EFF2F4", alpha = 0.9, color = "#5D646F")+
  scale_y_continuous(breaks = c(c(-2, -1.5, -1, -0.5, 0) + -0.3, c(0, 0.5, 1, 1.5, 2)+0.3),
                 labels = c("2", "1.5", "1", "0.5", "0", "0", "0.5", "1", "1.5", "2"))+
  facet_wrap(~year, ncol = 2)+
  coord_flip()+
labs(title = "Піраміда населення України",
   subtitle = "Статево-вікові групи у 1990-2015 роках, млн осіб",
   caption = "Дані: Держкомстат України")+
  scale_color_manual(name = "", values = c(male = "#3E606F", female = "#8C3F4D"),
                 labels = c("жінки", "чоловіки"))+
  theme_minimal(base_family = "Ubuntu Condensed")+
theme(text = element_text(color = "#3A3F4A"),
    panel.grid.major.y = element_blank(),
    panel.grid.minor = element_blank(),
    panel.grid.major.x = element_line(linetype = "dotted", size = 0.3, color = "#3A3F4A"),
    axis.title = element_blank(),
    plot.title = element_text(face = "bold", size = 36, margin = margin(b = 10), hjust = 0.030),
    plot.subtitle = element_text(size = 16, margin = margin(b = 20), hjust = 0.030),
    plot.caption = element_text(size = 14, margin = margin(b = 10, t = 50), color = "#5D646F"),
    axis.text.x = element_text(size = 12, color = "#5D646F"),
    axis.text.y = element_blank(),
    strip.text = element_text(color = "#5D646F", size = 18, face = "bold", hjust = 0.030),
    plot.background = element_rect(fill = "#EFF2F4"),
    plot.margin = unit(c(2, 2, 2, 2), "cm"),
    legend.position = "top",
    legend.margin  = unit(0.1, "lines"),
    legend.text  = element_text(family = "Ubuntu Condensed", size = 14),
    legend.text.align = 0)

dev.off()

and here's the resulting plot:

and here's the resulting plot

2
  • 1
    Using the current released edition of ggplot2, legend.marginshould be legend.spacing. – Tavrock Feb 23 '17 at 8:33
  • looks great but the data is no longer available to reproduce. – Oliver René Dec 4 '20 at 21:07
12

A slight tweak:

library(ggplot2)
library(plyr)
library(gridExtra)

## The Data
df <- data.frame(Type = sample(c('Male', 'Female', 'Female'), 1000, replace=TRUE),
    Age = sample(18:60, 1000, replace=TRUE))

AgesFactor <- ordered(cut(df$Age, breaks = c(18,seq(20,60,5)), 
     include.lowest = TRUE))

df$Age <- AgesFactor

## Plotting
gg <- ggplot(data = df, aes(x=Age))

gg.male <- gg + 
    geom_bar( data=subset(df,Type == 'Male'), 
        aes( y = ..count../sum(..count..), fill = Age)) +
    scale_y_continuous('', labels = scales::percent) + 
    theme(legend.position = 'none',
        axis.title.y = element_blank(),
        plot.title = element_text(size = 11.5),
        plot.margin=unit(c(0.1,0.2,0.1,-.1),"cm"),
        axis.ticks.y = element_blank(), 
        axis.text.y = theme_bw()$axis.text.y) + 
    ggtitle("Male") + 
    coord_flip()    

gg.female <-  gg + 
    geom_bar( data=subset(df,Type == 'Female'), 
        aes( y = ..count../sum(..count..), fill = Age)) +
    scale_y_continuous('', labels = scales::percent, 
                   trans = 'reverse') + 
    theme(legend.position = 'none',
        axis.text.y = element_blank(),
        axis.ticks.y = element_blank(), 
        plot.title = element_text(size = 11.5),
        plot.margin=unit(c(0.1,0,0.1,0.05),"cm")) + 
    ggtitle("Female") + 
    coord_flip() + 
    ylab("Age")

## Plutting it together
grid.arrange(gg.female,
    gg.male,
    widths=c(0.4,0.6),
    ncol=2
)

enter image description here

I would still want to play with margins a bit more (maybe panel.margin would help in the theme call as well).

2
  • 1
    Much better, thnx. Seems that the opts() call is deprecated and use of theme() is these days valid. – Nikos Alexandris Aug 24 '14 at 9:58
  • 1
    I am getting an error; Error: Unknown parameters: subset. I suspect its from line 18; geom_bar( subset = .(Type == 'Male'). Is this a deprecated syntax? I am using R 3.3.0 and ggplot2 2.1.0 – user5359531 Jul 28 '16 at 3:39
6

I've played with the panel tables resulting from facet_wrap() quite a bit to get mirrored axes in separate facets - I think the result is very suitable for population pyramids. You can look at the code here.

Then, using the facet_share() function:

library(magrittr)
library(ggpol)

population <- read.csv("https://raw.githubusercontent.com/andriy-gazin/datasets/master/ageSexDistribution.csv", encoding = "UTF-8")

population %<>% 
  mutate(ageGroup = factor(ageGroup, levels = ageGroup[seq(length(levels(ageGroup)))])) %>%
  filter(year == 2015) %>%
  mutate(male = male * -1) %>% 
  gather(gender, count, -year, -ageGroup) %>%
  mutate(gender = factor(gender, levels = c("male", "female"))) %>%
  filter(ageGroup != "100 і старше")

ggplot(population, aes(x = ageGroup, y = count, fill = gender)) +
  geom_bar(stat = "identity") + 
  facet_share(~gender, dir = "h", scales = "free", reverse_num = TRUE) +
  coord_flip() +
  theme_minimal()

enter image description here

1
  • The data to reproduce this example are no longer available – dcossyleon Feb 13 at 16:26
0

I liked @andriy's plots enough to make a simplified custom function out of it:

Data should look like this, and ageGroup be an ordered factor.

head(population)
#   ageGroup  sex   number
# 1      0-4 male 1.896459
# 2      5-9 male 1.914255
# 3    10-14 male 1.832594
# 4    15-19 male 1.849453
# 5    20-24 male 1.658733
# 6    25-29 male 1.918060

Then you provide the data and the breaks :

pyramid(population,c(0, 0.5, 1, 1.5, 2))

If needed, the creation of age groups can be done by using function age_cat, that I took from this blog. See code below. I slightly edited the original name and default parameters.

For example :

age_column <- sample(0:110,10000,TRUE)
table(age_cat(age_column))
# 0-9 10-19 20-29 30-39 40-49 50-59 60-69 70-79 80-89 90-99  100+ 
# 885   836   885   927   942   953   886   882   935   872   997

functions

pyramid <- function(data,.breaks){
ggplot(data, aes(x = ageGroup, color = sex))+
  geom_linerange(data = data[data$sex=="male",],
                 aes(ymin = -tail(.breaks,1)/7, ymax = -tail(.breaks,1)/7-number), size = 3.5, alpha = 0.8)+
  geom_linerange(data = data[data$sex=="female",],
                 aes(ymin = tail(.breaks,1)/7, ymax = tail(.breaks,1)/7+number), size = 3.5, alpha = 0.8)+
  geom_label(aes(x = ageGroup, y = 0, label = ageGroup),
             inherit.aes = F,
             size = 3.5, label.padding = unit(0.0, "lines"), label.size = NA, 
             label.r = unit(0.0, "lines"), fill = "white", alpha = 0.9, color = "#5D646F")+
  scale_y_continuous(breaks = c(-rev(.breaks) -tail(.breaks,1)/7, .breaks+tail(.breaks,1)/7),
                     labels = c(rev(.breaks),.breaks))+
  coord_flip()+
  scale_color_manual(name = "", values = c(male = "#3E606F", female = "#8C3F4D"))+
  theme_minimal()+
  theme(text = element_text(color = "#3A3F4A"),
        panel.grid.major.y = element_blank(),
        panel.grid.minor = element_blank(),
        panel.grid.major.x = element_line(linetype = "dotted", size = 0.3, color = "#3A3F4A"),
        axis.title = element_blank(),
        axis.text.x = element_text(size = 12, color = "#5D646F"),
        axis.text.y = element_blank(),
        strip.text = element_text(color = "#5D646F", size = 18, face = "bold", hjust = 0.030),
        legend.position = "none")
}

age_cat <- function(x, lower = 0, upper = 100, by = 5,
                    sep = "-", above.char = "+") {

  labs <- c(paste(seq(lower, upper - by, by = by),
                  seq(lower + by - 1, upper - 1, by = by),
                  sep = sep),
            paste(upper, above.char, sep = ""))

  cut(floor(x), breaks = c(seq(lower, upper, by = by), Inf),
      right = FALSE, labels = labs)
}

data

library(dplyr)
library(ggplot2)
population <- read.csv("https://raw.githubusercontent.com/andriy-gazin/datasets/master/ageSexDistribution.csv")
population <- population %>% 
  tidyr::gather(sex, number, -year, - ageGroup) %>% 
  mutate(ageGroup = factor(ageGroup,
                           ordered = TRUE,
                           levels = c("0-4", "5-9", "10-14", "15-19", "20-24",
                                      "25-29", "30-34", "35-39", "40-44", 
                                      "45-49", "50-54", "55-59", "60-64",
                                      "65-69", "70-74", "75-79", "80-84",
                                      "85-89", "90-94", "95-99", "100+")),
         ageGroup = `[<-`(ageGroup,is.na(ageGroup),value="100+"),
         number = number/10^6) %>%
  dplyr::filter(year == 1990) %>%
  select(-year)

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.