Raincloud Plots

What they are for

A raincloud plot combines:

This makes it useful for showing:

Use a raincloud plot when you want to compare the distribution of a numeric variable across groups.

# Install if needed:
# install.packages(c("ggplot2", "ggdist", "palmerpenguins", "dplyr"))

library(ggplot2)
library(ggdist)
library(palmerpenguins)
## 
## Attaching package: 'palmerpenguins'
## The following objects are masked from 'package:datasets':
## 
##     penguins, penguins_raw
library(dplyr)
## 
## Attaching package: 'dplyr'
## The following objects are masked from 'package:stats':
## 
##     filter, lag
## The following objects are masked from 'package:base':
## 
##     intersect, setdiff, setequal, union
penguins_clean <- penguins %>%
  select(species, body_mass_g) %>%
  na.omit()

ggplot(penguins_clean, aes(x = species, y = body_mass_g, fill = species)) +
  stat_halfeye(
    adjust = 0.5,
    width = 0.6,
    justification = -0.2,
    .width = 0,
    point_colour = NA
  ) +
  geom_boxplot(
    width = 0.12,
    outlier.shape = NA,
    alpha = 0.5
  ) +
  geom_jitter(
    width = 0.08,
    alpha = 0.5,
    size = 1.5
  ) +
  labs(
    title = "Raincloud Plot of Penguin Body Mass",
    x = "Species",
    y = "Body Mass (g)"
  ) +
  theme_minimal() +
  theme(legend.position = "none")

If you have a second category you want to show….

library(ggplot2)
library(ggdist)
penguins_clean <- penguins %>%
  select(species, sex, body_mass_g) %>%
  na.omit()

ggplot(penguins_clean, aes(x = species, y = body_mass_g, fill = sex)) +
  
  # half-eye distribution
  stat_halfeye(
    position = position_dodge(width = 0.75),
    adjust = 0.6,
    width = 0.55,
    .width = 0,
    justification = -0.2,
    point_colour = NA,
    alpha = 0.5
  ) +
  
  # boxplot summary
  geom_boxplot(
    aes(color = sex),
    width = 0.12,
    position = position_dodge(width = 0.75),
    outlier.shape = NA,
    alpha = 0.65,
    linewidth = 0.5
  ) +
  
  # raw data points
  geom_jitter(
    aes(color = sex),
    position = position_jitterdodge(
      jitter.width = 0.08,
      dodge.width = 0.75
    ),
    size = 1.8,
    alpha = 0.25
  ) +
  
  labs(
    title = "Penguin Body Mass by Species and Sex",
    subtitle = "Raincloud plot showing distribution, summary statistics, and individual observations",
    x = "Species",
    y = "Body Mass (g)",
    fill = "Sex",
    color = "Sex"
  ) +
  
  scale_fill_manual(values = c("female" = "mistyrose3", "male" = "darkseagreen3")) +
  scale_color_manual(values = c("female" = "indianred3", "male" = "seagreen4")) +
  
  theme_classic(base_size = 13) +
  theme(
    plot.title = element_text(face = "bold", hjust = 0.5),
    plot.subtitle = element_text(hjust = 0.5),
    axis.title = element_text(face = "bold"),
    legend.position = "right"
  )

library(ggplot2)
library(ggdist)
library(palmerpenguins)
library(dplyr)

penguins_clean <- penguins %>%
  filter(!is.na(species), !is.na(body_mass_g)) %>%
  mutate(species = factor(species, levels = c("Adelie", "Chinstrap", "Gentoo")))

ggplot(penguins_clean, aes(x = species, y = body_mass_g)) +
  
  # half violin (raincloud shape)
  stat_halfeye(
    adjust = 0.6,
    width = 0.6,
    .width = 0,
    justification = -0.3,
    point_colour = NA,
    fill = "#74a9cf",
    alpha = 0.7
  ) +
  
  # boxplot
  geom_boxplot(
    width = 0.12,
    outlier.shape = NA,
    fill = "white",
    color = "black",
    linewidth = 0.8
  ) +
  
  # points (aligned dots instead of jitter chaos)
  geom_dotplot(
    binaxis = "y",
    stackdir = "down",
    dotsize = 0.6,
    fill = "gray40",
    alpha = 0.7
  ) +
  
  labs(
    title = "Penguin Body Mass by Species",
    x = "Species",
    y = "Body Mass (g)"
  ) +
  
  theme_classic(base_size = 16) +
  theme(
    plot.title = element_text(face = "bold", hjust = 0.5),
    axis.title = element_text(face = "bold")
  )
## Bin width defaults to 1/30 of the range of the data. Pick better value with
## `binwidth`.

Sina Plots

A sina plot is similar to a jitter plot, but the points are spread based on the density of the data. That means:

This makes it a nice alternative to:

It shows both individual observations and distribution shape.

Use a sina plot when you want to show raw data points without them overlapping too much, while also giving a sense of density.

Points are not randomly scattered Wider sections indicate a greater concentration of values

# Install if needed:
# install.packages(c("ggplot2", "ggforce", "palmerpenguins", "dplyr"))

library(ggplot2)
library(ggforce)
library(palmerpenguins)
library(dplyr)

penguins_clean <- penguins %>%
  select(species, flipper_length_mm) %>%
  na.omit()

ggplot(penguins_clean, aes(x = species, y = flipper_length_mm, color = species)) +
  geom_sina(alpha = 0.7, size = 3) +
  labs(
    title = "Sina Plot of Penguin Flipper Length",
    x = "Species",
    y = "Flipper Length (mm)"
  ) +
  theme_minimal() +
  theme(legend.position = "none")

Cleveland Plots

A Cleveland dot plot is used to compare values across categories using dots instead of bars.

It is helpful because:

Use a Cleveland dot plot when comparing one summary value across categories.

Examples:

This example compares the average body mass of penguin species.

# Install if needed:
# install.packages(c("ggplot2", "palmerpenguins", "dplyr"))

library(ggplot2)
library(palmerpenguins)
library(dplyr)

species_summary <- penguins %>%
  group_by(species) %>%
  summarise(mean_body_mass = mean(body_mass_g, na.rm = TRUE)) %>%
  arrange(mean_body_mass)

ggplot(species_summary, aes(x = mean_body_mass, y = reorder(species, mean_body_mass))) +
  geom_point(size = 4) +
  labs(
    title = "Cleveland Dot Plot of Mean Penguin Body Mass",
    x = "Mean Body Mass (g)",
    y = "Species"
  ) +
  theme_minimal()

If you have groups…

grouped_summary <- penguins %>%
  group_by(species, sex) %>%
  summarise(mean_bill_length = mean(bill_length_mm, na.rm = TRUE), .groups = "drop")

ggplot(grouped_summary, aes(x = mean_bill_length, y = species, color = sex)) +
  geom_point(size = 3, position = position_dodge(width = 0.4)) +
  labs(
    title = "Grouped Cleveland Dot Plot of Mean Bill Length",
    x = "Mean Bill Length (mm)",
    y = "Species",
    color = "Sex"
  ) +
  theme_minimal()

Forest Plots

A forest plot shows:

Use a forest plot when:

library(ggplot2)
library(dplyr)
library(palmerpenguins)

summary_data <- penguins %>%
  group_by(species) %>%
  summarise(
    mean_mass = mean(body_mass_g, na.rm = TRUE),
    sd = sd(body_mass_g, na.rm = TRUE),
    n = n(),
    se = sd / sqrt(n),
    lower = mean_mass - 1.96 * se,
    upper = mean_mass + 1.96 * se
  )


ggplot(summary_data, aes(x = mean_mass, y = reorder(species, mean_mass))) +
  geom_point(size = 4) +
  geom_errorbarh(aes(xmin = lower, xmax = upper), height = 0.2) +
  labs(
    title = "Forest Plot of Mean Penguin Body Mass",
    x = "Mean Body Mass (g) with 95% CI",
    y = "Species"
  ) +
  theme_minimal()
## Warning: `geom_errorbarh()` was deprecated in ggplot2 4.0.0.
## ℹ Please use the `orientation` argument of `geom_errorbar()` instead.
## This warning is displayed once per session.
## Call `lifecycle::last_lifecycle_warnings()` to see where this warning was
## generated.
## `height` was translated to `width`.

If you have grouped data…

summary_grouped <- penguins %>%
  group_by(species, sex) %>%
  summarise(
    mean_mass = mean(body_mass_g, na.rm = TRUE),
    sd = sd(body_mass_g, na.rm = TRUE),
    n = n(),
    se = sd / sqrt(n),
    lower = mean_mass - 1.96 * se,
    upper = mean_mass + 1.96 * se,
    .groups = "drop"
  )

ggplot(summary_grouped, aes(x = mean_mass, y = species, color = sex)) +
  geom_point(position = position_dodge(width = 0.5), size = 3) +
  geom_errorbarh(
    aes(xmin = lower, xmax = upper),
    position = position_dodge(width = 0.5),
    height = 0.2
  ) +
  labs(
    title = "Forest Plot of Body Mass by Species and Sex",
    x = "Mean Body Mass (g) with 95% CI",
    y = "Species",
    color = "Sex"
  ) +
  theme_minimal() 
## `height` was translated to `width`.

Homework

You will be using this dataset for the homework

library(ggplot2)
library(dplyr)
library(palmerpenguins)

penguins_clean <- penguins %>%
  filter(!is.na(species), !is.na(sex), !is.na(body_mass_g))

Part 1. Create one plot of your choice to visualize the relationship between:

  • Species
  • Mass
  • Sex
ggplot(penguins_clean, aes(x = species, y = body_mass_g, fill = sex)) +
  geom_boxplot() +
  labs(
    title = "Penguin Body Mass",
    x = "Species",
    y = "Body Mass (g)"
  ) +
  theme_minimal()

  1. What plot type did you choose? I chose a boxplot
  2. Why is this plot appropriate for this data? Shows the distribution of body mass of the individual observation for each species.
  3. What patterns do you observe? The Gentoo penguins have the highest body mass overall. Also male penguins always seem heavier than the female.

Part 2. Create a raincloud plot showing body mass across species.

ggplot(penguins_clean, aes(x = species, y = body_mass_g, fill = species)) +
  stat_halfeye(.width = 0, justification = -0.2, point_colour = NA) +
  geom_boxplot(width = 0.12, outlier.shape = NA) +
  geom_jitter(width = 0.1, alpha = 0.3)

  1. Which species has the highest body mass? Gentoo penguins have the highest body mass.
  2. Which species shows the greatest variability? Gentoo penguins because their distribution and spread are wider.
  3. What does this plot show that a boxplot alone would not? Shows the full distribution and density shape of the data

Part 3. Create a forest plot. Now summarize the data and visualize uncertainty.

# Don't forget, you will need to make summary data.
summary_data <- penguins_clean %>%
  group_by(species, sex) %>%
  summarise(
    mean_mass = mean(body_mass_g),
    se = sd(body_mass_g) / sqrt(n()),
    lower = mean_mass - 1.96 * se,
    upper = mean_mass + 1.96 * se,
    .groups = "drop"
  )

ggplot(summary_data,
       aes(x = mean_mass, y = species, color = sex)) +
  geom_point(position = position_dodge(width = 0.5), size = 3) +
  geom_errorbarh(
    aes(xmin = lower, xmax = upper),
    position = position_dodge(width = 0.5),
    height = 0.2
  ) +
  theme_minimal()
## `height` was translated to `width`.

  1. Which group has the highest mean body mass? Male Gentoo penguins have the highest mean body mass.
  2. Which group has the widest confidence interval? Why? It was chinstrap with the widest confidence interval, and that usually means greater variability or small sample size.
  3. Do any groups appear clearly different (based on overlap)? The male chinstrap were the most different.