Overview
Teaching: 60 min
Exercises: 20 minQuestions
How can I create publication-quality graphics in R?
Objectives
To be able to use ggplot2 to generate publication quality graphics.
To understand the basic grammar of graphics, including the aesthetics and geometry layers, adding statistics, transforming scales, and coloring or panelling by groups.
Plotting our data is one of the best ways to quickly explore it and the various relationships between variables.
There are three main plotting systems in R, the base plotting system, the lattice package, and the ggplot2 package.
Today we’ll be learning about the ggplot2 package, because it is the most effective for creating publication quality graphics.
ggplot2 is built on the grammar of graphics, the idea that any plot can be expressed from the same set of components: a data set, a coordinate system, and a set of geoms–the visual representation of data points.
The key to understanding ggplot2 is thinking about a figure in layers. This idea may be familiar to you if you have used image editing programs like Photoshop, Illustrator, or Inkscape.
Let’s start off with an example:
library("ggplot2")
Warning: package 'ggplot2' was built under R version 3.1.3
ggplot(data = gapminder, aes(x = gdpPercap, y = lifeExp)) +
geom_point()
So the first thing we do is call the ggplot
function. This function lets R
know that we’re creating a new plot, and any of the arguments we give the
ggplot
function are the global options for the plot: they apply to all
layers on the plot.
We’ve passed in two arguments to ggplot
. First, we tell ggplot
what data we
want to show on our figure, in this example the gapminder data we read in
earlier. For the second argument we passed in the aes
function, which
tells ggplot
how variables in the data map to aesthetic properties of
the figure, in this case the x and y locations. Here we told ggplot
we
want to plot the “gdpPercap” column of the gapminder data frame on the x-axis, and
the “lifeExp” column on the y-axis. Notice that we didn’t need to explicitly
pass aes
these columns (e.g. x = gapminder[, "gdpPercap"]
), this is because
ggplot
is smart enough to know to look in the data for that column!
By itself, the call to ggplot
isn’t enough to draw a figure:
ggplot(data = gapminder, aes(x = gdpPercap, y = lifeExp))
We need to tell ggplot
how we want to visually represent the data, which we
do by adding a new geom layer. In our example, we used geom_point
, which
tells ggplot
we want to visually represent the relationship between x and
y as a scatterplot of points:
ggplot(data = gapminder, aes(x = gdpPercap, y = lifeExp)) +
geom_point()
Challenge 1
Modify the example so that the figure visualise how life expectancy has changed over time:
ggplot(data = gapminder, aes(x = gdpPercap, y = lifeExp)) + geom_point()
Hint: the gapminder dataset has a column called “year”, which should appear on the x-axis.
Solution to challenge 1
Modify the example so that the figure visualise how life expectancy has changed over time:
ggplot(data = gapminder, aes(x = year, y = lifeExp)) + geom_point()
Challenge 2
In the previous examples and challenge we’ve used the
aes
function to tell the scatterplot geom about the x and y locations of each point. Another aesthetic property we can modify is the point color. Modify the code from the previous challenge to color the points by the “continent” column. What trends do you see in the data? Are they what you expected?Solution to challenge 2
In the previous examples and challenge we’ve used the
aes
function to tell the scatterplot geom about the x and y locations of each point. Another aesthetic property we can modify is the point color. Modify the code from the previous challenge to color the points by the “continent” column. What trends do you see in the data? Are they what you expected?ggplot(data = gapminder, aes(x = year, y = lifeExp, color=continent)) + geom_point()
Using a scatterplot probably isn’t the best for visualizing change over time.
Instead, let’s tell ggplot
to visualize the data as a line plot:
ggplot(data = gapminder, aes(x=year, y=lifeExp, by=country, color=continent)) +
geom_line()
Instead of adding a geom_point
layer, we’ve added a geom_line
layer. We’ve
added the by aesthetic, which tells ggplot
to draw a line for each
country.
But what if we want to visualize both lines and points on the plot? We can simply add another layer to the plot:
ggplot(data = gapminder, aes(x=year, y=lifeExp, by=country, color=continent)) +
geom_line() + geom_point()
It’s important to note that each layer is drawn on top of the previous layer. In this example, the points have been drawn on top of the lines. Here’s a demonstration:
ggplot(data = gapminder, aes(x=year, y=lifeExp, by=country)) +
geom_line(aes(color=continent)) + geom_point()
In this example, the aesthetic mapping of color has been moved from the
global plot options in ggplot
to the geom_line
layer so it no longer applies
to the points. Now we can clearly see that the points are drawn on top of the
lines.
Challenge 3
Switch the order of the point and line layers from the previous example. What happened?
Solution to challenge 3
Switch the order of the point and line layers from the previous example. What happened?
ggplot(data = gapminder, aes(x=year, y=lifeExp, by=country)) + geom_point() + geom_line(aes(color=continent))
The lines now get drawn over the points!
Ggplot also makes it easy to overlay statistical models over the data. To demonstrate we’ll go back to our first example:
ggplot(data = gapminder, aes(x = gdpPercap, y = lifeExp, color=continent)) +
geom_point()
Currently it’s hard to see the relationship between the points due to some strong outliers in GDP per capita. We can change the scale of units on the x axis using the scale functions. These control the mapping between the data values and visual values of an aesthetic. We can also modify the transparency of the points, using the alpha function, which is especially helpful when you have a large amount of data which is very clustered.
ggplot(data = gapminder, aes(x = gdpPercap, y = lifeExp)) +
geom_point(alpha = 0.5) + scale_x_log10()
The log10
function applied a transformation to the values of the gdpPercap
column before rendering them on the plot, so that each multiple of 10 now only
corresponds to an increase in 1 on the transformed scale, e.g. a GDP per capita
of 1,000 is now 3 on the y axis, a value of 10,000 corresponds to 4 on the y
axis and so on. This makes it easier to visualize the spread of data on the
x-axis.
We can fit a simple relationship to the data by adding another layer,
geom_smooth
:
ggplot(data = gapminder, aes(x = gdpPercap, y = lifeExp)) +
geom_point() + scale_x_log10() + geom_smooth(method="lm")
We can make the line thicker by setting the size aesthetic in the
geom_smooth
layer:
ggplot(data = gapminder, aes(x = gdpPercap, y = lifeExp)) +
geom_point() + scale_x_log10() + geom_smooth(method="lm", size=1.5)
There are two ways an aesthetic can be specified. Here we set the size
aesthetic by passing it as an argument to geom_smooth
. Previously in the
lesson we’ve used the aes
function to define a mapping between data
variables and their visual representation.
Challenge 4a
Modify the color and size of the points on the point layer in the previous example.
Hint: do not use the
aes
function.Solution to challenge 4a
Modify the color and size of the points on the point layer in the previous example.
Hint: do not use the
aes
function.ggplot(data = gapminder, aes(x = gdpPercap, y = lifeExp)) + geom_point(size=3, color="orange") + scale_x_log10() + geom_smooth(method="lm", size=1.5)
Challenge 4b
Modify your solution to Challenge 4a so that the points are now a different shape and are colored by continent with new trendlines. Hint: The color argument can be used inside the aesthetic.
Solution to challenge 4b
Modify Challenge 4 so that the points are now a different shape and are colored by continent with new trendlines.
Hint: The color argument can be used inside the aesthetic.
ggplot(data = gapminder, aes(x = gdpPercap, y = lifeExp, color = continent)) + geom_point(size=3, pch=17) + scale_x_log10() + geom_smooth(method="lm", size=1.5)
Earlier we visualized the change in life expectancy over time across all countries in one plot. Alternatively, we can split this out over multiple panels by adding a layer of facet panels. Focusing only on those countries with names that start with the letter “A” or “Z”.
Tip
We start by subsetting the data. We use the
substr
function to pull out a part of a character string; in this case, the letters that occur in positionsstart
throughstop
, inclusive, of thegapminder$country
vector. The operator%in%
allows us to make multiple comparisons rather than write out long subsetting conditions (in this case,starts.with %in% c("A", "Z")
is equivalent tostarts.with == "A" | starts.with == "Z"
)
starts.with <- substr(gapminder$country, start = 1, stop = 1)
az.countries <- gapminder[starts.with %in% c("A", "Z"), ]
ggplot(data = az.countries, aes(x = year, y = lifeExp, color=continent)) +
geom_line() + facet_wrap( ~ country)
The facet_wrap
layer took a “formula” as its argument, denoted by the tilde
(~). This tells R to draw a panel for each unique value in the country column
of the gapminder dataset.
To clean this figure up for a publication we need to change some of the text elements. The x-axis is too cluttered, and the y axis should read “Life expectancy”, rather than the column name in the data frame.
We can do this by adding a couple of different layers. The theme layer controls the axis text, and overall text size, and there are special layers for changing the axis labels. To change the legend title, we need to use the scales layer.
ggplot(data = az.countries, aes(x = year, y = lifeExp, color=continent)) +
geom_line() + facet_wrap( ~ country) +
xlab("Year") + ylab("Life expectancy") + ggtitle("Figure 1") +
scale_colour_discrete(name="Continent") +
theme(axis.text.x=element_blank(), axis.ticks.x=element_blank())
This is a taste of what you can do with ggplot2
. RStudio provides a
really useful cheat sheet of the different layers available, and more
extensive documentation is available on the ggplot2 website.
Finally, if you have no idea how to change something, a quick Google search will
usually send you to a relevant question and answer on Stack Overflow with reusable
code to modify!
Challenge 5
Create a density plot of GDP per capita, filled by continent.
Advanced: - Transform the x axis to better visualise the data spread. - Add a facet layer to panel the density plots by year.
Solution to challenge 5
Create a density plot of GDP per capita, filled by continent.
Advanced: - Transform the x axis to better visualise the data spread. - Add a facet layer to panel the density plots by year.
ggplot(data = gapminder, aes(x = gdpPercap, fill=continent)) + geom_density(alpha=0.6) + facet_wrap( ~ year) + scale_x_log10()
Key Points
Use
ggplot2
to create plots.Think about graphics in layers: aesthetics, geometry, statistics, scale transformation, and grouping.