AE 02: Bechdel + data visualization
In this mini-analysis, we use the data from the FiveThirtyEight story “The Dollar-And-Cents Case Against Hollywood’s Exclusion of Women.”
This analysis is about the Bechdel test, a measure of the representation of women in fiction.
Getting started
Packages
We’ll use the tidyverse package for this analysis.
Data
The data are stored as a CSV (comma-separated values) file in your repository’s data
folder. Let’s read it from there and save it as an object called bechdel
.
bechdel <- read_csv("data/bechdel.csv")
Get to know the data
We can use the glimpse()
function to get an overview (or “glimpse”) of the data.
# add code here
- What does each observation (row) in the data set represent?
Each observation represents a ___.
- How many observations (rows) are in the data set?
There are ___ movies in the dataset.
- How many variables (columns) are in the data set?
There are ___ columns in the dataset.
Variables of interest
The variables we’ll focus on are the following:
-
roi
: Return on investment, calculated as the ratio of the gross to budget. -
clean_test
: Bechdel test result:-
ok
= passes test dubious
-
men
= women only talk about men -
notalk
= women don’t talk to each other -
nowomen
= fewer than two women
-
-
binary
: Bechdel Test PASS vs FAIL binary
We will also use the year
of release in data prep and title
of movie to take a deeper look at some outliers.
There are a few other variables in the dataset, but we won’t be using them in this analysis.
Bechdel test results
Visualizing data with ggplot2
ggplot2 is the package and ggplot()
is the function in this package that is used to create a plot.
-
ggplot()
creates the initial base coordinate system, and we will add layers to that base. We first specify the data set we will use withdata = bechdel
.
ggplot(data = bechdel)
- The
mapping
argument is paired with an aesthetic (aes()
), which tells us how the variables in our data set should be mapped to the visual properties of the graph.
As we previously mentioned, we often omit the names of the first two arguments in R functions. So you’ll often see this written as:
Note that the result is exactly the same.
- The
geom_xx
function specifies the type of plot we want to use to represent the data. In the code below, we usegeom_point
which creates a plot where each observation is represented by a point.
What types of movies are more common, those that pass or do not pass the test?
Render, commit, and push
Render your Quarto document.
Go to the Git pane and check the box next to each file listed, i.e., stage your changes. Commit your staged changes using a simple and informative message.
Click on push (the green arrow) to push your changes to your application exercise repo on GitHub.
Go to your repo on GitHub and confirm that you can see the updated files. Once your updated files are in your repo on GitHub, you’re good to go!
Return-on-investment
Let’s take a look at return-on-investment (ROI) for movies that do and do not pass the Bechdel test.
Step 1 - Your turn
Create side-by-side box plots of roi
by clean_test
where the boxes are colored by binary
.
# add code here
What are those movies with very high returns on investment?
# A tibble: 3 × 6
title roi budget_2013 gross_2013 year clean_test
<chr> <dbl> <dbl> <dbl> <dbl> <chr>
1 Paranormal Activity 671. 505595 339424558 2007 dubious
2 The Blair Witch Project 648. 839077 543776715 1999 ok
3 El Mariachi 583. 11622 6778946 1992 nowomen
Step 2 - Demo
Expand on your plot from the previous step to zoom in on movies with roi < ___
to get a better view of how the medians across the categories compare.
# add code here
What does this plot say about return-on-investment on movies that pass the Bechdel test?
Render, commit, and push
Render your Quarto document.
Go to the Git pane and check the box next to each file listed, i.e., stage your changes. Commit your staged changes using a simple and informative message.
Click on push (the green arrow) to push your changes to your application exercise repo on GitHub.
Go to your repo on GitHub and confirm that you can see the updated files. Once your updated files are in your repo on GitHub, you’re good to go!