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02-visualization.Rmd
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# (PART) Data Science via the tidyverse {-}
# Data Visualization {#viz}
```{r setup-viz, include=FALSE, purl=FALSE}
chap <- 2
lc <- 0
rq <- 0
# **`r paste0("(LC", chap, ".", (lc <- lc + 1), ")")`**
# **`r paste0("(RQ", chap, ".", (rq <- rq + 1), ")")`**
knitr::opts_chunk$set(
tidy = FALSE,
out.width = '\\textwidth',
fig.height = 4,
fig.align = 'center',
warning = FALSE
)
options(scipen = 99, digits = 3)
# In knitr::kable printing replace all NA's with blanks
options(knitr.kable.NA = '')
# Set random number generator see value for replicable pseudorandomness.
set.seed(76)
```
We begin the development of your data science toolbox with data visualization. By visualizing data, we gain valuable insights we couldn't initially obtain from just looking at the raw data values. We'll use the `ggplot2` package as it provides an easy way to customize your plots. `ggplot2` is rooted in the data visualization theory known as _The Grammar of Graphics_ [@wilkinson2005], developed by Leland Wilkinson. \index{Wilkinson, Leland}
At their most basic, graphics/plots/charts (we use these terms interchangeably in this book) provide a nice way to explore the patterns in data, such as the presence of *outliers*, *distributions* of individual variables, and *relationships* between groups of variables. Graphics are designed to emphasize the findings and insights you want your audience to understand. This does however require a balancing act. On the one hand, you want to highlight as many interesting findings as possible. On the other hand, you don't want to include so much information that it overwhelms your audience.
As we will see, plots \index{plots} also help us to identify patterns and outliers in our data. We'll see that a common extension of these ideas is to compare the *distribution* \index{distribution} of one quantitative variable (i.e., what the spread of a variable looks like or how the variable is *distributed* in terms of its values) as we go across the levels of a different categorical variable.
### Needed packages {-}
Let's load all the packages needed for this chapter (this assumes you've already installed them). Read Section \@ref(packages) for information on how to install and load R packages.
```{r message=FALSE}
library(nycflights13)
library(ggplot2)
library(dplyr)
```
```{r message=FALSE, warning=FALSE, echo=FALSE}
# Packages needed internally, but not in book.
library(gapminder)
library(knitr)
library(kableExtra)
library(readr)
library(patchwork)
library(scales)
library(stringr)
```
## The Grammar of Graphics {#grammarofgraphics}
We begin with a discussion of a theoretical framework for data visualization known as "The Grammar of Graphics." This framework serves as the foundation for the \index{R packages!ggplot2} `ggplot2` package which we'll use extensively in this chapter. \index{Grammar of Graphics, The} Think of how we construct sentences in English to form sentences by combining different elements, like nouns, verbs, particles, subjects, objects, etc. We can't just combine these elements in any arbitrary order; we must do so following a set of rules known as a linguistic grammar. Similarly to a linguistic grammar, "The Grammar of Graphics" defines a set of rules for constructing *statistical graphics* by combining different types of *layers*. This grammar was created by Leland Wilkinson [@wilkinson2005] and has been implemented in a variety of data visualization software platforms like R, but also [Plotly](https://plot.ly/) and [Tableau](https://www.tableau.com/).
### Components of the Grammar
In short, the grammar tells us that:
> **A statistical graphic is a `mapping` of `data` variables to `aes`thetic attributes of `geom`etric objects.**
Specifically, we can break a graphic into the following three essential components:
1. `data`: the dataset containing the variables of interest.
1. `geom`: the geometric object in question. This refers to the type of object we can observe in a plot. For example: points, lines, and bars.
1. `aes`: aesthetic attributes of the geometric object. For example, x/y position, color, shape, and size. Aesthetic attributes are *mapped* to variables in the dataset.
You might be wondering why we wrote the terms `data`, `geom`, and `aes` in a computer code type font. We'll see very shortly that we'll specify the elements of the grammar in R using these terms. However, let's first break down the grammar with an example.
### Gapminder data {#gapminder}
```{r, echo=FALSE}
gapminder_2007 <- gapminder %>%
filter(year == 2007) %>%
select(-year) %>%
rename(
Country = country,
Continent = continent,
`Life Expectancy` = lifeExp,
`Population` = pop,
`GDP per Capita` = gdpPercap
)
```
In February 2006, a Swedish physician and data advocate named Hans Rosling gave a TED talk titled ["The best stats you've ever seen"](https://www.ted.com/talks/hans_rosling_shows_the_best_stats_you_ve_ever_seen) where he presented global economic, health, and development data from the website [gapminder.org](http://www.gapminder.org/tools/#_locale_id=en;&chart-type=bubbles). For example, for data on `r nrow(gapminder_2007)` countries in 2007, let's consider only 6 countries in Table \@ref(tab:gapminder-2007) as a peak into the data.
```{r gapminder-2007, echo=FALSE}
gapminder_2007 %>%
head() %>%
kable(
digits=2,
caption = "Gapminder 2007 Data: First 6 of 142 countries"#,
# booktabs = TRUE
) %>%
kable_styling(font_size = ifelse(knitr:::is_latex_output(), 10, 16),
latex_options = c("hold_position"))
```
Each row in this table corresponds to a country in 2007. For each row, we have 5 columns:
1. **Country**: Name of country.
1. **Continent**: Which of the five continents the country is part of. Note that "Americas" includes countries in both North and South America and that Antarctica is excluded.
1. **Life Expectancy**: Life expectancy in years.
1. **Population**: Number of people living in the country.
1. **GDP per Capita**: Gross domestic product (in US dollars).
Now consider Figure \@ref(fig:gapminder), which plots this data for all `r nrow(gapminder_2007)` countries in the data.
<!--
Note that R will deal with large numbers using scientific notation. So in the legend for "Population", 1.25e+09 is 1.25 $\times$ 10^9^ = 1,250,000,000 = 1.25 billion.
-->
```{r gapminder, echo=FALSE, fig.cap="Life expectancy over GDP per capita in 2007."}
if(knitr::is_html_output()){
ggplot(data = gapminder_2007,
mapping = aes(x = `GDP per Capita`,
y = `Life Expectancy`,
size = Population,
color = Continent)) +
geom_point() +
labs(x = "GDP per capita", y = "Life expectancy")
} else {
ggplot(data = gapminder_2007,
mapping = aes(x = `GDP per Capita`,
y = `Life Expectancy`,
size = Population,
color = Continent)) +
geom_point() +
labs(x = "GDP per capita", y = "Life expectancy") +
scale_color_grey()
}
```
Let's view this plot through the Grammar of Graphics:
1. The `data` variable **GDP per Capita** gets mapped to the `x`-position `aes`thetic \index{ggplot2!aes()} of the points.
1. The `data` \index{ggplot2!data} variable **Life Expectancy** gets mapped to the `y`-position `aes`thetic of the points.
1. The `data` variable **Population** gets mapped to the `size` `aes`thetic of the points.
1. The `data` variable **Continent** gets mapped to the `color` `aes`thetic of the points.
We'll see shortly that `data` corresponds to the particular data frame where our data is saved and that "data variables" correspond to particular columns in the data frame. Furthermore, the type of `geom`etric object \index{ggplot2!geom} considered in this plot are points. That being said, while in this example we are considering points, graphics are not limited to just points. We can also use lines, bars, and other geometric objects.
Let's summarize the three essential components of the Grammar in Table \@ref(tab:summary-table-gapminder).
```{r summary-table-gapminder, echo=FALSE}
tibble(
`data variable` = c("GDP per Capita", "Life Expectancy", "Population", "Continent"),
aes = c("x", "y", "size", "color"),
geom = c("point", "point", "point", "point")
) %>%
kable(
caption = "Summary of the Grammar of Graphics for this plot",
booktabs = TRUE
) %>%
kable_styling(font_size = ifelse(knitr:::is_latex_output(), 10, 16),
latex_options = c("hold_position"))
```
### Other components
There are other components of the Grammar of Graphics we can control as well. As you start to delve deeper into the Grammar of Graphics, you'll start to encounter these topics more frequently. In this book, we'll keep things simple and only work with these two additional components:
- `facet`ing breaks up a plot into several plots split by the values of another variable (Section \@ref(facets)) \index{ggplot2!facet}
- `position` adjustments for barplots (Section \@ref(geombar)) \index{ggplot2!position}
<!--
- `scales` that both
+ convert *data units* to *physical units* the computer can display. For example, apply a log-transformation on one of the axes to focus on multiplicative rather than additive changes.
+ draw a legend and/or axes, which provide an inverse mapping to make it possible to read the original data values from the graph.
- `coord`inate system for x/y values: typically `cartesian`, but can also be `map` or `polar`.
- `stat`istical transformations: this includes smoothing, binning values into a histogram, or no transformation at all (known as the `"identity"` transformation).
-->
Other more complex components like `scales` and `coord`inate systems are left for a more advanced text such as [R for Data Science](http://r4ds.had.co.nz/data-visualisation.html#aesthetic-mappings) [@rds2016]. Generally speaking, the Grammar of Graphics allows for a high degree of customization of plots and also a consistent framework for easily updating and modifying them.
### ggplot2 package
In this book, we will use the `ggplot2` package for data visualization, which is an implementation of the Grammar of Graphics for R [@R-ggplot2]. As we noted earlier, a lot of the previous section was written in a computer code type font. This is because the various components of the Grammar of Graphics are specified in the `ggplot()` \index{ggplot2!ggplot()} function included in the `ggplot2` package. For the purposes of this book, we'll always provide the `ggplot()` function with the following arguments (i.e. inputs) at a minimum:
* The data frame where the variables exist: the `data` argument.
* The mapping of the variables to aesthetic attributes: the `mapping` argument which specifies the `aes`thetic attributes involved.
After we've specified these components, we then add *layers* to the plot using the `+` sign. The most essential layer to add to a plot is the layer that specifies which type of `geom`etric object we want the plot to involve: points, lines, bars, and others. Other layers we can add to a plot include the plot title, axes labels, visual themes for the plots, and facets (which we'll see in Section \@ref(facets)).
Let's now put the theory of the Grammar of Graphics into practice.
## Five Named Graphs - The 5NG {#FiveNG}
In order to keep things simple in this book, we will only focus on five different types of graphics, each with a commonly given name. We term these "five named graphs" the **5NG**: \index{five named graphs}
1. scatterplots
1. linegraphs
1. boxplots
1. histograms
1. barplots
We'll also present some variations of these plots, but with this basic repertoire of five graphics in your toolbox, you can visualize a wide array of different variable types. Note that certain plots are only appropriate for categorical variables while others are only appropriate for quantitative variables.
## 5NG#1: Scatterplots {#scatterplots}
The simplest of the 5NG are *scatterplots*, \index{scatterplots} also called *bivariate plots*. They allow you to visualize the *relationship* between two numerical variables. While you may already be familiar with scatterplots, let's view them through the lens of the Grammar of Graphics we presented in Section \@ref(grammarofgraphics). Specifically, we will visualize the relationship between the following two numerical variables in the `flights` data frame included in the \index{R packages!nycflights13} `nycflights13` package:
1. `dep_delay`: departure delay on the horizontal "x" axis and
1. `arr_delay`: arrival delay on the vertical "y" axis
for Alaska Airlines flights leaving NYC in 2013. This requires paring down the data from all 336,776 flights that left NYC in 2013, to only the 714 *Alaska Airlines* flights that left NYC in 2013. We do this so our scatterplot will involve a manageable 714 points, and not an overwhelmingly large number like 336,776. To achieve this, we'll take the `flights` data frame, filter the rows so that only the 714 rows corresponding to Alaska Airlines flights are kept, and save this in a new data frame called `alaska_flights` using the `<-` *assignment* operator: \index{operator!assignment (<-)}
```{r}
alaska_flights <- flights %>%
filter(carrier == "AS")
```
For now we suggest you don't worry if you don't fully understand this code. We'll see later in Chapter \@ref(wrangling) on data wrangling that this code uses the `dplyr` package for data wrangling to achieve our goal: it takes the `flights` data frame and `filter`s it to only return the rows where `carrier` is equal to `"AS"`, Alaska Airlines' carrier code. Recall from Section \@ref(code) that testing for equality is specified with \index{using == instead of =} `==` and not `=`.
For now however, convince yourself that this code achieves what it is supposed to by exploring the resulting data frame by running `View(alaska_flights)`. You'll see that it has 714 rows, consisting of only 714 Alaska Airlines flights.
```{block lc-alaska_flights, type='learncheck', purl=FALSE}
\vspace{-0.25in}
**_Learning check_**
\vspace{-0.25in}
```
**`r paste0("(LC", chap, ".", (lc <- lc + 1), ")")`** Take a look at both the `flights` and `alaska_flights` data frames by running `View(flights)` and `View(alaska_flights)`. In what respect do these data frames differ? For example, think about the number of rows in each dataset.
```{block, type='learncheck', purl=FALSE}
\vspace{-0.25in}
\vspace{-0.25in}
```
### Scatterplots via geom_point {#geompoint}
Let's now go over the code that will create the desired scatterplot, while keeping in the Grammar of Graphics framework we introduced in Section \@ref(grammarofgraphics). Let's take a look at the code and break it down piece-by-piece.
```{r echo=FALSE, purl=FALSE, results="asis"}
if(knitr::is_latex_output())
cat("**Note** that the printed version of this book uses `theme_light()` instead of the default `theme_grey()` for the plots created with `ggplot2` throughout the book. Bars and points are also converted to greyscale using `scale_color_grey()` and `scale_fill_grey()`. This is to help with readability of the plots in the printed copy. As you follow along and run the code yourself, your plots will have a grey background instead of what you see in the printed book with a white background. Additionally, your plots will have colors beyond the greyscale versions provided in this printing.")
```
```{r, eval=FALSE}
ggplot(data = alaska_flights, mapping = aes(x = dep_delay, y = arr_delay)) +
geom_point()
```
Within the `ggplot()` \index{ggplot2!ggplot()} function, we specify two of the components of the Grammar of Graphics as arguments (i.e. inputs):
1. The `data` to be the `alaska_flights` data frame by setting `data = alaska_flights`.
1. The `aes`thetic \index{ggplot2!mapping} `mapping` by setting `mapping = aes(x = dep_delay, y = arr_delay)`. Specifically, the variable `dep_delay` maps to the `x` position aesthetic while the variable `arr_delay` maps to the `y` position aesthetic.
We then add a layer to the `ggplot()` function call using the `+` sign. The added layer in question specifies the third component of the grammar: the `geom`etric object. In this case the geometric object is set to be points by specifying `geom_point()`.
After running these two lines of code in your console, you'll notice two outputs: a warning message and the graphic shown in Figure \@ref(fig:noalpha).
```{r noalpha, fig.cap="Arrival delays vs departure delays for Alaska Airlines flights from NYC in 2013.", warning=TRUE, echo=FALSE}
ggplot(data = alaska_flights, mapping = aes(x = dep_delay, y = arr_delay)) +
geom_point()
```
Let's first unpack the graphic in Figure \@ref(fig:noalpha). Observe that a *positive relationship* exists between `dep_delay` and `arr_delay`: as departure delays increase, arrival delays tend to also increase. Observe also the large mass of points clustered near (0, 0), the point indicating flights that neither departed nor arrived late.
Let's turn our attention to the warning message. R is alerting us to the fact that five rows were ignored due to them being missing. For these 5 rows, either the value for `dep_delay` or `arr_delay` or both were missing (recorded in R as `NA`), and thus these rows were ignored in our plot.
Before we continue, let's make a few more observations about this code that created the scatterplot. Note that the `+` sign comes at the end of lines, and not at the beginning. You'll get an error in R if you put it at the beginning of a line. \index{ggplot2!+} When adding layers to a plot, you are encouraged to start a new line after the `+` (by pressing the Return/Enter button on your keyboard) so that the code for each layer is on a new line. As we add more and more layers to plots, you'll see this will greatly improve the legibility of your code.
To stress the importance of adding the layer specifying the `geom`etric object, consider Figure \@ref(fig:nolayers) where no layers are added. Because the `geom`etric object was not specified, we have a blank plot which is not very useful!
```{r nolayers, fig.cap="A plot with no layers."}
ggplot(data = alaska_flights, mapping = aes(x = dep_delay, y = arr_delay))
```
```{block lc-scatterplots, type='learncheck', purl=FALSE}
\vspace{-0.25in}
**_Learning check_**
\vspace{-0.25in}
```
**`r paste0("(LC", chap, ".", (lc <- lc + 1), ")")`** What are some practical reasons why `dep_delay` and `arr_delay` have a positive relationship?
**`r paste0("(LC", chap, ".", (lc <- lc + 1), ")")`** What variables in the `weather` data frame would you expect to have a negative correlation (i.e. a negative relationship) with `dep_delay`? Why? Remember that we are focusing on numerical variables here. Hint: Explore the `weather` dataset by using the `View()` function.
**`r paste0("(LC", chap, ".", (lc <- lc + 1), ")")`** Why do you believe there is a cluster of points near (0, 0)? What does (0, 0) correspond to in terms of the Alaskan flights?
**`r paste0("(LC", chap, ".", (lc <- lc + 1), ")")`** What are some other features of the plot that stand out to you?
**`r paste0("(LC", chap, ".", (lc <- lc + 1), ")")`** Create a new scatterplot using different variables in the `alaska_flights` data frame by modifying the example given.
```{block, type='learncheck', purl=FALSE}
\vspace{-0.25in}
\vspace{-0.25in}
```
### Over-plotting {#overplotting}
The large mass of points near (0, 0) in Figure \@ref(fig:noalpha) can cause some confusion since it is hard to tell the true number of points that are plotted. This is the result of a phenomenon called \index{overplotting} *overplotting*. As one may guess, this corresponds to points being plotted on top of each other over and over again. When overplotting occurs, it is difficult to know the number of points being plotted. There are two methods to address the issue of overplotting. Either by
1. Adjusting the transparency of the points or
1. Adding a little random "jitter", or random "nudges", to each of the points.
**Method 1: Changing the transparency**
The first way of addressing overplotting is to change the transparency/opacity of the points by setting the `alpha` argument in `geom_point()`. We can change the `alpha` argument to be any value between `0` and `1`, where `0` sets the points to be 100% transparent and `1` sets the points to be 100% opaque. By default, `alpha` is set to `1`. In other words, if we don't explicitly set an `alpha` value, R will use `alpha = 1`.
Note how the following code is identical to the code in Section \@ref(scatterplots) that created the scatterplot with overplotting, but with `alpha = 0.2` added to the `geom_point()` function:
```{r alpha, fig.cap="Arrival vs departure delays scatterplot with alpha = 0.2."}
ggplot(data = alaska_flights, mapping = aes(x = dep_delay, y = arr_delay)) +
geom_point(alpha = 0.2)
```
The key feature to note in Figure \@ref(fig:alpha) is that the transparency \index{ggplot2!alpha} \index{adding transparency to plots} of the points is cumulative: areas with a high-degree of overplotting are darker, whereas areas with a lower degree are less dark. Note furthermore that there is no `aes()` surrounding `alpha = 0.2`. This is because we are not mapping a variable to an aesthetic attribute, but rather merely changing the default setting of `alpha`. In fact, you'll receive an error if you try to change the second line to read `geom_point(aes(alpha = 0.2))`.
**Method 2: Jittering the points**
The second way of addressing overplotting is by *jittering* all the points. This means giving each point a small "nudge" in a random direction. You can think of "jittering" as shaking the points around a bit on the plot. Let's illustrate using a simple example first. Say we have a data frame with 4 identical rows of x & y values: (0,0), (0,0), (0,0), and (0,0). In Figure \@ref(fig:jitter-example-plot-1), we present both the regular scatterplot of these 4 points (on the left) and its jittered counterpart (on the right).
```{r jitter-example-plot-1, fig.cap="Regular and jittered scatterplot.", echo=FALSE}
jitter_example <- tibble(
x = rep(0, 4),
y = rep(0, 4)
)
jittered_plot_1 <- ggplot(data = jitter_example, mapping = aes(x = x, y = y)) +
geom_point() +
coord_cartesian(xlim = c(-0.025, 0.025), ylim = c(-0.025, 0.025)) +
labs(title = "Regular scatterplot")
jittered_plot_2 <- ggplot(data = jitter_example, mapping = aes(x = x, y = y)) +
geom_jitter(width = 0.01, height = 0.01) +
coord_cartesian(xlim = c(-0.025, 0.025), ylim = c(-0.025, 0.025)) +
labs(title = "Jittered scatterplot")
jittered_plot_1 + jittered_plot_2
```
In the left-hand regular scatterplot, observe that the 4 points are superimposed on top of each other. While we know there are 4 values being plotted, this fact might not be apparent to others. In the right-hand jittered scatterplot, it is now plainly evident that this plot involves four points since each point is given a random "nudge."
Keep in mind however that jittering is strictly a visualization tool; even after creating a jittered scatterplot, the original values saved in the data frame remain unchanged. \index{ggplot2!geom\_jitter()}
To create a jittered scatterplot, instead of using `geom_point()`, we use `geom_jitter()`. Observe how the following code is very similar to the code that created the scatterplot with overplotting in Subsection \@ref(geompoint), but with `geom_point()` \index{ggplot2!geom\_point()} replaced with `geom_jitter()`.
```{r jitter, fig.cap="Arrival vs departure delays jittered scatterplot."}
ggplot(data = alaska_flights, mapping = aes(x = dep_delay, y = arr_delay)) +
geom_jitter(width = 30, height = 30)
```
In order to specify how much jitter to add, we adjusted the `width` and `height` arguments to `geom_jitter()`. This corresponds to how hard you'd like to shake the plot in horizontal x-axis units and vertical y-axis units respectively. In this case, both axes are in minutes. How much jitter should we add using the `width` and `height` arguments? On the one hand, it is important to add just enough jitter to break any overlap in points, but on the other hand, not so much that we completely alter the original pattern in points.
As can be seen in the resulting Figure \@ref(fig:jitter), in this case jittering doesn't really provide much new insight. In this particular case, it can be argued that changing the transparency of the points by setting `alpha` proved more effective. When would it be better to use a jittered scatterplot? When would it be better to alter the points' transparency? There is no single right answer that applies to all situations. You need to make a subjective choice and own that choice. At the very least when confronted with overplotting however, we suggest you make both types of plots and see which one better emphasizes the point you are trying to make.
```{block lc-overplotting, type='learncheck', purl=FALSE}
\vspace{-0.25in}
**_Learning check_**
\vspace{-0.25in}
```
**`r paste0("(LC", chap, ".", (lc <- lc + 1), ")")`** Why is setting the `alpha` argument value useful with scatterplots? What further information does it give you that a regular scatterplot cannot?
**`r paste0("(LC", chap, ".", (lc <- lc + 1), ")")`** After viewing Figure \@ref(fig:alpha), give an approximate range of arrival delays and departure delays that occur most frequently. How has that region changed compared to when you observed the same plot without `alpha = 0.2` set in Figure \@ref(fig:noalpha)?
```{block, type='learncheck', purl=FALSE}
\vspace{-0.25in}
\vspace{-0.25in}
```
### Summary
Scatterplots display the relationship between two numerical variables. They are among the most commonly used plots because they can provide an immediate way to see the trend in one numerical variable versus another. However, if you try to create a scatterplot where either one of the two variables is not numerical, you might get strange results. Be careful!
With medium to large datasets, you may need to play around with the different modifications to scatterplots we saw such as changing the transparency/opacity of the points or by jittering the points. This tweaking is often a fun part of data visualization, since you'll have the chance to see different relationships emerge as you tinker with your plots.
## 5NG#2: Linegraphs {#linegraphs}
The next of the five named graphs are linegraphs. Linegraphs \index{linegraphs} show the relationship between two numerical variables when the variable on the x-axis, also called the *explanatory* variable\index{explanatory variable}, is of a sequential nature. In other words there is an inherent ordering to the variable. The most common example of linegraphs has some notion of time on the x-axis: hours, days, weeks, years, etc. Since time is sequential, we connect consecutive observations of the variable on the y-axis with a line. Linegraphs that have some notion of time on the x-axis are also called *time series* plots\index{time series plots}. Let's illustrate linegraphs using another dataset in the `nycflights13` \index{R packages!nycflights13} package: the `weather` data frame.
Let's explore the `weather` data frame by running `View(weather)` and `glimpse(weather)` and furthermore let's read the associated help file by running `?weather` to bring up the help file.
Observe that there is a variable called `temp` of hourly temperature recordings in Fahrenheit at weather stations near all three major airports in New York City: Newark (`origin` code `EWR`), John F. Kennedy International (`JFK`), and LaGuardia (`LGA`). However, instead of considering hourly temperatures for all days in 2013 for all three airports, for simplicity let's only consider hourly temperatures at Newark airport for the first 15 days in January.
Recall in Section \@ref(scatterplots) we used the `filter()` function to only choose the subset of rows of `flights` corresponding to Alaska Airlines flights. We similarly use `filter()` \index{dplyr!filter()} here, but by using the `&` operator we only choose the subset of rows of `weather` where the `origin` is `"EWR"`, the `month` is January, **and** the `day` is between `1` and `15`. Recall we performed a similar task in Section \@ref(scatterplots) when creating the `alaska_flights` data frame of only Alaska Airlines flights, a topic we'll explore more in Chapter \@ref(wrangling) on data wrangling.
```{r}
early_january_weather <- weather %>%
filter(origin == "EWR" & month == 1 & day <= 15)
```
```{block lc-early_january_weather, type='learncheck', purl=FALSE}
\vspace{-0.25in}
**_Learning check_**
\vspace{-0.25in}
```
**`r paste0("(LC", chap, ".", (lc <- lc + 1), ")")`** Take a look at both the `weather` and `early_january_weather` data frames by running `View(weather)` and `View(early_january_weather)`. In what respect do these data frames differ?
**`r paste0("(LC", chap, ".", (lc <- lc + 1), ")")`** `View()` the `flights` data frame again. Why does the `time_hour` variable uniquely identify the hour of the measurement whereas the `hour` variable does not?
```{block, type='learncheck', purl=FALSE}
\vspace{-0.25in}
\vspace{-0.25in}
```
### Linegraphs via geom_line {#geomline}
Let's create a time series plot of the hourly temperatures saved in the `early_january_weather` data frame by using `geom_line()` to create a linegraph\index{ggplot2!geom\_line()}, instead of using `geom_point()` like we used previously to create scatterplots:
```{r hourlytemp, fig.cap="Hourly temperature in Newark for January 1-15, 2013."}
ggplot(data = early_january_weather, mapping = aes(x = time_hour, y = temp)) +
geom_line()
```
Much as with the `ggplot()` code that created the scatterplot of departure and arrival delays for Alaska Airlines flights in Figure \@ref(fig:noalpha), let's break down this code piece-by-piece in terms of the Grammar of Graphics:
Within the `ggplot()` function call, we specify two of the components of the Grammar of Graphics as arguments:
1. The `data` to be the `early_january_weather` data frame by setting `data = early_january_weather`.
1. The `aes`thetic `mapping` by setting `mapping = aes(x = time_hour, y = temp)`. Specifically, the variable `time_hour` maps to the `x` position aesthetic while the variable `temp` maps to the `y` position aesthetic.
We add a layer to the `ggplot()` function call using the `+` sign. The layer in question specifies the third component of the grammar: the `geom`etric object in question. In this case the geometric object is a `line`, set by specifying `geom_line()`.
```{block lc-linegraph, type='learncheck', purl=FALSE}
\vspace{-0.25in}
**_Learning check_**
\vspace{-0.25in}
```
**`r paste0("(LC", chap, ".", (lc <- lc + 1), ")")`** Why should linegraphs be avoided when there is not a clear ordering of the horizontal axis?
**`r paste0("(LC", chap, ".", (lc <- lc + 1), ")")`** Why are linegraphs frequently used when time is the explanatory variable on the x-axis?
**`r paste0("(LC", chap, ".", (lc <- lc + 1), ")")`** Plot a time series of a variable other than `temp` for Newark Airport in the first 15 days of January 2013.
```{block, type='learncheck', purl=FALSE}
\vspace{-0.25in}
\vspace{-0.25in}
```
### Summary
Linegraphs, just like scatterplots, display the relationship between two numerical variables. However it is preferred to use linegraphs over scatterplots when the variable on the x-axis (i.e. the explanatory variable) has an inherent ordering, such as some notion of time.
## 5NG#3: Histograms {#histograms}
Let's consider the `temp` variable in the `weather` data frame once again, but unlike with the linegraphs in Section \@ref(linegraphs), let's say we don't care about its relationship with time, but rather we only care about how the values of `temp` *distribute*. In other words:
1. What are the smallest and largest values?
1. What is the "center" or "most typical" value?
1. How do the values spread out?
1. What are frequent and infrequent values?
One way to visualize this *distribution* \index{distribution} of this single variable `temp` is to plot them on a horizontal line as we do in Figure \@ref(fig:temp-on-line):
```{r temp-on-line, echo=FALSE, fig.height=0.8, fig.cap="Plot of hourly temperature recordings from NYC in 2013."}
ggplot(data = weather, mapping = aes(x = temp, y = factor("A"))) +
geom_point() +
theme(axis.ticks.y = element_blank(),
axis.title.y = element_blank(),
axis.text.y = element_blank())
hist_title <- "Histogram of Hourly Temperature Recordings from NYC in 2013"
```
This gives us a general idea of how the values of `temp` distribute: observe that temperatures vary from around `r round(min(weather$temp, na.rm = TRUE), 0)`°F (-11°C) up to `r round(max(weather$temp, na.rm = TRUE), 0)`°F (38°C). Furthermore, there appear to be more recorded temperatures between 40°F and 60°F than outside this range. However, because of the high degree of overplotting in the points, it's hard to get a sense of exactly how many values are between say 50°F and 55°F.
What is commonly produced instead of Figure \@ref(fig:temp-on-line) is known as a \index{histograms} *histogram*. A histogram is a plot that visualizes the *distribution* of a numerical value as follows:
1. We first cut up the x-axis into a series of \index{histograms!bins} *bins*, where each bin represents a range of values.
1. For each bin, we count the number of observations that fall in the range corresponding to that bin.
1. Then for each bin, we draw a bar whose height marks the corresponding count.
Let's drill-down on an example of a histogram, shown in Figure \@ref(fig:histogramexample).
```{r histogramexample, warning=FALSE, echo=FALSE, fig.cap="Example histogram."}
ggplot(data = weather, mapping = aes(x = temp)) +
geom_histogram(binwidth = 10, boundary = 70, color = "white")
```
Let's focus only on temperatures between 30°F (-1°C) and 60°F (15°C) for now. Observe that there are three bins of equal width between 30°F and 60°F. Thus we have three bins of width 10°F each: one bin for the 30-40°F range, another bin for the 40-50°F range, and another bin for the 50-60°F range. Since:
1. The bin for the 30-40°F range has a height of around 5000. In other words, around 5000 of the hourly temperature recordings are between 30°F and 40°F.
1. The bin for the 40-50°F range has a height of around 4300. In other words, around 4300 of the hourly temperature recordings are between 40°F and 50°F.
1. The bin for the 50-60°F range has a height of around 3500. In other words, around 3500 of the hourly temperature recordings are between 50°F and 60°F.
All nine bins spanning 10°F to 100°F on the x-axis have this interpretation.
### Histograms via geom_histogram {#geomhistogram}
Let's now present the `ggplot()` code to plot your first histogram! Unlike with scatterplots and linegraphs, there is now only one variable being mapped in `aes()`: the single numerical variable `temp`. The y-aesthetic of a histogram, the count of the observations in each bin, gets computed for you automatically. Furthermore, the geometric object layer is now a `geom_histogram()`. \index{ggplot2!geom\_histogram()} After running the following code, you'll see the histogram in Figure \@ref(fig:weather-histogram) as well as warning messages. We'll discuss the warning messages first.
```{r weather-histogram, warning=TRUE, fig.cap="Histogram of hourly temperatures at three NYC airports."}
ggplot(data = weather, mapping = aes(x = temp)) +
geom_histogram()
```
The first message is telling us that the histogram was constructed using `bins = 30`, in other words 30 equally spaced bins. This is known in computer programming as a default value; unless you override this default number of bins with a number you specify, R will choose 30 by default. We'll see in the next section how to change the number of bins away from this default value.
The second message is telling us something similar to the warning message we received when we ran the code to create a scatterplot of departure and arrival delays for Alaska Airlines flights in Figure \@ref(fig:noalpha): that because one row has a missing `NA` value for `temp`, it was omitted from the histogram. R is just giving us a friendly heads up that this was the case.
Now let's unpack the resulting histogram in Figure \@ref(fig:weather-histogram). Observe that values less than 25°F as well as values above 80°F are rather rare. However, because of the large number of bins, it's hard to get a sense for which range of temperatures is spanned by each bin; everything is one giant amorphous blob. So let's add white vertical borders demarcating the bins by adding a `color = "white"` argument to `geom_histogram()`:
```{r weather-histogram-2, warning=FALSE, message=FALSE, fig.cap="Histogram of hourly temperatures at three NYC airports with white borders."}
ggplot(data = weather, mapping = aes(x = temp)) +
geom_histogram(color = "white")
```
We now have an easier time associating ranges of temperatures to each of the bins in Figure \@ref(fig:weather-histogram-2). We can also vary the color of the bars by setting the \index{ggplot2!fill} `fill` argument. For example, you can set the bin colors to be "blue steel" by setting `fill = "steelblue"`:
```{r, eval = FALSE}
ggplot(data = weather, mapping = aes(x = temp)) +
geom_histogram(color = "white", fill = "steelblue")
```
If you're curious, run \index{colors()} `colors()` to see all `r colors() %>% length()` possible choice of colors in R!
### Adjusting the bins {#adjustbins}
Observe in Figure \@ref(fig:weather-histogram-2) that in the 50-75°F range there appear to be roughly 8 bins. Thus each bin has width 25 divided by 8, or roughly 3.12°F, which is not a very easily interpretable range to work with. Let's improve this by adjusting the number of bins in our histogram in one of two ways:
1. By adjusting the number of bins via the \index{geom\_histogram()!bins} `bins` argument to `geom_histogram()`.
1. By adjusting the width of the bins via the \index{geom\_histogram()!binwidth} `binwidth` argument to `geom_histogram()`.
Using the first method, we have the power to specify how many bins we would like to cut the x-axis up in. As mentioned in the previous section, the default number of bins is 30. We can override this default, to say 40 bins, as follows:
```{r, eval = FALSE}
ggplot(data = weather, mapping = aes(x = temp)) +
geom_histogram(bins = 40, color = "white")
```
Using the second method, instead of specifying the number of bins, we specify the width of the bins by using the `binwidth` argument in the `geom_histogram()` layer. For example, let's set the width of each bin to be 10°F.
```{r, eval = FALSE}
ggplot(data = weather, mapping = aes(x = temp)) +
geom_histogram(binwidth = 10, color = "white")
```
We compare both resulting histograms side-by-side in Figure \@ref(fig:hist-bins).
```{r hist-bins, warning=FALSE, message=FALSE, fig.cap= "Setting histogram bins in two ways.", echo=FALSE}
hist_1 <- ggplot(data = weather, mapping = aes(x = temp)) +
geom_histogram(bins = 40, color = "white") +
labs(title = "With 40 bins")
hist_2 <- ggplot(data = weather, mapping = aes(x = temp)) +
geom_histogram(binwidth = 10, color = "white") +
labs(title = "With binwidth = 10 degrees F")
hist_1 + hist_2
```
```{block lc-histogram, type='learncheck', purl=FALSE}
\vspace{-0.25in}
**_Learning check_**
\vspace{-0.25in}
```
**`r paste0("(LC", chap, ".", (lc <- lc + 1), ")")`** What does changing the number of bins from 30 to 40 tell us about the distribution of temperatures?
**`r paste0("(LC", chap, ".", (lc <- lc + 1), ")")`** Would you classify the distribution of temperatures as symmetric or skewed in one direction or another?
**`r paste0("(LC", chap, ".", (lc <- lc + 1), ")")`** What would you guess is the "center" value in this distribution? Why did you make that choice?
**`r paste0("(LC", chap, ".", (lc <- lc + 1), ")")`** Is this data spread out greatly from the center or is it close? Why?
```{block, type='learncheck', purl=FALSE}
\vspace{-0.25in}
\vspace{-0.25in}
```
### Summary
Histograms, unlike scatterplots and linegraphs, present information on only a single numerical variable. Specifically, they are visualizations of the distribution of the numerical variable in question.
## Facets {#facets}
Before continuing with the next of the 5NG, let's briefly introduce a new concept called *faceting*. Faceting is used when we'd like to split a particular visualization by the values of another variable. This will create multiple copies of the same type of plot with matching x and y axes, but whose content will differ.
For example, suppose we were interested in looking at how the histogram of hourly temperature recordings at the three NYC airports we saw in Figure \@ref(fig:histogramexample) differed in each month. We could "split" this histogram by the 12 possible months in a given year. In other words, we would plot histograms of `temp` for each `month` separately. We do this by adding `facet_wrap(~ month)` layer. Note the `~` is a "tilde" and can generally be found on the key next to the "1" key on US keyboards. The tilde is required and you'll receive the error `Error in as.quoted(facets) : object 'month' not found` if you don't include it here.
```{r eval=FALSE}
ggplot(data = weather, mapping = aes(x = temp)) +
geom_histogram(binwidth = 5, color = "white") +
facet_wrap(~ month)
```
```{r facethistogram, fig.cap="Faceted histogram of hourly temperatures by month.", echo=FALSE}
month_facet <- ggplot(data = weather, mapping = aes(x = temp)) +
geom_histogram(binwidth = 5, color = "white") +
facet_wrap(~ month)
if(knitr::is_latex_output()){
month_facet +
theme(
strip.text = element_text(colour = 'black'),
strip.background = element_rect(fill = "grey93")
)
} else {
month_facet
}
```
We can also specify the number of rows and columns in the grid by using the `nrow` and `ncol` arguments inside of \index{ggplot2!facet\_wrap()} `facet_wrap()`. For example, say we would like our faceted histogram to have 4 rows instead of 3. We simply add an `nrow = 4` argument to `facet_wrap(~ month)`
```{r eval=FALSE}
ggplot(data = weather, mapping = aes(x = temp)) +
geom_histogram(binwidth = 5, color = "white") +
facet_wrap(~ month, nrow = 4)
```
```{r facethistogram2, fig.cap="Faceted histogram with 4 instead of 3 rows.", echo=FALSE}
month_facet_4 <- ggplot(data = weather, mapping = aes(x = temp)) +
geom_histogram(binwidth = 5, color = "white") +
facet_wrap(~ month, nrow = 4)
if(knitr::is_latex_output()){
month_facet_4 +
theme(
strip.text = element_text(colour = 'black'),
strip.background = element_rect(fill = "grey93")
)
} else {
month_facet_4
}
```
Observe in both Figures \@ref(fig:facethistogram) and \@ref(fig:facethistogram2) that as we might expect in the Northern Hemisphere, temperatures tend to be higher in the summer months, while they tend to be lower in the winter.
```{block lc-facet, type='learncheck', purl=FALSE}
\vspace{-0.25in}
**_Learning check_**
\vspace{-0.25in}
```
**`r paste0("(LC", chap, ".", (lc <- lc + 1), ")")`** What other things do you notice about this faceted plot? How does a faceted plot help us see relationships between two variables?
**`r paste0("(LC", chap, ".", (lc <- lc + 1), ")")`** What do the numbers 1-12 correspond to in the plot? What about 25, 50, 75, 100?
**`r paste0("(LC", chap, ".", (lc <- lc + 1), ")")`** For which types of datasets would faceted plots not work well in comparing relationships between variables? Give an example describing the nature of these variables and other important characteristics.
**`r paste0("(LC", chap, ".", (lc <- lc + 1), ")")`** Does the `temp` variable in the `weather` dataset have a lot of variability? Why do you say that?
```{block, type='learncheck', purl=FALSE}
\vspace{-0.25in}
\vspace{-0.25in}
```
## 5NG#4: Boxplots {#boxplots}
```{r, echo=FALSE}
n_nov <- weather %>%
filter(month == 11) %>%
nrow()
min_nov <- weather %>%
filter(month == 11) %>%
pull(temp) %>%
min(na.rm = TRUE) %>%
round(0)
max_nov <- weather %>%
filter(month == 11) %>%
pull(temp) %>%
max(na.rm = TRUE) %>%
round(0)
quartiles <- weather %>%
filter(month == 11) %>%
pull(temp) %>%
quantile(prob=c(0.25, 0.5, 0.75)) %>%
round(0)
five_number_summary <- tibble(
temp = c(min_nov, quartiles, max_nov)
)
```
While faceted histograms are one type of visualization used to compare the distribution of a numerical variable split by the values of another variable, another type of visualization that achieves this same goal are *side-by-side boxplots*. A boxplot \index{boxplots} is constructed from the information provided in the *five-number summary* of a numerical variable (see Appendix \@ref(appendix-stat-terms)).
To keep things simple for now, let's only consider the `r n_nov` hourly temperature recordings for the month of November, each represented as a point in Figure \@ref(fig:nov1).
```{r nov1, echo=FALSE, fig.cap="November temperatures represented as jittered points."}
base_plot <- weather %>%
filter(month %in% c(11)) %>%
ggplot(mapping = aes(x = factor(month), y = temp)) +
labs(x = "")
base_plot +
geom_jitter(width = 0.075, height = 0.5, alpha = 0.1)
```
These `r n_nov` observations have the following five-number summary:
1. Minimum: `r min_nov`°F
1. First quartile (25^th^ percentile): `r quartiles[1]`°F
1. Median (second quartile, 50^th^ percentile): `r quartiles[2]`°F
1. Third quartile (75^th^ percentile): `r quartiles[3]`°F
1. Maximum: `r max_nov`°F
In the left-most plot of Figure \@ref(fig:nov2), let's mark these 5 values with dashed horizontal lines on top of the `r n_nov` points. In the middle plot of Figure \@ref(fig:nov2) let's add the *boxplot*. In the right-most plot of Figure \@ref(fig:nov2), let's remove the points and the dashed horizontal lines for clarity's sake.
```{r nov2, echo=FALSE, fig.cap="Building up a boxplot of November temperatures."}
boxplot_1 <- base_plot +
geom_hline(data = five_number_summary, aes(yintercept=temp), linetype = "dashed") +
geom_jitter(width = 0.075, height = 0.5, alpha = 0.1)
boxplot_2 <- base_plot +
geom_boxplot() +
geom_hline(data = five_number_summary, aes(yintercept=temp), linetype = "dashed") +
geom_jitter(width = 0.075, height = 0.5, alpha = 0.1)
boxplot_3 <- base_plot +
geom_boxplot()
boxplot_1 + boxplot_2 + boxplot_3
```
What the boxplot does is visually summarize the `r weather %>% filter(month == 11) %>% nrow()` points by cutting the `r n_nov` temperature recordings into *quartiles* at the dashed lines, where each quartile contains roughly `r n_nov` $\div$ 4 $\approx$ 535 observations. Thus
1. 25% of points fall below the bottom edge of the box, which is the first quartile of `r quartiles[1] %>% round(3)`°F. In other words 25% of observations were colder than `r quartiles[1] %>% round(3)`°F.
1. 25% of points fall between the bottom edge of the box and the solid middle line, which is the median of `r quartiles[2] %>% round(3)`°F. In other words 25% of observations were between `r quartiles[1] %>% round(3)`°F and `r quartiles[2] %>% round(3)`°F and 50% of observations were colder than `r quartiles[2] %>% round(3)`°F.
1. 25% of points fall between the solid middle line and the top edge of the box, which is the third quartile of `r quartiles[3] %>% round(3)`°F. In other words 25% of observations were between `r quartiles[2] %>% round(3)` and `r quartiles[3] %>% round(3)`°F and 75% of observations were colder than `r quartiles[3] %>% round(3)`°F.
1. 25% of points fall above the top edge of the box. In other words 25% of observations were warmer than `r quartiles[3] %>% round(3)`°F.
1. The middle 50% of points lie within the *interquartile range (IQR)* \index{interquartile range (IQR)} between the first and third quartile. Thus, the IQR for this example is `r quartiles[3] %>% round(3)` - `r quartiles[1] %>% round(3)` = `r (quartiles[3] - quartiles[1]) %>% round(3)`°F. The interquartile range is a measure of a numerical variable's *spread*.
Furthermore, in the right-most plot of Figure \@ref(fig:nov2), we see the *whiskers* \index{boxplots!whiskers} of the boxplot. The whiskers stick out from either end of the box all the way to the minimum and maximum observed temperatures of `r min_nov`°F and `r max_nov`°F respectively. However, the whiskers don't always extend to the smallest and largest observed values as they do here. They in fact extend no more than 1.5 $\times$ the interquartile range from either end of the box. In this case of the November temperatures, no more than 1.5 $\times$ `r (quartiles[3] - quartiles[1]) %>% round(3)`°F = `r (1.5*(quartiles[3] - quartiles[1])) %>% round(3)`°F from either end of the box. Any observed values outside this range would get marked with points called *outliers*, which we'll see in the next section.
### Boxplots via geom_boxplot {#geomboxplot}
Let's now create a side-by-side boxplot \index{boxplots!side-by-side} of hourly temperatures split by the 12 months as we did previously with the faceted histograms. We do this by mapping the `month` variable to the x-position aesthetic, the `temp` variable to the y-position aesthetic, and by adding a `geom_boxplot()` layer:
```{r badbox, fig.cap="Invalid boxplot specification.", fig.height=3.5}
ggplot(data = weather, mapping = aes(x = month, y = temp)) +
geom_boxplot()
```
```
Warning messages:
1: Continuous x aesthetic -- did you forget aes(group=...)?
2: Removed 1 rows containing non-finite values (stat_boxplot).
```
Observe in Figure \@ref(fig:badbox) that this plot does not provide information about temperature separated by month. The first warning message clues us in as to why. It is telling us that we have a "continuous", or numerical variable, on the x-position aesthetic. Boxplots however require a categorical variable to be mapped to the x-position aesthetic. The second warning message is identical to the warning message when plotting a histogram of hourly temperatures: that one of the values was recorded as `NA` missing.
We can convert the numerical variable `month` into a `factor` variable by using the `factor()` \index{factor()} function. So after applying `factor(month)`, month goes from having numerical values just the 1, 2, ..., and 12 to having an associated ordering. With this ordering, `ggplot()` now knows how to work with this variable to produce the needed plot.
```{r monthtempbox, fig.cap="Side-by-side boxplot of temperature split by month.", fig.height=3.7}
ggplot(data = weather, mapping = aes(x = factor(month), y = temp)) +
geom_boxplot()
```
The resulting Figure \@ref(fig:monthtempbox) shows 12 separate "box and whiskers" plots similar to the right-most plot of Figure \@ref(fig:nov2) focusing only on November. Thus the different boxplots are shown "side-by-side."
* The "box" portions of the visualization represent the 1^st^ quartile, the median (the 2^nd^ quartile), and the 3^rd^ quartile.
* The height of each box, i.e. the value of the 3^rd^ quartile minus the value of the 1^st^ quartile, is the interquartile range (IQR). It is a measure of the spread of the middle 50% of values, with longer boxes indicating more variability.
* The "whisker" portions of these plots extend out from the bottoms and tops of the boxes and represent points less than the 25^th^ percentile and greater than the 75^th^ percentiles respectively. They're set to extend out no more than $1.5 \times IQR$ units away from either end of the boxes. We say "no more than" because the ends of the whiskers have to correspond to observed temperatures. The length of these whiskers show how the data outside the middle 50% of values vary, with longer whiskers indicating more variability.
* The dots representing values falling outside the whiskers are called \index{outliers} *outliers*. These can be thought of as anomalous ("out-of-the-ordinary") values.
It is important to keep in mind that the definition of an outlier is somewhat arbitrary and not absolute. In this case, they are defined by the length of the whiskers, which are no more than $1.5 \times IQR$ units long for each boxplot. Looking at this side-by-side plot we can see, as expected, that summer months (6 through 8) have higher median temperatures as evidenced by the higher solid lines in the middle of the boxes. We can easily compare temperatures across months by drawing imaginary horizontal lines across the plot. Furthermore, the height of the 12 boxes as quantified by the interquartile ranges are informative too; they tell us about variability, or spread, of temperatures recorded in a given month.
```{block lc-boxplot, type='learncheck', purl=FALSE}
\vspace{-0.25in}
**_Learning check_**
\vspace{-0.25in}
```
**`r paste0("(LC", chap, ".", (lc <- lc + 1), ")")`** What does the dot at the bottom of the plot for May correspond to? Explain what might have occurred in May to produce this point.
**`r paste0("(LC", chap, ".", (lc <- lc + 1), ")")`** Which months have the highest variability in temperature? What reasons can you give for this?
**`r paste0("(LC", chap, ".", (lc <- lc + 1), ")")`** We looked at the distribution of the numerical variable `temp` split by the numerical variable `month` that we converted using the `factor()` function in order to make a side-by-side boxplot. Why would a boxplot of `temp` split by the numerical variable `pressure` similarly converted to a categorical variable using the `factor()` not be informative?
**`r paste0("(LC", chap, ".", (lc <- lc + 1), ")")`** Boxplots provide a simple way to identify outliers. Why may outliers be easier to identify when looking at a boxplot instead of a faceted histogram?
```{block, type='learncheck', purl=FALSE}
\vspace{-0.25in}
\vspace{-0.25in}
```
### Summary
Side-by-side boxplots provide us with a way to compare the distribution of a numerical variable across multiple values of another variable. One can see where the median falls across the different groups by looking at the solid line in the center of the boxes. To study the spread of a numerical variable within one of the boxes, look at both the length of the box and also how far the whiskers extend from either end of the box. Outliers are even more easily identified when looking at a boxplot than when looking at a histogram as they are marked with distinct points.
## 5NG#5: Barplots {#geombar}
Both histograms and boxplots are tools to visualize the distribution of numerical variables. Another common task is to visualize the distribution of a categorical variable. This is a simpler task, as we are simply counting different categories of a categorical variable, also known as the \index{levels} *levels* of the categorical variable. Often the best way to visualize these different counts, also known as \index{frequencies} *frequencies*, is with barplots (also called barcharts).
One complication, however, is how your data is represented. Is the categorical variable of interest "pre-counted" or not? For example, run the following code that manually creates two data frames representing a collection of fruit: 3 apples and 2 oranges.
```{r}
fruits <- tibble(
fruit = c("apple", "apple", "orange", "apple", "orange")
)
fruits_counted <- tibble(
fruit = c("apple", "orange"),
number = c(3, 2)
)
```
We see both the `fruits` and `fruits_counted` data frames represent the same collection of fruit. Whereas `fruits` just lists the fruit individually...
```{r fruits, echo=FALSE}
fruits
```
... `fruits_counted` has a variable `count` which represent the "pre-counted" values of each fruit.
```{r fruitscounted, echo=FALSE}
fruits_counted
```
Depending on how your categorical data is represented, you'll need to add a different `geom`etric layer type to your `ggplot()` to create a barplot, as we now explore.
### Barplots via geom_bar or geom_col
Let's generate barplots using these two different representations of the same basket of fruit: 3 apples and 2 oranges. Using the `fruits` data frame where all 5 fruit are listed individually in 5 rows, we map the `fruit` variable to the x-position aesthetic and add a \index{ggplot2!geom\_bar()} `geom_bar()` layer:
```{r geombar, fig.cap="Barplot when counts are not pre-counted.", fig.height=2.5}
ggplot(data = fruits, mapping = aes(x = fruit)) +
geom_bar()
```
However, using the `fruits_counted` data frame where the fruit have been "pre-counted", we once again map the `fruit` variable to the x-position aesthetic, but here we also map the `count` variable to the y-position aesthetic, and add a \index{ggplot2!geom\_col()} `geom_col()` layer instead.
```{r, geomcol, fig.cap="Barplot when counts are pre-counted.", fig.height=2.5}
ggplot(data = fruits_counted, mapping = aes(x = fruit, y = number)) +
geom_col()
```
Compare the barplots in Figures \@ref(fig:geombar) and \@ref(fig:geomcol). They are identical because they reflect counts of the same five fruit. However depending on how our categorical data is represented, either "pre-counted" or not, we must add a different `geom` layer. When the categorical variable whose distribution you want to visualize
* Is *not* pre-counted in your data frame, we use `geom_bar()`.
* Is pre-counted in your data frame, we use `geom_col()` with the y-position aesthetic mapped to the variable that has the counts.
Let's now go back to the `flights` data frame in the `nycflights13` package and visualize the distribution of the categorical variable `carrier`. In other words, let's visualize the number of domestic flights out of New York City each airline company flew in 2013. Recall from Subsection \@ref(exploredataframes) when you first explored the `flights` data frame you saw that each row corresponds to a flight. In other words the `flights` data frame is more like the `fruits` data frame than the `fruits_counted` data frame because the flights have not been pre-counted by `carrier`. Thus we should use `geom_bar()` instead of `geom_col()` to create a barplot. Much like a `geom_histogram()`, there is only one variable in the `aes()` aesthetic mapping: the variable `carrier` gets mapped to the `x`-position. As a difference though, histograms have bars that touch whereas bar graphs have white space between the bars going from left to right.
(ref:geombar) Number of flights departing NYC in 2013 by airline using geom_bar().
```{r flightsbar, fig.cap='(ref:geombar)', fig.height=2.5}
ggplot(data = flights, mapping = aes(x = carrier)) +
geom_bar()
```
Observe in Figure \@ref(fig:flightsbar) that United Air Lines (UA), JetBlue Airways (B6), and ExpressJet Airlines (EV) had the most flights depart New York City in 2013. If you don't know which airlines correspond to which carrier codes, then run `View(airlines)` to see a directory of airlines. For example: AA is American Airlines; B6 is JetBlue Airways; DL is Delta Airlines; EV is ExpressJet Airlines; MQ is Envoy Air; while UA is United Airlines.
Alternatively, say you had a data frame where the number of flights for each `carrier` was pre-counted as in Table \@ref(tab:flights-counted).
```{r flights-counted, message=FALSE, echo=FALSE}
flights_counted <- flights %>%
group_by(carrier) %>%
summarize(number = n())
kable(flights_counted,
digits = 3,
caption = "\\label{tab:flights-counted} Number of flights pre-counted for each carrier.",
booktabs = TRUE,
longtable = TRUE
) %>%
kable_styling(font_size = ifelse(knitr:::is_latex_output(), 10, 16),
latex_options = c("hold_position"))
```
In order to create a barplot visualizing the distribution of the categorical variable `carrier` in this case, we would now use `geom_col()` instead of `geom_bar()`, with an additional `y = number` in the aesthetic mapping on top of the `x = carrier`. The resulting barplot would be identical to Figure \@ref(fig:flightsbar).
```{block lc-barplot, type='learncheck', purl=FALSE}
\vspace{-0.25in}
**_Learning check_**
\vspace{-0.25in}
```
**`r paste0("(LC", chap, ".", (lc <- lc + 1), ")")`** Why are histograms inappropriate for visualizing categorical variables?
**`r paste0("(LC", chap, ".", (lc <- lc + 1), ")")`** What is the difference between histograms and barplots?
**`r paste0("(LC", chap, ".", (lc <- lc + 1), ")")`** How many Envoy Air flights departed NYC in 2013?
**`r paste0("(LC", chap, ".", (lc <- lc + 1), ")")`** What was the seventh highest airline in terms of departed flights from NYC in 2013? How could we better present the table to get this answer quickly?
```{block, type='learncheck', purl=FALSE}
\vspace{-0.25in}
\vspace{-0.25in}
```
### Must avoid pie charts!
One of the most common plots used to visualize the distribution of categorical data is the \index{pie chart} pie chart. While they may seem harmless enough, pie charts actually present a problem in that humans are unable to judge angles well. As Naomi Robbins describes in her book "Creating More Effective Graphs" [@robbins2013], we overestimate angles greater than 90 degrees and we underestimate angles less than 90 degrees. In other words, it is difficult for us to determine the relative size of one piece of the pie compared to another.
Let's examine the same data used in our previous barplot of the number of flights departing NYC by airline in Figure \@ref(fig:flightsbar), but this time we will use a pie chart in Figure \@ref(fig:carrierpie). Try to answer the following questions:
* How much larger is the portion of the pie for ExpressJet Airlines (`EV`) compared to US Airways (`US`),
* What is the third largest carrier in terms of departing flights, and
* How many carriers have fewer flights than United Airlines (`UA`)?
```{r carrierpie, echo=FALSE, fig.cap="The dreaded pie chart.", out.width="75%"}
if(knitr::is_html_output()){
ggplot(flights, mapping = aes(x = factor(1), fill = carrier)) +
geom_bar(width = 1) +
coord_polar(theta = "y") +
theme(axis.title.x = element_blank(),
axis.title.y = element_blank(),
axis.ticks = element_blank(),
axis.text.y = element_blank(),
axis.text.x = element_blank(),
panel.grid.major = element_blank(),
panel.grid.minor = element_blank()) +
guides(fill = guide_legend(keywidth = 0.8, keyheight = 0.8))
} else {
ggplot(flights, mapping = aes(x = factor(1), fill = carrier)) +
geom_bar(width = 1) +
coord_polar(theta = "y") +
theme_light() +
theme(axis.title.x = element_blank(),
axis.title.y = element_blank(),
axis.ticks = element_blank(),
axis.text.y = element_blank(),
axis.text.x = element_blank(),
panel.grid.major = element_blank(),
panel.grid.minor = element_blank()) +
guides(fill = guide_legend(keywidth = 0.8, keyheight = 0.8)) +
scale_fill_grey()
}
```
While it is quite difficult to answer these questions when looking at the pie chart in Figure \@ref(fig:carrierpie), we can much more easily answer these questions using the barchart in Figure \@ref(fig:flightsbar). This is true since barplots present the information in a way such that comparisons between categories can be made with single horizontal lines, whereas pie charts present the information in a way such that comparisons must be made by \index{pie charts!problems with} comparing angles.
```{block lc-pie-charts, type='learncheck', purl=FALSE}
\vspace{-0.25in}
**_Learning check_**
\vspace{-0.25in}
```
**`r paste0("(LC", chap, ".", (lc <- lc + 1), ")")`** Why should pie charts be avoided and replaced by barplots?
**`r paste0("(LC", chap, ".", (lc <- lc + 1), ")")`** Why do you think people continue to use pie charts?
```{block, type='learncheck', purl=FALSE}
\vspace{-0.25in}
\vspace{-0.25in}
```
### Two categorical variables {#two-categ-barplot}
Barplots are a very common way to visualize the frequency of different categories, or levels, of a single categorical variable. Another use of barplots is to visualize the *joint* distribution of two categorical variables at the same time. Let's examine the *joint* distribution of outgoing domestic flights from NYC by `carrier` as well as `origin`. In other words, the number of flights for each `carrier` and `origin` combination. For example, the number of WestJet flights from `JFK`, the number of WestJet flights from `LGA`, the number of WestJet flights from `EWR`, the number of American Airlines flights from `JFK`, and so on. Recall the `ggplot()` code that created the barplot of `carrier` frequency in Figure \@ref(fig:flightsbar):
```{r, fig.height=2.5, eval=FALSE}
ggplot(data = flights, mapping = aes(x = carrier)) +
geom_bar()
```
We can now map the additional variable `origin` by adding a `fill = origin` inside the `aes()` aesthetic mapping; the `fill` aesthetic of any bar corresponds to the color used to fill the bars.
```{r eval=FALSE}
ggplot(data = flights, mapping = aes(x = carrier, fill = origin)) +
geom_bar()
```
```{r flights-stacked-bar, echo=FALSE, fig.cap="Stacked barplot comparing the number of flights by carrier and origin.", fig.height=3.5}
if(knitr::is_html_output()) {
ggplot(data = flights, mapping = aes(x = carrier, fill = origin)) +