Data visualization, part 1. Code for Quiz 7.
Quiz questions
Replace all the ???s. These are answers on your moodle quiz.
Run all the individual code chunks to make sure the answers in this file correspond with your quiz answers
After you check all your code chunks run then you can knit it. It won’t knit until the ??? are replaced
The quiz assumes you have watched the videos had worked through the exercises in exercises_slides-1-49.Rmd
Pick one of your plots to save as your preview plot. Use the ggsave command at the end of the chunk of the plot that you want to preview.
Create a plot with the faithful
dataset
add points with geom_point
assign the variable eruptions
to the x-axis
assign the variable waiting
to the y-axis -color the points according to whether waiting
is smaller or greater than 64
ggplot(faithful) +
geom_point(aes(x = eruptions, y = waiting, colour = waiting > 64))
Create a plot with the faithful
dataset
add points with geom_point
assign the variable eruptions
to the x-axis
assign the variable waiting
to the y-axis
assign the color darkorange to all the points
ggplot(faithful) +
geom_point(aes(x = eruptions, y = waiting),
colour = "darkorange ")
Create a plot with the faithful
dataset
use geom_histogram()
to plot the distribution of waiting
time
assign the variable waiting
to the x-axis
ggplot(faithful) +
geom_histogram(aes(x = waiting))
See how shapes and sizes of points can be specified here: https://ggplot2.tidyverse.org/articles/ggplot2-specs.html#sec:shape-spec
Create a plot with the faithful
dataset
add points with geom_point
assign the variable eruptions
to the x-axis
assign the variable waiting
to the y-axis
set the shape of the points to asterisk
set the point size to 8
set the point transparency 0.7
ggplot(faithful) +
geom_point(aes(x = eruptions, y = waiting),
shape = "asterisk", size = 8, alpha =0.7)
Create a plot with the faithful
dataset
use geom_histogram()
to plot the distribution of the eruptions
(time)
fill in the histogram based on whether eruptions
are greater than or less than 3.2 minutes
ggplot(faithful) +
geom_histogram(aes(x = eruptions, fill = eruptions > 3.2 ))
Create a plot with the mpg
dataset
add geom_bar()
to create a bar chart of the variable manufacturer
ggplot(mpg) +
geom_bar(aes(x = manufacturer))
change code to count and to plot the variable manufacturer
instead of class
mpg_counted <- mpg %>%
count(manufacturer, name = 'count')
ggplot(mpg_counted) +
geom_bar(aes(x = manufacturer, y = count), stat = 'identity')
change code to plot bar chart of each manufacturer
as a percent of total
change class
to manufacturer
ggplot(mpg) +
geom_bar(aes(x = manufacturer, y = after_stat(100 * count / sum(count))))
for reference see: https://ggplot2.tidyverse.org/reference/stat_summary.html?q=stat%20_%20summary#examples
Use stat_summary()
to add a dot at the median of each group
color the dot orange
make the shape of the dot square
make the dot size 9
ggplot(mpg) +
geom_jitter(aes(x = class, y = hwy), width = 0.2) +
stat_summary(aes(x = class, y = hwy), geom = "point",
fun = "median", color = "orange",
shape = "square", size = 9 )
ggsave(filename = "preview.png",
path = here::here("_posts", "2021-03-29-exploratory-analysis"))