ggplot2The objective of this assignment is to complete and explain basic plots before moving on to more complicated ways to graph data.
Each question is worth 5 points.
To submit this homework you will create the document in Rstudio,
using the knitr package (button included in Rstudio) and then submit the
document to your Rpubs account. Once
uploaded you will submit the link to that document on Canvas. Please
make sure that this link is hyperlinked and that I can see the
visualization and the code required to create it
(echo=TRUE).
mosaicData package.Create an informative and meaningful data graphic.
Identify each of the visual cues that you are using, and describe how they are related to each variable.
Create a data graphic with at least five variables (either quantitative or categorical). For the purposes of this exercise, do not worry about making your visualization meaningful—just try to encode five variables into one plot.
The following chart shows the distribution of how previous marriage ended across different race demographic.
The visual cues used for this chart are are length, color and Cartesion coordinates. Length/size represents the count of each variable. Color encodes reason why previous marriage ended and these are displayed on Cartesian coordinates.
ggplot(Marriage, aes(fill=prevconc, x=race)) +
geom_bar() +
labs(
x = 'Race',
y = 'Count',
fill = 'How Previous Marriage Ended',
title = 'Reason Why Previous Marriage Ended by Race') +
theme_classic()
Your objective for the next four questions will be write the code necessary to exactly recreate the provided graphics.
This boxplot was built using the mpg dataset. Notice the
changes in axis labels.
ggplot(mpg, aes(manufacturer, hwy)) +
geom_boxplot() +
coord_flip() +
labs(x="Vehicle Manufacturer", y="Highway Fuel Efficiency (miles/gallon)") +
theme_classic()
This graphic is built with the diamonds dataset in the
ggplot2 package.
ggplot(diamonds, aes(price,fill=cut,color=cut)) +
geom_density(alpha=0.3, size=0.3) +
labs(x="Diamond Price (USD)", y="Density", title="Diamond Price Density")
This graphic uses the penguins dataset and shows the
counts between males and females by species.
ggplot(penguins, aes(x = sex, fill = species)) +
geom_bar(alpha = 0.8) +
scale_fill_manual(values = c("darkorange","purple","cyan4"),
guide = "none") +
theme_minimal() +
facet_wrap(~species, ncol = 1) +
coord_flip() +
labs(y="Count", x="Sex")
This figure examines the relationship between bill length and depth
in the penguins dataset.
ggplot(data = penguins, aes(x = bill_length_mm, y = bill_depth_mm, color = species)) +
geom_point(aes(shape = species), size = 2) +
geom_smooth(method = 'lm', se = FALSE) +
scale_color_manual(values = c("darkorange", "darkorchid", "cyan4")) +
labs(x = "Bill Length (mm)", y = "Bill Depth (mm)", color = "Species", shape = "Species")