ggplot2
basicsDuring ANLY 512 we will be studying the theory and practice of
data visualization. We will be using R and the
packages within R to assemble data and construct many
different types of visualizations. We begin by studying some of the
theoretical aspects of visualization. To do that we must appreciate the
basic steps in the process of making a visualization.
The objective of this assignment is to complete and explain basic plots before moving on to more complicated ways to graph data.
A couple of tips, remember that there may be pre-processing involved in your graphics so you may have to do summaries or calculations to prepare, those should be included in your work.
To ensure accuracy pay close attention to axes and labels, you will be evaluated based on the accuracy and expository nature of your graphics. Make sure your axis labels are easy to understand and are comprised of full words with units if necessary.
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 hyper linked and that I can see the visualization and the code required to create it.
1. Using data from the nasaweather
package, create a scatter plot between wind and pressure, with color
being used to distinguish the type of storm.
data = storms
type_count = xtabs(~data$type)
tbl = data %>% group_by(type) %>%
summarise(
count = n(),
mean_wind = mean(wind),
mean_Pressure = mean(pressure)
)
ggplot(data, aes(x = wind, y = pressure, color = type)) + theme_bw() +
geom_point(alpha = 0.25) + labs(title = "Scatterplot between Wind and Pressure", x = "Wind Speed", y = "Pressure")
2. Use the MLB_teams data in the
mdsr package to create an informative data graphic that
illustrates the relationship between winning percentage and payroll in
context.
ggplot(MLB_teams, aes(x = WPct, y = payroll)) + theme_bw() + scale_fill_brewer(palette = 'Dark2') +
geom_point() + geom_smooth(method = 'lm') + labs(title = "Relationship between Winning % and Payroll", x = "Winning Percentage",
y = "Payroll in millions") + scale_y_continuous(labels = label_dollar(scale_cut = cut_short_scale())) +
scale_x_continuous(labels = label_percent())
3. The RailTrail data set from the
mosaicData package describes the usage of a rail trail in
Western Massachusetts. Use these data to answer the following
questions.
volume against the high temperature that dayweekday (an indicator
of weekend/holiday vs. weekday)ggplot(data = RailTrail, aes(y = hightemp, x = volume)) + geom_point(size = 2) + labs (title = ("Number of crosses vs Temperature per day"))
b:
ggplot(RailTrail, aes(y = hightemp, x = volume)) + geom_point(size = 2) + labs (title = ("No of crosses Vs Temperature per day")) +
geom_point(aes(color = dayType))
c:
RailTrail1 = RailTrail %>% mutate(weekday_indicator = ifelse(weekday, "Weekday", "Weekend"))
ggplot(RailTrail1,aes(y = hightemp, x = volume)) + geom_point() + geom_smooth(method = "lm") +
facet_wrap(~ weekday_indicator, nrow = 1) + labs(title = ("No of crosses Vs Temperature per day"))
4. Using data from the nasaweather
package, use the geom_path function to plot the path of
each tropical storm in the storms data table. Use color to
distinguish the storms from one another, and use faceting to plot each
year in its own panel.
ggplot(storms, aes(x = long, y = lat, group = name, color = name)) + geom_path() +
labs(x = "Longitude", y = "Latitude", title = "Paths of Storms by Year") + facet_wrap(~year, ncol = 3) +
scale_color_discrete(name = "Storm name")
5. Using the penguins data set from the
palmerpenguins package.
a:
ggplot(penguins, aes(x = bill_length_mm, y = bill_depth_mm, color=species)) + geom_point() + geom_smooth(method = "lm") +
labs(x = "Bill Length (mm)", y = "Bill Depth (mm)", title = ("Bill Length Vs. Depth by Species"), color = "Species")
b:
ggplot(penguins, aes(x = bill_length_mm, y = bill_depth_mm, color=species)) + geom_point() + geom_smooth(method = "lm") +
facet_wrap(~species) + labs(x = "Bill Length (mm)", y = "Bill Depth (mm)", title = ("Bill Length vs. Depth by Species"), color = "Species")