This first project will introduce you to creating RMarkdown files and doing basic data manipulation with R and RStudio.
In a single r chunk, perform two operations: first add the numbers 9 and 23, then divide the number 42 by the sum of 83 and 101. Round your second answer to three decimal places. State both answers in complete sentences beneath your r chunk.
# Add the numbers 9 and 23
9+23
## [1] 32
# Divide the number 42 by the sum of 83 and 101
42 / (83 + 101)
## [1] 0.2282609
The sum of nine and twenty three is thirty two.
The number forty two divided by the sum of eighty three and one hundred and one is zero point two two eight.
In an r chunk, store the dataframe mtcars into an object called mtcars and use the head() function to look at the first 6 rows of that object.
# Store the `mtcars` dataframe into a local object
mtcars <- mtcars
# Print the first few rows of `mtcars`
head(mtcars)
## mpg cyl disp hp drat wt qsec vs am gear carb
## Mazda RX4 21.0 6 160 110 3.90 2.620 16.46 0 1 4 4
## Mazda RX4 Wag 21.0 6 160 110 3.90 2.875 17.02 0 1 4 4
## Datsun 710 22.8 4 108 93 3.85 2.320 18.61 1 1 4 1
## Hornet 4 Drive 21.4 6 258 110 3.08 3.215 19.44 1 0 3 1
## Hornet Sportabout 18.7 8 360 175 3.15 3.440 17.02 0 0 3 2
## Valiant 18.1 6 225 105 2.76 3.460 20.22 1 0 3 1
Use the ?mtcars command in the RStudio Console to pull up the help documentation to find out what the qsec variable describes in the mtcars dataset. No r chunk is required here, just a complete sentence answer.
The qsec variable in mtcars represents the time the car took to travel a quarter of a mile.
To load a package into R requires the use of the install.packages() and library() functions. Type: install.packages("openintro") into the RStudio Console to install that package on to your computer. The install.packages() function requires a character input, so " " are needed around the input.
The library() function takes in an object name, so do not use " " around the object name.
For this question, simply use an r chunk to load the library openintro which contains some datasets we will use going in subsequent problems.
# Load the openintro package
library(openintro)
## Please visit openintro.org for free statistics materials
##
## Attaching package: 'openintro'
## The following objects are masked from 'package:datasets':
##
## cars, trees
With the openintro library loaded, you can now access some datasets from it. In an r chunk, find the dimensions of the email dataset by using the dim() function on it.
# List out the number of rows and columns of the `email` dataframe
dim(email)
## [1] 3921 21
The $ sign is used to specify a certain variable of a dataframe. For example, the following will give me the sum of the cylinders variable in the mtcars dataframe.
# Sum of the cyl variable in mtcars dataframe
sum(mtcars$cyl)
## [1] 198
In the email dataframe, what is the sum of the values in the line_breaks variable? State your answer in a complete sentence beneath the chunk.
# Sum of the line_breaks variable in the email dataframe
sum(email$line_breaks)
## [1] 904412
The sum of the line_breaks variable in theemail dataset is nine hundred four thousand, four hundred and twelve.
In the email dataset, the first variable called spam has a value of 0 if the email was not spam and a value of 1 if the email was spam. You can use the table() function on the spam variable to see how many emails fell into the spam and non-spam categories.
In an r chunk, calculate what percent of the emails in this dataframe were considered spam? Then state your answer beneath the chunk in a complete sentence, rounded to nearest tenth of a percent.
# Take the number of positive spam emails and divide them by the total number of emails, multiplying by one hundred to convert to percent
table(email$spam)[2] / dim(email)[1] * 100
## 1
## 9.359857
Nine point four percent of the emails are marked as spam.
We can use the subset() function to get subsets of a dataframe based on a given characteristic.
For example, the code below will store a new dataframe that only contains the observations in which the word “dollar” or a $ sign was found in the email.
# Storing emails with "dollar" in them to an object called money
money <- subset(email, email$dollar > 0)
Use an r chunk to find the percent of emails in the money object that are spam.
# Divide the number of positive spam emails in the money dataframe and divide by the total number of rows in said dataframe, multiplying by one hundred to convert to percent
table(money$spam)[2] / dim(money)[1] * 100
## 1
## 10.45576
Comparing your answers from #7 and #8, do dollar signs or the word “dollar” seem to be a key characteristic of emails that are spam? Explain why or why not.
While they are slightly different, the difference is not great enough to infer any corellation between the word “dollar” and whether or not the email is spam.
Type View(airquality) into your RStudio console (not in an r chunk) and you will see a tab open up with the dataset in it for viewing. The dataframe gives air quality measurements in NYC over a 153 day period in the year 1973. In the chunk below, I have stored the airquality dataframe into an object called airquality and returned the names of the variables.
# Store airquality dataframe in object called airquality
airquality <- airquality
# Find the names of the variables in the dataframe
names(airquality)
## [1] "Ozone" "Solar.R" "Wind" "Temp" "Month" "Day"
Type ?airquality into the RStudio console to find out what the variable names in the dataframe represent.
This chunk below tries to find the sum of the solar radiation in langleys (a unit of solar radiation), but there is a problem, it returns NA.
# Find sum of Solar.R variable
sum(airquality$Solar.R)
## [1] NA
If you type View(airquality) into your RStudio console again, you can see that there are some values in the Solar.R variable, but also some NA values, which the sum function cannot handle.
Type ?sum into your RStudio console and look at the help documentation for that function. You’ll see in the Usage section sum(..., na.rm = FALSE). The second argument, na.rm, stands for “remove NAs” and this function defaults to FALSE, or no, do not remove NAs. If we want the sum function to ignore the NAs in a vector, we just need to set na.rm = TRUE as a second argument inside the function.
Use an r chunk to find the sum of the solar radiation (the Solar.R variable) by ignoring NAs.
# Sum the solar radiation values, ignoring NA values
sum(airquality$Solar.R, na.rm = TRUE)
## [1] 27146
Often we will need to load our own data into R for analysis. A common file type that data is stored in is called a “.csv” file or “comma separated values”. The common way to load a .csv in R is with the read.csv() function and storing it to an object.
Example:
new_data <- read.csv("newdata.csv")
For this question:
project_data.# The mens_health.csv file is stored in my default working directory
# Load in mens_health.csv
mens_health <- read.csv("mens_health.csv")
# Sum the BMI variables in the mens_health dataframe
sum(mens_health$BMI)
## [1] 1039.9