Instructions

  1. Please submit your filled out .Rmd file to the assignment drop box on CoursePlus: https://courseplus.jhu.edu/core/index.cfm/go/db:assignment.submit/assignmentID/44234/coID/18000/

  2. All assignments are due by Friday, July 1, 2022 at 11:59pm EST. Please reach out to us if you need help before this time!

## you can add more, or change...these are suggestions
library(tidyverse)
library(readr)
library(dplyr)
library(ggplot2)
library(tidyr)

Problem Set

1. (a) Make an object “bday”. Assign it your birthday in day-month format (1-Jan). (b) Make another object “name”. Assign it your name. Make sure to use quotation marks for anything with text!

2. Make an object “me” that is “bday” and “name” combined.

3. Determine the data class for “me”.

4. If I want to do me / 2 I get the following error: Error in me/2 : non-numeric argument to binary operator. Why? Write your answer as a comment inside the R chunk below.

#

The following questions involve an outside dataset.

We will be working with a dataset from the “Kaggle” website, which hosts competitions for prediction and machine learning. More details on this dataset are here: https://www.kaggle.com/c/DontGetKicked/overview/background.

5. Bring the dataset into R. The dataset is located at: https://jhudatascience.org/intro_to_r/data/kaggleCarAuction.csv. You can use the link, download it, or use whatever method you like for getting the file. Once you get the file, read the dataset in using read_csv() and assign it the name “cars”.

6. Import the data “dictionary” from https://jhudatascience.org/intro_to_r/data/Carvana_Data_Dictionary_formatted.txt. Use the read_tsv() function and assign it the name “key”.

7. R can save individual variables as .rds files that can be imported again later. Save the “cars” data in an .rds file using the write_rds() function. You can choose what the file= argument is.

8. You should now be ready to work with the “cars” dataset.

  1. Preview the data so that you can see the names of the columns. There are several possible functions to do this.
  2. Determine the class of the first three columns using spec() or typeof(). Write your answer as a comment inside the R chunk below.

9. How many cars (rows) are in the dataset? How many variables (columns) are recorded for each car?

10. Filter out (i.e., remove) any vehicles that cost less than or equal to $5000 (“VehBCost”) or that have missing values. Reassign the new filtered dataset to “cars”. How many vehicles are left after filtering?

Hint: The filter() function also removes missing values.

11. From this point on, work with the filtered “cars” dataset from the above question. Given the average car loan today is 70 months, create a new variable (column) called “MonthlyPrice” that shows the monthly cost for each car (Divide “VehBCost” by 70). Check to make sure the new column is there.

Hint: use the mutate() function.

12. What is the range of the manufacture year (“VehYear”) of the vehicles?

13. How many cars were from before 2004? What percent/proportion do these represent? Use:

14. How many different vehicle manufacturers/makes (“Make”) are there?

Hint: use length() with unique() or table(). Remember to pull() the right column.

15. How many different vehicle models (“Model”) are there?

16. Which vehicle color group had the highest mean acquisition cost paid for the vehicle at time of purchase, and what was this cost?

Hint: Use group_by() with summarize(). To determine the column that corresponds to “acquisition cost paid for the vehicle at time of purchase”, check the “key” corresponding to the data dictionary that you imported above.

17. Extend on the code you wrote for question 16. Use the arrange() function to sort the output by mean acquisition cost.

18. How many vehicles were red and have fewer than 30,000 miles? To determine the column that corresponds to mileage (odometer reading), check the “key” corresponding to the data dictionary that you imported above. use:

19. How many vehicles are blue or red? use:

20. Select all columns in “cars” where the column names starts with “Veh” (using select() and starts_with(). Then, use colMeans() to summarize across these columns.

Bonus Practice

A. Using “cars”, create a new binary (TRUEs and FALSEs) column to indicate if the car has an automatic transmission. Call the new column “is_automatic”.

B. What is the average vehicle odometer reading for cars that are both RED and NISSANs? How does this compare with vehicles that do NOT fit this criteria?

C. Among red Nissans, what is the distribution of vehicle ages?

D. How many vehicles (using filter() or sum() ) are made by Chrysler or Nissan and are white or silver?

E. Make a boxplot (boxplot()) that looks at vehicle age (“VehicleAge”) on the x-axis and odometer reading (“VehOdo”) on the y-axis.

F. Knit your document into a report.

You use the knit button to do this. Make sure all your code is working first!