Download and open the assign04.qmd file and complete the exercises.
We will be using pay-per-click (PPC) data from a 31 day campaign from a company that sells USB keys and USB hubs. Each row of the 555 observations represents a click on an internet ad based on a keyword search and there are 3 columns.
day - represents the day of the campaign. Valid days are 1-31.
price - represents the price of the campaign. Price can’t be a number below 0.10
keyword - represents the keyword purchased. Everything must be spelled correctly, there aren’t many keywords but they are some combination of “usb” and/or “key” or “hub”
In this assignment you will be examining each column for data validity. Each exercise presents one or more questions for you to answer.
We’ll start by loading the tidyverse family of packages along with the janitor and skimr packages, and our data. Make sure you install these two packages in your RStudio prior to calling the library() functions below.
There are six exercises in this assignment. The Grading Rubric is available at the end of this document.
Exercise 1
Create a graph of number of clicks (i.e., observations) for each day (1-31). Use geom_bar() for your geometry. In the narrative below your code note which days had zero clicks.
Day 27 had zero clicks.
Exercise 2
Insert a code cell to show how many NA (i.e., missing) values there are in price. In the narrative below that code cell write out how many NA values there are for price and what percent of the observations that represents.
sum(is.na(ppc_data$price))
[1] 6
There are 6 missing NA values in the price column. This represents 1.08% of all observations.
Exercise 3
Valid values for price are 0.1 or greater. Insert a code cell that displays the number of values of price that are less than 0.1. In the narrative below that code cell write how many values are below 0.1.
ppc_data |>filter(price < .10) |>nrow()
[1] 10
There are 10 values where the price is below 0.10.
Exercise 4
Insert a code cell that drops all of the rows that contain invalid or NA values for price.
Insert a code cell that shows a tabyl of the counts of each keyword. In the narrative below the code cell, list the misspellings and counts if there are any.
ppc_clean |>tabyl(keyword) |>arrange(desc(n))
keyword n percent
usb key 157 0.29128015
usb hub 119 0.22077922
hub 89 0.16512059
key 81 0.15027829
usb 73 0.13543599
ubs 10 0.01855288
ubs key 10 0.01855288
Based on the table, the misspelled keywords are: “ubs” “ubs key”
Exercise 6
Insert a code cell that corrects all the misspellings for keyword, then rerun tabyl to verify.