6.1 Data
6.1.1 Import
We will analyze data from a survey in which 60 consumers were asked to respond to six questions about toothpaste. These data were collected by the creators of Radiant, which is an R package for business analytics that we will use later on. Download the data here and import them into R:
library(tidyverse)
library(readxl)
toothpaste <- read_excel("toothpaste.xlsx")6.1.2 Manipulate
toothpaste # Check out the dataThe data set consists of one identifier, consumer, and the respondent’s ratings of the importance of six toothpaste attributes: prevents_cavities, shiny_teeth, strengthens_gums, freshens_breath, decay_prevention_unimportant, and attractive_teeth. We also have the respondent’s age and gender.
Let’s factorize the identifier and gender:
toothpaste <- toothpaste %>%
mutate(consumer = factor(consumer),
gender = factor(gender))6.1.3 Recap: importing & manipulating
Here’s what we’ve done so far, in one orderly sequence of piped operations (download the data here):
library(tidyverse)
library(readxl)
toothpaste <- read_excel("toothpaste.xlsx")
mutate(consumer = factor(consumer),
gender = factor(gender))