10.2.3 Exploration 10B: Complex Gender Interactions at EnPact
Simplify the variables in the EnPact data file (C11 EnPact Data.xls [.rda]) until your
data spreadsheet looks like the spreadsheet in Step 2 of example 7. By this simplification
of our data, we now have only one categorical variable, Ed, with 5 categories. Female
and HiJob are now discrete numerical variables with values 0 or 1. This is important to
know when we create interaction terms in the next part. We will use Ed1, high-school
graduate, as the reference category when we begin building our models.
Create the following interaction variables: YrsExp*HiJob, Female* YrsExp, Female*
YrsPrior, Female* HiJob, Female*Ed. You may need to be careful when constructing
regression models, to be sure that you avoid using any reference categories (e.g, do
not select Female*Ed1 since it is the reference category for the Female*Ed categorical
variable.)
Create a regression model using the following variables and interaction
variables: Base Variables: YrsExp, YrsPrior, Female, HiJob, Ed2, Ed3, Ed4, Ed5
Numerical-Categorical Interactions: YrsExp*HiJob Female* YrsExp, Female* Age,
Female* YrsPrior Categorical-Categorical Interactions: Female* HiJob, Female* Ed2,
Female* Ed3, Female* Ed4, Female* Ed5
Explain what goes into determining salary at EnPact and what role gender plays in the
salary structure in terms of experience, education and job level. Then give a thumbnail
description of life at EnPact for women.