As you know, we have been doing some work for Ms. Mini Driver, the Director
of Operations at MetroArea Trucking, on how location affects the maintenance
expenses for the trucks in the fleet. We have received an additional contract to
further analyze the fleet’s maintenance expenses. Ms. Mini Driver would like us
to analyze the entire truck data set (see attachment), which includes last year’s
maintenance expense, the mileage, age, and type of truck, as well as the location
(based either in city or out of city) of where the truck is based. Ms. Mini Driver
wants us to provide her with an analysis of what factors affect maintenance
expenses and how much each affects the expenses.
I’d like you to develop your own optimal regression model by choosing your
own variables and going through your own model-refining process before seeing
what a stepwise regression routine produces for an optimal model. This process
should give you a better feel for how the variables contribute to the maintenance
expense, which should be helpful when you interpret your models.
Attachment: Data file C10 Truck.xls [.rda] To: Analysis Staff
From: Project Management Director
Date: May 27, 2008
Re: New Truck Contract
Model | R2 | Adj R2 | S e | List of significant variables |
Full Model With no Interactions |
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Reduced Model with no interactions |
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Full Model with all interactions |
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Reduced Model with significant interactions |
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Stepwise regression |
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