Ms. Carrie Allover, the manager of the commuter rail transportation system of
our fair city has contracted us to analyze how various factors affect the number
of riders who use the rail system. Her Supervisory Board wants this information
for long-range planning. Accordingly, she has sent along some data on the weekly
ridership (number of people who use the train during a week) of commuters taking
the train into the city, as well as some data on various factors thought to have
an influence on the ridership. These data contain the following variables: Weekly
riders, Price per ride, Population, Income, and Parking rate. The latter variable,
Parking rate, refers to the cost of downtown parking.
To deal with Ms. Allover’s requests, you will have to build several regression
models with Weekly riders as the response variable, but before you proceed with
this I want some common sense predictions on whether the coefficients of each of
these explanatory variables will have a positive or negative sign; that is, whether
the variable will have a positive or negative effect on the weekly ridership. Of
course, you have to provide an explanation for your prediction. Some of these will
be clear cut, but there may be a couple that are not so easy to predict and you
won’t know the answer until you actually run the model. But don’t change your
analysis if you prove to be wrong. Ms. Allover needs this kind of verbal, up-front
analysis (whether right or wrong) so that she will be prepared to deal with possible
responses, as well as misunderstandings, on the part of the Board.
After you have explained how you anticipate each variable will affect the
number of weekly riders, go ahead and formulate the different models, one for
each possible explanatory variable. Explain what each of the models means,
using the coefficients in the regression output. In particular, describe how each
explanatory variable actually affects the response variable, Weekly riders, including
all appropriate units. This is extremely valuable information, Ms. Allover insists.
Let’s provide her with a brief analysis of how well the models fit the data as well
as how accurate we can anticipate the predictions of the models will be.
Attachment: Data file C08 Rail System.xls [.rda] To: Analysis Staff
From: Project Management Director
Date: May 27, 2008
Re: Commuter Rail Analysis