Pearson eText Business Statistics: First Course -- Instant Access (Pearson+)
8th Edition
ISBN: 9780136880974
Author: David Levine, David Stephan
Publisher: PEARSON+
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Suppose you a manager for a local car dealership, and you want to use a linear
regression model to predict the price of a used car. You decide to use four
predictor variables - "Age' (how long the car has been in use since it was
produced), "Dents" (the number of visible dents on the outside of the car),
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