Introduction:
OM basketball team had set same prices for its 41 game
Person AP found a seat could have seven different price variations.
- The day of the week (x1)
- A rating of how popular the opponent was (x2).
- The times of the year (x3) are major statistical factors, which determine the demand for a game.
He found the days, which favored games, and based on the analysis, rating were provided. Ratings on a scale of 0 to 8 were given based on the popularity of the opponents. Finally, Person AP classified that games occurred in four seasons. They were
- Score 0 for early games.
- Score 3 for games during Christmas season.
- Score 2 for games until the All-Star break.
- Score 3 for games leading to play-offs.
To determine: To build regression model with day of the week as only independent variable.
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Principles of Operations Management: Sustainability and Supply Chain Management (10th Edition)
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