Concept explainers
There are many restaurants in northeastern South Carolina. They serve beach vacationers in the summer, golfers in the fall and spring, and snowbirds in the winter. Bill and Joyce Tune all manage several restaurants in the North Jersey area and are considering moving to Myrtle Beach, SC, to open a new restaurant. Before making a final decision, they wish to investigate existing restaurants and what variables seem to be related to profitability. They gather sample information where profit (reported in $000) is the dependent variable and the independent variables are:
x1 the number of parking spaces near the restaurant.
x2 the number of hours the restaurant is open per week.
x3 the distance from the SkyWheel, a landmark in Myrtle Beach.
x4 the number of servers employed.
x5 the number of years the current owner operated the restaurant.
The following is part of the output obtained using statistical software.
- (a) What is the amount of profit for a restaurant with 40 parking spaces that is open 72 hours per week, is 10 miles from the SkyWheel, has 20 servers, and has been operated by the current owner for 5 years?
- (b) Interpret the values of b2 and b3 in the multiple regression equation.
a.
![Check Mark](/static/check-mark.png)
Find the amount of profit for a restaurant with the given conditions.
Answer to Problem 1SR
The amount of profit for a restaurant with the given conditions is $389,500.
Explanation of Solution
Calculation:
Multiple linear regression model:
A multiple linear regression model is given as
Here, a is the intercept term of the regression model, that is, the value of predicted value of y when X’s are 0 and
In the given problem the predicted dependent variable y is the amount of profit in $1,000. The number of parking space near the restaurant, the number of hours the restaurant is opened per week, the distance from the landmark in Beach M, the number of servers and the number of years the current owner operated the restaurant are defined as
Hence, using the given information the regression equation is
Thus, the amount of profit for a restaurant with 40 parking spaces which is open 72 hours per week, 10 mile from a landmark of Beach M with 20 servers and has been operated by the current owner for 5 years, is calculated as follows:
Therefore, the amount of profit for a restaurant with the given conditions is $389,500.
b.
![Check Mark](/static/check-mark.png)
Explain the values of
Explanation of Solution
It is clear that, the value
Hence, it can be concluded that if the restaurant is opened one more hour per week, then the amount of profit for the restaurant would be increased by $4,000, when all the other factors are constant.
It is clear that, the value
Hence, it can be concluded that if the restaurant is opened one more mile away from the landmark of Beach M, then the amount of profit for the restaurant would be decreased by $3,000, when all the other factors are constant.
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Chapter 14 Solutions
STAT. TECH. FOR BUSINESS AND ECO (LL)
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