Concept explainers
Demand for emergency room services. With the advent of managed care, U.S. hospitals have begun to operate like businesses. More than ever before, hospital administrators need to know and apply the theories and methods taught in business schools. Richmond Memorial Hospital in Richmond, Virginia, uses
Year t | Visits | Daily Average Yt |
1 | 1,367 | 44 09 |
2 | 1,642 | 52.96 |
3 | 1.780 | 57.41 |
4 | 2,060 | 66 45 |
5 | 2,257 | 72 80 |
6 | 3,019 | 97.38 |
7 | 2,794 | 90.12 |
8 | 2,846 | 91.80 |
9 | 3.001 | 96.80 |
10 | 3,548 | 114.45 |
a. Use a straight-line regression model to construct a point forecast for emergency room demand for each of the next three Augusts.
b. Provide 95% prediction intervals around the forecasts.
c. Describe the potential dangers associated with using simple linear regression to forecast demand for emergency room services.
d. Which other method described in this chapter would be appropriate for forecasting patient visits to the emergency room?
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STATISTICS F/BUS.+ECON.-18WK. MYSTATLAB
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