Spreadsheet Modeling & Decision Analysis: A Practical Introduction To Business Analytics, Loose-leaf Version
8th Edition
ISBN: 9781337274852
Author: Ragsdale, Cliff
Publisher: South-Western College Pub
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Students have asked these similar questions
5
1. Figure 8.90 shows summer air visibility measurements for Denver, Colorado. The
acceptable visibility standard is 100, with readings above 100 indicating clean air and good
visibility, and readings below 100 indicating temperature inversions caused by forest fires,
volcanic eruptions, or collisions with comets.
Figure 8.9 Summer Air Visibility Measurements
Visibility rating
250
225
200
175
150
125
100
75
50-
25
0
Year 2
Year 1
22 25 28 31 3
July
6
9 12 15 18 21 24 27 30
Date
August
A forecast for the first six months of the year revealed a tendency to underpredict the actual demand for the revitalized Hubig’s Pies plant in the Marigny.
Month
Actual
Forecast
January
675
600
February
720
700
March
640
620
April
510
495
May
480
410
June
565
535
What is the mean squared error of this forecast?
a.
1,694
b.
1,873
c.
2,075
d.
1,469
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