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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Solve for the predicted values of y and the residuals for the following data.
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12.5
3.7
21.5
60.0
37.6
6.1
16.6
41.2
Sales
141
55
338
994
542
89
126
379
(Do not round the intermediate values. Round your answers to 4 decimal places, e.g. 1.7585.)
y
Predicted ( ŷ )
Residuals (y – ŷ )
12.5
141
3.7
55
21.5 338
60.0
994
37.6 141
6.1
89
16.6
126
41.2 379
Regression analysis is a powerful and commonly used tool in business research. One important step in regression is to determine the dependent and independent variable(s).
In a bivariate regression, which variable is the dependent variable and which one is the independent variable?
What does the intercept of a regression tell? What does the slope of a regression tell?
What are some of the main uses of a regression?
Provide an example of a situation wherein a bivariate regression would be a good choice for analyzing data.
Justify your answers using examples and reasoning.
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