MATLAB: An Introduction with Applications
MATLAB: An Introduction with Applications
6th Edition
ISBN: 9781119256830
Author: Amos Gilat
Publisher: John Wiley & Sons Inc
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Below is some of the regression output from a regression of the amount various customers paid for a new car (expressed in dollars) versus the age of the customer (expressed in years), the number of previous cars the customer had purchased from the dealership in the past, a dummy variable indicating the gender of the customer (=1 for a Man and = 0 for a woman), and an interactive term the multiplies the age of the customer with the gender dummy variable.
Regression Statistics
Multiple R
0.963
R Square
Adjusted R Square
Standard Error
Observations
20
ANOVA
df
SS
MS
F
Significance F
Regression
24686354.49
6171589
47.8
2.3289E-08
Residual
129243
Total
26625000
Coefficients
Standard Error
t Stat
P-value
Lower 95%
Upper 95%
Intercept
6579.1
352.1
18.68
0.000
5828.5
7329.6
Age
68.2
33.1
0.089
-11.2
# of Prev.
-812
295.3
-2.73
0.016
-1435.0
-176.2
Man
-567
304.8
0.051
2.7
Age*Man
13.5
8.8
1.77
0.097
-3.2
34.4
Based on the regression output, what is predicted amount a customer who is a 54 year old male, has bought 0 previous car(s) from the dealership? (please express your answer using 1 decimal places)
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