R2.49. Real estate, bathrooms As a class project, students in a large statistics class collected publicly available informa- tion on recent home sales in their hometowns. There are 894 properties. Important predictors of the price of a home are its living area (sq ft) and the number of bathrooms. In fact, the correlation of Price with Bathrooms is 0.378. Here is a regression: I Price Resid 800000 Response variable is: Price R squared = 16.6% s = 263970 a) What is a correct interpretation of the coefficient of Bathrooms? 400000 Variable Intercept Living area Bathrooms Here is a partial regression plot for the coefficient of Bathrooms along with a least squares regression line: -400000 Coefficient 126832 64.6077 75020.3 -1.5 0.0 Bathrooms Resid b) What is the slope of the regression line in this plot? 1.5

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1 R2.49. Real estate, bathrooms As a class project, students in a
large statistics class collected publicly available informa-
tion on recent home sales in their hometowns. There are
894 properties. Important predictors of the price of a home
are its living area (sq ft) and the number of bathrooms.
In fact, the correlation of Price with Bathrooms is 0.378.
Here is a regression:
Price Resid
800000
a) What is a correct interpretation of the coefficient of
Bathrooms?
400000
Response variable is: Price
R squared = 16.6% s = 263970
Here is a partial regression plot for the coefficient of
Bathrooms along with a least squares regression line:
0-
Variable
Intercept
Living area
Bathrooms
-400000
Coefficient
126832
64.6077
75020.3
-1.5
0.0
Bathrooms Resid
b) What is the slope of the regression line in this plot?
1.5
Transcribed Image Text:1 R2.49. Real estate, bathrooms As a class project, students in a large statistics class collected publicly available informa- tion on recent home sales in their hometowns. There are 894 properties. Important predictors of the price of a home are its living area (sq ft) and the number of bathrooms. In fact, the correlation of Price with Bathrooms is 0.378. Here is a regression: Price Resid 800000 a) What is a correct interpretation of the coefficient of Bathrooms? 400000 Response variable is: Price R squared = 16.6% s = 263970 Here is a partial regression plot for the coefficient of Bathrooms along with a least squares regression line: 0- Variable Intercept Living area Bathrooms -400000 Coefficient 126832 64.6077 75020.3 -1.5 0.0 Bathrooms Resid b) What is the slope of the regression line in this plot? 1.5
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