Respuesta :
Answer:
Step-by-step explanation:
Hello!
Given the variables:
Y: Price of a house on sale
X: Square feet of a hose on sale
Y= 33.478 + 62.4X
r= 0.63
a)
To use the model to predict the price of a house with X= 1860 square feet you have to replace that value in the estimated equation:
^Y= 33478 + 62.4*1860= $149542
b)
The model predicts the estimated average value of Y given a certain value of X, that's why the value the house was sold for is different.
c)
Any variable that may vary the price of the house can be included in the model, for example:
X: Age of the house
X: Number of bedrooms
X: Type of neighborhood (residential area, industrial area, commercial area, etc...)
d)
Mathematically the coefficient of determination is equal to the square of the correlation coefficient:
R²= (r)²= 0.63²= 0.3969
This means that 39.69% of the variability of the house price is explained by the square footage of the house under the model: ^Y= 33.478 + 62.4X
I hope this helps!