Answer:
Explanation:
Hello!
You have the data for 4 observations of randomly selected employees of the U.S.
Wage: 16.20; 12.36; 14.40; 12.00
Education: 12; 13; 12; 12
X₁: Wage of a U.S. employee.
X₂: Education of a U.S. employee.
i.
You have to estimate with a 95% confidence the population mean of each variable. Assuming all conditions are met, I'll use a students t to estimate both means.
* The general formula for the CI is: [X[bar]±
*
]
For population 1 (Wages)
n₁= 4; X[bar]₁= 13.74; S₁= 1.95
13.74±3.182*
]
[10.65; 16.85]
Using a 95% confidence level you'd expect that the interval [10.65; 16.85] contains the population mean of the wages of U.S. employees.
For population 2 (Education)
n₂= 4; X[bar]₂= 12.25; S₂= 0.50
12.25±3.182*
]
[14.45; 13.05]
Using a 95% confidence level you'd expect that the interval [14.45; 13.05] contains the value of the average education of U.S. employees.
ii.
To estimate Rho (the population correlation coefficient) you have to use the following formula:
∑X₁= 54.96; ∑X₁²= 766.57; ∑X₂= 49; ∑X₂²= 601; ∑X₁X₂= 671.88
r= -0.47
iii.
To estimate the regression using Y: wage and X: education you have to estimate the intercept and the slope of the equation:
Estimate of the slope "b"
Estimate of the intercept "a"
The estimated regression equation is ^Y= 36.28 - 1.84X
iv.
You have to estimate the value of the wages ^Y given X= 15years of education. To do so you have to replace the value of X in the estimated regression equation:
^Y= 36.28 - 1.84*15= 8.68
For a level of education of 15 years, the estimated wage is 8.68
v. The value of the coefficient of determination is R²= 0.22
This means that 22% of the variability of the average wages of U.S. employees is explained by the years of education. For the estimated model ^Y= 36.28 - 1.84X.
I hope this helps!