a) You reason that this is because experience is related to "on the job training." One frequently used measure for (potential) experience is "Age-Education-6." This means subtracting years of education minus 6. Explain the underlying rationale.
b) Assuming, heroically, that education is constant across the 1,744 individuals, you consider regressing earnings on age and a binary variable for gender. You estimate two specifications initially:
c) Assuming, heroically, that education is constant across the 1,744 individuals, you consider regressing earnings on age and a binary variable for gender. You estimate two specifications initially:

Answer
Given :- Earn is dependent variable and age and gender are independent variables.
Assume male = 0 and female= 1
Given that the regression equation is,
Earn = 320.70 + 5.15*Age - 169.78*female
Here coefficient of age = 5.15
Coefficient of female = -169.78
Here we see that there is positive relationship between earn and age.
There is negative relationship between earn and female.
Now we have given that standard error of estimates.
Standard error of intercept = 21.18
standard error of age = 0.55
standard error of female = 13.06
Now we can test individual slope from the given information.
Here we have to test the hypothesis that,
H0 : B = 0 Vs H1 : B not= 0
where B is population slope for independent variable.
Assume alpha = level of significance = 0.05
The test statistic follows t-distribution.
Here test statistic is,
t = b / SEb
where b is the sample slope of independent variable.
SEb is the standard eroro of the estimate.
Now we have to find P-value for taking decision.
P-value we can find by using EXCEL.
syntax :
=TDIST(x,deg_freedom)
where x is absolute value of test statistic
deg_freedom = n - 2
n = 850
deg_freedom = 850-2 = 848
Test statistic for age :
t = 5.15/0.55 = 9.36
P-value = 6.74879E-20 = 0.000
P-value < alpha
Reject H0 at 0.05 significance level.
Conclusion : The population slope for age is differ 0.
test statistic for female :
t = -169.78/13.06 = -13
P-value = 2.29E-35 = 0.000
P-value < alpha
Reject H0 at 0.05 significance level.
Conclusion : The population slope for female is differ 0.
R2 = 0.13
It expresses the proportion of variation in earn which is explained by variation in age and female.
Second model is the log model
Here coefficient of age = 0.015
Coefficient of female = -0.421
Here we see that there is positive relationship between log of earn and age.
There is negative relationship between log of earn and female.
Now we have given that standard error of estimates.
Standard error of intercept = 0.08
standard error of age = 0.002
standard error of female = 0.036
Now we can test individual slope from the given information.
Here we have to test the hypothesis that,
H0 : B = 0 Vs H1 : B not= 0
where B is population slope for independent variable.
Assume alpha = level of significance = 0.05
The test statistic follows t-distribution.
Here test statistic is,
t = b / SEb
where b is the sample slope of independent variable.
SEb is the standard eroro of the estimate.
Now we have to find P-value for taking decision.
P-value we can find by using EXCEL.
syntax :
=TDIST(x,deg_freedom)
where x is absolute value of test statistic
deg_freedom = n - 2
n = 850
deg_freedom = 850-2 = 848
Test statistic for age :
t = 0.015/0.002 = 7.5
P-value = 6.74879E-20 = 0.000
P-value < alpha
Reject H0 at 0.05 significance level.
Conclusion : The population slope for earn is differ 0.
test statistic for female :
t = -0.421/ 0.036= -11.69
P-value = 2.29E-35 = 0.000
P-value < alpha
Reject H0 at 0.05 significance level.
Conclusion : The population slope for female is differ 0.
R2 = 0.17
It expresses the proportion of variation in log of earn which is explained by variation in age and female.
a) You reason that this is because experience is related to "on the job training." One...
please show all the work
Are years of experience a significant predictor of
earnings?
Yes, because it is statistically significant in all
specifications.
Yes, because it has a positive magnitude in all
specifications.
Yes, because the t-stats in all specifications are lower than
1.96
Yes, because the t-stats in all specifications are higher than
100.
When controlling only for years of education by how much less
do females earn?
A. 26.3%
B. 0.263%
C. 2.63%
D. 43.2%
In specification (3),...
Question 27 3 pts Imagine that you regressed the earnings of individuals on a constant, a binary variable ("Male") which takes on the value of 1 for males and is o otherwise, and another binary variable ("Female") which takes on the value of 1 for female and is o otherwise. Because females typically earn less than males, you would expect: autocorrelation or serial correlation to be a serious problem. the estimated coefficient for Male to have a positive sign, and...
The data set consists of information on 3800 full-time fll-erworkers. The highest educational achievement for each worker was either a high school diploma or a bachelors degree. The workers ages ranged from 25 to 45 years. The data set also contained information on the region of the country where the person lived, marital status, and number of children. For the purposes of these exercises, let AHEaverage hourly earnings (in 2005 dollars) Collegebinary variable (1 if college, O if high school)...
The data set consists of information on 3700 full-time full-year workers. The highest educational achievement for each worker was either a high school diploma or a bachelor's degree. The worker's ages ranged from 25 to 45 years. The data set also contained information on the region of the country where the person lived, marital status, and number of children. For the purposes of these exercises, let AHE = average hourly earnings (in 2005 dollars) College = binary variable (1 if...
2. Suppose you are interested in the relationship between weekly wage earnings in dol lars) and age (in years). You run a linear regression model where age is your dependent variable and earn is your independent variable. Answer the following questions about your regression results. earn = 239.16 5.20 × age (20.24) (0.57) Ip = 0.05, SER 287.21 (a) Interpret the coefficient for age. (b) Is the effect of age on earnings economically significant here? (Hint: think about how much...
Imagine that you regressed the earnings of individuals on a constant, a binary variable (“Male”) which takes on the value of 1 for males and is 0 otherwise, and another binary variable (“Female”) which takes on the value of 1 for female and is 0 otherwise. Because females typically earn less than males, you would expect: Group of answer choices autocorrelation or serial correlation to be a serious problem. the estimated coefficient for Male to have a positive sign, and...
The data set consists of information on 4900 full-time full-year workers. The highest educational achievement for each worker was either a high school diploma or a bachelor's degree. The worker's ages ranged from 25 to 45 years. The data set also contained information on the region of the country where the person lived, marital status, and number of children. For the purposes of these exercises, let AHE = average hourly earnings (in 2005 dollars) College = binary variable (1 if...
Below you will find current annual salary data and related information for 30 employees at Gamma Technologies, Inc. These data include each selected employees gender (1 for female; 0 for male), age, number of years of relevant work experience prior to employment at Gamma, number of years of employment at Gamma, the number of years of post-secondary education, and annual salary. The tables of correlations and covariances are presented below. Table of Correlations IQ Age Prior Exp Gamma Exp Education...
4) You have obtained a sub-sample of 1744 individuals from the Current Population Survey (CPS) and are interested in the relationship between weekly earnings and age. The regression, using heteroskedasticity-robust standard errors, yielded the following results: EARN= 239.16 + 5.20×Age , R2 = 0.05, SER = 287.21., (20.24) (0.57) where Earn and Age are measured in dollars and years respectively. (a) Interpret the slope and intercept coefficients and the measure of fit. (b) The average age in this sample is...
3. Consider you are interested in estimating the determinants of earnings. For this purpose you estimate a regression of annual earnings (EARN , in $000's) as a function of the years of education EDUC, with 12 being high school, 16 a bachelor degree, etc.) and the years of experience EXP number of years working). The estimated regression you obtain from a sample of one thousand individuals is (standard errors in parenthesis): EARN;= -50.3 +3.0*EDUC +1.5*EXP (0.42) (0.44) 7.1 3.4 RP=0.45...