Model 5: Limited Dependent Variable Models and Sample Selection Corrections Flashcards
What is the linear probability model?
When the dependent variabe is a binary variable.
Given the following regression, interpret train. Where,
em78 = 0.878+0.144train+0.005educ-0.528unem75
em78 = employed in 1978, train = recieved training, and…
unemp75 = unemployed in 1975
The probability of being employed in 1978 is 0.144 (or 14.4 percentage points) higher for men who received job training in 1977.
Given the regresssion, interpret educ
em78 = 0.878+0.144train+0.005educ-0.528unem75
em78 = employed in 1978, train = recieved training, and…
unemp75 = unemployed in 1975
An additional year of education increases the probabilty that a man will be employed in 1978 by 0.5 percentage points.
What are the drawbacks of LPM?
1)Predicted values may be greater or less than zero.
2)The probabilty increases by the same amount when xj increases by one unit
3)There is heteroskedasticity when y is a dummy
What is the Maximum Likelihood Estimator?
When the estimators are chosen to maximize the probabilty that the model will produce predicted outomes that are equal to the actual observed y
What are the properties of probit and logit models?
1) they are always within 0,1
2) Partial effects of explanatory variables are the largest when measured at the values of x that are close to average values and smallest when measuted at extremes
3) Assume homoskedasticity.
T/F: In probit and logit model, the coefficients only show the direction of the effect and not the direc quantitative interpretation.
True
What is the partial (marginal) effect?
It’s the predicted change in the probability that y = 1 when x increases by 1 unit, holding everything fixed
What are the two ways to calculate the partial effects in the probit/logit model?
1) Evaluate the partial effects at the mean values of the other variables (margins, dydx() at means)
2) Calculate the average partial effects (APE) based on every value of the other variables (margins, dydx())
T/F: We preform hypothesis testing for probit/logit on the partial effects.
False: It’s performed on the coefficients
T/F: To compare probit/logit results, we need to compare the partial effects
True
Why are truncated regressions (nonrandom sample selections) a problem?
Can generate biased estimates because only a certain set of people are selected