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(Requires Appendix Material) The following are examples of limited dependent variables, with the exception of


A) binary dependent variable.
B) log-log specification.
C) truncated regression model.
D) discrete choice model.

E) C) and D)
F) A) and B)

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A study analyzed the probability of Major League Baseball (MLB)players to "survive" for another season, or, in other words, to play one more season.The researchers had a sample of 4,728 hitters and 3,803 pitchers for the years 1901-1999.All explanatory variables are standardized.The probit estimation yielded the results as shown in the table:  Regression  (1) Hitters  (2) Pitchers  Regression model  probit  probit  constant 2.0101.625(0.030)(0.031) number of seasons 0.0580.031 played (0.004)(0.005) performance 0.7940.677(0.025)(0.026) average performance 0.0220.100(0.033)(0.036)\begin{array} { | c | c | c | } \hline \text { Regression } & \text { (1) Hitters } & \text { (2) Pitchers } \\\hline \text { Regression model } & \text { probit } & \text { probit } \\\hline \text { constant } & 2.010 & 1.625 \\& ( 0.030 ) & ( 0.031 ) \\\hline \text { number of seasons } & - 0.058 & - 0.031 \\\text { played } & ( 0.004 ) & ( 0.005 ) \\\hline \text { performance } & 0.794 & 0.677 \\& ( 0.025 ) & ( 0.026 ) \\\hline \text { average performance } & 0.022 & 0.100 \\& ( 0.033 ) & ( 0.036 ) \\\hline\end{array} where the limited dependent variable takes on a value of one if the player had one more season (a minimum of 50 at bats or 25 innings pitched), number of seasons played is measured in years, performance is the batting average for hitters and the earned run average for pitchers, and average performance refers to performance over the career. 16 (a)Interpret the two probit equations and calculate survival probabilities for hitters and pitchers at the sample mean.Why are these so high?

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After combining the sample for hitters a...

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When having a choice of which estimator to use with a binary dependent variable, use


A) probit or logit depending on which method is easiest to use in the software package at hand.
B) probit for extreme values of X and the linear probability model for values in between.
C) OLS (linear probability model) since it is easier to interpret.
D) the estimation method which results in estimates closest to your prior expectations.

E) C) and D)
F) A) and C)

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The major flaw of the linear probability model is that a. the actuals can only be 0 and 1 , but the predicted are almost always different from that. b. the regression R2R ^ { 2 } cannot be used as a measure of fit. c. people do not always make clear-cut decisions. d. the predicted values can lie above 1 and below 0 .

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The probit model


A) is the same as the logit model.
B) always gives the same fit for the predicted values as the linear probability model for values between 0.1 and 0.9.
C) forces the predicted values to lie between 0 and 1.
D) should not be used since it is too complicated.

E) A) and C)
F) A) and D)

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Earnings equations establish a relationship between an individual's earnings and its determinants such as years of education, tenure with an employer, IQ of the individual, professional choice, region within the country the individual is living in, etc.In addition, binary variables are often added to test for "discrimination" against certain sub-groups of the labor force such as blacks, females, etc.Compare this approach to the study in the textbook, which also investigates evidence on discrimination.Explain the fundamental differences in both approaches using equations and mathematical specifications whenever possible.

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In the linear probability model, the interpretation of the slope coefficient is


A) the change in odds associated with a unit change in X, holding other regressors constant.
B) not all that meaningful since the dependent variable is either 0 or 1.
C) the change in probability that Y=1 associated with a unit change in X, holding others regressors constant.
D) the response in the dependent variable to a percentage change in the regressor.

E) A) and D)
F) A) and C)

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(Requires advanced material) Maximum likelihood estimation yields the values of the coefficients that


A) minimize the sum of squared prediction errors.
B) maximize the likelihood function.
C) come from a probability distribution and hence have to be positive.
D) are typically larger than those from OLS estimation.

E) None of the above
F) A) and D)

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Consider the following logit regression: Pr(Y=1X)=F(15.30.24×X)\operatorname { Pr } ( Y = 1 \mid X ) = F ( 15.3 - 0.24 \times X ) Calculate the change in probability for XX increasing by 10 for X=40X = 40 and X=60X = 60 . Why is there such a large difference in the change in probabilities?

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In the probit model Pr(Y=1=Φ(β0+β1X) ,Φ\operatorname { Pr } \left( Y = 1 \mid = \Phi \left( \beta _ { 0 } + \beta _ { 1 } X \right) , \Phi \right.


A) is not defined for Φ(0) \Phi ( 0 )
B) is the standard normal cumulative distribution function.
C) is set to 1.96 .
D) can be computed from the standard normal density function.

E) B) and C)
F) A) and D)

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E(YX1,,Xk) =Pr(Y=1X1,,Xk) E \left( Y \mid X _ { 1 } , \ldots , X _ { k } \right) = \operatorname { Pr } \left( Y = 1 \mid X _ { 1 } , \ldots , X _ { k } \right) means that


A) for a binary variable model, the predicted value from the population regression is the probability that Y=1 , given X .
B) dividing Y by the X 's is the same as the probability of Y being the inverse of the sum of the X 's.
C) the exponential of Y is the same as the probability of Y happening.
D) you are pretty certain that Y takes on a value of 1 given the X 's.

E) All of the above
F) B) and D)

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To measure the fit of the probit model, you should: a. use the regression R2R ^ { 2 } . b. plot the predicted values and see how closely they match the actuals. c. use the log of the likelihood function and compare it to the value of the likelihood function. d. use the fraction correctly predicted or the pseudo R2R ^ { 2 } .

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Your task is to model students' choice for taking an additional economics course after the first principles course.Describe how to formulate a model based on data for a large sample of students.Outline several estimation methods and their relative advantage over other methods in tackling this problem.How would you go about interpreting the resulting output? What summary statistics should be included?

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Answers will vary by student.This is an ...

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(Requires material from Section 11.3 - possibly skipped) For the measure of fit in your regression model with a binary dependent variable, you can meaningfully use the


A) regression R2R ^ { 2 }
B) size of the regression coefficients.
C) pseudo R2R ^ { 2 }
D) standard error of the regression.

E) None of the above
F) All of the above

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(Requires advanced material)Only one of the following models can be estimated by OLS : a. Y=AKαLβ+uY = A K ^ { \alpha } L ^ { \beta } + u . b. Pr(Y=1X)=Φ(β0+β1X)\operatorname { Pr } ( Y = 1 \mid X ) = \Phi \left( \beta _ { 0 } + \beta _ { 1 } X \right) . c. Pr(Y=1X)=F(β0+β1X)=11+e(β0+β1X)\operatorname { Pr } ( Y = 1 \mid X ) = F \left( \beta _ { 0 } + \beta _ { 1 } X \right) = \frac { 1 } { 1 + e ^ { - \left( \beta _ { 0 } + \beta _ { 1 } X \right) } } . d. Y=AKαLβuY = A K ^ { \alpha } L ^ { \beta } u .

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Consider the following probit regression Pr(Y=1X)=Φ(8.90.14×X)\operatorname { Pr } ( Y = 1 \mid X ) = \Phi ( 8.9 - 0.14 \times X ) Calculate the change in probability for XX increasing by 10 for X=40X = 40 and X=60X = 60 . Why is there such a large difference in the change in probabilities?

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A study investigated the impact of house price appreciation on household mobility.The underlying idea was that if a house were viewed as one part of the household's portfolio, then changes in the value of the house, relative to other portfolio items, should result in investment decisions altering the current portfolio.Using 5,162 observations, the logit equation was estimated as shown in the table, where the limited dependent variable is one if the household moved in 1978 and is zero if the household did not move: 14  Regression  model  Logit  constant 3.323(0.180) Male 0.567(0.421) Black 0.954(0.515) Married 780.054(0.412) marriage 0.764 change (0.416) A7983 0.257(0.921) PNRN 4.545(3.354) Pseudo- R20.016\begin{array} { | c | c | } \hline \begin{array} { c } \text { Regression } \\\text { model }\end{array} & \text { Logit } \\\hline \text { constant } & - 3.323 \\& ( 0.180 ) \\\hline \text { Male } & - 0.567 \\& ( 0.421 ) \\\hline \text { Black } & - 0.954 \\& ( 0.515 ) \\\hline \text { Married } 78 & 0.054 \\& ( 0.412 ) \\\hline \text { marriage } & 0.764 \\\text { change } & ( 0.416 ) \\\hline \text { A7983 } & - 0.257 \\& ( 0.921 ) \\\hline \text { PNRN } & - 4.545 \\& ( 3.354 ) \\\hline \text { Pseudo- } \mathrm { R } ^ { 2 } & 0.016 \\\hline\end{array} where male, black, married78, and marriage change are binary variables.They indicate, respectively, if the entity was a male-headed household, a black household, was married, and whether a change in marital status occurred between 1977 and 1978.A7983 is the appreciation rate for each house from 1979 to 1983 minus the SMSA-wide rate of appreciation for the same time period, and PNRN is a predicted appreciation rate for the unit minus the national average rate. (a)Interpret the results.Comment on the statistical significance of the coefficients.Do the slope coefficients lend themselves to easy interpretation?

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The resulting probab...

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The following tools from multiple regression analysis carry over in a meaningful manner to the linear probability model, with the exception of the a. FF -statistic. b. significance test using the tt -statistic. c. 95%95 \% confidence interval using ±1.96\pm 1.96 times the standard error. d. regression R2R ^ { 2 } .

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Nonlinear least squares


A) solves the minimization of the sum of squared predictive mistakes through sophisticated mathematical routines, essentially by trial and error methods.
B) should always be used when you have nonlinear equations.
C) gives you the same results as maximum likelihood estimation.
D) is another name for sophisticated least squares.

E) A) and C)
F) A) and D)

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When estimating probit and logit models, a. the tt -statistic should still be used for testing a single restriction. b. you cannot have binary variables as explanatory variables as well. c. FF -statistics should not be used, since the models are nonlinear. d. it is no longer true that the Rˉ2<R2\bar { R } ^ { 2 } < R ^ { 2 } .

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