A) binary dependent variable.
B) log-log specification.
C) truncated regression model.
D) discrete choice model.
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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.
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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.
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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.
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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.
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A) is not defined for
B) is the standard normal cumulative distribution function.
C) is set to 1.96 .
D) can be computed from the standard normal density function.
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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.
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A) regression
B) size of the regression coefficients.
C) pseudo
D) standard error of the regression.
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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.
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