Exam 5: Multivariate Ols: Where the Action Is
Exam 1: The Quest for Causality20 Questions
Exam 2: Stats in the Wild: Good Data Practices10 Questions
Exam 3: Bivariate Ols: the Foundation of Econometric Analysis19 Questions
Exam 4: Hypothesis Testing and Interval Estimation: Answering Research20 Questions
Exam 5: Multivariate Ols: Where the Action Is22 Questions
Exam 6: Dummy Variables: Smarter Than You Think20 Questions
Exam 7: Specifying Models19 Questions
Exam 8: Using Fixed Effects Models to Fight Endogeneity in Panel Data a20 Questions
Exam 9: Instrumental Variables: Using Exogenous Variation to Fight Endogen26 Questions
Exam 10: Experiments: Dealing With Real-World Challenges14 Questions
Exam 11: Regression Discontinuity: Looking for Jumps in Data20 Questions
Exam 12: Dummy Dependent Variables21 Questions
Exam 13: Time Series: Dealing With Stickiness Over Time21 Questions
Exam 14: Advanced Ols20 Questions
Exam 15: Advanced Panel Data17 Questions
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Explain goodness of fit and talk about the issue of adding irrelevant variables into the model:
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Correct Answer:
Adding an additional variable into the model will increase the R2 variable (or, for a pathologically bad independent variable could have no effect on it). The more explanatory power a variable has, the more adding it into the model will increase the R2 value. When we include irrelevant variables into the model, we are improve the goodness of fit only a small amount. However, adding an irrelevant variable does not cause bias.
Measurement error in the dependent variable causes our beta-hat estimates to be biased.
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Correct Answer:
False
Adding more independent variables can reduce multicollinearity.
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Correct Answer:
False
By adding more independent variables into our OLS model, we have a greater chance of getting rid of the endogeneity that exists within the error term.
(True/False)
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Perfect multicollinearity means all independent variables are uncorrelated with each other.
(True/False)
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Explain the omitted variable bias problem, and show the equation(s) for determining the size of the bias.
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Which of the following are consequences of measurement error in the dependent variable?
(Multiple Choice)
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When using an auxiliary equation to help us think though an omitted variable bias question, if 1 is equal to zero then:
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Adding more control variables will always increase the R2 value.
(True/False)
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Which of the following is not a challenge for model specification?
(Multiple Choice)
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Adding more independent variables into the model necessarily reduces bias.
(True/False)
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Explain and contrast the consequences of having a measurement error in the independent and dependent variables.
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If the measurement error is in the independent variable, then
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Explain what multicollinearity is, and describe two ways to deal with the issue of multicollinearity:
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