11 Regression with a Binary Dependent Variable.10.6 Drunk Driving Laws and Traffic Deaths.10.5 The Fixed Effects Regression Assumptions and Standard Errors for Fixed Effects Regression.10.4 Regression with Time Fixed Effects.10.2 Panel Data with Two Time Periods: “Before and After” Comparisons.9.4 Example: Test Scores and Class Size.9.3 Internal and External Validity when the Regression is Used for Forecasting.9.2 Threats to Internal Validity of Multiple Regression Analysis.9 Assessing Studies Based on Multiple Regression.8.4 Nonlinear Effects on Test Scores of the Student-Teacher Ratio.8.3 Interactions Between Independent Variables. ![]() 8.2 Nonlinear Functions of a Single Independent Variable.8.1 A General Strategy for Modelling Nonlinear Regression Functions.7.6 Analysis of the Test Score Data Set.Model Specification in Theory and in Practice.7.5 Model Specification for Multiple Regression.7.4 Confidence Sets for Multiple Coefficients.7.3 Joint Hypothesis Testing Using the F-Statistic.7.2 An Application to Test Scores and the Student-Teacher Ratio.7.1 Hypothesis Tests and Confidence Intervals for a Single Coefficient.7 Hypothesis Tests and Confidence Intervals in Multiple Regression.6.5 The Distribution of the OLS Estimators in Multiple Regression.Simulation Study: Imperfect Multicollinearity.6.4 OLS Assumptions in Multiple Regression.6.3 Measures of Fit in Multiple Regression.6 Regression Models with Multiple Regressors.5.6 Using the t-Statistic in Regression When the Sample Size Is Small.Computation of Heteroskedasticity-Robust Standard Errors.Should We Care About Heteroskedasticity?.A Real-World Example for Heteroskedasticity.5.4 Heteroskedasticity and Homoskedasticity.5.3 Regression when X is a Binary Variable.5.2 Confidence Intervals for Regression Coefficients. ![]() 5.1 Testing Two-Sided Hypotheses Concerning the Slope Coefficient.5 Hypothesis Tests and Confidence Intervals in the Simple Linear Regression Model.4.5 The Sampling Distribution of the OLS Estimator.Assumption 3: Large Outliers are Unlikely.Assumption 2: Independently and Identically Distributed Data.Assumption 1: The Error Term has Conditional Mean of Zero.4.2 Estimating the Coefficients of the Linear Regression Model.3.7 Scatterplots, Sample Covariance and Sample Correlation.3.6 An Application to the Gender Gap of Earnings. ![]()
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