Principles of Econometrics 3rd Edition by R Carter, William E Griffiths, Guay C Lim Hill – Ebook PDF Instant Download/Delivery: 0471723606, 9780471723608
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ISBN 10: 0471723606
ISBN 13: 9780471723608
Author: R Carter, William E Griffiths, Guay C Lim Hill
Principles of Econometrics 3rd Table of contents:
Chapter 1: The Nature of Econometrics and Economic Data
- 1.1 What is Econometrics?
- 1.2 Steps in Econometric Analysis
- 1.3 Economic Data: Cross-Sectional, Time Series, Panel Data, Pooled Cross-Sections
- 1.4 Causality and the Ceteris Paribus Assumption
- 1.5 The Role of Econometrics in Policy and Decision Making
Chapter 2: The Simple Linear Regression Model
- 2.1 Definition of the Simple Linear Regression Model
- 2.2 The Ordinary Least Squares (OLS) Estimators
- 2.3 Properties of the OLS Estimators: The Gauss-Markov Assumptions
- 2.4 Unbiasedness and Efficiency of OLS Estimators
- 2.5 The Coefficient of Determination (R2)
- 2.6 Functional Forms of the Simple Linear Regression Model
- 2.7 Application: Estimating a Consumption Function / Wage Equation
Chapter 3: Inference in the Simple Linear Regression Model
- 3.1 Sampling Distributions of the OLS Estimators
- 3.2 Hypothesis Testing: t-tests for Individual Coefficients
- 3.3 Confidence Intervals for Regression Coefficients
- 3.4 p-Values and Statistical Significance
- 3.5 Prediction and Forecast Intervals
- 3.6 Goodness-of-Fit and the F-test for Overall Significance (Introduction)
Chapter 4: Multiple Regression Analysis: Estimation
- 4.1 Motivation for Multiple Regression
- 4.2 The Multiple Regression Model: Interpretation of Coefficients
- 4.3 OLS Estimation in Multiple Regression
- 4.4 Assumptions of the Multiple Linear Regression Model
- 4.5 Properties of OLS Estimators in Multiple Regression (Gauss-Markov Theorem)
- 4.6 Goodness-of-Fit: Adjusted R2
- 4.7 Matrix Approach to Multiple Regression (Optional/Appendix)
Chapter 5: Multiple Regression Analysis: Inference
- 5.1 Hypothesis Testing about Individual Population Parameters (t-tests)
- 5.2 Confidence Intervals for Population Parameters
- 5.3 Testing Multiple Linear Restrictions: The F-test
- 5.4 Testing for Overall Significance of the Regression
- 5.5 Using Restricted and Unrestricted Models for F-tests
- 5.6 General Linear Restrictions
- 5.7 Prediction with Multiple Regression
Chapter 6: Dummy Variables
- 6.1 Incorporating Qualitative Information in Regression Models
- 6.2 A Single Dummy Variable
- 6.3 Using Dummy Variables for Multiple Categories
- 6.4 Dummy Variable Trap
- 6.5 Interacting Dummy Variables
- 6.6 Interaction Terms with Quantitative Variables
- 6.7 Applications: Gender Wage Gap, Policy Analysis
Chapter 7: Model Specification and Data Problems
- 7.1 Consequences of Misspecification: Omitted Variable Bias
- 7.2 Consequences of Including Irrelevant Variables
- 7.3 Functional Form Misspecification: Logarithms, Quadratics
- 7.4 Reset Test for Functional Form
- 7.5 Proxy Variables for Unobservable Regressors
- 7.6 Measurement Error
- 7.7 Data Scaling and its Effects on OLS Statistics
Chapter 8: Multicollinearity
- 8.1 What is Multicollinearity? Perfect vs. Imperfect
- 8.2 Consequences of Multicollinearity
- 8.3 Detecting Multicollinearity: Variance Inflation Factor (VIF)
- 8.4 Solutions to Multicollinearity (if problematic)
Chapter 9: Heteroskedasticity
- 9.1 Nature of Heteroskedasticity
- 9.2 Consequences of Heteroskedasticity for OLS
- 9.3 Detecting Heteroskedasticity: Graphical Methods, Breusch-Pagan Test, White Test
- 9.4 Remedial Measures: Weighted Least Squares (WLS)
- 9.5 Robust Standard Errors (White’s Heteroskedasticity-Consistent Estimators)
Chapter 10: Autocorrelation (Serial Correlation)
- 10.1 Nature of Autocorrelation: First-Order, Higher-Order
- 10.2 Consequences of Autocorrelation for OLS
- 10.3 Detecting Autocorrelation: Durbin-Watson Test, Breusch-Godfrey Test
- 10.4 Remedial Measures: Generalized Least Squares (GLS)
- 10.5 Newey-West Standard Errors (HAC Estimators)
- 10.6 Forecasting with Autocorrelated Errors
Chapter 11: Introduction to Time Series Analysis
- 11.1 Basic Concepts of Time Series Data
- 11.2 Stationarity and Non-Stationarity
- 11.3 Autoregressive (AR) and Moving Average (MA) Processes
- 11.4 Autoregressive Moving Average (ARMA) Models
- 11.5 Unit Root Tests (Dickey-Fuller)
- 11.6 Cointegration (Brief Introduction)
- 11.7 Vector Autoregressions (VARs) (Brief Introduction)
Chapter 12: Panel Data Models
- 12.1 Advantages of Panel Data
- 12.2 Pooled OLS
- 12.3 Fixed Effects Model (Within Estimator)
- 12.4 Random Effects Model
- 12.5 Choosing Between Fixed and Random Effects (Hausman Test)
- 12.6 Dynamic Panel Data Models (Brief Introduction)
Chapter 13: Limited Dependent Variable Models
- 13.1 Binary Response Models: Probit and Logit
- 13.2 Estimation and Interpretation of Probit and Logit Models
- 13.3 Multinomial Logit and Probit (Brief Introduction)
- 13.4 Ordered Response Models
- 13.5 Censored Regression Models (Tobit)
- 13.6 Truncated Regression Models
- 13.7 Count Data Models (Poisson Regression)
Chapter 14: Simultaneous Equations Models
- 14.1 Endogeneity Bias in Single Equation Models
- 14.2 Structure of Simultaneous Equations Models
- 14.3 Identification Problem
- 14.4 Estimation Methods: Two-Stage Least Squares (2SLS)
- 14.5 Instrumental Variables (IV) Estimation
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