Published Date
1977
Publication
New York: Academic Press
Pages
374 pages
Topics
Type
The aspects of this text which we believe are novel, at least in degree, include: an effort to motivate different sections with practical examples and an empirical orientation; an effort to intersperse several easily motivated examples throughout the book and to maintain some continuity in these examples; and the extensive use of Monte Carlo simulations to demonstrate particular aspects of the problems and estimators being considered. In terms of material being presented, the unique aspects include the first chapter which attempts to address the use of empirical methods in the social sciences, the seventh chapter which considers models with discrete dependent variables and unobserved variables. Clearly these last two topics in particular are quite advanced--more advanced than material that is currently available on the subject. These last two topics are also currently experiencing rapid development and are not adequately described in most other texts.
CONTENTS
1
Empirical Analyses in the Social Sciences
Introduction
Social Science Theory and Statistical Models
Fitting Models to Data
The Development of Stochastic Model
The Analysis of Nonexperimental Data and the Selection of a Statistical Procedure
Simple Methods
Review Questions
2
Estimation with Simple Linear Models
Introduction
The Basic Model
Least Squares Estimators
Two Examples
Conclusion
Appendix: Properties of Summations
Appendix: Calculus and the Minimization of Functions
Review Questions
3
Least Squares Estimators: Statistical Properties and Hypothesis Testing
Introduction
Properties of Least Squares Estimators
Distribution of b-A Monte Carlo Experiment
Statistical Inference
Hypothesis Tests for Schooling/Earnings Model
Conclusion
Appendix: Estimation of Schooling/Earnings Model Using SPSS Computer Program Review Questions
4
Ordinary Least Squares in Practice
Introduction
Interpretation of Regression Coefficients
Model Specification
Model Specification and Multicollinearity in Practice
Functional Forms
Dummy Explanatory Variables
Review Questions
5
Multivariate Estimation in Matrix Form
Introduction
The Least Squares Estimators
Least Squares in Matrix Notation
Properties of Least Squares
Distributional Aspects of the Error Term
Statistical Inference
Multivariate Education Example
Multicollinearity
Conclusion
Appendix: Proof of Best
Appendix: Proof of Unbiasedness of the Estimator of Variance
Review Questions
6
Generalized Least Squares
Introduction
Heteroskedasticity and Autocorrelation
Formal Statement of the Problem
Generalized Least Squares
Generalized Least Squares and Examples of Heteroskedasticity and Autocorrelation
Generalized Least Squares and Weighted Regression
Monte Carlo Simulation of Generalized Least Squares
Generalized Least Squares in Practice
Visual Diagnostics
Dynamic Models
Conclusion
Appendix: Derivation of Generalized Least Squares Estimator
Appendix: Unbiased Estimator of Variance
Review Questions
7
Models with Discrete Dependent Variables
Introduction
The Problem of Estimating Models with Discrete Dependent Variables
Alternative Models-Dichotomous Dependent Variables
Logit Analysis grouped Data
Logit Analysis-Microdata
Probit Analysis
An Example
Monte Carlo Simulation of Dichotomous Dependent Variables
Polytomous Variables/Joint Distributions
Conclusions
8
Introduction to Multiequation Models
Introduction
Two Examples of Structural Systems
Path Analysis
The General Multiequation Model
Estimating Hierarchical Models
Hierarchical, Nonrecursive Systems
Underidentification in Hierarchical Models
Nonrecursive Hierarchical Models: Two Examples
Conclusion
Appendix: Instrumental Variables Estimator
Review Questions
9
Structural Equations: Simultaneous Models
Introduction
Identification in Simultaneous Systems: An Example
Identification in Simultaneous Models
Estimating Identified Models
Simultaneous Equations: The Voting and Aspiration Examples
Identification through Assumptions about Error Terms
Alternative Estimators
Summary and Conclusions
Appendix: Variances and Covariances for Peer Influence Data
Review Questions
10
Estimating Models with Erroneous and Unobserved Variables
Introduction
Erroneous Explanatory Variables
Unobserved Variables
Factor Analysis
Linear Structural Models and the General Analysis of Covariances
Conclusion
Appendix I Statistical Review
Probability
Theoretical Distributions
Properties of Estimators
Hypothesis Testing
Maximum Likelihood (ML) Estimation
Appendix II Matrix Algebra
Basic Properties
Basic Operations
Matrix Multiplication
Other Operations
Systems of Linear Equations
Inverses
Existence of an Inverse-Rank
Review Questions for Appendix 11
Appendix III Statistical Tables References
References