Microeconometrics: Methods and Applications by A. Colin Cameron
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【推荐级别】
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【下载次数】 |
31 次 |
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【作者】 |
A. Colin Cameron
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【出版社】 |
Cambridge University Press
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【文件格式】 |
PDF
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【ISBN】 |
978-0-521-84805-3
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【资料语言】 |
英文
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【文件大小】 |
5.81MB
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【上传时间】 |
2007-11-16
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【共享者】 |
xuyo
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资料说明:
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Microeconometrics: Methods and Applications, by A. Colin Cameron and Pravin Trivedi, provides the broadest treatment of microeconometrics available. It gives a sound introduction to the theory so that researchers can use the theory to solve their particular problems. It covers such a wide choice of topics and models by summarizing some of the theoretical points without ignoring the many important model-implementation details.
In addition to the standard topics, this book provides thorough treatments of causality and data structures. Moreover, the chapter-length treatments of semiparametric methods, the bootstrap, simulation-based estimation, and estimation with data from complex survey designs provide exceptional coverage of these up-and-coming techniques. In the process, the book discusses more specific models than any other microeconometrics textbook.
Table of contents I Preliminaries 1. Overview 1.1 Introduction 1.2 Distinctive Aspects of Microeconometrics 1.3 Book Outline 1.4 How to Use This Book 1.5 Software 1.6 Notation and Conventions 2. Causal and Noncausal Models 2.1 Introduction 2.2 Structural Models 2.3 Exogeneity 2.4 Linear Simultaneous Equations Model 2.5 Identification Concepts 2.6 Single-Equation Models 2.7 Potential Outcome Model 2.8 Causal Modeling and Estimation Strategies 2.9 Bibliographic Notes 3. Microeconomic Data Structures 3.1 Introduction 3.2 Observational Data 3.3 Data from Social Experiments 3.4 Data from Natural Experiments 3.5 Practical Considerations 3.6 Bibliographic Notes II Core Methods 4. Linear models 4.1 Introduction 4.2 Regressions and Loss Functions 4.3 Example: Returns to Schooling 4.4 Ordinary Least Squares 4.5 Weighted Least Squares 4.6 Median and Quantile Regression 4.7 Model Misspecification 4.8 Instrumental Variables 4.9 Instrumental Variables in Practice 4.10 Practical Considerations 4.11 Bibliographic Notes 5. Maximum Likelihood and Nonlinear Least-Squares Estimation 5.1 Introduction 5.2 Overview of Nonlinear Estimators 5.3 Extremum Estimators 5.4 Estimating Equations 5.5 Statistical Inference 5.6 Maximum Likelihood 5.7 Quasi-Maximum Likelihood 5.8 Nonlinear Least Squares 5.9 Example: ML and NLS Estimation 5.10 Practical Considerations 5.11 Bibliographic Notes 6. Generalized Method of Movements and Systems Estimation 6.1 Introduction 6.2 Examples 6.3 Generalized Method of Moments 6.4 Linear Instrumental Variables 6.5 Nonlinear Instrumental Variables 6.6 Sequential Two-Step m-Estimation 6.7 Minimum Distance Estimation 6.8 Empirical Likelihood 6.9 Linear Systems of Equations 6.10 Nonlinear Sets of Equations 6.11 Practical Considerations 6.12 Bibliographic Notes 7. Hypothesis Tests 7.1 Introduction 7.2 Wald Test 7.3 Likelihood-Based Tests 7.4 Example: Likelihood-Based Hypothesis Tests 7.5 Tests in Non-ML Settings 7.6 Power and Size of Tests 7.7 Monte Carlo Studies 7.8 Bootstrap Example 7.9 Practical Considerations 7.10 Bibliographic Notes 8. Specification Tests and Model Selection 8.1 Introduction 8.2 m-Tests 8.3 Hausman Test 8.4 Tests for Some Common Misspecifications 8.5 Discriminating between Nonnested Models 8.6 Consequences of Testing 8.7 Model Diagnostics 8.8 Practical Considerations 8.9 Bibliographic Notes 9. Semiparametric Methods 9.1 Introduction 9.2 Nonparametric Example: Hourly Wage 9.3 Kernel Density Estimation 9.4 Nonparametric Local Regression 9.5 Kernel Regression 9.6 Alternative Nonparametric Regression Estimators 9.7 Semiparametric Regression 9.8 Derivations of Mean and Variance of Kernel Estimators 9.9 Practical Considerations 9.10 Bibliographic Notes 10. Numerical Optimization 10.1 Introduction 10.2 General Considerations 10.3 Specific Methods 10.4 Practical Considerations 10.5 Bibliographic Notes III Simulation-based methods 11. Bootstrap Methods 11.1 Introduction 11.2 Bootstrap Summary 11.3 Bootstrap Example 11.4 Bootstrap Theory 11.5 Bootstrap Extensions 11.6 Bootstrap Applications 11.7 Practical Considerations 11.8 Bibliographic Notes 12. Simulation-Based Methods 12.1 Introduction 12.2 Examples 12.3 Basics of Computing Integrals 12.4 Maximum Simulated Likelihood Estimation 12.5 Moment-Based Simulation Estimation 12.6 Indirect Inference 12.7 Simulators 12.8 Methods of Drawing Random Variates 12.9 Bibliographic Notes 13. Bayesian Methods 13.1 Introduction 13.2 Bayesian Approach 13.3 Bayesian Analysis of Linear Regression 13.4 Monte Carlo Integration 13.5 Markov Chain Monte Carlo Simulation 13.6 MCMC Example: Gibbs Sampler for SUR 13.7 Data Augmentation 13.8 Bayesian Model Selection 13.9 Practical Considerations 13.10 Bibliographic Notes IV Models for Cross-Section Data 14. Binary Outcome Models 14.1 Introduction 14.2 Binary Outcome Example: Fishing Mode Choice 14.3 Logit and Probit Models 14.4 Latent Variable Models 14.5 Choice-Based Samples 14.6 Grouped and Aggregate Data 14.7 Semiparametric Estimation 14.8 Derivation of Logit from Type I Extreme Value 14.9 Practical Considerations 14.10 Bibliographic Notes 15. Multinomial Models 15.1 Introduction 15.2 Example: Choice of Fishing Mode 15.3 General Results 15.4 Multinomial Logit 15.5 Additive Random Utility Models 15.6 Nested Logit 15.7 Random Parameters Logit 15.8 Multinomial Probit 15.9 Ordered, Sequential, and Ranked Outcomes 15.10 Multivariate Discrete Outcomes 15.11 Semiparametric Estimation 15.12 Derivations for MNL, CL, and NL Models 15.13 Practical Considerations 15.14 Bibliographic Notes 16. Tobit and Selection Models 16.1 Introduction 16.2 Censored and Truncated Models 16.3 Tobit Model 16.4 Two-Part Model 16.5 Sample Selection Models 16.6 Selection Example: Health Expenditures 16.7 Roy Model 16.8 Structural Models 16.9 Semiparametric Estimation 16.10 Derivations for the Tobit Model 16.11 Practical Considerations 16.12 Bibliographic Notes 17. Transition Data: Survival Analysis 17.1 Introduction 17.2 Example: Duration of Strikes 17.3 Basic Concepts 17.4 Censoring 17.5 Nonparametric Models 17.6 Parametric Regression Models 17.7 Some Important Duration Models 17.8 Cox PH Model 17.9 Time-Varying Regressors 17.10 Discrete-Time Proportional Hazards 17.11 Duration Example: Unemployment Duration 17.12 Practical Considerations 17.13 Bibliographic Notes 18. Mixture Models and Unobserved Heterogeneity 18.1 Introduction 18.2 Unobserved Heterogeneity and Dispersion 18.3 Identification in Mixture Models 18.4 Specification of the Heterogeneity Distribution 18.5 Discrete Heterogeneity and Latent Class Analysis 18.6 Stock and Flow Sampling 18.7 Specification Testing 18.8 Unobserved Heterogeneity Example: Unemployment Duration 18.9 Practical Considerations 18.10 Bibliographic Notes 19. Models of Multiple Hazards 19.1 Introduction 19.2 Competing Risks 19.3 Joint Duration Distributions 19.4 Multiple Spells 19.5 Competing Risks Example: Unemployment Duration 19.6 Practical Considerations 19.7 Bibliographic Notes 20. Models of Count Data 20.1 Introduction 20.2 Basic Count Data Regression 20.3 Count Example: Contacts with Medical Doctor 20.4 Parametric Count Regression Models 20.5 Partially Parametric Models 20.6 Multivariate Counts and Endogenous Regressors 20.7 Count Example: Further Analysis 20.8 Practical Considerations 20.9 Bibliographic Notes V Models for Panel Data 21. Linear Panel Models: Basics 21.1 Introduction 21.2 Overview of Models and Estimators 21.3 Linear Panel Example: Hours and Wages 21.4 Fixed Effects versus Random Effects Models 21.5 Pooled Models 21.6 Fixed Effects Model 21.7 Random Effects Model 21.8 Modeling Issues 21.9 Practical Considerations 21.10 Bibliographic Notes 22. Linear Panel Models: Extensions 22.1 Introduction 22.2 GMM Estimation of Linear Panel Models 22.3 Panel GMM Example: Hours and Wages 22.4 Random and Fixed Effects Panel GMM 22.5 Dynamic Models 22.6 Difference-in-Differences Estimator 22.7 Repeated Cross Sections and Pseudo Panels 22.8 Mixed Linear Models 22.9 Practical Considerations 22.10 Bibliographic Notes 23. Nonlinear Panel Models 23.1 Introduction 23.2 General Results 23.3 Nonlinear Panel Example: Patents and R&D 23.4 Binary Outcome Data 23.5 Tobit and Selection Models 23.6 Transition Data 23.7 Count Data 23.8 Semiparametric Estimation 23.9 Practical Considerations 23.10 Bibliographic Notes VI Further Topics 24. Stratified and Clustered Samples 24.1 Introduction 24.2 Survey Sampling 24.3 Weighting 24.4 Endogenous Stratification 24.5 Clustering 24.6 Hierarchical Linear Models 24.7 Clustering Example: Vietnam Health Care Use 24.8 Complex Surveys 24.9 Practical Considerations 24.10 Bibliographic Notes 25. Treatment Evaluation 25.1 Introduction 25.2 Setup and Assumptions 25.3 Treatment Effects and Selection Bias 25.4 Matching and Propensity Score Estimators 25.5 Differences-in-Differences Estimators 25.6 Regression Discontinuity Design 25.7 Instrumental Variable Methods 25.8 Example: The Effect of Training on Earnings 25.9 Bibliographic Notes 26. Measurement Error Models 26.1 Introduction 26.2 Measurement Error in Linear Regression 26.3 Identification Strategies 26.4 Measurement Errors in Nonlinear Models 26.5 Attenuation Bias Simulation Examples 26.6 Bibliographic Notes 27. Missing Data and Imputation 27.1 Introduction 27.2 Missing Data Assumptions 27.3 Handling Missing Data without Models 27.4 Observed-Data Likelihood 27.5 Regression-Based Imputation 27.6 Data Augmentation and MCMC 27.7 Multiple Imputation 27.8 Missing Data MCMC Imputation Example 27.9 Practical Considerations 27.10 Bibliographic Notes Appendices A. Asymptotic Theory A.1 Introduction A.2 Convergence in Probability A.3 Laws of Large Numbers A.4 Convergence in Distribution A.5 Central Limit Theorems A.6 Multivariate Normal Limit Distributions A.7 Stochastic Order of Magnitude A.8 Other Results A.9 Bibliographic Notes B. Making Pseudo-Random Draws References
Index
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