Book contents
- Frontmatter
- 1 Introductory Remarks
- 2 Probability Densities, Likelihood Functions and Quasi-Maximum Likelihood Estimators
- 3 Consistency of the QMLE
- 4 Correctly Specified Models of Density
- 5 Correctly Specified Models of Conditional Expectation
- 6 The Asymptotic Distribution of the QMLE and the Information Matrix Equality
- 7 Asymptotic Efficiency
- 8 Hypothesis Testing and Asymptotic Covariance Matrix Estimation
- 9 Specification Testing Via m-Tests
- 10 Applications of m-Testing
- 11 Information Matrix Testing
- 12 Conclusion
- Appendix 1
- Appendix 2
- Appendix 3
- References
- Index
9 - Specification Testing Via m-Tests
Published online by Cambridge University Press: 05 January 2013
- Frontmatter
- 1 Introductory Remarks
- 2 Probability Densities, Likelihood Functions and Quasi-Maximum Likelihood Estimators
- 3 Consistency of the QMLE
- 4 Correctly Specified Models of Density
- 5 Correctly Specified Models of Conditional Expectation
- 6 The Asymptotic Distribution of the QMLE and the Information Matrix Equality
- 7 Asymptotic Efficiency
- 8 Hypothesis Testing and Asymptotic Covariance Matrix Estimation
- 9 Specification Testing Via m-Tests
- 10 Applications of m-Testing
- 11 Information Matrix Testing
- 12 Conclusion
- Appendix 1
- Appendix 2
- Appendix 3
- References
- Index
Summary
In earlier chapters we have considered at some length the consequences of correct specification and misspecification. In this chapter, we consider statistical methods for detecting the presence of misspecification.
Specific methods for detecting misspecification are based on the contrasting consequences of correct specification and misspecification. For example, when a model is correctly specified there are usually numerous consistent estimators for the parameters of interest (e.g., ordinary least squares and weighted least squares). If the model is correctly specified, these different estimators should have similar values asymptotically. If these values are not sufficiently similar, then the model is not correctly specified. This reasoning forms the basis for the Hausman [1978] test, a special case of which we encountered in the previous chapter. Such tests have power because of the divergence of alternative estimators under misspecification. As another example, correct specification implies the validity of the information matrix equality. If estimators for -A*n and B*n are not sufficiently similar, then one has empirical evidence against the validity of the information matrix equality and thus against the correctness of the model specification. This reasoning forms the basis for the information matrix tests (White [1982, 1987]). Such tests have power because of the failure of the information matrix equality under misspecification.
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- Estimation, Inference and Specification Analysis , pp. 218 - 260Publisher: Cambridge University PressPrint publication year: 1994