Methods for Estimation and Inference in Modern Econometrics
provides a comprehensive introduction to a wide range of emerging
topics, such as generalized empirical likelihood estimation and
alternative asymptotics under drifting parameterizations, which
have not been discussed in detail outside of highly technical
research papers. The book also addresses several problems often
arising in the analysis of economic data, including weak
identification, model misspecification, and possible
nonstationarity. The book's appendix provides a review of some
basic concepts and results from linear algebra, probability theory,
and statistics that are used throughout the book.
Topics covered include:
- Well-established nonparametric and parametric approaches to
estimation and conventional (asymptotic and bootstrap) frameworks
for statistical inference
- Estimation of models based on moment restrictions implied by
economic theory, including various method-of-moments estimators for
unconditional and conditional moment restriction models, and
asymptotic theory for correctly specified and misspecified
models
- Non-conventional asymptotic tools that lead to improved finite
sample inference, such as higher-order asymptotic analysis that
allows for more accurate approximations via various asymptotic
expansions, and asymptotic approximations based on drifting
parameter sequences
Offering a unified approach to studying econometric problems,
Methods for Estimation and Inference in Modern Econometrics links
most of the existing estimation and inference methods in a general
framework to help readers synthesize all aspects of modern
econometric theory. Various theoretical exercises and suggested
solutions are included to facilitate understanding.
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