Fr. 70.00

Conditional Moment Estimation of Nonlinear Equation Systems - With an Application to an Oligopoly Model of Cooperative R&D

English · Paperback / Softback

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Description

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Generalized method of moments (GMM) estimation of nonlinear systems has two important advantages over conventional maximum likelihood (ML) estimation: GMM estimation usually requires less restrictive distributional assumptions and remains computationally attractive when ML estimation becomes burdensome or even impossible. This book presents an in-depth treatment of the conditional moment approach to GMM estimation of models frequently encountered in applied microeconometrics. It covers both large sample and small sample properties of conditional moment estimators and provides an application to empirical industrial organization. With its comprehensive and up-to-date coverage of the subject which includes topics like bootstrapping and empirical likelihood techniques, the book addresses scientists, graduate students and professionals in applied econometrics.

List of contents

1 Introduction.- I: Estimation Theory.- 2 The Conditional Moment Approach to GMM Estimation.- 3 Asymptotic Properties of GMM Estimators.- 4 Computation of GMM Estimators.- 5 Asymptotic Efficiency Bounds.- 6 Overidentifying Restrictions.- 7 GMM Estimation with Optimal Weights.- 8 GMM Estimation with Optimal Instruments.- 9 Monte Carlo Investigation.- II: Application.- 10 Theory of Cooperative R&D.- 11 Empirical Evidence on Cooperative R&D.- 12 Conclusion.- References.

Summary

Generalized method of moments (GMM) estimation of nonlinear systems has two important advantages over conventional maximum likelihood (ML) estimation: GMM estimation usually requires less restrictive distributional assumptions and remains computationally attractive when ML estimation becomes burdensome or even impossible. This book presents an in-depth treatment of the conditional moment approach to GMM estimation of models frequently encountered in applied microeconometrics. It covers both large sample and small sample properties of conditional moment estimators and provides an application to empirical industrial organization. With its comprehensive and up-to-date coverage of the subject which includes topics like bootstrapping and empirical likelihood techniques, the book addresses scientists, graduate students and professionals in applied econometrics.

Product details

Authors Joachim Inkmann
Publisher Springer, Berlin
 
Languages English
Product format Paperback / Softback
Released 27.05.2013
 
EAN 9783540412076
ISBN 978-3-540-41207-6
No. of pages 214
Dimensions 155 mm x 235 mm x 13 mm
Weight 352 g
Illustrations VIII, 214 p.
Series Lecture Notes in Economics and Mathematical Systems
Lecture Notes in Economics and Mathematical Systems
Subjects Social sciences, law, business > Business > Economics

B, Industrielle Organisation, Economics and Finance, Industrial Organization, Management science, Economics of industrial organisation, Econometrics

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