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Conditional Moment Estimation Of Nonlinear Equation Systems With An Application To An Oligopoly Model Of Cooperative Rd 1st Edition Dr Joachim Inkmann Auth

  • SKU: BELL-4526310
Conditional Moment Estimation Of Nonlinear Equation Systems With An Application To An Oligopoly Model Of Cooperative Rd 1st Edition Dr Joachim Inkmann Auth
$ 31.00 $ 45.00 (-31%)

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Conditional Moment Estimation Of Nonlinear Equation Systems With An Application To An Oligopoly Model Of Cooperative Rd 1st Edition Dr Joachim Inkmann Auth instant download after payment.

Publisher: Springer-Verlag Berlin Heidelberg
File Extension: PDF
File size: 12.44 MB
Pages: 214
Author: Dr. Joachim Inkmann (auth.)
ISBN: 9783540412076, 9783642565717, 3540412077, 3642565719
Language: English
Year: 2001
Edition: 1

Product desciption

Conditional Moment Estimation Of Nonlinear Equation Systems With An Application To An Oligopoly Model Of Cooperative Rd 1st Edition Dr Joachim Inkmann Auth by Dr. Joachim Inkmann (auth.) 9783540412076, 9783642565717, 3540412077, 3642565719 instant download after payment.

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.

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