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Robust Methods and Asymptotic Theory in Nonlinear Econometrics [electronic resource] by Bierens, Herman J

Book Information

TitleRobust Methods and Asymptotic Theory in Nonlinear Econometrics [electronic resource]
CreatorBierens, Herman J
Year1981
PPI600
PublisherBerlin, Heidelberg : Springer Berlin Heidelberg
LanguageEnglish
Mediatypetexts
SubjectEconomics, Economics, Economics
ISBN9783642455292, 3642455298
Collectionfolkscanomy_miscellaneous, folkscanomy, additional_collections
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Identifierspringer_10.1007-978-3-642-45529-2
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Robust Methods and Asymptotic Theory in Nonlinear EconometricsAuthor: Herman J. Bierens Published by Springer Berlin Heidelberg ISBN: 978-3-540-10838-2 DOI: 10.1007/978-3-642-45529-2Table of Contents:Introduction Preliminary Mathematics Nonlinear Regression Models Nonlinear Structural Equations Nonlinear Models with Lagged Dependent Variables Some Applications, 1 Introduction -- 1.1 Specification and misspecification of the econometric model -- 1.2 The purpose and scope of this study -- 2 Preliminary Mathematics -- 2.1 Random variables, independence, Borel measurable functions and mathematical expectation -- 2.2 Convergence of random variables and distributions -- 2.3 Uniform convergence of random functions -- 2.4 Characteristic functions, stable distributions and a central limit theorem -- 2.5 Unimodal distributions -- 3 Nonlinear Regression Models -- 3.1 Nonlinear least-squares estimation -- 3.2 A class of nonlinear robust M-estimators -- 3.3 Weighted nonlinear robust M-estimation -- 3.4 Miscellaneous notes on robust M-estimation -- 4 Nonlinear Structural Equations -- 4.1 Nonlinear two-stage least squares -- 4.2 Minimum information estimators: introduction -- 4.3 Minimum information estimators: instrumental variable and scaling parameter -- 4.4 Miscellaneous notes on minimum information estimation -- 5 Nonlinear Models with Lagged Dependent Variables -- 5.1 Stochastic stability -- 5.2 Limit theorem for stochastically stable processes -- 5.3 Dynamic nonlinear regression models and implicit structural equations -- 5.4 Remarks on the stochastic stability concept -- 6 Some Applications -- 6.1 Applications of robust M-estimation -- 6.2 An application of minimum information estimation -- References