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Identification without assuming mean-stationarity: Quasi ML estimation of dynamic panel models with endogenous regressors

Kruiniger, H.

Identification without assuming mean-stationarity: Quasi ML estimation of dynamic panel models with endogenous regressors Thumbnail


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Abstract

Linear GMM estimators for dynamic panel models with predetermined or endogenous regressors suffer from a weak instruments problem when the data are highly persistent. In this paper we propose new random and fixed effects Limited Information Quasi ML estimators (LIQMLEs) for such models. We also discuss LIQMLEs for models that contain time-varying individual effects. Unlike System GMM estimators, the LIQMLEs do not require mean stationarity conditions for consistency. Such conditions often do not hold for the models we consider. Our LIQMLEs are based on a two-step control function approach that includes the first stage model residuals for a predetermined or endogenous regressor in the outcome equation. The LIMLEs are more precise than non-linear GMM estimators that are based on the original outcome equation. The LIQMLEs also compare favourably to various alternative (Q)MLEs in terms of precision, robustness and/or ease of computation.

Citation

Kruiniger, H. (2021). Identification without assuming mean-stationarity: Quasi ML estimation of dynamic panel models with endogenous regressors. The Econometrics Journal, 24(3), 417-441. https://doi.org/10.1093/ectj/utaa036

Journal Article Type Article
Acceptance Date Sep 22, 2020
Online Publication Date Oct 12, 2020
Publication Date 2021-09
Deposit Date Sep 28, 2020
Publicly Available Date Oct 12, 2022
Journal Econometrics Journal
Print ISSN 1368-4221
Electronic ISSN 1368-423X
Publisher Oxford University Press
Peer Reviewed Peer Reviewed
Volume 24
Issue 3
Pages 417-441
DOI https://doi.org/10.1093/ectj/utaa036
Public URL https://durham-repository.worktribe.com/output/1261591

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Accepted Journal Article (452 Kb)
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This is a pre-copyedited, author-produced version of an article accepted for publication in The Econometrics Journal following peer review. The version of record is available online at: https://doi.org/10.1093/ectj/utaa036


Accepted Journal Article (Supplementary materials) (244 Kb)
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Accepted Journal Article (Revised version) (452 Kb)
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Accepted Journal Article (Revised version supplementary materials) (244 Kb)
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Copyright Statement
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