Fixed effects vector decomposition: A magical solution to the problem of time-invariant variables in fixed effects models

Plümper and Troeger (2007) propose a three-step procedure for the estimation of a fixed effects (FE) model that, it is claimed, provides the most reliable estimates under a wide variety of specifications common to real world data. Their fixed effects vector decomposition (FEVD) estimator is startlin...

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Main Author: Greene, William
Format: Journal Article
Published: Oxford University Press 2011
Online Access:http://hdl.handle.net/20.500.11937/62845
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author Greene, William
author_facet Greene, William
author_sort Greene, William
building Curtin Institutional Repository
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description Plümper and Troeger (2007) propose a three-step procedure for the estimation of a fixed effects (FE) model that, it is claimed, provides the most reliable estimates under a wide variety of specifications common to real world data. Their fixed effects vector decomposition (FEVD) estimator is startlingly simple, involving three simple steps, each requiring nothing more than ordinary least squares (OLS). Large gains in efficiency are claimed for cases of time-invariant and slowly time-varying regressors. A subsequent literature has compared the estimator to other estimators of FE models, including the estimator of Hausman and Taylor (1981) also (apparently) with impressive gains in efficiency. The article also claims to provide an efficient estimator for parameters on time-invariant variables (TIVs) in the FE model. None of the claims are correct. The FEVD estimator simply reproduces (identically) the linear FE (dummy variable) estimator then substitutes an inappropriate covariance matrix for the correct one. The consistency result follows from the fact that OLS in the FE model is consistent. The efficiency gains are illusory. The claim that the estimator provides an estimator for the coefficients on TIVs in an FE model is also incorrect. That part of the parameter vector remains unidentified. The estimator relies upon a strong assumption that turns the FE model into a type of random effects model. © The Author 2011. Published by Oxford University Press on behalf of the Society for Political Methodology. All rights reserved.
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spelling curtin-20.500.11937-628452019-05-21T01:04:31Z Fixed effects vector decomposition: A magical solution to the problem of time-invariant variables in fixed effects models Greene, William Plümper and Troeger (2007) propose a three-step procedure for the estimation of a fixed effects (FE) model that, it is claimed, provides the most reliable estimates under a wide variety of specifications common to real world data. Their fixed effects vector decomposition (FEVD) estimator is startlingly simple, involving three simple steps, each requiring nothing more than ordinary least squares (OLS). Large gains in efficiency are claimed for cases of time-invariant and slowly time-varying regressors. A subsequent literature has compared the estimator to other estimators of FE models, including the estimator of Hausman and Taylor (1981) also (apparently) with impressive gains in efficiency. The article also claims to provide an efficient estimator for parameters on time-invariant variables (TIVs) in the FE model. None of the claims are correct. The FEVD estimator simply reproduces (identically) the linear FE (dummy variable) estimator then substitutes an inappropriate covariance matrix for the correct one. The consistency result follows from the fact that OLS in the FE model is consistent. The efficiency gains are illusory. The claim that the estimator provides an estimator for the coefficients on TIVs in an FE model is also incorrect. That part of the parameter vector remains unidentified. The estimator relies upon a strong assumption that turns the FE model into a type of random effects model. © The Author 2011. Published by Oxford University Press on behalf of the Society for Political Methodology. All rights reserved. 2011 Journal Article http://hdl.handle.net/20.500.11937/62845 10.1093/pan/mpq034 Oxford University Press restricted
spellingShingle Greene, William
Fixed effects vector decomposition: A magical solution to the problem of time-invariant variables in fixed effects models
title Fixed effects vector decomposition: A magical solution to the problem of time-invariant variables in fixed effects models
title_full Fixed effects vector decomposition: A magical solution to the problem of time-invariant variables in fixed effects models
title_fullStr Fixed effects vector decomposition: A magical solution to the problem of time-invariant variables in fixed effects models
title_full_unstemmed Fixed effects vector decomposition: A magical solution to the problem of time-invariant variables in fixed effects models
title_short Fixed effects vector decomposition: A magical solution to the problem of time-invariant variables in fixed effects models
title_sort fixed effects vector decomposition: a magical solution to the problem of time-invariant variables in fixed effects models
url http://hdl.handle.net/20.500.11937/62845