Identifying latent structures in panel data

This paper provides a novel mechanism for identifying and estimating latent group structures in panel data using penalized techniques. We consider both linear and nonlinear models where the regression coefficients are heterogeneous across groups but homogeneous within a group and the group membershi...

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Main Authors: SU, Liangjun, SHI, Zhentao, Peter C. B. PHILLIPS
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Language:English
Published: Institutional Knowledge at Singapore Management University 2016
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Online Access:https://ink.library.smu.edu.sg/soe_research/1911
https://ink.library.smu.edu.sg/context/soe_research/article/2910/viewcontent/IdentifyingLatentStructuresPanelData_2014Jul_pp.pdf
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spelling sg-smu-ink.soe_research-29102021-06-25T02:47:35Z Identifying latent structures in panel data SU, Liangjun SHI, Zhentao Peter C. B. PHILLIPS, This paper provides a novel mechanism for identifying and estimating latent group structures in panel data using penalized techniques. We consider both linear and nonlinear models where the regression coefficients are heterogeneous across groups but homogeneous within a group and the group membership is unknown. Two approaches are consideredpenalized profile likelihood (PPL) estimation for the general nonlinear models without endogenous regressors, and penalized GMM (PGMM) estimation for linear models with endogeneity. In both cases, we develop a new variant of Lasso called classifier-Lasso (C-Lasso) that serves to shrink individual coefficients to the unknown group-specific coefficients. C-Lasso achieves simultaneous classification and consistent estimation in a single step and the classification exhibits the desirable property of uniform consistency. For PPL estimation, C-Lasso also achieves the oracle property so that group-specific parameter estimators are asymptotically equivalent to infeasible estimators that use individual group identity information. For PGMM estimation, the oracle property of C-Lasso is preserved in some special cases. Simulations demonstrate good finite-sample performance of the approach in both classification and estimation. Empirical applications to both linear and nonlinear models are presented. 2016-11-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/soe_research/1911 info:doi/10.3982/ECTA12560 https://ink.library.smu.edu.sg/context/soe_research/article/2910/viewcontent/IdentifyingLatentStructuresPanelData_2014Jul_pp.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Economics eng Institutional Knowledge at Singapore Management University Classification cluster analysis dynamic panel group Lasso high dimensionality nonlinear panel oracle property panel structure model parameter heterogeneity penalized least squares penalized GMM penalized profile likelihood Econometrics
institution Singapore Management University
building SMU Libraries
continent Asia
country Singapore
Singapore
content_provider SMU Libraries
collection InK@SMU
language English
topic Classification
cluster analysis
dynamic panel
group Lasso
high dimensionality
nonlinear panel
oracle property
panel structure model
parameter heterogeneity
penalized least squares
penalized GMM
penalized profile likelihood
Econometrics
spellingShingle Classification
cluster analysis
dynamic panel
group Lasso
high dimensionality
nonlinear panel
oracle property
panel structure model
parameter heterogeneity
penalized least squares
penalized GMM
penalized profile likelihood
Econometrics
SU, Liangjun
SHI, Zhentao
Peter C. B. PHILLIPS,
Identifying latent structures in panel data
description This paper provides a novel mechanism for identifying and estimating latent group structures in panel data using penalized techniques. We consider both linear and nonlinear models where the regression coefficients are heterogeneous across groups but homogeneous within a group and the group membership is unknown. Two approaches are consideredpenalized profile likelihood (PPL) estimation for the general nonlinear models without endogenous regressors, and penalized GMM (PGMM) estimation for linear models with endogeneity. In both cases, we develop a new variant of Lasso called classifier-Lasso (C-Lasso) that serves to shrink individual coefficients to the unknown group-specific coefficients. C-Lasso achieves simultaneous classification and consistent estimation in a single step and the classification exhibits the desirable property of uniform consistency. For PPL estimation, C-Lasso also achieves the oracle property so that group-specific parameter estimators are asymptotically equivalent to infeasible estimators that use individual group identity information. For PGMM estimation, the oracle property of C-Lasso is preserved in some special cases. Simulations demonstrate good finite-sample performance of the approach in both classification and estimation. Empirical applications to both linear and nonlinear models are presented.
format text
author SU, Liangjun
SHI, Zhentao
Peter C. B. PHILLIPS,
author_facet SU, Liangjun
SHI, Zhentao
Peter C. B. PHILLIPS,
author_sort SU, Liangjun
title Identifying latent structures in panel data
title_short Identifying latent structures in panel data
title_full Identifying latent structures in panel data
title_fullStr Identifying latent structures in panel data
title_full_unstemmed Identifying latent structures in panel data
title_sort identifying latent structures in panel data
publisher Institutional Knowledge at Singapore Management University
publishDate 2016
url https://ink.library.smu.edu.sg/soe_research/1911
https://ink.library.smu.edu.sg/context/soe_research/article/2910/viewcontent/IdentifyingLatentStructuresPanelData_2014Jul_pp.pdf
_version_ 1770573210377519104