Nonstationary panel models with latent group structures and cross-section dependence
Nonstationary panel models with latent group structures and cross-section dependence
This paper proposes a novel Lasso-based approach to handle unobserved parameter heterogeneity and cross-section dependence in nonstationary panel models. In particular, a penalized principal component (PPC) method is developed to estimate group-specific long-run relationships and unobserved common factors and jointly to identify the unknown group membership. The PPC estimators are shown to be consistent under weakly dependent innovation processes. But they suffer an asymptotically non-negligible bias from correlations between the nonstationary regressors and unobserved stationary common factors and/or the equation errors. To remedy these shortcomings we provide three bias-correction procedures under which the estimators are re-centered about zero as both dimensions (N and T) of the panel tend to infinity. We establish a mixed normal limit theory for the estimators of the group-specific long-run coefficients, which permits inference using standard test statistics. Simulations suggest good finite sample performance. An empirical application applies the methodology to study international R&D spillovers and the results offer a convincing explanation for the growth convergence puzzle through the heterogeneous impact of R&D spillovers.
Classifier Lasso, Cross-section dependence, Latent group patterns, Nonstationarity, Parameter heterogeneity, Penalized principal component, R&D spillover
Huang, Wenxin
888b28a4-ceef-459f-aff4-816a22c5e3b2
Jin, Sainan
faa63244-5d92-4f1b-9851-c113cc61c0ea
Phillips, Peter Charles Bonest
f67573a4-fc30-484c-ad74-4bbc797d7243
Su, Liangjun
e1137c6b-c51a-4408-b4b9-bfb3f26f7955
Huang, Wenxin
888b28a4-ceef-459f-aff4-816a22c5e3b2
Jin, Sainan
faa63244-5d92-4f1b-9851-c113cc61c0ea
Phillips, Peter Charles Bonest
f67573a4-fc30-484c-ad74-4bbc797d7243
Su, Liangjun
e1137c6b-c51a-4408-b4b9-bfb3f26f7955
Huang, Wenxin, Jin, Sainan, Phillips, Peter Charles Bonest and Su, Liangjun
(2020)
Nonstationary panel models with latent group structures and cross-section dependence.
Journal of Econometrics.
(doi:10.1016/j.jeconom.2020.05.003).
Abstract
This paper proposes a novel Lasso-based approach to handle unobserved parameter heterogeneity and cross-section dependence in nonstationary panel models. In particular, a penalized principal component (PPC) method is developed to estimate group-specific long-run relationships and unobserved common factors and jointly to identify the unknown group membership. The PPC estimators are shown to be consistent under weakly dependent innovation processes. But they suffer an asymptotically non-negligible bias from correlations between the nonstationary regressors and unobserved stationary common factors and/or the equation errors. To remedy these shortcomings we provide three bias-correction procedures under which the estimators are re-centered about zero as both dimensions (N and T) of the panel tend to infinity. We establish a mixed normal limit theory for the estimators of the group-specific long-run coefficients, which permits inference using standard test statistics. Simulations suggest good finite sample performance. An empirical application applies the methodology to study international R&D spillovers and the results offer a convincing explanation for the growth convergence puzzle through the heterogeneous impact of R&D spillovers.
Text
20200517_panel_group
- Accepted Manuscript
More information
Accepted/In Press date: 19 May 2020
e-pub ahead of print date: 4 August 2020
Additional Information:
Funding Information:
The authors thank Serena Ng, an associate editor, and two anonymous referees for their many helpful comments on the paper. They also thank the participants in the 2017 Asian Meeting of the Econometric Society at CUHK for their valuable comments. Su gratefully acknowledges the Singapore Ministry of Education for Academic Research Fund under Grant MOE2012-T2-2-021 and funding support provided by the Lee Kong Chian Fund for Excellence and that by Tsinghua University. Phillips acknowledges research support from the National Science Foundation, USA under Grant No. SES 18-50860 and the Kelly Fund at the University of Auckland. Huang gratefully acknowledges funding support provided by the Shanghai Sailing Program and the Shanghai Institute of International Finance and Economics.
Publisher Copyright:
© 2020 Elsevier B.V.
Copyright:
Copyright 2020 Elsevier B.V., All rights reserved.
Keywords:
Classifier Lasso, Cross-section dependence, Latent group patterns, Nonstationarity, Parameter heterogeneity, Penalized principal component, R&D spillover
Identifiers
Local EPrints ID: 444580
URI: http://eprints.soton.ac.uk/id/eprint/444580
ISSN: 0304-4076
PURE UUID: b59263c1-eede-442c-afed-0a6a08979e0b
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Date deposited: 26 Oct 2020 17:32
Last modified: 17 Mar 2024 05:59
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Author:
Wenxin Huang
Author:
Sainan Jin
Author:
Liangjun Su
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