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Productivity Convergence in Manufacturing: A Hierarchical Panel Data Approach

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journal contribution
posted on 2022-11-10, 03:46 authored by Guohua Feng, Jiti Gao, Bin Peng
Despite its paramount importance in the empirical growth literature, productivity convergence analysis has three problems that have yet to be resolved: (1) little attempt has been made to explore the hierarchical structure of industry-level datasets; (2) industry-level technology heterogeneity has largely been ignored; and (3) cross-sectional dependence has rarely been allowed for. This paper aims to address these three problems within a hierarchical panel data framework. We propose an estimation procedure and then derive the corresponding asymptotic theory. Finally, we apply the framework to a dataset of 23 manufacturing industries from a wide range of countries over the period 1963-2018. Our results show that both the manufacturing industry as a whole and individual manufacturing industries at the ISIC two-digit level exhibit strong conditional convergence in labour productivity, but not unconditional convergence. In addition, our results show that both global and industry-specific shocks are important in explaining the convergence behaviours of the manufacturing industries.

History

Classification-JEL

L60, O10, C23

Creation date

2021-11-01

Working Paper Series Number

16/21

Length

58 pp

File-Format

application/pdf

Handle

RePEc:msh:ebswps:2021-16

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