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Convergence Clubs in Labor Productivity and its Proximate Sources

Evidence from Developed and Developing Countries
ISBN:
9789811586286
Auflage:
1st ed. 2020
Verlag:
Springer Singapore
Land des Verlags:
Malaysia
Erscheinungsdatum:
06.11.2020
Autoren:
Reihe:
SpringerBriefs in Economics
Format:
Softcover
Seitenanzahl:
67
Ladenpreis
54,99 EUR (inkl. MwSt. zzgl. Versand)
Lieferung in 5-10 Werktagen Versandkostenfrei ab 40 Euro in Österreich
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Testing for economic convergence across countries has been a central issue in the literature of economic growth and development. This book introduces a modern framework to study the cross-country convergence dynamics in labor productivity and its proximate sources: capital accumulation and aggregate efficiency. In particular, recent convergence dynamics of developed as well as developing countries are evaluated through the lens of a non-linear dynamic factor model and a clustering algorithm for panel data. This framework allows us to examine key economic phenomena such as technological heterogeneity and multiple equilibria. In this context, the book provides a succinct review of the recent club convergence literature, a comparative view of developed and developing countries, and a tutorial on how to implement the club convergence framework in the statistical software Stata.

Biografische Anmerkung

Carlos Mendez is an associate professor of development economics at the Graduate School of International Development (GSID) in Nagoya University, Japan.  He is also the founder and director of the Quantitative Regional and Computational Science Lab (QuaRCS-lab). He has worked as a consultant for Pro-Mujer International, The World Bank, DANIDA, and JICA. He holds an M.A. and a Ph.D. in international development from Nagoya University. His research interests focus on the integration of econometrics, spatial data science, and machine learning methods to understand and inform the process of economic growth and development. In particular, his current research is in (1) the quantitative geography of development and inequality; (2) economic growth and convergence; (3) regional labor market outcomes and macroeconomic shocks; and (4) structural change and firm productivity dynamics.