Examining Convergence Clubs in Chinese Provinces (1952-2017): New Findings from the Simplified Clustering Convergence Test

Ming-Lu Wu
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引用次数: 1

Abstract

This paper empirically investigates the convergence clustering in 31 Chinese provinces regarding the popular and important economic indicator of GDP per capita over the period 1952-2017. Using the club convergence and clustering procedure of Phillips and Sul (2007) with necessary simplifications, a few provincial clusters are identified. It is clearly verified as expected that the Chinese provincial GDP per capita series contain significant nonlinear components. It is found that there are two or three convergence clubs depending on different starting years or initial conditions, and the clustering results are somewhat stable with respect to different starting years. The results can help local and central governments to select appropriate growth promotion strategies for different groups of provinces in general and, due to the evidence that GDP per capita in China heavily inclines to a few major provinces (such as Beijing, Shanghai, Tianjin, Jiangsu and Zhejiang), can also help provide useful information to relevant authorities to fight against the increasing income inequality across provinces in particular.
中国省际收敛俱乐部检验(1952-2017):简化聚类收敛检验的新发现
本文对1952-2017年中国31个省份的人均GDP这一重要经济指标的收敛聚类进行了实证研究。利用菲利普斯和苏(2007)的俱乐部收敛和聚类过程进行必要的简化,确定了几个省级集群。结果表明,中国各省人均GDP序列中存在显著的非线性成分。研究发现,在不同的起始年份或初始条件下,聚类结果存在两个或三个收敛俱乐部,并且对于不同的起始年份,聚类结果是比较稳定的。研究结果可以帮助地方和中央政府为不同的省份群体选择适当的促进增长战略,而且,由于有证据表明中国的人均GDP严重倾向于少数几个主要省份(如北京、上海、天津、江苏和浙江),研究结果还可以为相关部门提供有用的信息,以应对各省之间日益加剧的收入不平等。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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