区域一体化集群与最优关税同盟:一种机器学习方法

IF 1.2 Q3 ECONOMICS Journal of Economic Integration Pub Date : 2021-05-31 DOI:10.11130/JEI.2021.36.2.262
P. Lombaerde, Dominik Naeher, Takfarinas Saber
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引用次数: 2

摘要

这项研究提出了一种新的方法来评估区域安排的组成,重点是加强区域内贸易和经济一体化。与之前将这些安排的国家组成视为给定的研究不同,我们的方法使用了改编自机器学习文献的网络聚类算法,以数据驱动的方式识别彼此最为一体化的邻国群体。使用获得的区域一体化集群(RIC)景观作为基准,然后我们应用我们的方法来批判性地评估现实世界关税同盟(CU)的组成。我们的结果表明,就CU与聚类算法中出现的RIC的距离而言,CU之间存在相当大的差异。这表明,与政治因素相比,一些CU相对更受“自然”经济力量的驱动。我们的研究结果还指出了与CU的地缘政治配置有关的几个可检验的假设。
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Regional Integration Clusters and Optimum Customs Unions: A Machine-Learning Approach
This study proposes a new method to evaluate the composition of regional arrangements focused on increasing intraregional trade and economic integration. In contrast to previous studies that take the country composition of these arrangements as given, our method uses a network clustering algorithm adapted from the machine-learning literature to identify, in a data-driven way, those groups of neighboring countries that are most integrated with each other. Using the obtained landscape of regional integration clusters (RICs) as a benchmark, we then apply our method to critically assess the composition of real-world customs unions (CUs). Our results indicate a considerable variation across CUs in terms of their distance to the RICs emerging from the clustering algorithm. This suggests that some CUs are relatively more driven by “natural” economic forces, as opposed to political considerations. Our results also point to several testable hypotheses related to the geopolitical configuration of CUs.
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CiteScore
2.30
自引率
0.00%
发文量
18
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