TY - JOUR
T1 - Regional integration clusters and optimum customs unions
T2 - A machine-learning approach
AU - De Lombaerde, Philippe
AU - Naeher, Dominik
AU - Saber, Takfarinas
N1 - Publisher Copyright:
© 2021-Center for Economic Integration, Sejong University, All Rights Reserved.
PY - 2021/6
Y1 - 2021/6
N2 - 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.
AB - 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.
KW - Customs Union
KW - Machine Learning
KW - Regional Integration
UR - https://www.scopus.com/pages/publications/85108253590
U2 - 10.11130/JEI.2021.36.2.262
DO - 10.11130/JEI.2021.36.2.262
M3 - Article
SN - 1225-651X
VL - 36
SP - 262
EP - 281
JO - Journal of Economic Integration
JF - Journal of Economic Integration
IS - 2
ER -