贸易引力模型
互补性(分子生物学)
经济地理学
升级
计量经济学
人口
地理
水准点(测量)
中国
区域科学
计算机科学
经济
社会学
地图学
人口学
国际贸易
考古
操作系统
生物
遗传学
作者
Wang Yu-xia,Xia Li,Xing-Can Yao,S. Li,Yu Liu
标识
DOI:10.1080/24694452.2021.1977110
摘要
One of the key concerns in geographical and social sciences is to analyze and predict population migration due to its close association with urban planning, industrial upgrade, and urban development. Although the most prevailing framework, the gravity model, has been applied in its various versions, there is little information available about how city industry structure functions as the invisible distance in the modeling of intercity population migration. Here, we introduce a family of improved gravity models by considering city industry structure proximity, complementarity, and diversities. The resulting models predict population migration patterns in good agreement with the flows observed. Our best model (GM_COM) outperforms the benchmark model (GM_O) by 24.6 percent in terms of mean absolute percentage error. Further analysis shows the improved models offer several advantages with respect to the base models. They have better prediction accuracies for flows with high intensities and long distances. The best model demonstrates obvious improvement when flows occur in eastern China. Given the significant improvement of the proposed models, this study broadens existing research by absorbing city industry structure features into the gravity model and deepens our understanding in the population migration as a function of distance.
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