China’s Spatial Economic Network and Its Influencing Factors

With the deepening of reform and opening-up, China’s economy has been further developed, but there is still a problem of uneven development. It is of great significance to completely construct China’s economic spatial correlation network, to clarify the role and status of each province in the whole...

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Main Authors: Guihai Yu, Deyan He, Wenlong Lin, Qiuhua Wu, Jianxiong Xiao, Xiaofang Lei, Zhongqun Xie, Renjie Wu
Format: Article
Language:English
Published: Hindawi-Wiley 2020-01-01
Series:Complexity
Online Access:http://dx.doi.org/10.1155/2020/6352021
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spelling doaj-e9c2e31691134c988ac7745899c0e0692021-01-11T02:21:55ZengHindawi-WileyComplexity1099-05262020-01-01202010.1155/2020/6352021China’s Spatial Economic Network and Its Influencing FactorsGuihai Yu0Deyan He1Wenlong Lin2Qiuhua Wu3Jianxiong Xiao4Xiaofang Lei5Zhongqun Xie6Renjie Wu7School of Mathematics and StatisticsSchool of Mathematics and StatisticsSchool of Mathematics and StatisticsSchool of Mathematics and StatisticsSchool of Mathematics and StatisticsSchool of Mathematics and StatisticsSchool of Mathematics and StatisticsSchool of Mathematics and StatisticsWith the deepening of reform and opening-up, China’s economy has been further developed, but there is still a problem of uneven development. It is of great significance to completely construct China’s economic spatial correlation network, to clarify the role and status of each province in the whole network, and to study the influencing factors of the national spatial economic network. In this paper, we employ the network analysis method to analyze China’s economic development in the past 20 years. Based on the modified gravity model, we construct China’s spatial economic network and explore the network structure from three aspects: the whole network structure feature, characteristics of individual provinces in the network, and block model analysis. The results show that (1) China’s spatial economic network has strong internal cohesion, and the hierarchy of the network is becoming less and less obvious. However, the network density is low, and the overall network relationship still needs to be strengthened. (2) The different levels in economic development illustrate the obvious economic unbalance among provinces. (3) The block model analysis results demonstrated that coastal areas are more attractive to other provinces and are playing an important role in driving China’s economy. Finally, we employ Quadratic Assignment Procedure (QAP) regression analysis to analyze the influential factors on spatial economic network. Numerical results show that the geographic proximity and the differences in six factors (industrial structure, level of economic development, degree of opening to the outside world, medical level, size of labor market, and infrastructure) have significant impact on the spatial economic network. Moreover, the influence of these factors on the economic relation among provinces has been gradually strengthened in recent years.http://dx.doi.org/10.1155/2020/6352021
collection DOAJ
language English
format Article
sources DOAJ
author Guihai Yu
Deyan He
Wenlong Lin
Qiuhua Wu
Jianxiong Xiao
Xiaofang Lei
Zhongqun Xie
Renjie Wu
spellingShingle Guihai Yu
Deyan He
Wenlong Lin
Qiuhua Wu
Jianxiong Xiao
Xiaofang Lei
Zhongqun Xie
Renjie Wu
China’s Spatial Economic Network and Its Influencing Factors
Complexity
author_facet Guihai Yu
Deyan He
Wenlong Lin
Qiuhua Wu
Jianxiong Xiao
Xiaofang Lei
Zhongqun Xie
Renjie Wu
author_sort Guihai Yu
title China’s Spatial Economic Network and Its Influencing Factors
title_short China’s Spatial Economic Network and Its Influencing Factors
title_full China’s Spatial Economic Network and Its Influencing Factors
title_fullStr China’s Spatial Economic Network and Its Influencing Factors
title_full_unstemmed China’s Spatial Economic Network and Its Influencing Factors
title_sort china’s spatial economic network and its influencing factors
publisher Hindawi-Wiley
series Complexity
issn 1099-0526
publishDate 2020-01-01
description With the deepening of reform and opening-up, China’s economy has been further developed, but there is still a problem of uneven development. It is of great significance to completely construct China’s economic spatial correlation network, to clarify the role and status of each province in the whole network, and to study the influencing factors of the national spatial economic network. In this paper, we employ the network analysis method to analyze China’s economic development in the past 20 years. Based on the modified gravity model, we construct China’s spatial economic network and explore the network structure from three aspects: the whole network structure feature, characteristics of individual provinces in the network, and block model analysis. The results show that (1) China’s spatial economic network has strong internal cohesion, and the hierarchy of the network is becoming less and less obvious. However, the network density is low, and the overall network relationship still needs to be strengthened. (2) The different levels in economic development illustrate the obvious economic unbalance among provinces. (3) The block model analysis results demonstrated that coastal areas are more attractive to other provinces and are playing an important role in driving China’s economy. Finally, we employ Quadratic Assignment Procedure (QAP) regression analysis to analyze the influential factors on spatial economic network. Numerical results show that the geographic proximity and the differences in six factors (industrial structure, level of economic development, degree of opening to the outside world, medical level, size of labor market, and infrastructure) have significant impact on the spatial economic network. Moreover, the influence of these factors on the economic relation among provinces has been gradually strengthened in recent years.
url http://dx.doi.org/10.1155/2020/6352021
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