How Has the Inter-City Corporate Network Spatio-Temporally Evolved in China? Evidence from Chinese Investment in Newly Established Enterprises from 1980–2017
Abstract
:1. Introduction
2. Data and Methodology
2.1. Study Area and Data Sources
2.2. Analysis Methods
2.2.1. Social Network Analysis
2.2.2. Modified Boston Matrix
3. Results and Discussions
3.1. Spatio-Temporal Evolution of Inter-City Investment in China
3.2. Spatio-Temporal Evolution Trend of Inter-City Corporate Investment Network
3.2.1. General Overview of Network Evolution
3.2.2. Module Evolution of Network
3.3. Spatio-Temporal Evolution Characteristics of Inter-City Investment Network Nodes
3.3.1. Nodes’ Positions in the Network
3.3.2. Nodes’ Potentials
4. Conclusions
- (1)
- Before 2000, Chinese corporate inter-city investment experienced an initial improvement, with a slight increase in the size and number of investments. Then, investments experienced steady progress from 2000 to 2013 and rapid development—with both more investments and larger investments—after 2013. The capital flow of producer service enterprises contributes most to the increase in investments. Spatially, the linkages of Chinese corporate inter-city investments gradually extended to the whole country, displaying a diamond shape structure whose vertices are Beijing, Shanghai, Shenzhen, and Chongqing.
- (2)
- The Chinese corporate inter-city investment network has become denser and more aggregated since the number of nodes has increased and the average distance between nodes has decreased. Meanwhile, the whole network has more accessibility and a higher degree of fusion. Spatially, the inter-city corporate investment network is composed of multiple modules whose number has continually decreased; this means that each module includes more areas and that regional integration has grown over time. The modules’ evolution presents a situation of overall fragmentation and partial agglomeration. The southeast region is one step ahead of the other regions in terms of regional integration and the diversification of investment destinations. Finally, the distance of inter-city investment in space reflects the preference for neighboring provinces over long-distance investment.
- (3)
- The nodal city’s ability to control resources underwent a transition from obvious polarization to gradual, balanced development. In particular, the Beijing–Guangzhou and Beijing–Shanghai dual-core pattern prevailed in the 1980s and 1990s, while the Beijing–Shanghai–Hangzhou one-pole, dual-core pattern dominated after 2000. Nodal reachability in the network followed the Beijing one-pole pattern during the study period. Both of the above two nodal abilities show strong orientation at administrative hierarchy and economic development, as the top 30 cities listed are mostly above the provincial capital level and are in developed areas along the eastern coast. Meanwhile, the core–edge pattern of the network has gradually weakened.
- (4)
- The node type structure of Chinese enterprises’ inter-city investment network has tended to develop steadily since 2000. Overall, node types and development stages are stronger in the east than in the west. Except for Beijing, Shenzhen, Hangzhou, and other nodes that were in the mature stage of the market from the beginning, most of the nodes developed in an orderly manner toward the next stage over time, while a few nodes were in the declining development stage.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
1 | The relevant research report (https://www.risi-cpps.com/, accessed on 6 July 2021) shows that the regions with the largest number of listed companies in China since 1990 are Jiangsu, Zhejiang, Guangdong, as well as Beijing, Shanghai and Shenzhen. These regions are with high economic and administrative level. |
2 | We define market decline as a node that is of type LL in the current period and was of type HL, HH, or LH in the previous period. |
3 | http://www.gov.cn/zhengce/content/2014-08/06/content_8955.htm, accessed on 5 March 2021. |
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Index | Formula | Definition | Function |
---|---|---|---|
Centrality degree (DC) | the sum of direct contacts sent and received by nodes | reflects the status and radiation capacity of nodes | |
Betweenness centrality (BC) | the number of shortest paths through the node between all pairs of nodes | reflects each node’s ability to transfer and control resource elements | |
Closeness centrality (CC) | the sum of all shortest paths of any two nodes in the network | reflects location advantages of nodes in the network | |
Clustering coefficient | the probability that the neighboring nodes of a node are also neighbors of each other | reflects the internal aggregation capability of the network | |
Density | ratio of the actual number of connections between nodes to the maximum number of possible connections | reflects the development situation of the network | |
Diameter | maximum value of the distance between any two nodes in the network | reflects the transmission performance and efficiency of the network to resource elements | |
Shortest path lengths | average shortest distance between all pairs of nodes in the network | ||
Modularity | some nodes in the network are closely connected with each other but loosely connected with other nodes; nodes that gather together can be regarded as a module | reflects the status of module division within the network |
1980–1989 | 1990–1999 | 2000–2009 | 2010–2017 | |
---|---|---|---|---|
Number of nodes | 140 | 303 | 335 | 338 |
Edges | 230 | 2233 | 7814 | 17851 |
Average centrality degree | 1.643 | 7.37 | 23.325 | 52.97 |
Density | 0.012 | 0.024 | 0.07 | 0.158 |
Diameter | 9 | 6 | 4 | 3 |
Shortest path lengths | 3.376 | 2.698 | 2.104 | 1.867 |
Average clustering coefficient | 0.065 | 0.332 | 0.45 | 0.562 |
Modularity | 0.566 | 0.529 | 0.364 | 0.311 |
1980–1989 | 1990–1999 | 2000–2009 | 2010–2017 | |||||
---|---|---|---|---|---|---|---|---|
Rank | City | BC | City | BC | City | BC | City | BC |
1 | Beijing | 0.161 | Beijing | 0.236 | Beijing | 0.195 | Beijing | 0.089 |
2 | Guangzhou | 0.113 | Shanghai | 0.173 | Shanghai | 0.122 | Shanghai | 0.075 |
3 | Hangzhou | 0.042 | Chengdu | 0.079 | Hangzhou | 0.100 | Hangzhou | 0.073 |
4 | Shanghai | 0.041 | Hangzhou | 0.066 | Chengdu | 0.049 | Chengdu | 0.041 |
5 | Zhengzhou | 0.037 | Shenzhen | 0.049 | Nanjing | 0.044 | Shenzhen | 0.034 |
6 | Shenyang | 0.034 | Guangzhou | 0.046 | Chongqing | 0.031 | Tsingtao | 0.033 |
7 | Chengdu | 0.030 | Wuhan | 0.043 | Shaoxing | 0.020 | Nanjing | 0.033 |
8 | Zhuhai | 0.028 | Nanjing | 0.036 | Ningbo | 0.019 | Chongqing | 0.032 |
9 | Meizhou | 0.024 | Changchun | 0.033 | Wenzhou | 0.019 | Ningbo | 0.026 |
10 | Fuzhou | 0.022 | Hefei | 0.028 | Guangzhou | 0.018 | Shijiazhuang | 0.024 |
11 | Anshan | 0.021 | Zhengzhou | 0.028 | Wuhan | 0.017 | Wenzhou | 0.020 |
12 | Zhanjiang | 0.016 | Chongqing | 0.027 | Tsingtao | 0.016 | Hefei | 0.017 |
13 | Chongqing | 0.015 | Tsingtao | 0.024 | Shijiazhuang | 0.016 | Jinhua | 0.015 |
14 | Tsingtao | 0.015 | Ningbo | 0.023 | Shenzhen | 0.015 | Suzhou | 0.014 |
15 | Nanjing | 0.015 | Fuzhou | 0.022 | Changchun | 0.012 | Changchun | 0.013 |
16 | Hegang | 0.013 | Wenzhou | 0.022 | Wuxi | 0.012 | Jiaxing | 0.013 |
17 | Shenzhen | 0.013 | Changsha | 0.019 | Zhengzhou | 0.011 | Wuhan | 0.013 |
18 | Hefei | 0.013 | Shijiazhuang | 0.016 | Tai’zhou | 0.011 | Tianjin | 0.012 |
19 | Huzhou | 0.011 | Zhuhai | 0.015 | Jinhua | 0.011 | Shaoxing | 0.011 |
20 | Suzhou | 0.008 | Taiyuan | 0.015 | Hefei | 0.011 | Zhengzhou | 0.011 |
21 | Nanchang | 0.008 | Nanchang | 0.015 | Dalian | 0.010 | Changsha | 0.011 |
22 | Deyang | 0.008 | Guiyang | 0.014 | Tianjin | 0.009 | Wuxi | 0.010 |
23 | Qinzhou | 0.008 | Shenyang | 0.014 | Suzhou | 0.008 | Dalian | 0.008 |
24 | Xi’an | 0.007 | Suzhou | 0.014 | Yantai | 0.007 | Fuzhou | 0.008 |
25 | Siping | 0.006 | Tianjin | 0.013 | Foshan | 0.007 | Shenyang | 0.008 |
26 | Huludao | 0.005 | Quanzhou | 0.013 | Huzhou | 0.007 | Zhuhai | 0.008 |
27 | Mianyang | 0.005 | Tangshan | 0.012 | Shenyang | 0.007 | Yantai | 0.007 |
28 | Dongguan | 0.005 | Haikou | 0.012 | Changsha | 0.006 | Changzhou | 0.007 |
29 | Jinzhou | 0.005 | Changzhou | 0.011 | Changzhou | 0.006 | Guangzhou | 0.006 |
30 | Taizhou | 0.004 | Jinan | 0.010 | Guiyang | 0.006 | Nanchang | 0.006 |
1980–1989 | 1990–1999 | 2000–2009 | 2010–2017 | |||||
---|---|---|---|---|---|---|---|---|
Rank | City | CC | City | CC | City | CC | City | CC |
1 | Huizhou | 1 | Liaocheng | 1 | Beijing | 0.880 | Beijing | 0.988 |
2 | Dalian | 1 | Fuyang | 1 | Shenzhen | 0.755 | Shanghai | 0.928 |
3 | Haikou | 1 | Beijing | 0.677 | Shanghai | 0.746 | Shenzhen | 0.908 |
4 | Shijiazhuang | 1 | Shanghai | 0.580 | Hangzhou | 0.703 | Hangzhou | 0.884 |
5 | Wenzhou | 1 | Shenzhen | 0.577 | Guangzhou | 0.667 | Guangzhou | 0.866 |
6 | Binzhou | 1 | Guangzhou | 0.535 | Nanjing | 0.634 | Nanjing | 0.818 |
7 | Fushun | 1 | Wuhan | 0.513 | Chengdu | 0.633 | Chengdu | 0.780 |
8 | Zhenjiang | 1 | Hangzhou | 0.512 | Chongqing | 0.628 | Chongqing | 0.772 |
9 | HeYuan | 1 | Nanjing | 0.507 | Wuhan | 0.614 | Wuhan | 0.771 |
10 | Jinzhou | 1 | Changchun | 0.495 | Xi’an | 0.592 | Xi’an | 0.755 |
11 | Jincheng | 1 | Chongqing | 0.495 | Fuzhou | 0.590 | Hefei | 0.743 |
12 | Lianyungang | 1 | Shenyang | 0.491 | Dalian | 0.589 | Tsingtao | 0.740 |
13 | Southwest Guizhou Autonomous Prefecture | 1 | Chengdu | 0.488 | Ningbo | 0.589 | Ningbo | 0.737 |
14 | Yantai | 1 | Fuzhou | 0.482 | Shaoxing | 0.586 | Shijiazhuang | 0.737 |
15 | Sui Ning | 1 | Huizhou | 0.481 | Zhengzhou | 0.586 | Wuxi | 0.719 |
16 | Xinzhou | 1 | Tianjin | 0.480 | Hefei | 0.581 | Fuzhou | 0.715 |
17 | Yangjiang | 1 | Zhengzhou | 0.476 | Tsingtao | 0.575 | Tianjin | 0.710 |
18 | Beijing | 0.470 | Tsingtao | 0.475 | Foshan | 0.572 | Dongguan | 0.710 |
19 | Chengdu | 0.411 | Wuxi | 0.474 | Tianjin | 0.569 | Suzhou | 0.704 |
20 | Guangzhou | 0.399 | Ningbo | 0.473 | Wuxi | 0.568 | Foshan | 0.701 |
21 | Shenzhen | 0.388 | Zhuhai | 0.472 | Wenzhou | 0.562 | Zhengzhou | 0.694 |
22 | Hangzhou | 0.387 | Dalian | 0.471 | Zhuhai | 0.561 | Dalian | 0.686 |
23 | Chongqing | 0.369 | Xi’an | 0.471 | Shenyang | 0.560 | Jiaxing | 0.673 |
24 | Shanghai | 0.356 | Hefei | 0.470 | Nanchang | 0.558 | Nanchang | 0.669 |
25 | Tibetan Autonomous Prefecture of Hainan | 0.353 | Suzhou | 0.470 | Shijiazhuang | 0.556 | Changzhou | 0.668 |
26 | Zhengzhou | 0.345 | Taiyuan | 0.469 | Changchun | 0.555 | Zhuhai | 0.663 |
27 | Luoyang | 0.321 | Foshan | 0.466 | Jinhua | 0.554 | Changchun | 0.655 |
28 | Meizhou | 0.317 | Shijiazhuang | 0.464 | Yantai | 0.554 | Jinhua | 0.650 |
29 | Jilin | 0.311 | Wenzhou | 0.462 | Changzhou | 0.548 | Shaoxing | 0.650 |
30 | Zhuhai | 0.302 | Nanchang | 0.461 | Dongguan | 0.544 | Wenzhou | 0.641 |
Type Period | LL | HL | HH | LH | ||||
---|---|---|---|---|---|---|---|---|
N | P | N | P | N | P | N | P | |
1990–1999 | 50 | 35.7% | 20 | 14.3% | 49 | 35% | 21 | 15% |
2000–2009 | 70 | 23.1% | 85 | 28% | 66 | 21.8% | 82 | 27.1% |
2010–2017 | 74 | 22% | 96 | 28.5% | 71 | 21.1% | 95 | 28.3% |
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Xiao, S.; Sun, B. How Has the Inter-City Corporate Network Spatio-Temporally Evolved in China? Evidence from Chinese Investment in Newly Established Enterprises from 1980–2017. Land 2023, 12, 204. https://doi.org/10.3390/land12010204
Xiao S, Sun B. How Has the Inter-City Corporate Network Spatio-Temporally Evolved in China? Evidence from Chinese Investment in Newly Established Enterprises from 1980–2017. Land. 2023; 12(1):204. https://doi.org/10.3390/land12010204
Chicago/Turabian StyleXiao, Sha, and Bindong Sun. 2023. "How Has the Inter-City Corporate Network Spatio-Temporally Evolved in China? Evidence from Chinese Investment in Newly Established Enterprises from 1980–2017" Land 12, no. 1: 204. https://doi.org/10.3390/land12010204
APA StyleXiao, S., & Sun, B. (2023). How Has the Inter-City Corporate Network Spatio-Temporally Evolved in China? Evidence from Chinese Investment in Newly Established Enterprises from 1980–2017. Land, 12(1), 204. https://doi.org/10.3390/land12010204