Spatial Characteristics and Influencing Factors of Intercity Innovative Competition Relations in China
Abstract
:1. Introduction
2. Theoretical Framework
3. Materials and Methods
3.1. Data Sources
3.2. Research Methods
3.2.1. Social Network Analysis
3.2.2. Negative Binomial Regression Model
4. Results
4.1. Characteristics of Intercity Innovative Competition Relations in China
4.1.1. Gradually Rising Intensity of Intercity Innovative Competition Relations in China
4.1.2. Clustering of Intercity Innovative Competition Relations in China towards Cities with Higher Administrative Ranks
4.1.3. Beijing at the Centre of Innovative Competition Relations, yet with a Slight Decline in Its Position
4.1.4. Cities as Benchmarks in Innovative Competitions by Fully Leveraging Disciplinary Strengths in Competitions
4.1.5. Higher Average Number of Innovative Competitions between Cities That Are Geographically Close to Each Other
4.1.6. Significant Differences in the Intensity of Intercity Innovative Competitions in China among Various Academic Disciplines
4.2. Influencing Factors of Intercity Innovative Competition Relations in China
4.2.1. Impact of Urban Innovation Capacity on the Intercity Innovative Competition Relations
4.2.2. Impact of Multidimensional Proximity on the Intercity Innovative Competition Relations
4.2.3. Interactive Influences of Multidimensional Proximity
5. Conclusions and Discussion
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
References
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Indicators | Meaning of Indicators | Calculation Formula | Explanation of Indicators |
---|---|---|---|
Network Density | Network density is the ratio of a network’s actual connections to the maximum feasible number of connections. It characterizes the closeness of intercity innovative competition relations. | D is the network density; L is the actual number of connections in a network; and n is the number of city nodes. The threshold for network density is [0, 1]. | |
Degree Centrality | If a city has a high degree centrality, it occupies a central position in the city network, possessing more power, status, and the ability to aggregate resources. | is the degree centrality of city i; and is the number of innovative competition relations between city i and city j. |
Multidimensional Proximity Variables | Measurement Methods |
---|---|
This paper calculates the Euclidean distance between the centres of two innovative competition cities through the geosphere package in R language and implements standardisation referring to existing research [24]. The calculation formula is as follows: indicates the maximum distance between cities in China. takes a value of 1 or above; a large value corresponds to a high degree of geographical proximity between cities. | |
Referring to existing studies [27], this paper assesses institutional proximity by examining the administrative-level relationship between cities. If both cities have higher administrative ranks, then the value is 3; if only one of the two cities has a higher administrative rank and the other is an ordinary city, then the value is 1; if both cities are ordinary cities, then the value is 0. | |
Referring to existing studies [28], this paper firstly collects the distribution series of general programs of the NSFC in each discipline and then illustrates cognitive proximity by calculating the closeness of the application directions of general programs of the NSFC between cities according to the cosine similarity rule. |
Quantitative Characteristics and Social Network Indicators of Innovative Competition Relations | 2005–2009 | 2010–2014 | 2015–2019 |
---|---|---|---|
The number of innovative competitions | 5,269,947 | 44,374,262 | 60,657,509 |
The number of cities in innovative competition relations | 150 | 192 | 197 |
Network density | 0.15 | 0.28 | 0.28 |
The number of innovative competitions involving cities with high administrative ranks | 5,231,039 | 43,940,744 | 60,020,918 |
The percentage of innovative competitions involving cities with high administrative ranks | 99.26% | 99.02% | 98.95% |
The number of innovative competitions involving both cities with high administrative ranks | 4,410,928 | 36,095,257 | 48,981,916 |
The percentage of innovative competitions involving both cities with high administrative ranks | 83.70% | 81.34% | 80.75% |
2005–2009 | 2010–2014 | 2015–2019 | |||
---|---|---|---|---|---|
City | Centrality in Innovative Competitions | City | Centrality in Innovative Competitions | City | Centrality in Innovative Competitions |
Beijing | 2,227,518 | Beijing | 15,179,363 | Beijing | 19,164,325 |
Shanghai | 1,035,246 | Shanghai | 9,143,353 | Shanghai | 12,780,678 |
Nanjing | 722,837 | Nanjing | 5,818,906 | Nanjing | 8,679,340 |
Wuhan | 616,176 | Guangzhou | 5,220,426 | Guangzhou | 8,116,602 |
Xi’an | 512,183 | Wuhan | 5,160,496 | Wuhan | 7,177,656 |
Guangzhou | 506,820 | Xi’an | 4,554,071 | Xi’an | 6,061,432 |
Hangzhou | 454,838 | Hangzhou | 3,859,669 | Hangzhou | 4,990,209 |
Hefei | 371,155 | Changsha | 3,151,986 | Changsha | 3,961,060 |
Chengdu | 332,780 | Chengdu | 2,750,964 | Chengdu | 3,947,738 |
Tianjin | 324,528 | Tianjin | 2,697,680 | Tianjin | 3,835,319 |
Top 1 Connected Cities | Top 3 Connected Cities | Top 10 Connected Cities | |
---|---|---|---|
2005–2009 | Beijing (147) Shanghai (3) | Beijing (149) Shanghai (128) Nanjing (90) Guangzhou (19) Xi’an (15) Wuhan (13) Hangzhou (13) Hefei (6) Lanzhou (5) Tianjin (3) | Beijing (149) Shanghai (144) Wuhan (144) Nanjing (142) Guangzhou (141) Hangzhou (135) Xi’an (120) Tianjin (95) Chengdu (92) Hefei (84) |
2010–2014 | Beijing (185) Shanghai (5) Qingdao (2) | Beijing (189) Shanghai (158) Nanjing (111) Guangzhou (44) Wuhan (32) Xi’an (11) Changsha (7) Hangzhou (5) Qingdao (4) Shenyang (4) | Beijing (191) Shanghai (190) Nanjing (187) Wuhan (186) Guangzhou (181) Hangzhou (175) Xi’an (165) Changsha (123) Chengdu (100) Tianjin (100) |
2015–2019 | Beijing (180) Shanghai (14) Qingdao (2) Harbin (1) | Beijing (195) Shanghai (160) Nanjing (106) Guangzhou (50) Wuhan (28) Xi’an (26) Qingdao (5) Shenyang (5) Changsha (3) Harbin (3) | Beijing (196) Wuhan (194) Shanghai (193) Nanjing (189) Xi’an (181) Guangzhou (181) Hangzhou (174) Changsha (126) Tianjin (110) Chengdu (108) |
2005–2009 | 2010–2014 | 2015–2019 | ||||||
---|---|---|---|---|---|---|---|---|
City 1 | City 2 | Number of Innovative Competitions | City 1 | City 2 | Number of Innovative Competitions | City 1 | City 2 | Number of Innovative Competitions |
Beijing | Shanghai | 292,265 | Beijing | Shanghai | 1,933,965 | Beijing | Shanghai | 2,436,375 |
Beijing | Nanjing | 205,185 | Beijing | Nanjing | 1,315,461 | Beijing | Nanjing | 1,772,439 |
Beijing | Wuhan | 171,311 | Beijing | Wuhan | 1,123,563 | Beijing | Guangzhou | 1,445,014 |
Beijing | Xi’an | 135,766 | Beijing | Guangzhou | 1,026,202 | Beijing | Wuhan | 1,420,771 |
Beijing | Guangzhou | 134,479 | Beijing | Xi’an | 934,910 | Guangzhou | Shanghai | 1,234,036 |
Beijing | Hangzhou | 120,085 | Beijing | Hangzhou | 785,369 | Beijing | Xi’an | 1,170,687 |
Beijing | Hefei | 110,029 | Guangzhou | Shanghai | 701,000 | Nanjing | Shanghai | 993,512 |
Beijing | Chengdu | 88,539 | Beijing | Changsha | 637,418 | Beijing | Hangzhou | 919,603 |
Beijing | Tianjin | 80,707 | Nanjing | Shanghai | 629,774 | Shanghai | Wuhan | 824,850 |
Beijing | Changsha | 79,489 | Beijing | Chengdu | 582,473 | Beijing | Chengdu | 756,181 |
Year | Intercity Distance | Average Number of Innovative Competitions | ||
---|---|---|---|---|
Both Cities Are Cities with Higher Administrative Ranks | One of the Two Cities Has a Higher Administrative Rank and the Other Is an Ordinary City | Both Cities Are Ordinary Cities | ||
2005–2009 | 0–500 km | 8.15 | 287.65 | 9971.92 |
500–1000 km | 7.55 | 260.23 | 9466.95 | |
1000–1500 km | 4.69 | 206.18 | 9029.64 | |
1500–2000 km | 4.26 | 123.65 | 5188.02 | |
Above 2000 km | 0.88 | 50.73 | 1733.44 | |
2010–2014 | 0–500 km | 55.53 | 2185.20 | 77,585.81 |
500–1000 km | 47.07 | 1840.83 | 77,208.10 | |
1000–1500 km | 25.74 | 1407.36 | 71,399.71 | |
1500–2000 km | 24.83 | 839.83 | 42,194.09 | |
Above 2000 km | 10.64 | 370.65 | 12,604.52 | |
2015–2019 | 0–500 km | 80.38 | 2982.91 | 104,912.78 |
500–1000 km | 63.41 | 2557.76 | 103,375.63 | |
1000–1500 km | 38.71 | 1947.41 | 96,144.78 | |
1500–2000 km | 32.27 | 1140.12 | 60,160.59 | |
Above 2000 km | 10.83 | 434.07 | 17,122.34 |
2005–2009 | 2010–2014 | 2015–2019 | |||||
---|---|---|---|---|---|---|---|
Model 1 | Model 2 | Model 3 | Model 4 | Model 5 | Model 6 | ||
Proximity | GEOij | 0.199 *** | 0.184 *** | 0.120 *** | |||
INSij | 2.028 *** | 2.001 *** | 2.102 *** | ||||
COGij | 11.272 *** | 12.108 *** | 11.799 *** | ||||
Interaction terms | GEOij × INSij | 0.360 *** | 0.357 *** | 0.212 *** | |||
GEOij × COGij | −1.616 *** | −1.462 *** | −1.200 *** | ||||
INSij × COGij | −5.031 *** | −5.312 *** | −5.791 *** | ||||
Urban innovation capacity | UIC | 15.808 *** | 2.772 *** | 2.125 *** | 0.369 *** | 1.605 *** | 0.473 *** |
Control variables | CAP | 0.209 *** | 0.051 *** | 0.173 *** | 0.041 *** | 0.078 *** | 0.011 *** |
RDI | 0.816 *** | 0.128 *** | 5.262 *** | 1.264 *** | 49.260 *** | 26.065 *** | |
Constant term | 2.887 *** | −0.928 *** | 4.393 *** | 0.658 *** | 4.389 *** | 0.810 *** | |
Alpha | 6.101 | 2.458 | 5.862 | 3.053 | 6.275 | 3.348 | |
Log likelihood | −39,368.252 | −35,068.247 | −81,141.277 | −75,221.020 | −85,785.897 | −79,908.967 |
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Yang, X.; Shen, L.; Wang, X.; Qin, X. Spatial Characteristics and Influencing Factors of Intercity Innovative Competition Relations in China. Systems 2024, 12, 87. https://doi.org/10.3390/systems12030087
Yang X, Shen L, Wang X, Qin X. Spatial Characteristics and Influencing Factors of Intercity Innovative Competition Relations in China. Systems. 2024; 12(3):87. https://doi.org/10.3390/systems12030087
Chicago/Turabian StyleYang, Xinyu, Lizhen Shen, Xia Wang, and Xiao Qin. 2024. "Spatial Characteristics and Influencing Factors of Intercity Innovative Competition Relations in China" Systems 12, no. 3: 87. https://doi.org/10.3390/systems12030087
APA StyleYang, X., Shen, L., Wang, X., & Qin, X. (2024). Spatial Characteristics and Influencing Factors of Intercity Innovative Competition Relations in China. Systems, 12(3), 87. https://doi.org/10.3390/systems12030087