1. Introduction
The Yangtze River Delta region is confronted with the imperative of high-quality economic development. The report of the 20th National Congress emphasized the need to focus on promoting high-quality development as the overarching theme. It called for efforts to enhance the quality and effectiveness of economic growth while ensuring reasonable quantitative expansion. The economic development of the Yangtze River Delta region plays an important role in the overall regional development strategy of the country. It is not only a key power source for promoting national economic growth but also an important link to achieving the goal of socialist modernization. At the same time, the development of the Yangtze River Delta urban agglomeration is increasingly showing a multi-center network situation. With the rapid development of transportation and communication technology and the rise of network society, regional “flow space” has begun to replace the traditional “local space” [
1]. The transformation of urban network structure from a single central place hierarchy system to a multi-center and multi-level network system not only promotes the in-depth study of urban networks but also provides new opportunities for the cooperation and development of cities. The development of urban network research has witnessed the evolution of urban planning and regional development theories. As early as the 1930s, Western scholars had begun to explore early theories of urban networks. Among them, Christalle’s central place theory was a landmark achievement. It interpreted the spatial system of regions and countries as the interrelationship between different levels of central places and their peripheral hinterlands, laying a foundation for later research on urban networks. Over time, especially into the 1950s, the rise of urban groupings led to the upsurge of research on urban agglomerations and urban architecture. Research in this period began to focus on the interactions and network connections between cities, providing a new perspective for understanding the complexity of urban networks [
2]. In 1973, Richardson incorporated the change of regional internal spatial structure and its impact on regional growth into the discussion of neoclassical growth theory, further enriching the theoretical depth of urban network research. Castells’ theory reveals how interregional flow interactions promote inter-city economic growth through network effects, thereby driving changes in regional spatial organization. In general, the development of urban network research reflects the trend of changing from a single central place model to a network model [
3].
“Agglomeration shadow” and “borrowed size” are important concepts in regional and urban economics that have garnered widespread attention in urban network studies in recent years [
4,
5]. Agglomeration shadow describes the negative externalities that the spatial agglomeration of economic activities imposes on surrounding areas. When a region attracts a large amount of resources and enterprises due to agglomeration economies (such as economies of scale, knowledge spillovers, and specialization), surrounding areas may lag behind in development due to resource outflow and industrial hollowing out [
6]. Meanwhile, the concept of borrowed size provides a new perspective for understanding the economic linkages between cities. Borrowed size describes the economic growth of smaller cities through proximity to larger cities, sometimes even surpassing the larger cities themselves [
7]. Research has shown that the impact of urban network linkages on economic growth varies with urban functional differences. The existence of network externalities (such as borrowed size and agglomeration shadow) breaks through the limitations of traditional agglomeration theories and offers a more comprehensive explanation of urban economic dynamics [
8]. Le Chen’s research constructs a theoretical framework that considers both intracity and intercity agglomeration, verifying the impact of borrowed size and agglomeration shadow on urban economic growth. The study found that the borrowed size effect is more pronounced in Chinese cities, with a positive impact on economic growth that outweighs the agglomeration shadow [
9].
The study of urban networks has become one of the focuses of space science in China in recent years [
10,
11,
12,
13]. Referring to the research methods of Western scholars, domestic scholars have carried out in-depth empirical studies on the linkages between enterprises, transportation infrastructure, social activities, innovative development, and other dimensions and made key progress in three aspects of network identification and spatiotemporal evolution, structural characteristics and influencing factors, external effects, and spatial differences [
14,
15,
16,
17]. These studies provide solid empirical support for urban network research and contribute perspective and empirical experience with Chinese characteristics to the construction of urban network theory. Because the imbalance of regional development is prominent in China, the role of urban network in regional economic growth has become the focus of domestic academic circles. Cao W and Han L [
18] conducted a multi-regional in-depth analysis of 285 cities and ten major urban agglomerations nationwide and found that the agglomeration shadow effect of network externalities was more significant nationwide, and network externalities had a significant positive impact on urban production efficiency in both urban agglomerations and non-urban agglomerations. Improving traffic conditions and enhancing the complementarity of urban functions can positively regulate the relationship between network externality and production efficiency. Liu and Zhao [
19] identified the cyberspace characteristics of the three major urban agglomerations along the Yangtze River Economic Belt and found that the level of networking was positively correlated with the spatial spillover effect and the level of coordinated development of urban agglomerations. Zhang and Xiang [
20] quantitatively measured the transport networks of the top ten urban agglomerations in China and proposed that the integration level of the transport networks of urban agglomerations can promote urban economic growth by promoting the integration of the commodity market and the labor market of urban agglomerations.
The development of urban networks marks a major shift in the regional development pattern [
21]. It breaks through the limitations of traditional geographical space, builds a new type of economic connection through efficient transportation facilities and factor flow, and forms a broader economic interaction and cooperation platform [
22]. The construction of an urban network quantifies the inter-city dependency and provides a perspective for evaluating the integration degree and connectivity of the urban system [
23]. “Network” refers to the connection between cities, and “network” refers to nodes where cities act as connection points. In modern society, urban networks are the basis for understanding urban economic efficiency and functional specialization [
24]. The driving influence of the evolution of urban network structure on the coordinated development of the regional economy cannot be separated from the core transmission links such as factors, industry, and innovation. The improvement of the quality of regional economic growth is usually closely related to the allocation of factor resources [
25], the development of innovative technologies, and the upgrading of industrial structure in the region [
26]. The existence of polycentric city network can improve the flow relationship of factors, optimize the industrial division of labor and cooperation, and enhance the ability of technological innovation. Therefore, the improvement of the centrality of the node city network is bound to have an important impact on economic growth [
27].
The development of multi-center systems and networks based on the interrelation and interaction between cities has become an important trend in the evolution of urban spatial structure at home and abroad, and the relevant research paradigm has also changed from the city level to city network [
28]. However, at present, the study of two key issues still need to be expanded upon and deepened. First, in theory, most of the relevant literature has focused on conceptual analysis and structural analysis, and it is urgent to analyze the driving mechanism and transmission mechanism of the multi-center city network’s impact on regional economic growth in depth. Second, the empirical tests for examining the urban network structure based on typical regions and fully considering the spatial effect are relatively insufficient, and further supplementation is needed.
Therefore, based on existing studies, this paper will explore the relationship between polycentric city network and regional economic growth from theoretical and empirical dimensions. By constructing the theoretical framework and econometric model, the paper aims to reveal the complex influence mechanism of the urban network on regional economic development. At the same time, this paper will also discuss how to optimize the urban network structure to promote the balanced and sustainable development of the regional economy and provide strategic suggestions for realizing the long-term stable growth of the regional economy.
4. Network Node Characteristics and Spatial Distribution Characteristics of Economic Growth
4.1. Urban Network Structure Characteristics
The degree centrality of each city in 2010, 2015, and 2021 is shown in
Figure 2. The results show that Shanghai, Nanjing metropolitan area, Hangzhou metropolitan area, Hefei metropolitan area, Suxi-Xi-Chang metropolitan area, and Ningbo metropolitan area have a higher degree of urban centrality, and the network pattern of “one core and five circles” is obvious in the Yangtze River Delta region. The degree centrality of cities in the Yangtze River Delta urban agglomerations varies greatly. Shanghai, has the highest degree of centrality, with a value of more than 12 times that of the city with the lowest degree of centrality. Among the cities, the degree centrality of Chizhou City, Huangshan City, Chizhou City, Lu’an City, and Lishui City are lower. The degree centrality of the western Anhui, western Zhejiang, and northern Jiangsu regions is relatively low, indicating that the polarization phenomenon in the Yangtze River Delta urban agglomeration is relatively serious, and the degree centrality of the central region is generally higher than that of the surrounding areas. The degree of centrality of different cities presents different rules. Overall, the degree centrality of cities in the upper and right half of the Yangtze River Delta urban agglomeration has a significant growth trend, while the degree centrality of individual cities in the southwest is not obvious, indicating that the network status of each city node in the Yangtze River Delta multi-center urban network is generally improved. The network status of regional multi-center nodes is constantly improving.
This paper uses the following five indicators to comprehensively measure the centrality of urban network degrees and to determine the centrality trend of urban networks in the Yangtze River Delta.
First, the primacy index, which originally refers to the proportion of the largest city’s population in the city’s total population, ranges from 0 to 1 and is used to describe the relative scale of the first city. In this paper, it is defined as the proportion of the degree centrality value of the largest city in the degree centrality of the entire urban network. The second is the 10 city index, which is used to describe the proportion of the sum of the maximum city degree value of the first 10 degrees to the sum of the degree center degree of the whole network. The third is the Geef index, whose formula is as follows: degi represents the degree centrality of city i, C represents the constant term, and ranki represents the ranking of degree centrality value of city i within the urban agglomeration. By regression of this formula, coefficient q, the single center index, can be obtained. When q > 1, it indicates that the central city in the urban agglomeration is dominant. The spatial structure of a single center is presented. When q < 1, the degree centrality distribution in an urban agglomeration is relatively dispersed, showing a typical polycentric spatial structure. Fourth, under the least square method, the Pareto index fits the city’s rank and size. The formula is size is the population size of a city, and rank is the city rank ranked by size. This index often appears in the literature, being used to test whether the population size distribution in the independent functional area aligns with Zipf’s rule. The fifth is the Herfindahl index, which is defined in this paper as the proportion of the degree centrality of Shanghai, Hefei, Nanjing, and Hangzhou in the total degree centrality of the urban agglomeration to measure the degree centrality concentration of the municipalities directly under the central government and the provincial capital cities.
The EF index of urban degree centrality in 2010 and 2021 is 0.76 and 0.71, both of which are less than 1, indicating that the degree centrality in the Yangtze River Delta urban agglomeration is relatively dispersed, and the urban network of the Yangtze River Delta presents a polycentric spatial structure. From 2010 to 2021, the five concentration indicators of urban network degree centrality decreased by 0.72%, 0.68%, 5.34%, 11.24%, and 5.80%, respectively. Urban network node cities’ status and regulatory functions are becoming more centralized, and cities with high network degree centrality are no longer limited to municipalities directly under the central government and provincial capitals but have gradually spread to other levels of the city.
4.2. Spatial Distribution Characteristics of Economic Growth
A standard deviation ellipse is an analytical tool used to reveal the characteristics of spatial distribution, which can quantify the central trend, direction, and morphological characteristics of night light distribution in the Yangtze River Delta region. In this analysis framework, the ellipse’s center point represents the data’s spatial center of gravity, the long axis indicates the main distribution direction of the data, and the short axis reflects the distribution width of the data. For the oblateness of the ellipse, the greater the difference between the long and short axes is, the more significant the spatial directivity of the data. By comparing the standard deviation ellipses of different years, we can track the time series change and development trend of night light distribution. In addition, the changes of the center coordinates and area of the ellipse provide an intuitive explanation for understanding the expansion direction and agglomeration degree of the city scale in geographical space.
In
Figure 3, through the analysis of the standard deviation ellipse of urban economic growth level in 2010, 2014, 2018, and 2021, it can be found that the standard deviation ellipse is distributed in the direction of northwest to southeast as a whole, indicating that the development direction of the urban agglomeration in the Yangtze River Delta region is stable. From 2010 to 2021, the spatial range of the standard deviation ellipse expanded, and the long and short axes appear increased. From 2010 to 2014, the center of gravity coordinates of the ellipse shifted from 119.72° E~31.52° N to 119.75° E~31.45° N in the southeast direction, and the Yangtze River Delta urban agglomeration developed toward the southeast cities. From 2014 to 2018, the center of gravity coordinates of the ellipse shifted from 119.75° E~31.45° N to 119.61° E~31.52° N in the northwest direction, with little change in the overall spatial range. From 2018 to 2021, the center of gravity coordinates of the ellipse shifted from 119.61° E~31.52° N to 119.58° E~31.48° N in the southwest direction, the space range of the standard deviation ellipse became significantly larger, and both the long and short axes increased, indicating that the Yangtze River Delta urban agglomeration developed to the southwest Anhui region during this period.
6. Research on the Transmission Path of Regional Economic Growth Driven by the Multi-Center City Network
This paper only applies the two steps of the causal step-to-step regression test method to put forward the intermediary variables at the theoretical level according to previous research on the transmission path of urban network and economic growth and then only looks at the impact of explanatory variables on the intermediary variables to avoid distinguishing whether there are unexplained direct effects [
61].
The functional mechanism is tested from three paths: regional factor flow, industrial division of labor and cooperation, and innovation ability improvement. The following models are used for mechanism verification:
Among them, M mainly introduces the urban flow intensity (m1) reflecting the flow of factors at the city level, the location quotient (m2) reflecting the industrial division of labor, and the amount of patent authorization (m3) reflecting the innovation ability. To avoid possible endogenous interference, a strictly exogenous second-order inverse distance spatial weight matrix is adopted to conduct spatial Durbin regression test. When β1 is significant, it indicates that the urban network impacts economic growth, and when β3 is significant, it indicates that the urban network will affect the intermediary variable.
The transmission path of regional factor flow focuses on identifying whether or to what extent the multi-center city network drives regional economic growth by accelerating regional factor flow [
62]. This paper constructs an urban flow model, takes labor flow as the key point, and quantitatively analyzes the urban functional efficiency, outward functional quantity, and inter-urban flow intensity of different cities from the two dimensions of city and industry. Relevant studies have usually adopted the perspective of location quotient to build the urban flow intensity model. The basic steps and formulas are as follows. First, the location quotient of each industry in city i is measured,
. G
ij is the number of employees in industry j of city i, G
i is the total number of employees in industry j of city i, G
j is the number of employees in industry J of the whole country, and G is the number of employees in the whole country. For various industries here, 18 industrial categories under the second and third industries are selected. That is, the urban flow intensity is calculated based on these 18 industrial categories. Second, external functional capacity Eij is calculated based on location quotient. When the location quotient is less than 1, the outward functional quantity of industry j in city i is
. Finally, the urban flow model is established, and its formula is
, where the functional efficiency of city i is
.
As shown in column (2) of
Table 11, when urban flow intensity m1 is taken as the explained variable, the effect of network node centrality is significantly positive, indicating that the improvement of urban network node centrality will help regional factors converge to local areas and generate positive spillover effects, making the flow of factors multi-directional and realizing the optimal allocation of resources. Compared with the traditional hierarchical urban system, the polycentric urban network in the Yangtze River Delta region effectively integrates vertical and horizontal cooperation and strengthens the connection and node function between cities. This allows small- and medium-sized cities to leverage their professional strengths or act as information hubs to integrate into wider regional networks [
63]. In this network effect, the importance of urban nodes no longer depends solely on size. The more frequent and efficient flow of resources, information, and technology in this multidimensional network facilitates knowledge accumulation and added value. Meanwhile, time, space, and network relations, as the core channels of knowledge transmission, not only have local characteristics but also are influenced by interregional trade and cooperation networks.
As shown in column (3) of
Table 11, when location quotient m2 is taken as the explained variable, the effect of network node centrality is significantly positive, indicating that the improvement of urban node centrality is conducive to promoting industrial division of labor and cooperation. Through industrial association and collaboration, cities are embedded into production networks and inter-regional division systems led by multiple central or sub-central cities, which contributes to the integration and improvement of regional functions beyond spatial proximity and across geographical boundaries [
64]. Metcalfe’s rule states that the value of nodes in a network increases with the number of nodes. With the expansion of the network, regional functions and collaborative relationships are integrated, and cities achieve economies of scale and synergies through cooperation, thus improving the efficiency of division of labor and production flexibility.
With the popularization of modern information technology, industrial competition has expanded from simple products and services to a wider range of fields. The external network economy emphasizes the role of network centers and nodes, promotes the flow of resources between regions according to market demand rather than administrative instructions, and enhances nodes’ market resource allocation ability. Cities can use their position in the network, synergies, and external connections to achieve flexible division of labor within industries, industrial chains, and products and establish new cooperation models such as remote networked manufacturing and services, network alliances, and platform economy. This is conducive to the orderly connection of the industrial chain in the region, promoting the upgrading of the value chain and the development of high-end industry. This process enables smaller, developing cities to shift from one-way dependence to equal cooperation by joining the multi-center regional network and to achieve a win-win situation and inclusive growth of large, medium, and small cities in the industrial division of labor.
As shown in column (4) of
Table 11, when m3 of patent grants is taken as the explained variable, the effect of centrality of network nodes is significantly positive, indicating that the improvement of centrality of nodes in urban networks can not only promote information exchange among innovation subjects but can also effectively reduce transaction costs and accelerate the flow and interaction of knowledge, thus injecting new impetus into regional economic growth. The existence of a network advantage has greatly promoted the spread of innovative thinking, advanced technology, and new knowledge. Through the establishment of R&D cooperation, R&D chain, and other forms of network relations, the rapid spatial diffusion of knowledge and technology can be realized, and the knowledge reserve in the region can be formed. This dynamic not only reduces the segregation of geographical space but also helps to remove hidden barriers and drive economic integration between different regions. The enhancement of centrality is particularly important in the urban network with complementary and synergistic functions . It not only enhances the connectivity between cities but also helps enhance innovative subjects’ learning ability and absorption capacity. Improving this capability enables cities to complete the informal transaction process of heterogeneous knowledge assets more effectively, which is of great significance for the optimal allocation of innovation resources and improvement of innovation efficiency. This synergistic effect of urban network can not only promote the development of local economy but also drive the economic growth of surrounding areas through the knowledge spillover effect and realize the overall improvement of regional economy.
In addition, improving the centrality of urban network nodes can also attract more investment and talents, forming a strong economic magnetic field. This not only brings more development opportunities for the city but also provides a broader market and more abundant resources for enterprises in the region. In such a dynamic economic environment, enterprises can more easily find partners and realize resource sharing and risk sharing, thus improving the overall competitiveness and innovation capacity.
7. Conclusions and Discussion
7.1. Conclusions
In this paper, the gravity model is used to construct the Yangtze River Delta urban network from the perspective of economic flow from 2010 to 2021, and the spatial Durbin model is established to conduct spatial econometric analysis and to explore the spillover effect of node cities in the polycentric urban network beyond geographical neighbors, especially the connecting hub role and the organizing and distributing function of node cities. The identification test of the conduction path was carried out through the two steps of the causal stepwise regression test method. The findings are as follows: (1) the metropolitan area network of “one core and five circles” has taken shape, and Shanghai, as the core node city, has driven Hangzhou, Nanjing, Hefei, and other cities to radiate around. (2) Under different spatial weight matrices, the Yangtze River Delta’s polycentric urban network can significantly impact urban economic growth. Specifically, under the perspective of spatial weight matrix based on geographical proximity, the enhancement of node centrality of the urban network can not only form a direct agglomeration growth effect but also improve the economic growth level of the city. Moreover, it can form a positive spatial spillover effect and promote the economic level of the surrounding cities. (3) The influence of polycentric city network on the economic growth level of geographically adjacent cities is more significant, and it will increase with the increase of the economic growth level of cities. The influence is not only related to the economic growth level of cities themselves but also to the economic level of their geographically adjacent cities. (4) With the support of the three transmission paths of accelerating regional factor flow, promoting regional industrial division of labor and cooperation, and improving regional innovation capability, the influence of polycentric city network on economic growth can play a greater role. Therefore, hypotheses 1, 2, 3, and 4 have all been validated.
7.2. Discussion
Based on the above suggestions, this paper draws the following recommendations.
The first is recommendation to build a multi-center city network of “one core, five circles and four belts” to strengthen regional integration. In accordance with the development plan for the Yangtze River Delta urban agglomeration, efforts will be made to foster the formation of multi-level and multi-type development axes. A network spatial pattern of “one core, five circles, and four belts” will be constructed. The plan also aims to coordinate and build an efficient multi-center urban network system in the Yangtze River Delta. This will involve strengthening cooperation and linkages among cities within the region. Additionally, the plan seeks to smooth the market network of the Yangtze River Delta. By facing the world and the future, the plan aims to enhance the urban level and core competitiveness of Shanghai. Leveraging the comparative strengths of Jiangsu, Zhejiang, and Anhui should be continued to prevent urban contraction and avoid a “downward spiral”. In line with the development trend of the Yangtze River Delta Economic Zone in Shanghai, Jiangsu, Zhejiang, and Anhui in depth, the layout principle of “north to south, west to east, expansion” should be adhered to, the regional spatial layout optimized, and a fan spatial structure built with Shanghai as the center.
The second recommendation is to give full play to core cities’ leading role, strengthen node city networks’ embeddedness, and promote balanced regional economic growth. The impact of the polycentric city network on urban economic growth has an obvious spatial spillover effect. When formulating local policies, local governments should comprehensively evaluate the degree of their embeddedness in the regional city network and, on this basis, actively strengthen economic interaction and cooperation with neighboring cities. This will strengthen its connections with core cities such as Shanghai, Hangzhou, Nanjing, Hefei, Wuxi, and Suzhou and improve the degree of embeddedness in the multi-center city network. Core cities need to further play their leading role in driving the economic development of surrounding cities through industrial transfer, technology diffusion, and talent flow. In policy-making, we should consider city differences and adopt targeted development strategies to achieve balanced regional growth.
The third recommendation is to accelerate the construction of the G60 Science and Innovation Corridor and the construction of innovation enclaves and related parks and develop new quality productivity. We will expedite the development of the G60 Science and Innovation Corridor and through policy support and capital investment, we will encourage enterprises to ramp up their R&D efforts and gain mastery over key core technologies in critical fields. Furthermore, it is necessary to concentrate on the introduction and training of high-level talents, through establishing academician (expert) workstations, cooperating with universities and research institutions, attracting and training innovative talents, and providing intellectual support for scientific and technological innovation. Strengthening the infrastructure construction within the region, improving logistics efficiency, reducing transaction costs, and promoting economic interaction and cooperation within the region are also critical. We also need to fully implement the national strategy for the integrated development of the Yangtze River Delta, promote coordinated development and close cooperation among the innovation enclaves of the Yangtze River Delta and their related parks, and strive to reach the highest global standards by leveraging the organizational strengths of the Yangtze River Delta Development Zone Collaborative Development Alliance. It is also important to take the lead in formulating standards for constructing a business environment; building a comprehensive, coordinated, and sustainable industrial innovation and spatial governance system; and promoting the coordinated development of innovation enclaves in the Yangtze River Delta.
The findings presented in this paper are based on data from the Yangtze River Delta urban agglomeration over the period of 2010 to 2021. While this study offers valuable insights into the relationship between urban networks and economic growth within this specific context, several avenues for future research emerge when considering broader temporal and spatial scopes. Firstly, extending the time frame and expanding the spatial coverage beyond the Yangtze River Delta could reveal more complex dynamics. For instance, a larger dataset might uncover non-linear or threshold effects of multi-centered urban networks on city economic growth. Such effects may not be fully captured within the limited scope of this study. Secondly, as analyzed in this paper, when the “agglomeration shadow” effect outweighs the “borrowing of scale” effect, the externalities of urban networks can have a significant negative correlation with production efficiency. Future research could explore the conditions under which this balance shifts, potentially identifying tipping points or critical thresholds that determine whether urban networks enhance or hinder economic growth. Thirdly, future studies could investigate the role of policy interventions in mitigating the negative externalities of urban networks. For example, regional development policies aimed at promoting balanced growth or improving infrastructure connectivity might alter the dynamics between agglomeration shadows and borrowing of scale. Lastly, incorporating additional dimensions such as technological innovation, environmental sustainability, and social equity into the analysis could provide a more comprehensive understanding of the multifaceted impacts of urban networks on regional development.
In summary, while this study offers a solid foundation, future research should consider broader datasets, explore non-linear dynamics, and examine the role of policy and additional factors to further elucidate the complex relationship between urban networks and economic growth.