1. Introduction
High-quality development strikes a balance between the quality and quantity of economic development, enabling low-carbon, sustainable economic development [
1]. From a theoretical perspective, technological progress is the core of economic growth [
2]. From a realistic perspective, innovation is the core driving force for a country’s high-quality development [
3]. In an open innovation environment, innovation is not a closed and isolated system. Innovative subjects establish cooperative innovation networks through cooperative activities [
4]. Such networks do not turn cities into “islands”. Cities share risks and accelerate the emergence of innovations through knowledge spillover, technology transfer, and industry–university–research cooperation [
5,
6]. Various countries have proposed several policies to support collaborative innovation. For example, the US government has advocated for the establishment of collaborative networks among enterprises [
7]. European countries have proposed strengthening multilateral collaborative innovation in the EU Framework Program; China has proposed the regional synergy of scientific and technological innovation and industrial innovation across city clusters. Collaborative innovation emphasizes deep collaboration and resource integration between different innovation subjects, breaking the limitations of the traditional innovation model and creating more efficient open innovation. Moreover, collaborative innovation networks serve as broad platforms for fostering innovation collaboration. Through various exchanges and cooperation, they facilitate the flow of innovation resources and allocation across a wider scope, thereby promoting innovation upgrading and economic development throughout the region [
8,
9]. However, existing research has not sufficiently examined the impact of collaborative innovation or its networks on high-quality development.
Policymakers and researchers have been interested in collaborative innovation [
7,
10], but research on collaborative innovation is still lacking compared to its rapid development at the reality level and the vast attention it receives at the policy level. Most studies on collaborative innovation have focused on industry, academia, and research, i.e., limiting the main body of innovation to include only enterprises, universities, and research institutions [
11], and some to individual industries, such as the nanoenergy and nanowire industries [
12,
13]. Collaborative innovation and development among cities should be a key focus in regional or urban economics because of their focus on cities, but few have focused on city clusters. The limited studies have only sampled one city cluster [
14] and did not analyze each city cluster at the national level.
Research has confirmed that innovation can improve the efficiency of green development [
15] and promote economic [
9] and high-quality development [
16]. However, this aspect has been understudied, while most studies on collaborative patenting have focused on its influencing factors [
14,
16], spatio-temporal evolution patterns [
17,
18], and its impact on innovation performance [
4,
19]. Few studies place collaborative innovation and economic growth or high-quality development in the same analytical framework. In their study on the Beijing–Tianjin–Hebei city cluster, Deng et al. [
20] used the spatial Durbin model to show that collaborative innovation can promote high-quality development. Crawler methods and social network analysis should be used while exploring national collaborative innovation and networks to analyze a large amount of patent data, whereas econometric methods are used for studying the relationship between collaborative innovation and high-quality development. As such studies involve the use of multidisciplinary knowledge, there is a lack of clarity regarding the impact of collaborative innovation on large-scale high-quality development, the relationship between collaborative innovation networks and high-quality development, and collaborative innovation’s contribution to the high-quality development of the economy. In the context of globalization, countries and city clusters are trying to drive economic development through innovation. Studying the relationship between collaborative innovation and the high-quality development of cities within Chinese city clusters helps in constructing and sustaining collaborative innovation networks across various countries and city clusters.
In summary, what is the characteristic spatio-temporal distribution of collaborative innovation in China? Does collaborative innovation promote high-quality economic development? If so, how does it promote such development, and what is its underlying mechanism? These questions are crucial for understanding the context of innovation-driven development. These questions can identify China’s collaborative innovation network and evaluate the degree of the prefecture-level high-quality development of cities, which can provide insights for formulating and implementing strategies and theoretical and empirical references for further promoting high-quality development. Therefore, this study focuses on urban cooperative innovation networks, which refer to networks with cities as nodes and cross-city invention patent cooperation as connecting edges. Accordingly, as shown in
Figure 1, this study uses crawler technology to identify collaborative innovations and their networks generated from more than 300,000 collaborative patent data from 2012 to 2020. The use of the social network analysis method also allows for analyzing the characteristics of a collaboration network and incorporating them into the econometric model. Moreover, a multi-indicator system was constructed to measure the degree of high-quality development of prefecture-level cities. This study found significant improvement in China’s level of collaborative innovation and stability among the core cities of collaborative innovation. City collaborative innovation helps promote high-quality economic development and is heterogeneous in many aspects. Collaborative innovation can reduce the degree of human resource mismatch, increase the intensive and expansive margins of innovation [
21,
22], and thus contribute to high-quality development. Collaboration at the national level can promote high-quality development, but the width and depth of such collaboration have not yet formed a complementary situation. This study further analyzes the collaborative innovation network of city clusters.
There are few studies in the existing literature on collaborative innovation and high-quality development, and even fewer studies that involve the integration of network characteristics into empirical analyses. Based on the existing literature, the contributions of this study are as follows. First, most existing studies have considered each city as a separate “black box” [
19], ignoring the interactions between cities, and the few studies that consider the spatial impacts are based on the strong assumption that their impacts are only related to geographic or economic distance. Therefore, drawing from these studies, this study analyzes the relationships between cities through city collaborative networks and between collaborative innovation and high-quality development. Second, this study uses the crawler method and social network analysis to identify all effective collaborative invention patents in China. This is a more accurate measure of the current status of collaborative innovation than, for example, questionnaire data in related studies. Third, high-quality development is characterized by its multidimensionality and obvious epochal characteristics [
23]. Some studies use total factor productivity [
24,
25] or GDP per capita [
26,
27] as indicators, although these are not fully consistent with the multidimensional character of high-quality development [
23]. Therefore, this study measures the degree of high-quality development of Chinese prefecture-level cities across six dimensions. This measurement is an attempt to integrate information about the latest policies of prefecture-level cities. Fourth, resolving these issues will help developed countries and mature city clusters to leverage collaborative innovation to achieve synergistic development. It will also help late-developing countries and emerging city clusters to form effective collaborative networks, optimize innovation resource allocation and efficient usage, and achieve high-quality economic development.
The rest of the study is presented as follows.
Section 2 provides a literature review.
Section 3 outlines the theoretical framework and develops the research hypotheses.
Section 4 constructs the quantitative economic model, elucidates the calculation methods of each index, and examines the present state of collaborative innovation in China.
Section 5 conducts tests, analyses, and discussions on the hypotheses.
Section 6 develops the heterogeneity analysis, and
Section 7 further analyzes the city cluster network.
Section 8 draws conclusions and indicates directions for future research.
2. Literature Review
In an open innovation environment, cities form a cooperative innovation network and depend on and influence each other through cooperative innovation [
8]. Scholars have carried out a lot of research on collaborative innovation. A part of this study explores the current status of collaborative innovation in a particular industry and the factors influencing it. Lee et al. investigated the patent network characterization of information and communication technologies, by using data from the United States Patent and Trademark Office (USPTO) and the Lotka–Volterra equation method [
6]. Liu et al. analyzed the collaborative innovation evolution network of Chinese wind energy by using complex network theory and social network analysis methods [
17]. Using data from the Derwent Innovation Index, Guan et al. investigated the structural characteristics of collaborative networks in the field of nanoenergy. They also explored the impact of networks on innovation in terms of development and exploration [
11]. Ozcan et al. use data on global collaboration in the nano industry to explore how patent collaboration occurs and how key players interact to support the process [
14]. Yang et al. confirmed that the opening of high-speed rail would promote cross-regional collaborative innovation [
16]. Another part of the research focuses on the relationship between collaborative innovation and innovation performance. Fan et al. used the spatial Durbin model to confirm that collaborative innovation can promote the improvement of innovation efficiency in local and other regions, but found that this effect has a lagging effect [
4]. Gao et al. constructed a collaborative innovation index to measure the degree of collaborative innovation using Chinese provinces as their research object. They found that collaborative innovation can improve innovation performance through spatial econometric modeling [
18]. In summary, the role of innovation in promoting economic development has been proven, and innovation can further promote high-quality development.
High-quality development is a development approach that balances the quality and quantity of economic development. Green development and sustainable development are important elements of high-quality development. Many studies have been conducted to measure the degree of high-quality development in different dimensions using different data and methods. Yang et al. measured the degree of high-quality development at the level of prefecture-level cities from six aspects and analyzed the temporal and spatial evolution patterns [
16]. Mlachila et al. selected six indicators from growth fundamentals and social outcomes. They calculated the quality of development in more than 90 countries during the period 1990–2011 [
24]. Jahanger directly measured high-quality development by TFP and found that foreign investment has no significant effect on China’s economic development, but can promote high-quality development in the eastern and central regions [
25]. Chen et al. measured high-quality development by GDP per capita and verified that air pollution will inhibit high-quality development [
26]. Deng et al. established a high-quality development evaluation system from five aspects and explored the relationship between collaborative innovation and high-quality development using the spatial Dubin model [
20]. In general, in terms of measuring the degree of high-quality development, a single indicator was dominant in the early days, i.e., total factor productivity and GDP per capita as indicators. As the multidimensional character of high-quality development was recognized [
23], it gradually developed into a composite indicator system.
Among the studies on collaborative innovation and high-quality development, only Deng et al. conducted a study with a sample of one city cluster [
24]. Through spatial Durbin modeling, they confirmed that cooperative innovation can promote high-quality development. This leaves room for our research. Firstly, the results of the spatial Durbin model depend on the spatial weight matrix and cannot solve the endogeneity problem. For example, the use of a distance weight matrix assumes that the impact between two cities is inversely proportional to the distance between them. This strong assumption obviously ignores many influences. In addition, the spatial Durbin model cannot solve the endogeneity problem through the instrumental variables approach. Therefore, the spatial Durbin model is no longer used in this paper. Secondly, it is difficult to reveal universal phenomena by using only one city cluster as a sample. Therefore, this paper uses all city clusters in China. In general, the existing literature rarely puts collaborative innovation and high-quality development under the same research framework. Even fewer studies incorporate co-innovation network characteristics into econometric models. On the one hand, this study uses the crawler method to obtain cooperative innovation data and analyzes the current situation of cooperative innovation using social network analysis. On the other hand, this study assesses the degree of the high-quality development of prefecture-level cities using a multi-indicator evaluation system with 26 indicators selected from six aspects. Based on these, this study uses econometric models to explore the relationship between collaborative innovation and high-quality development. This study innovatively conducts interdisciplinary analysis, and the findings provide useful references for innovation development and high-quality development in countries around the world.
3. Theoretical Hypothesis
As shown in
Figure 2, this study verifies the role of collaborative innovation in promoting high-quality development and its mechanism from two dimensions: the city itself and the national collaborative innovation network.
First, city-level competition can stimulate a city’s potential. However, it often worsens the divergence between stronger and weaker cities, thereby widening the regional development gap [
28]. Conversely, collaborative innovation among cities can generate a synergistic effect of 1 + 1 > 2, which enhances the efficiency and overall competitiveness of regional innovation [
4]. Therefore, Friedman opposes competition between cities [
29] as it does not foster a win–win development model [
28]. As innovation is increasingly characterized by nonlinearity and networking, the traditional model of independent, linear innovation is gradually being replaced by collaborative innovation approaches [
2]. Collaborative innovation is based on close cooperation among various innovators to promote knowledge sharing and transfer [
30]. This not only accelerates the horizontal diffusion of information, knowledge, and technology among industries and regions [
31,
32] but also enables regional talents to directly enhance the level of innovation and economic development through learning and applying new knowledge [
33]. Accordingly, this study proposes Hypothesis 1 as follows:
H1. Urban collaborative innovation contributes to high-quality development.
Second, collaborative innovation helps reduce the barrier of poor information availability and promotes talent mobility [
34] across different cities, fields, and sectors. During collaborative innovation, knowledge about experience, benefits, salaries, and so on is shared among different innovation subjects. This enables talents to find better positions and development opportunities [
35] and reduces human resource mismatch arising from talent solidification or poor mobility. Human capital is a key player in innovation activities and economic development [
36], and reductions in human capital mismatch boost productivity and promote high-quality development.
Collaborative innovation helps save on innovation costs by preventing innovation duplication, which often arises from information asymmetry [
34]. Cities can build on existing foundations to innovate further and generate scale effects. By integrating different “knowledge pools” [
8], collaborative innovation also facilitates knowledge collisions and industry exchanges between cities, thereby increasing the likelihood of cities entering new industries and technology fields [
22]. Therefore, from the binary margin perspective, in technology fields, collaborative innovation not only enhances cities’ scale effects in existing technology fields (i.e., innovation-intensive margin), but it also opens up new growth avenues (i.e., innovation-expansive margin) by increasing the categories of innovations, thereby comprehensively promoting high-quality development. Hence, this study proposes Hypothesis 2:
H2. City collaborative innovation promotes high-quality development by reducing human resource mismatch and increasing the innovation-intensive and innovation-expansive margins.
Third, the theory of social network analysis posits that innovators, such as enterprises and individuals, do not exist in isolation but form networks through various relationships. Among them, collaborative innovation plays a key role in establishing connections in innovation networks. When two or more patent holders jointly research and develop the same patent, they form a collaborative relationship, forming a collaborative innovation network [
17]. Asheim [
37] found that collaborative innovation networks not only provide innovators with quick access to specific knowledge but also facilitate communication and interaction among various participants, thereby increasing the chances of knowledge spillovers. This network structure has a profound impact on improving the innovation capacity and economic development of the entire region. In the context of open innovation, building an efficient and collaborative regional innovation network has become essential for promoting high-quality economic development [
38,
39].
As key nodes in the national innovation network, the effective performance of cities in collaborative innovation is crucial, and it can be measured based on the width and depth of collaboration. Width refers to the number of different innovation participants with whom the city has established collaborative relationships, whereas depth reflects the closeness of these collaborative relationships. Specifically, collaborative width reflects the breadth and diversity of the city’s collaborative innovation with other cities across the country [
40]. From the resource allocation perspective, if a city establishes collaborative relationships with several cities, it can integrate richer resources [
41]. Optimal resource allocation further improves the level of innovation and development of the city. Enhanced depth of collaboration implies that cities have formed closer and more stable relationships in innovation collaboration. Cities occupying the core positions of the innovation network often have more voice and collaboration opportunities [
42] and are more likely to benefit from collaborative innovation. Hence, this study proposes Hypothesis 3:
H3. Both the width and depth of collaborative innovation in cities can contribute to the degree of high-quality development.
Finally, according to the rules of urban development and the Matthew effect, resources, including talents, capital, and technology, are typically concentrated in large cities, leading to the development of core cities [
43]. Through abundant resources, large market sizes, diverse suppliers, and a highly concentrated labor force, large cities provide favorable conditions for an accurate matching of technology and other aspects between partners, which effectively boosts efficient collaborative relationships [
44]. Moreover, existing studies confirm that collaborations established in large cities lead to higher productivity [
45,
46]. Therefore, the more central a city’s position is in a national collaborative innovation network, the more likely it is to attract and have more partners [
47]. This position not only brings the city more development opportunities but also strengthens its innovation competitiveness. Through risk sharing and resource integration in collaborative innovation [
4], core cities achieve higher innovation efficiency and further economic development. Hence, this study proposes Hypothesis 4:
H4. The depth and width of collaboration are complementary, and both can jointly promote high-quality development.
7. Further Analysis
Co-innovation networks of city clusters are an important part of national co-innovation networks, and they have a greater network density than national networks. To test H3, which states that both the width and depth of collaborative innovation in cities can contribute to the degree of high-quality development, this study focuses on the city cluster level and constructs the following regression model:
where
denotes the collaborative width of city i in the city cluster in year t, expressed by the average amount of cooperation between city i and each city in the city cluster.
denotes the depth of collaborative innovation of city i in city cluster in year t, expressed by the betweenness centrality of city i in the collaborative innovation network of this city cluster.
Meanwhile, earlier studies have also proposed H4, that is, there is complementarity in the collaboration depth and width, and both can jointly promote high-quality development. To test the validity of H4 at the city cluster level, this study includes the cross-multiplication term
in model (9) and builds model (10):
Column 1 of
Table 13 shows that an increase in the width and depth of collaboration boosts high-quality development. The coefficient of
is significant at 1.09 at a 99% confidence level, indicating that for every 1000 increase in the width of collaboration within the urban agglomeration, the degree of a city’s high-quality development increases by 2 standard deviations (1.09/0.5454 ≈ 2). The coefficient of
is significant at the 95% confidence level at 0.09, indicating that for every unit increase in the depth of collaboration within a city cluster, the degree of high-quality development of the city increases by 0.26 standard deviations (0.09/0.3462 ≈ 0.26). This shows that in the city cluster collaborative innovation network, the width of collaboration promotes high-quality development more than the depth of collaboration. This finding contradicts the finding at the national level. This shows that the driving role of node collaboration depth is more important in collaborative networks with fewer nodes and higher network density. Column 2 of
Table 13 shows that the coefficient of the cross-multiplier term is significantly positive, implying that the depth and width of collaboration within city clusters are complementary and can synergize to promote high-quality development. This shows that low network density and poor node connectivity make it difficult for collaboration to play a complementary role in depth and width.
8. Conclusions and Limitations
From the theoretical perspective, the endogenous growth model confirms that technological improvement promotes economic development. From the perspective of cooperation and competition, cooperation promotes common development better than competition [
4,
28,
29]. In the open innovation generation, the traditional model of independent, linear innovation is gradually being replaced by collaborative innovation approaches [
2]. With all countries seeking sustainable development, it is of practical significance to explore the relationship between collaborative innovation and high-quality development. Based on the data of prefecture-level cities within 182 city clusters in China from 2012 to 2020, this study finds the following results.
First, collaborative innovation in China is characterized by growth, network, and structural stability. Specifically, collaborative innovation among Chinese cities is characterized by growth in terms of increasing numbers, an increase in the density of collaborative innovation networks, and the establishment of closer collaborative relationships among cities. Collaborative networks have the structural characteristic of having a relatively fixed core city.
Second, collaborative innovation among cities promotes high-quality development. An increase in the number of participants in collaborative innovation or collaborative cities positively contributes to high-quality development. This study also shows the robustness of the findings, including through shift-share instrumental variables. This result is also based on human capital allocation. The results of the mechanism test indicate that collaborative innovation drives high-quality development by reducing the degree of human resource mismatch and increasing the intensive and expansive margins of innovation.
Third, based on the binary margin theory of technology, this study proposes two mechanism variables, “intensive margin” and “expansion margin”. The “intensive margin” refers to strengthening the scale effect of existing technologies, while the “expansive margin” refers to opening up innovation avenues in new fields. The mechanism test proves that collaborative innovation plays a leading role in high-quality development by reducing the degree of human resource mismatch and increasing the “intensive margin” and the “expansive margin” of innovation.
Fourth, national-level and city cluster collaborative innovation networks differ in terms of the width and depth of collaboration driving high-quality development. In the national collaborative innovation network, an increase in the width and depth of city synergy contributes to the economy’s high-quality development. However, there is no obvious complementary effect from the depth and width of collaboration. Further analysis found that improving the width and depth of collaboration within city clusters promotes high-quality development, and the two are complementary. Collaboration width is more significant at the national level, while collaboration depth is more significant at the city cluster level.
Fifth, there is multifaceted heterogeneity in the impact of collaborative innovation on high-quality development. Cooperation with cities outside city clusters tends to contribute more significantly to local high-quality development than cooperation within city clusters. This is because city clusters have serious internal differentiation and cannot realize the “powerful combination”. For mature city clusters and cities with strong innovation capacity, collaborative innovation can better promote their high-quality development. The regional heterogeneity analysis shows that the driving effect of collaborative innovation is stronger in southern than in northern cities. At the level of the three regions, collaborative innovation has the greatest driving effect on high-quality development in the middle region.
The findings provide policy recommendations for the development of city clusters and latecomer cities. Emerging countries and city clusters can further optimize the structure of collaborative innovation networks, drive collaborative innovation, and promote high-quality development. Meanwhile, policymakers should create differentiated collaborative innovation strategies for various regions and networks.
First, in regions with low network density, the focus should be on improving the collaboration width and promoting the sharing and flow of innovation resources by expanding the scope of cooperation and increasing the number of partners to promote high-quality development. In regions with high network density, emphasis should be placed on deepening collaboration by enhancing the centrality of cities in the network and facilitating the efficient flow and sharing of innovative resources, such as information, technology, and talent, to promote the high-quality development of the entire region.
Second, the government should promote collaborative innovation between cities to optimize human resource allocation, strengthen the scale effect of technology, and develop innovation paths in new areas. This will promote high-quality development by reducing human capital mismatches and balancing the binary margins of technology.
Third, city clusters with mature development and cities with a strong innovation capacity should leverage their advantageous position to strengthen cooperation with other regions. By building collaborative platforms, promoting industrial docking, and sharing innovation resources and technologies, they can expand their market influence, increase their level of innovation, and realize mutual benefits and win–win situations.
Fourth, to address the problem of serious divisions within city clusters, which affect the role of collaborative innovation, policies should focus on promoting balanced development within city clusters. On the one hand, less developed regions must receive greater support to improve their innovation capacity and industrial level through fiscal, tax, financial, and other policy tools to narrow the gap with developed regions. On the other hand, policymakers should maintain an open and collaborative attitude, broaden cooperation channels, and establish collaborative innovation mechanisms with cities outside the city cluster and even with foreign cities. Overall, the role of collaborative innovation should be used as a driver of high-quality development.
A great deal of work has been done in this study, but there are some limitations. First, this study has not yet been analyzed at the firm level, which could be further analyzed in the future. Second, this study has not yet fully explored the synergistic relationship between the width and depth of cooperation at the city cluster and national level, as well as possible policy implications. In the future, policy implementation effects can be further explored.