8.1. Conclusion
Nowadays, collaboration and teamwork are crucial for national innovation systems, with growing research focusing on collaborative innovation networks. However, little effort has been made to study higher-order interaction collaboration networks. This study aims to fill the gap that many-body interactions of a complex system can be captured by simplicial complexes, expanding the limitations of SNA methods. Based on patent collaboration data on SIPO patents granted from 2008 to 2021 in China’s NEV industry, the 1-dimensional simplex network and 2-dimensional simplex network are constructed in different periods. Then, this paper identifies the key innovation organizations and key cooperative relationships on the patent collaboration network by introducing the generalized degree index of nodes and edges in a high-order network. Furthermore, the "cooperation breadth - cooperation depth" framework is used to analyze the impact of the organizations and partners on the collaboration network and the evolution characteristics of the cross-regional patent collaboration network. The following research conclusions are obtained.
(1) From 2008 to 2021, the number of patent collaborative organizations in China's NEV industry increased rapidly, and patent collaboration networks are becoming increasingly dense. The one-dimensional simplex network and two-dimensional simplex network showed significant differences in different stages. Some innovative organizations on the one-dimensional simplex network have established a stable cooperative relationship, and the patent cooperation network has developed towards complexity and diversification. The two-dimensional simplex network gradually forms a triangle group with the core node as the center, and the position of the key links begins to highlight in the network.
(2) A few core nodes and key partnerships play an important role in different stages of the patent cooperation network in the NEV industry. The nodes and edges of the higher-order interaction patent cooperation network of China's NEV industry conform to the power-law distribution, indicating a large number of links and triangles are formed by a few nodes and links. The study identifies State Grid Corporation, Tsinghua University, South China University of Technology, Beijing University of Technology, China Electric Power Research Institute, Hong Fujin Precision Industry (Shenzhen) Co., Ltd, Chongqing Chang'an Automobile Co., Ltd, Chongqing Chang'an New Energy Automobile Co., Ltd, Zhejiang Geely Holding Group Co., and other patent applicants as key innovation organizations that have formed stable cooperative relationships. These organizations and their key relationships act as bridges for cooperation with other organizations and significantly impact the cooperative innovation behavior of the entire network.
(3) Intra-regional and cross-regional patent cooperation shows different spatial evolution patterns. The number of provinces involved in patent cooperation in China's new energy vehicle industry is increasing, and patent cooperation is spreading from local regions all over the country. However, the cooperation intensity of different provinces varies greatly, indicating that some regions have more active and intense cooperation compared to others. Anhui, Shanghai, and Chongqing rely more on intra-regional knowledge exchange. They are willing to choose partners in the same region. The proportion of internal cooperation in Guangdong, Zhejiang, and Shandong decreased significantly. The impact of regional boundaries on patent cooperation in these regions decreased. In the cross-regional patent cooperation network, Beijing has always been at the core of the patent cooperation network. Jiangsu, Zhejiang, Guangzhou, and Shanghai are at the sub-center of the cooperative innovation network. The core status of Shandong, Hunan, Sichuan, Anhui, Henan, Hubei, and other regions has risen significantly. The core regions drive other regional innovation organizations to increase their participation. Beijing is at the core of the two-dimensional simplex patent cooperation network. Beijing-Anhui, Beijing-Hebei, Beijing-Shanghai, Beijing-Zhejiang, Beijing-Henan, and Zhejiang-Jiangsu play an intermediary role in multi-entity and cross-regional collaboration innovation activities. The ability to acquire knowledge in Inner Mongolia, Jilin, Shaanxi, Ningxia, Hunan, Qinghai, Anhui, Guizhou, and Guangxi still needs to be strengthened.
8.2. Future work
The following future research directions are identified in this paper.
(1) This article does not provide a detailed analysis of the characteristics of patent applicants. In the future, more detailed research can focus on the nature and innovation assets of innovation organizations and investigate how these characteristics influence innovation cooperation behavior. Identifying the characteristics that have a significant impact on the network can provide valuable insights for policymakers and practitioners to facilitate and promote innovation collaboration more effectively.
(2) A higher-order network model can capture the multi-entity interaction behaviors that exist in the real world. Further research can use topological clustering of higher-order networks to explore communication and cooperation characteristics of different communities, promoting overall connectivity and openness of the cooperation network.
(3) This paper uses cooperative patent application data to construct a cooperative innovation network, which focuses on formal innovation. However, there may be other forms of informal innovation that are not considered in this study. It would be interesting to investigate the impact of informal innovation information on the collaborative innovation network of the NEV industry.