Abstract:Technology convergence can significantly improve the innovation ability of enterprises. In-depth exploration of technology convergence mechanism is helpful to select suitable innovation partners and integrated technologies. This paper constructs a dependent network analysis model, explores the relationship between technical characteristics and organizational characteristics of technical attachment and technical convergence, and makes an empirical study on artificial intelligence industry. The research shows that, the technology with strong absorption or diffusion ability is easy to absorb or flow to other technologies; Two technologies with high technology maturity and strong technology proximity are prone to two-way flow. Common technologies owned by multiple organizations are not easy to absorb other technologies, but easy to flow to other technologies; The technology owned by a single organization is prone to two-way flow.
刘晓燕, 庞雅如, 谢桂生. 基于组织-技术依存网络的技术融合机理[J]. 复杂系统与复杂性科学, 2024, 21(1): 58-65.
LIU Xiaoyan, PANG Yaru, XIE Guisheng. Technology Convergence Mechanism Based on Organization-Tech Dependency Network[J]. Complex Systems and Complexity Science, 2024, 21(1): 58-65.
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