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人工智能技术采纳、知识共享与制造企业创新绩效:吸收能力的调节效应

AI Technology Adoption, Knowledge Sharing, and Manufacturing Firms’ Innovation Performance: The Moderating Effect of Absorptive Capacity

IEEE Transactions on Engineering Management · 2025
被引 17 · 同刊同年前 3%
ABS 3

中文导读

基于290家中国制造企业调查数据,研究发现人工智能通过显性和隐性知识共享两条路径影响创新绩效,且吸收能力仅显著增强隐性知识共享与创新之间的正向关系。

Abstract

As artificial intelligence (AI) technologies reshape manufacturing processes, their impact on innovation through knowledge sharing remains understudied and contested. This study investigates how AI adoption influences innovation performance via two distinct pathways: explicit and tacit knowledge sharing. Drawing on the absorptive capacity theory, the study further examines how a firm's ability to assimilate and apply knowledge moderates these relationships. Based on survey data from 290 Chinese manufacturing firms and analyzed using structural equation modeling, the findings reveal that AI facilitates both types of knowledge sharing, yet only the link between tacit knowledge sharing and innovation is significantly strengthened by higher absorptive capacity. The study contributes to engineering management literature by unpacking the dual-role mechanism of AI in knowledge-driven innovation and highlighting the critical boundary condition of absorptive capacity. For practitioners, it offers strategic insights into how AI tools and absorptive capacity can be co-developed to unlock innovation potential. These findings highlight the need for tailored AI adoption and robust knowledge-sharing mechanisms, supported by absorptive capacity, to drive sustained innovation outcomes.

人工智能知识管理制造企业创新吸收能力知识共享