Examining the impact of green technological specialization and the integration of AI technologies on green innovation performance: evidence from China

Sirinant Khunakornbodintr
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Abstract

China's commitment to achieving carbon neutrality by 2060 has sparked scholars' interest in examining the environmental ramifications of green technologies in the digital era. While plenty of them provide eco-efficiency policy such as increasing R&D investment or stimulating green exports, little attention has been paid to the firm-level technological management and recombination strategies such as differentiation/specialization of green portfolios along with AI integration, which can significantly impact the pace of net-zero transitions. To address these gaps, this study investigates the moderating effect of technological specialization on levels of AI integration into green technologies estimated by green-AI technological distance and enterprises' innovation performance in Chinese contemporary contexts. Regression results of fixed-effect model in Chinese patent data (2011–2020) indicate that enterprises' green innovation performance is significantly improved as AI integrates more into the green technologies due to the legitimacy and the inability to appropriate more green values. Interestingly, specialized green-technological enterprises demonstrate superior performance in integrating distant AI technologies. This occurrence could potentially be driven by the governments' incentives and the organization's risk attitudes, shaping green innovation outcomes. Hence, the study underscores the importance of considering both the AI integration and green specialization in shaping innovation outcomes amidst green transitions.
考察绿色技术专业化和人工智能技术整合对绿色创新绩效的影响:来自中国的证据
中国承诺到 2060 年实现碳中和,这激发了学者们研究数字时代绿色技术对环境影响的兴趣。尽管许多研究提供了生态效率政策,如增加研发投资或刺激绿色出口,但很少有人关注企业层面的技术管理和重组策略,如绿色产品组合的差异化/专业化以及人工智能整合,这些都会对净零转型的步伐产生重大影响。为了弥补这些不足,本研究探讨了在中国当代背景下,技术专业化对以绿色-人工智能技术距离和企业创新绩效估算的人工智能融入绿色技术水平的调节作用。利用中国专利数据(2011-2020 年)建立的固定效应模型的回归结果表明,随着人工智能更多地融入绿色技术,企业的绿色创新绩效会显著提高,原因在于人工智能的合法性以及无法占有更多的绿色价值。有趣的是,专业化的绿色技术企业在整合遥远的人工智能技术方面表现优异。政府的激励措施和企业的风险态度可能会影响绿色创新的结果。因此,本研究强调,在绿色转型过程中,必须同时考虑人工智能集成和绿色专业化对创新成果的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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