Dual effects of automation on economy and environment: Evidence from A-share listed enterprises in China

IF 5.2 1区 经济学 Q1 ECONOMICS 中国经济评论 Pub Date : 2024-11-15 DOI:10.1016/j.chieco.2024.102308
Zhenhua Zhang , Yunpeng Zhang , Huangbin Wu , Shunfeng Song , Yuxi Pan , Yanchao Feng
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Abstract

The “technology dividend” brought by the development of artificial intelligence (AI) can optimize the allocation of resource within enterprises, provide a new model for enterprises to achieve sustainable development, and create a new power source for enterprise economic development and pollution reduction. Although the advantages and disadvantages of AI have been widely discussed, few studies have explored whether it can play the dual effects on economy and environment from the perspective of enterprises. Considering the difficulty of measuring AI indicators, this paper attempts to explore the impact of automation, as a key underlying technology of AI, on enterprise economic performance and environmental performance, and rationally infer the dual impact of AI. We use panel data from China's Shanghai and Shenzhen A-share listed companies from 2009 to 2021 to reveal the dual effects of automation. The benchmark regression results show that automation can boost both enterprise economic and environmental performance. The result is still credible after a series of robustness tests and causal identification. Moreover, we find that the economic performance is stronger in non-heavily polluted enterprises. The dual effects of automation are more significant in areas with low environmental regulations and areas with high levels of industrial digitalization and digital industrialization. The mechanism analysis results show that automation can play the dual effects through the cost-effectiveness channel, the capital-labor substitution channel, and the energy-saving and emission reduction channel.
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自动化对经济和环境的双重影响:来自中国 A 股上市企业的证据
人工智能(AI)发展带来的 "技术红利 "可以优化企业内部资源配置,为企业实现可持续发展提供新模式,为企业经济发展和污染减排创造新的动力源。虽然人工智能的优缺点已被广泛讨论,但很少有研究从企业角度探讨人工智能能否发挥经济和环境的双重效应。考虑到人工智能指标难以衡量,本文试图探讨作为人工智能关键底层技术的自动化对企业经济绩效和环境绩效的影响,合理推断人工智能的双重影响。我们利用 2009 年至 2021 年中国沪深 A 股上市公司的面板数据,揭示了自动化的双重影响。基准回归结果表明,自动化可以同时提升企业的经济绩效和环境绩效。经过一系列稳健性检验和因果识别后,结果仍然可信。此外,我们还发现,非重度污染企业的经济绩效更强。自动化的双重效应在环境法规较少的地区以及工业数字化和数字工业化水平较高的地区更为显著。机理分析结果表明,自动化可以通过成本效益渠道、资本-劳动力替代渠道和节能减排渠道发挥双重效应。
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来源期刊
中国经济评论
中国经济评论 ECONOMICS-
CiteScore
10.60
自引率
4.40%
发文量
380
期刊介绍: The China Economic Review publishes original works of scholarship which add to the knowledge of the economy of China and to economies as a discipline. We seek, in particular, papers dealing with policy, performance and institutional change. Empirical papers normally use a formal model, a data set, and standard statistical techniques. Submissions are subjected to double-blind peer review.
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