江西财经大学学报 ›› 2026, Vol. 0 ›› Issue (3): 81-91.

• 经济管理 • 上一篇    下一篇

国家电子商务示范城市建设对碳排放强度的影响机制研究——基于双重机器学习的因果推断

谢黎智   

  1. 南昌航空大学 经济管理学院,江西 南昌 330063
  • 收稿日期:2025-07-05 修回日期:2026-04-20 出版日期:2026-05-25 发布日期:2026-05-29
  • 作者简介:谢黎智,南昌航空大学副教授,经济学博士,主要从事经济统计研究,联系方式490114875@qq.com。
  • 基金资助:
    国家社会科学基金项目“双碳目标下碳排放交易机制的减污降碳效应研究”(23BTJ032); 江西省社会科学基金重大委托项目“推进我省村党支部书记专业化管理长效机制研究”(25WT08); 江西省教育改革重点项目“基于机器学习的地方高校研究生人才培养评价体系研究”(JXYJG-2023-122)

Research on the Impact Mechanism of National E-Commerce Demonstration City Construction on Carbon Emission Intensity: Causal Inference Based on Dual Machine Learning

Xie Li-zhi   

  1. Nanchang Hangkong University, Nanchang 330063, China
  • Received:2025-07-05 Revised:2026-04-20 Online:2026-05-25 Published:2026-05-29

摘要: 电子商务作为数字经济的重要驱动力,深度契合我国“双碳”目标与经济高质量发展的战略需求。基于2006—2022年中国267个地级市面板数据,以国家电子商务示范城市建设为准自然实验,采用双重机器学习方法,以环境规制为外部关键变量,系统探究该示范城市建设对碳排放强度的影响,并通过面板门槛模型揭示其非线性特征。研究表明:国家电子商务示范城市建设显著降低碳排放强度,其政策效应在多种稳健性检验下呈现一致性;机制分析表明,该示范城市建设通过结构升级效应、绿色技术创新效应和环境规制效应等途径实现碳排放强度的降低;进一步分析表明,该示范城市建设对碳排放强度的影响具有“倒U型”表现在不同发展阶段与资源禀赋条件下的非线性特征。因此,建议强化顶层设计的协同性、实施差异化政策路径、深化环境规制与技术创新的联动机制,以充分发挥电子商务在低碳转型中的引擎作用。

关键词: 国家电子商务示范城市, 碳排放强度, 双重机器学习, 影响机制, 门槛效应

Abstract: As a vital driving force of the digital economy, e-commerce is highly aligned with China’s strategic needs for achieving the “Dual Carbon” goal and high-quality economic development. Based on the panel data from 267 prefecture level cities in China from 2006 to 2022, and taking the construction of national e-commerce demonstration cities as a quasi natural experiment, this paper systematically explores the impact of the construction of the demonstration cities on carbon emission intensity by adopting the dual machine learning method and taking the environmental regulation as an external key variable, then it reveals its nonlinear characteristics through a panel threshold model. The findings show that the construction of national e-commerce demonstration cities has significantly reduced carbon emission intensity, and its policy effects show consistency under various robustness tests. The mechanism analysis shows that the construction of the demonstration cities achieves a reduction in carbon emission intensity through structural upgrading effects, green technology innovation effects, and environmental regulation effects. Further analysis shows that the impact of the construction of the demonstration cities on carbon emission intensity exhibits a non-linear characteristic of an inverted U-shape at different stages of development and resource endowment conditions. Therefore, it is recommended to strengthen the synergy of top-level design, implement differentiated policy paths, deepen the linkage mechanism between environmental regulation and technological innovation, so as to fully leverage the engine role of e-commerce in low-carbon transformation.

Key words: national E-commerce demonstration cities, carbon emission intensity, double machine learning, impact mechanism, threshold effect

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