内生性
工具变量
空气质量指数
Nexus(标准)
回归不连续设计
稳健性(进化)
背景(考古学)
协变量
公司治理
环境经济学
计量经济学
业务
公共经济学
经济
工程类
地理
财务
统计
嵌入式系统
基因
气象学
生物化学
数学
考古
化学
作者
Xiaowei Ding,Panfeng Wang,Xuyan Jiang,Wenyi Zhang,Boris I. Sokolov,Yali Liu
出处
期刊:Sustainability
[Multidisciplinary Digital Publishing Institute]
日期:2024-04-25
卷期号:16 (9): 3613-3613
摘要
Urban air quality is inextricably linked to the operations of micro-firms. This paper employs the “Qinling-Huaihe” River demarcation as an instrumental variable to construct a regression discontinuity design (RDD) coupled with the two-stage least squares (2SLS) approach. This methodological framework is utilized to investigate the influence of urban air quality on the corporate total factor productivity (CTFP) of publicly listed manufacturing firms from 2015 to 2020. Drawing on the broken windows theory of urban decay and the general equilibrium theory, this research elucidates a significant adverse effect of urban air pollution on CTFP. We rigorously confirm the validity of the RDD by conducting covariate continuity tests and manipulating distributional variables. Furthermore, the robustness of the baseline regression outcomes is substantiated through a series of sensitivity, robustness, and endogeneity checks, employing alternative instrumental variables. The analysis extends to examining the heterogeneity across environmental attributes, regional features, and green branding. The mechanistic investigation reveals that public environmental concerns, financing constraints, and investments in technological innovation serve as mediators in the nexus between urban air pollution and CTFP. Additionally, it is observed that environmental regulation exerts a positive moderating influence, whereas female leadership has a negative impact in this context. The imperative for timely environmental governance is underscored by these findings, which offer crucial insights for policymakers seeking to refine business environment strategies and for corporations aiming to pursue sustainable growth.
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