公司治理
生态效率
盈利能力指数
数据包络分析
业务
生态效率
环境经济学
多级模型
产业组织
微观经济学
持续性
经济
生态学
计算机科学
财务
生物
数学优化
数学
机器学习
作者
Wen‐Min Lu,Qian Long Kweh,Irene Wei Kiong Ting,Chunya Ren
摘要
Abstract As global ecological degradation intensifies, a trade‐off has arisen between environmental protection and production efficiency to achieve sustainable development for the environment, society, and the company itself. However, the potential reverse causality relationship between environmental, social, and governance (ESG) and corporate efficiency may lead to confusion. This study estimates the eco‐efficiency of Apple Incorporated's value‐chain counterparts in the first stage and creates values and profitability in the second stage of efficiency evaluation. Results obtained from the (i) directional distance function in the two‐stage data envelopment analysis (DEA), (ii) additive efficiency decomposition two‐stage network DEA model, and (iii) network slacks‐based measure model are consistent. That is, Apple counterparts manage more efficient eco‐efficiency than profitability efficiency, implying that eco‐efficiency is their competitive advantage. We thus also run a regression analysis to examine how the ESG ratings of Apple counterparts explain their eco‐efficiency and profitability efficiency. Although the overall ESG rating positively explains the efficiencies, we found that the individual governance rating shows no statistically significant effect. The regression results provide insight for practitioners on the importance of investing in the three aspects of a firm's collective conscientiousness for societal and environmental governance. This paper integrates companies' eco‐efficiency and profitability efficiency to resolve the conflict between environmental issues and production efficiency. It also analyzes in depth the effects of ESG and its three individual factors on eco‐, profitability, and average efficiencies. The diversity of research methods also provides new ideas for future research related to firm efficiency.
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