企业环境管理态度的聚类与决定因素分析:无监督学习技术

Ji-Young An
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引用次数: 0

摘要

目的-本研究的主要目的是利用各种指标对环境管理态度的公司进行集群,并分析集群之间活动的差异,以深入了解环境管理绩效。 设计/方法/方法-该研究涵盖了2013年至2022年间来自12个国家,22个行业部门和3,402家公司的面板数据。本研究同时使用机器学习方法和传统计量经济学方法。主要方法包括使用无监督学习技术,K-means聚类,对环境管理态度进行分类。随后,采用核密度估计和多项逻辑回归对每个集群内的环境绩效指标进行比较分析,并确定影响环境管理态度的决定因素。 调查结果-该研究揭示了五种截然不同的公司集群的存在,它们对环境管理的态度各不相同。通过多项logistic回归,发现温室气体排放、能源消耗、总资产、资产收益率等变量对环境管理态度有显著影响。 研究意义-通过揭示主要国家和行业的共同特征和决定因素,本研究为在快速变化的国际贸易和投资环境背景下促进国内环境管理提供了有价值的见解。研究结果为促进国内公司积极主动的环境管理实践提供了政策影响和建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Clustering and Determinant Analysis of Corporate Environmental Management Attitudes: Unsupervised Learning Techniques
Purpose - The main objective of this study is to cluster companies based on environmental management attitudes using various indicators, and analyze differences in activities among the clusters to gain insights into environmental management performance. Design/Methodology/Approach - The study encompasses panel data from 12 countries, 22 industry sectors, and 3,402 companies from 2013 to 2022. This study uses both machine learning methodology and conventional econometric methodology. The primary methodology involves using an unsupervised learning technique, K-means clustering, to categorize environmental management attitudes. Subsequently, Kernel Density estimation and Multinomial Logistic Regression were employed to conduct comparative analyses of environmental performance indicators within each cluster and identify the determinants shaping environmental management attitudes. Findings - The research revealed the existence of five distinct clusters of companies with varying environmental management attitudes. Through Multinomial Logistics Regression, it identified that variables such as greenhouse gas emissions, energy consumption, total assets, return on assets, and other significantly influence environmental management attitudes. Research Implications - By uncovering common characteristics and determinants within major countries and industries, this study offers valuable insights in promoting domestic environmental management in the context of rapidly changing international trade and investment environments. The findings provide policy implications and suggestions for fostering proactive environmental management practices among domestic companies.
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