环境质量、公共账户和宏观经济基本面之间的相互关系:使用机器学习技术对经合组织国家的分析

IF 4.7 2区 环境科学与生态学 Q2 ENVIRONMENTAL SCIENCES
Cosimo Magazzino , Muhammad Haroon
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引用次数: 0

摘要

本研究利用机器学习(ML)技术,探讨了1990年至2021年期间经合组织国家环境质量、公共财政指标和社会经济变量之间的复杂关系。该研究通过综合各种公共财政指数、宏观经济基本面、贸易措施和社会经济变量,独特地确定了影响可再生能源消费(REC)的关键因素。通过强调公共债务政策的作用,该研究揭示了它们对可再生能源采用的重要而复杂的非线性影响。与现有研究不同,该研究利用神经网络(NN),一种最先进的机器学习技术,产生稳健和可靠的结果。与传统的计量经济学方法相比,这种方法上的创新使研究脱颖而出,提供了更准确的特征重要性分数。研究结果加深了我们对公共财政在实现可持续发展目标(sdg),特别是SDG-7中发挥的关键作用的理解,并强调了有效的公共债务管理对促进环境可持续性的必要性。从结果中得出的政策含义为政府提供了可操作的建议,以加强REC的采用,同时实现更广泛的环境目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The interrelation among environmental quality, public accounts, and macroeconomic fundamentals: An analysis of OECD countries using machine learning techniques
This study explores the intricate relationships among environmental quality, public finance indicators, and socioeconomic variables in OECD countries, using Machine Learning (ML) techniques for the period 1990–2021. The research uniquely identifies key factors influencing renewable energy consumption (REC) by incorporating various public finance indices, macroeconomic fundamentals, trade measures, and socio-economic variables. By emphasizing the role of public debt policies, the study uncovers their significant yet complex and non-linear influence on renewable energy adoption. Unlike existing studies, this research utilizes Neural Networks (NN), a state-of-the-art ML technique, to generate robust and reliable outcomes. This methodological innovation sets the study apart by offering more accurate feature importance scores compared to traditional econometric methods. The findings advance our understanding of the crucial role that public finance plays in achieving Sustainable Development Goals (SDGs), particularly SDG-7, and underscore the necessity of effective public debt management for fostering environmental sustainability. Policy implications drawn from the results provide actionable recommendations for governments to enhance REC adoption while achieving broader environmental goals.
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来源期刊
Environmental Development
Environmental Development Social Sciences-Geography, Planning and Development
CiteScore
8.40
自引率
1.90%
发文量
62
审稿时长
74 days
期刊介绍: Environmental Development provides a future oriented, pro-active, authoritative source of information and learning for researchers, postgraduate students, policymakers, and managers, and bridges the gap between fundamental research and the application in management and policy practices. It stimulates the exchange and coupling of traditional scientific knowledge on the environment, with the experiential knowledge among decision makers and other stakeholders and also connects natural sciences and social and behavioral sciences. Environmental Development includes and promotes scientific work from the non-western world, and also strengthens the collaboration between the developed and developing world. Further it links environmental research to broader issues of economic and social-cultural developments, and is intended to shorten the delays between research and publication, while ensuring thorough peer review. Environmental Development also creates a forum for transnational communication, discussion and global action. Environmental Development is open to a broad range of disciplines and authors. The journal welcomes, in particular, contributions from a younger generation of researchers, and papers expanding the frontiers of environmental sciences, pointing at new directions and innovative answers. All submissions to Environmental Development are reviewed using the general criteria of quality, originality, precision, importance of topic and insights, clarity of exposition, which are in keeping with the journal''s aims and scope.
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