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利用面板数据和机器学习分析从全球视角探讨甲烷排放的决定因素。

Exploring the determinants of methane emissions from a worldwide perspective using panel data and machine learning analyses.

机构信息

Department of Political Science, Roma Tre University, Italy.

Research Unit on Governance, Competitiveness and Public Policies, Department of Economics, Management, Industrial Engineering and Tourism, University of Aveiro, Portugal.

出版信息

Environ Pollut. 2024 May 1;348:123807. doi: 10.1016/j.envpol.2024.123807. Epub 2024 Mar 22.

Abstract

This article contributes to the scant literature exploring the determinants of methane emissions. A lot is explored considering CO emissions, but fewer studies concentrate on the other most long-lived greenhouse gas (GHG), methane which contributes largely to climate change. For the empirical analysis, a large dataset is used considering 192 countries with data ranging from 1960 up to 2022 and considering a wide set of determinants (total central government debt, domestic credit to the private sector, exports of goods and services, GDP per capita, total unemployment, renewable energy consumption, urban population, Gini Index, and Voice and Accountability). Panel Quantile Regression (PQR) estimates show a non-negligible statistical effect of all the selected variables (except for the Gini Index) over the distribution's quantiles. Moreover, the Simple Regression Tree (SRT) model allows us to observe that the losing countries, located in the poorest world regions, abundant in natural resources, are those expected to curb methane emissions. For that, public interventions like digitalization, green education, green financing, ensuring the increase in Voice and Accountability, and green jobs, would lead losers to be positioned in the winner's rankings and would ensure an effective fight against climate change.

摘要

本文有助于填补探索甲烷排放决定因素的文献空白。大量研究考虑了 CO 排放,但较少的研究集中在另一种寿命最长的温室气体(GHG)甲烷上,甲烷对气候变化的影响很大。在实证分析中,使用了一个包含 192 个国家的数据的大型数据集,数据范围从 1960 年到 2022 年,并考虑了广泛的决定因素(中央政府总债务、私营部门国内信贷、商品和服务出口、人均 GDP、总失业率、可再生能源消费、城市人口、基尼指数和发言权和问责制)。面板分位数回归(PQR)估计表明,所有选定变量(基尼指数除外)对分布分位数都有不可忽视的统计影响。此外,简单回归树(SRT)模型使我们能够观察到,位于最贫穷世界地区、自然资源丰富的输家国家,预计将遏制甲烷排放。为此,数字化、绿色教育、绿色融资、确保增加发言权和问责制以及绿色就业等公共干预措施将使输家国家排名上升,并确保有效应对气候变化。

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