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Economic growth, inequality, and environment nexus: using data mining techniques to unravel archetypes of development trajectories

机译:经济增长,不平等和环境Nexus:利用数据挖掘技术来解析开发轨迹的原型

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Implementation of sustainable development goals (SDGs) requires evidence-based analyses of the interactions between the different goals to design coherent policies. In this paper, we focus on the interactions between economic growth (SDG 8), reduced inequalities (SDG 10), and climate action (SDG 13). Some previous studies have found an invertedU-shaped relationship between income per capita and inequality, and a similar relationship between income per capita and environmental degradation. Despite their weak theoretical and empirical bases, these hypothesized relationships have gained popularity and are assumed to be universally true. Given differences in underlying contextual conditions across countries, the assumption of universal applicability of these curves for policy prescriptions can be potentially misleading. Advances in data analytics offer novel ways to probe deeper into these complex interactions. Using data from 70 countries, representing 72% of the world population and 89% of the global gross domestic product (GDP), we apply a nonparametric classification tree technique to identify clusters of countries that share similar development pathways in the pre-recession (1980-2008) and post-recession (2009-2014) period. The main outcome of interest is the change in per capita CO(2)emissions (post-recession). We examine how it varies with trajectories of GDP growth, GDP growth variability, Gini index, carbon intensity, and CO(2)emissions (pre-recession). Our study identifies twelve country clusters with three categories of emission trajectories: decreasing (four clusters), stabilizing (three clusters), and increasing (five clusters). Through the application of data mining tools, the study helps unravel the complexity of factors underlying development pathways and contributes toward informed policy decisions.
机译:可持续发展目标(SDGS)的实施要求基于基于循证的分析来设计相干政策的不同目标之间的相互作用。在本文中,我们专注于经济增长(SDG 8),减少不平等(SDG 10)和气候行动(SDG 13)之间的相互作用。一些以前的研究发现人均收入与不平等之间的倒置关系,人均收入与环境退化之间的类似关系。尽管他们薄弱的理论和经验基础,但这些假设的关系越来越受欢迎,并且被认为是普遍的。鉴于各国的潜在语境条件的差异,普遍适用于政策处方的普遍适用性可能是潜在的误导性。数据分析的进步提供了更深入到这些复杂互动的新方法。使用来自70个国家的数据,代表世界上72%的人口和89%的全球国内生产总值(GDP),我们应用了非参数分类树技术,以识别在衰退前共享类似发展途径的国家集群(1980年-2008)和衰退后(2009-2014)期间。兴趣的主要结果是人均CO(2)排放(衰退后)的变化。我们研究如何随着GDP增长,GDP增长变异性,GINI指数,碳强度和CO(2)排放(预衰退)的轨迹而变化。我们的研究确定了具有三类排放轨迹的十二个国家群集:减少(四个集群),稳定(三簇),增加(五簇)。通过应用数据采矿工具,该研究有助于解开潜在的发展途径的因素的复杂性,并有助于提供知情政策决策。

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