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首页> 外文期刊>Environmetrics >The institutional determinants of CO_2 emissions: a computational modeling approach using Artificial Neural Networks and Genetic Programming
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The institutional determinants of CO_2 emissions: a computational modeling approach using Artificial Neural Networks and Genetic Programming

机译:CO_2排放的制度决定因素:使用人工神经网络和遗传规划的计算建模方法

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Understanding the complex process of climate change implies the knowledge of all possible determinants of CO_2 emissions. This paper studies the influence of several institutional determinants on COO_2 emissions, clarifying which variables are relevant to explain this influence. For this aim, Genetic Programming and Artificial Neural Networks are used to find an optimal functional relationship between the CO_2 emissions and a set of historical, economic, geographical, religious, and social variables, which are considered as a good approximation to the institutional quality of a country. Besides this, the paper compares the results using these computational methods with that employing a more traditional parametric perspective: ordinary least squares regression (OLS). Following the empirical results of the cross-country application, this paper generates new evidence on the binomial institutions and CO_2 emissions. Specifically, all methods conclude a significant influence of ethnolinguistic fractionalization (ETHF) on CO_2 emissions.
机译:了解气候变化的复杂过程意味着了解所有可能的CO_2排放决定因素。本文研究了几种制度性决定因素对COO_2排放的影响,阐明了哪些变量与解释该影响有关。为此,使用遗传规划和人工神经网络在CO_2排放与一组历史,经济,地理,宗教和社会变量之间找到最佳的函数关系,这些变量被认为是对机构质量的良好近似。一个国家。除此之外,本文还将这些计算方法的结果与采用更传统的参数视角的结果进行了比较:普通最小二乘回归(OLS)。根据越野应用的经验结果,本文为二项式机构和CO_2排放提供了新的证据。具体而言,所有方法都得出了民族语言分级化(ETHF)对CO_2排放的重大影响。

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