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On the Estimation of the CO2 Emission, Economic Growth and Energy Consumption Nexus Using Dynamic OLS in the Presence of Multicollinearity

机译:在多型原子存在下使用动态OLS估计CO2排放,经济增长和能耗Nexus

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摘要

This paper introduces shrinkage estimators (Ridge DOLS) for the dynamic ordinary least squares (DOLS) cointegration estimator, which extends the model for use in the presence of multicollinearity between the explanatory variables in the cointegration vector. Both analytically and by using simulation techniques, we conclude that our new Ridge DOLS approach exhibits lower mean square errors (MSE) than the traditional DOLS method. Therefore, based on the MSE performance criteria, our Monte Carlo simulations demonstrate that our new method outperforms the DOLS under empirically relevant magnitudes of multicollinearity. Moreover, we show the advantages of this new method by more accurately estimating the environmental Kuznets curve (EKC), where the income and squared income are related to carbon dioxide emissions. Furthermore, we also illustrate the practical use of the method when augmenting the EKC curve with energy consumption. In summary, regardless of whether we use analytical, simulation-based, or empirical approaches, we can consistently conclude that it is possible to estimate these types of relationships in a considerably more accurate manner using our newly suggested method.
机译:本文介绍了动态普通最小二乘(DOLS)协整估算器的收缩估计(脊DOL),其延伸了在协整载体中的解释性变量之间的多色性之间使用的模型。两者都通过模拟技术和使用仿真技术,我们得出结论,我们的新脊DOLS方法表现出低于传统DOLS方法的均线均衡(MSE)。因此,根据MSE绩效标准,我们的蒙特卡罗模拟表明,我们的新方法在经验相关的多元性大幅度下表现出DOL。此外,我们通过更准确地估计环境库兹涅茨曲线(EKC)来展示这种新方法的优点,其中收入和平方收入与二氧化碳排放有关。此外,我们还说明了在增强EKC曲线时使用能量消耗的方法的实际使用。总之,无论我们是否使用基于分析,仿真的或经验方法,我们都可以一致地得出结论,以使用我们的新建议的方法,以相当准确的方式估计这些类型的关系。

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